SlideShare a Scribd company logo
1 of 18
Download to read offline
1
Melbourne Sydney Brisbane Wellington Johannesburg Cape Town Windhoek www.sahainternational.com
ISO Big Data in Transport
Potsdam Workshop
Neil Frost and Warwick Frost
May 2016
What is Big Data
Big Data conceptualizes how we capture and process
very large complex sets of data.
Big Data has its roots in time series and predictive
analytics.
Traditional data warehousing techniques are no longer
adequate.
Where Big Data differs is in the sophistication of
analytics.
The big difference is that correlations and patterns can
be derived from information which was previously
considered unconnected. The result is a far greater
level of precision in terms of predictive capability.
Reference: PTV Group; White paper; NEW DATA SOURCES FOR TRANSPORT MODELLING, DECEMBER 2014; pg.04
What is Big Data
Big data is an evolving term that describes any voluminous amount of structured,
semi-structured and unstructured data that has the potential to be mined for
information.
Processing
Methodology
Data
Sources
Web & Social
Media
Machine
generated
Human
generated
Internal Data
Sources
Transaction
Data
Via Data
Providers
Via Data
Originator
Data
Consumers
Human
Business
Process
Other
Enterprise
Applications
Other Data
Repositories
Text
Videos
Documents
Audio
Images
Structured
Content
Format
Unstructured
Semi-structured
All formats can be
type structured,
unstructured or semi-
structured
Data Type
Meta Data
Master Data
Historical
Transactional
Continuous
feeds
Real time feeds
Time series
Data
Frequency
On demand
feeds
Predictive
Analysis
Analytical
Query &
Reporting
Miscellaneous
Social
Network
Analysis
Location
base
Analysis
Features
recognition
Text
Analytics
Statistical
Algorithms Transcription
Speech
Analytics
Translation 3D
Reconstruction
Real Time
Near Real Time
Analysis
Type
The feeds may be
available on monthly,
weekly, daily, hourly,
per minute or per
second basis
Periodic
Batch
Reference: IBM, Big data classification, http://www.ibm.com/developerworks/library/bd-archpatterns1/
Internet of Transport
The IoTransport can assist in integration of communications,
control, and information processing across various transportation
systems and modes.
Application of the IoTransport extends to all aspects of
transportation systems, i.e. the vehicle, the infrastructure,
and the driver or user.
Dynamic interaction between these components of a transport
system enables inter and intra vehicular communication, smart
traffic control, smart parking, electronic toll collection
systems, logistic and fleet management, vehicle control, and
safety and road assistance.
Reference: Wikipedia
How does this relate to ITS
Ā© iSAHA
Storm water
Extent of Data requirements
Ā© iSAHA
Real Time Traffic Flow
ETA Predictions
Reference: Google Maps; https://maps.google.com/
INRIX
Traffic Information
Reference: INRIX; http://www.inrix.com/products/
INRIX
Connected Driver
Reference: INRIX; http://www.inrix.com/products/
NAVIGATION SERVICE BUS OPERATOR CITY POLICE STATION RAILWAY OPERATOR
ID MANAGEMENT
SYSTEM
TOUCH SMARTCARD
WHEN BOARDING BUS
CURRENT BUS
LOCATION
EV BUS STATE OF
CHARGE
BUS OPERATION
MANAGEMENT SYSTEM
EV BUS POWER
MANAGEMENT SYSTEMINTEGRATED GUIDANCE ON BEST ROUTE
Station
12
The roads will likely
be crowded today, so
he decides to
take a bus instead
Arrives at station
more quickly than if
driven by car
The train comes just
as he arrives at the
station
The integrated fare
system means
changing from bus to
train is economical
Transportation
user experience
layer
Transportation
services layer
NAVIGATION SERVICE BUS OPERATOR CITY POLICE STATION RAILWAY OPERATOR
MULTI-MODAL NAVIGATION
Advise on best transportation
company route based on
todayā€™s forecast
BUS PRIORITY SIGNAL SYSTEM
Prioritize green lights for bus to ensure it
arrives at the station on time
INTEGRATED TRANSFER BETWEEN BUS & TRAIN
Bus operation management ensures bus arrives on
time to catch desired train
INTEGRATED FARE COLLECTION SERVICE
As a single fare gets him all the way to his
destination, transfers between transportation
companies are economical
Information
collection layer
ITS
MANAGEMENT SYSTEM
ITS
MANAGEMENT
SYSTEM
RAILWAY
OPERATION
MANAGEMENT
SYSTEM
TRAIN ARRIVAL
TIME TABLE
URBAN MANAGEMENT INFRASTRUCTURE
Information
management
and control layer
Transportation
company
coordination layer
Integrated analysis and
simulation flow of people
Smartcard integrated
management
Integrated analysis and simulations
of electric power usage
PERSONAL DETAILS
DESTINATION
CURRENT LOCATION
Title
Typical Enterprise Architecture
Enterprise
Discretionary &
Non-Discretionary
Standards/
Requirements
Feedback
Business
Architecture
Information
Architecture
Information
Systems Architecture
Data Architecture
Delivery Systems Architecture
Hardware, Software, Communications
Drives
Prescribes
Indentifies
Supported By
External Discretionary
& Non-discretionary
Standards/
Requirements
Reference: Wikipedia
Future State of Transport
Massively
Networked
Integrated
Public and
Private
Collaboration
Dynamically
Priced
User Centred
Ā© iSAHA
Concept Analytical
Enterprise Design
Enterprise Service Bus (ESB)
Data Warehouse
User Interface
Portal Browser/
Web Page
Print Thick Clients Email Thin Clients Mobile App M2M
Non-user Interface
IntegratedManagementSystem
DATA WAREHOUSEBusiness Intelligence / Knowledge Reporting
Data Analytics Data Mining Reporting Scorecards Predictive
Analytics
In-memory
Analytics
? ?
Data Management
Master Data
Management
Metadata
Management
Data Models Data
Mapping
+
Extract,
Transform &
Load
Integration Hub Import/
Export Scripts
Message
Queues
File Transfer
(FTP & SFTP)
Integration
Internal/External Data Sources
Ā© iSAHA
Future High Level Abstract Architecture
GIS
Traveller
Phone App
Vehicle
Telemetrics
Network
Status
Smart Cards
Accident
Data
Journey
Planner
CRM
Command &
Control
Engineering
Systems
Real Estate
Mgt
Licensing
Performance
Mgt
Revenue Mgt
Enforcement
Real-time
Fare Mgt
Traffic Mgt
Systems
Employee
Apps
Real-time
Messaging
?
Publish Data
Back Office
Systems
Event
Processing
Data
Traveller
Profile
Integrated
Multi-modal
What if?
Planning & Analysis
Key elements
Integrated
Event Processing
Big Data
Partnerships
Reference: Russ Heasman: HCL: March 2016
News
Big Data & Transport
Source: http://www.information-age.com/it-management/strategy-
and-innovation/123459878/how-tfl-will-use-data-about-you-keep-
london-moving-its-population-soars
Source: http://acceleratecapetown.co.za/digital-cape-town/
Source: http://www.computing.co.uk/ctg/news/2452328/how-big-data-is-driving-
more-intelligent-transport
Source: http://www.iol.co.za/scitech/technology/software/app-a-game-changer-
for-commuters-1768183
Source: http://www.africanbusinessreview.co.za/technology/2192/Big-Data-can-
enable-world-class-transportation-in-South-Africa
Big Data
Case Study
Rio de Janeiro Municipal Operations
Centre
After a series of floods and mudslides claimed the lives of 72 people in
April 2010, city officials recognised the need to overhaul city
operations more significantly in preparation for the 2014 World Cup
and Olympics in 2016. (United States Environmental Protection
Agency, 2014) In collaboration with IBM, the City of Rio de Janeiro
launched the Rio de Janeiro Operations Centre (ROC) in 2010 with the
initial aim of preventing deaths from annual floods. This centre was
later expanded to include all emergency response situations in Rio de
Janeiro.
In traditional applications of top-down sensor networks, data from each
department operates in isolation. However, ROCā€™s approach to
information exchange is based on the understanding that overall
communication channels are essential to getting the right data to the
right place and can make all the difference in an effective response to
an emergency situation. The information-sharing platform they
created enables them to tap into various departments and
agencies, and look for patterns across diverse data sets to better
coordinate resources during a crisis.
The centrally located facility surveys 560 cameras around the city and
another 350 from private sector utility concessionaires and public
sector authorities (Centro de OperaƧƵes da Prefeitura do Rio de
Janeiro, 2014). The incoming feeds are aggregated on a single server
and displayed across a 80-square meter (861 square feet) wall of tiled
screens ā€“ a smart map comprised of 120 layers of information updated
in real-time such as GPS tracking of buses, city officials and local
traffic. With over 400 employees working in shifts 24 hours per day,
seven days a week ROC performs a variety of functions aimed at
improving the efficiency, safety, and effectiveness of relevant
government agencies in the city. While much of the attention paid to
the centre focuses on emergency monitoring and response, especially
related to weather, a significant portion of the work undertaken relates
to ensuring the smooth functioning of day-to-day operations like
transport.
Source: Photo: http://www.museumofthecity.org/project/rio-de-janeiro-and-ibms-smarter-cities-project/ | Case Study:
International Transport Forum ā€“ Big Data and Transport
Side by side feeds for weather and traffic feeds help city officials to respond
effectively to oncoming storms and traffic issues
In a statement on the use of sensor-based systems to correlate situational events
with historical data at their Intelligent Operations Centre for Smarter Cities, IBMā€™s
Director of Public Safety explained ā€œThe aim is to help cities of all sizes use analytics
more effectively to make intelligent decisions based on better quality and timelier
information. City managers can access information that crosses boundaries, so
theyā€™re not focusing on a problem within a single domain. They can start to think
about how one agencyā€™s response to an event affects other agenciesā€.
Conclusion
The world has become a massive interconnection of smart device that
generate data continuously and this is extremely relevant to Transport
In terms of ITS this is a limitless opportunity that will change the
way we view, plan and manage transport.
Traffic prediction has a major benefit
for determining demand and supply
and simulating alternate options to
resolve issues.
Congestion management options and
impacts can be determined
Disaster response planning can be
simulated and planned in advance.
Numerous other opportunities to many to mention are becoming
possible.
18
Melbourne Sydney Brisbane Wellington Johannesburg Cape Town Windhoek www.sahainternational.com
Thank you

More Related Content

What's hot

Natural Language Processing for Social Media
Natural Language Processing for Social MediaNatural Language Processing for Social Media
Natural Language Processing for Social MediaAnna Farzindar Ph.D.
Ā 
4.2 spatial data mining
4.2 spatial data mining4.2 spatial data mining
4.2 spatial data miningKrish_ver2
Ā 
Big Data Analytics for Real Time Systems
Big Data Analytics for Real Time SystemsBig Data Analytics for Real Time Systems
Big Data Analytics for Real Time SystemsKamalika Dutta
Ā 
Testing Hadoop jobs with MRUnit
Testing Hadoop jobs with MRUnitTesting Hadoop jobs with MRUnit
Testing Hadoop jobs with MRUnitEric Wendelin
Ā 
Google Big Table
Google Big TableGoogle Big Table
Google Big TableOmar Al-Sabek
Ā 
web mining
web miningweb mining
web miningArpit Verma
Ā 
Introduction to data science
Introduction to data scienceIntroduction to data science
Introduction to data scienceMahir Haque
Ā 
Big data by Mithlesh sadh
Big data by Mithlesh sadhBig data by Mithlesh sadh
Big data by Mithlesh sadhMithlesh Sadh
Ā 
Data science
Data scienceData science
Data scienceMohamed Loey
Ā 
Fraud and Risk in Big Data
Fraud and Risk in Big DataFraud and Risk in Big Data
Fraud and Risk in Big DataUmma Khatuna Jannat
Ā 
TRAFFIC SIMULATION AT TOLL ROAD SECTION USING VISSIM SOFTWARE
TRAFFIC SIMULATION AT TOLL ROAD SECTION USING VISSIM SOFTWARETRAFFIC SIMULATION AT TOLL ROAD SECTION USING VISSIM SOFTWARE
TRAFFIC SIMULATION AT TOLL ROAD SECTION USING VISSIM SOFTWAREshrikrishna kesharwani
Ā 
big data Presentation
big data Presentationbig data Presentation
big data PresentationMahmoud Farag
Ā 
Introduction to Big Data
Introduction to Big Data Introduction to Big Data
Introduction to Big Data Srinath Perera
Ā 
Application of GIS in Transportation Planning
Application of GIS in Transportation Planning Application of GIS in Transportation Planning
Application of GIS in Transportation Planning shrikrishna kesharwani
Ā 
Sustainable transportation for smart cities
Sustainable transportation for smart citiesSustainable transportation for smart cities
Sustainable transportation for smart citiesJIT KUMAR GUPTA
Ā 
The future of big data analytics
The future of big data analyticsThe future of big data analytics
The future of big data analyticsAhmed Banafa
Ā 
Real time traffic information
Real time traffic informationReal time traffic information
Real time traffic informationThuy Tran
Ā 
Introduction to Data Mining
Introduction to Data MiningIntroduction to Data Mining
Introduction to Data MiningDataminingTools Inc
Ā 

What's hot (20)

Natural Language Processing for Social Media
Natural Language Processing for Social MediaNatural Language Processing for Social Media
Natural Language Processing for Social Media
Ā 
4.2 spatial data mining
4.2 spatial data mining4.2 spatial data mining
4.2 spatial data mining
Ā 
Big Data Analytics for Real Time Systems
Big Data Analytics for Real Time SystemsBig Data Analytics for Real Time Systems
Big Data Analytics for Real Time Systems
Ā 
Testing Hadoop jobs with MRUnit
Testing Hadoop jobs with MRUnitTesting Hadoop jobs with MRUnit
Testing Hadoop jobs with MRUnit
Ā 
Intelligent transportation system
Intelligent transportation systemIntelligent transportation system
Intelligent transportation system
Ā 
Google Big Table
Google Big TableGoogle Big Table
Google Big Table
Ā 
Public Transport
Public TransportPublic Transport
Public Transport
Ā 
web mining
web miningweb mining
web mining
Ā 
Introduction to data science
Introduction to data scienceIntroduction to data science
Introduction to data science
Ā 
Big data by Mithlesh sadh
Big data by Mithlesh sadhBig data by Mithlesh sadh
Big data by Mithlesh sadh
Ā 
Data science
Data scienceData science
Data science
Ā 
Fraud and Risk in Big Data
Fraud and Risk in Big DataFraud and Risk in Big Data
Fraud and Risk in Big Data
Ā 
TRAFFIC SIMULATION AT TOLL ROAD SECTION USING VISSIM SOFTWARE
TRAFFIC SIMULATION AT TOLL ROAD SECTION USING VISSIM SOFTWARETRAFFIC SIMULATION AT TOLL ROAD SECTION USING VISSIM SOFTWARE
TRAFFIC SIMULATION AT TOLL ROAD SECTION USING VISSIM SOFTWARE
Ā 
big data Presentation
big data Presentationbig data Presentation
big data Presentation
Ā 
Introduction to Big Data
Introduction to Big Data Introduction to Big Data
Introduction to Big Data
Ā 
Application of GIS in Transportation Planning
Application of GIS in Transportation Planning Application of GIS in Transportation Planning
Application of GIS in Transportation Planning
Ā 
Sustainable transportation for smart cities
Sustainable transportation for smart citiesSustainable transportation for smart cities
Sustainable transportation for smart cities
Ā 
The future of big data analytics
The future of big data analyticsThe future of big data analytics
The future of big data analytics
Ā 
Real time traffic information
Real time traffic informationReal time traffic information
Real time traffic information
Ā 
Introduction to Data Mining
Introduction to Data MiningIntroduction to Data Mining
Introduction to Data Mining
Ā 

Viewers also liked

Everybody counts in Public Transport
Everybody counts in Public TransportEverybody counts in Public Transport
Everybody counts in Public TransportEurotech
Ā 
Big data in transport an international transport forum overview oct 2013
Big data in transport    an international transport forum overview oct 2013Big data in transport    an international transport forum overview oct 2013
Big data in transport an international transport forum overview oct 2013OpenSkyData
Ā 
Big Data and Transport Understanding and assessing options
Big Data and Transport Understanding and assessing optionsBig Data and Transport Understanding and assessing options
Big Data and Transport Understanding and assessing optionsLudovic Privat
Ā 
What is Artificial Intelligence | Artificial Intelligence Tutorial For Beginn...
What is Artificial Intelligence | Artificial Intelligence Tutorial For Beginn...What is Artificial Intelligence | Artificial Intelligence Tutorial For Beginn...
What is Artificial Intelligence | Artificial Intelligence Tutorial For Beginn...Edureka!
Ā 
AI and Machine Learning Demystified by Carol Smith at Midwest UX 2017
AI and Machine Learning Demystified by Carol Smith at Midwest UX 2017AI and Machine Learning Demystified by Carol Smith at Midwest UX 2017
AI and Machine Learning Demystified by Carol Smith at Midwest UX 2017Carol Smith
Ā 

Viewers also liked (6)

Everybody counts in Public Transport
Everybody counts in Public TransportEverybody counts in Public Transport
Everybody counts in Public Transport
Ā 
Big data in transport an international transport forum overview oct 2013
Big data in transport    an international transport forum overview oct 2013Big data in transport    an international transport forum overview oct 2013
Big data in transport an international transport forum overview oct 2013
Ā 
Big Data and Transport Understanding and assessing options
Big Data and Transport Understanding and assessing optionsBig Data and Transport Understanding and assessing options
Big Data and Transport Understanding and assessing options
Ā 
What is Artificial Intelligence | Artificial Intelligence Tutorial For Beginn...
What is Artificial Intelligence | Artificial Intelligence Tutorial For Beginn...What is Artificial Intelligence | Artificial Intelligence Tutorial For Beginn...
What is Artificial Intelligence | Artificial Intelligence Tutorial For Beginn...
Ā 
The AI Rush
The AI RushThe AI Rush
The AI Rush
Ā 
AI and Machine Learning Demystified by Carol Smith at Midwest UX 2017
AI and Machine Learning Demystified by Carol Smith at Midwest UX 2017AI and Machine Learning Demystified by Carol Smith at Midwest UX 2017
AI and Machine Learning Demystified by Carol Smith at Midwest UX 2017
Ā 

Similar to Big data and public transport

Mr. Paul Chang's presentation at QITCOM 2011
Mr. Paul Chang's presentation at QITCOM 2011Mr. Paul Chang's presentation at QITCOM 2011
Mr. Paul Chang's presentation at QITCOM 2011QITCOM
Ā 
Connected Lives: Where Smart Vehicles Meet the Intelligent Road
Connected Lives: Where Smart Vehicles Meet the Intelligent RoadConnected Lives: Where Smart Vehicles Meet the Intelligent Road
Connected Lives: Where Smart Vehicles Meet the Intelligent RoadCognizant
Ā 
Application of Big Data in Intelligent Traffic System
Application of Big Data in Intelligent Traffic SystemApplication of Big Data in Intelligent Traffic System
Application of Big Data in Intelligent Traffic SystemIOSR Journals
Ā 
Locations big data its
Locations big data itsLocations big data its
Locations big data itsGeoMedeelel
Ā 
Big Data & Smart City Applications
Big Data & Smart City ApplicationsBig Data & Smart City Applications
Big Data & Smart City ApplicationsAmit Sheth
Ā 
SC4 Workshop 1: Evangelos Mitsakis: Big data Sources for/from Intelligent Roa...
SC4 Workshop 1: Evangelos Mitsakis: Big data Sources for/from Intelligent Roa...SC4 Workshop 1: Evangelos Mitsakis: Big data Sources for/from Intelligent Roa...
SC4 Workshop 1: Evangelos Mitsakis: Big data Sources for/from Intelligent Roa...BigData_Europe
Ā 
Intelligent Transport Systems in Hong Kong
Intelligent Transport Systems in Hong KongIntelligent Transport Systems in Hong Kong
Intelligent Transport Systems in Hong KongCharles Mok
Ā 
Open Data policy implementations: Creating economic value
Open Data policy implementations: Creating economic valueOpen Data policy implementations: Creating economic value
Open Data policy implementations: Creating economic valueAngeles Navarro Rueda
Ā 
Thinking Highways - Real Time 10-11
Thinking Highways -  Real Time 10-11Thinking Highways -  Real Time 10-11
Thinking Highways - Real Time 10-11David Pickeral
Ā 
CarStream: An Industrial System of Big Data Processing for Internet of Vehicles
CarStream: An Industrial System of Big Data Processing for Internet of VehiclesCarStream: An Industrial System of Big Data Processing for Internet of Vehicles
CarStream: An Industrial System of Big Data Processing for Internet of Vehiclesijtsrd
Ā 
IRJET- Smart Bus Ticket System using IoT Technology
IRJET- Smart Bus Ticket System using IoT TechnologyIRJET- Smart Bus Ticket System using IoT Technology
IRJET- Smart Bus Ticket System using IoT TechnologyIRJET Journal
Ā 
Realtime Big Data Analytics for Event Detection in Highways
Realtime Big Data Analytics for Event Detection in HighwaysRealtime Big Data Analytics for Event Detection in Highways
Realtime Big Data Analytics for Event Detection in HighwaysYork University
Ā 
Doron REU Final Paper
Doron REU Final PaperDoron REU Final Paper
Doron REU Final PaperMa'ayan Doron
Ā 
Tips For Implementing Smart City Technology
Tips For Implementing Smart City TechnologyTips For Implementing Smart City Technology
Tips For Implementing Smart City TechnologyAlan Oviatt
Ā 
Asia-Pacific: smart mobility for the public sector with Orange
Asia-Pacific: smart mobility for the public sector with Orange Asia-Pacific: smart mobility for the public sector with Orange
Asia-Pacific: smart mobility for the public sector with Orange Orange Business Services
Ā 
Apache Kafka in the Public Sector (Government, National Security, Citizen Ser...
Apache Kafka in the Public Sector (Government, National Security, Citizen Ser...Apache Kafka in the Public Sector (Government, National Security, Citizen Ser...
Apache Kafka in the Public Sector (Government, National Security, Citizen Ser...Kai WƤhner
Ā 
Smart Cities, Smart Cars, Smart Living
Smart Cities, Smart Cars, Smart LivingSmart Cities, Smart Cars, Smart Living
Smart Cities, Smart Cars, Smart LivingMarie-Paule Odini
Ā 
382020 Originality Reporthttpsucumberlands.blackboard.docx
382020 Originality Reporthttpsucumberlands.blackboard.docx382020 Originality Reporthttpsucumberlands.blackboard.docx
382020 Originality Reporthttpsucumberlands.blackboard.docxlorainedeserre
Ā 

Similar to Big data and public transport (20)

Mr. Paul Chang's presentation at QITCOM 2011
Mr. Paul Chang's presentation at QITCOM 2011Mr. Paul Chang's presentation at QITCOM 2011
Mr. Paul Chang's presentation at QITCOM 2011
Ā 
Connected Lives: Where Smart Vehicles Meet the Intelligent Road
Connected Lives: Where Smart Vehicles Meet the Intelligent RoadConnected Lives: Where Smart Vehicles Meet the Intelligent Road
Connected Lives: Where Smart Vehicles Meet the Intelligent Road
Ā 
Application of Big Data in Intelligent Traffic System
Application of Big Data in Intelligent Traffic SystemApplication of Big Data in Intelligent Traffic System
Application of Big Data in Intelligent Traffic System
Ā 
A017160104
A017160104A017160104
A017160104
Ā 
Locations big data its
Locations big data itsLocations big data its
Locations big data its
Ā 
Big Data & Smart City Applications
Big Data & Smart City ApplicationsBig Data & Smart City Applications
Big Data & Smart City Applications
Ā 
SC4 Workshop 1: Evangelos Mitsakis: Big data Sources for/from Intelligent Roa...
SC4 Workshop 1: Evangelos Mitsakis: Big data Sources for/from Intelligent Roa...SC4 Workshop 1: Evangelos Mitsakis: Big data Sources for/from Intelligent Roa...
SC4 Workshop 1: Evangelos Mitsakis: Big data Sources for/from Intelligent Roa...
Ā 
Intelligent Transport Systems in Hong Kong
Intelligent Transport Systems in Hong KongIntelligent Transport Systems in Hong Kong
Intelligent Transport Systems in Hong Kong
Ā 
Open Data policy implementations: Creating economic value
Open Data policy implementations: Creating economic valueOpen Data policy implementations: Creating economic value
Open Data policy implementations: Creating economic value
Ā 
Thinking Highways - Real Time 10-11
Thinking Highways -  Real Time 10-11Thinking Highways -  Real Time 10-11
Thinking Highways - Real Time 10-11
Ā 
CarStream: An Industrial System of Big Data Processing for Internet of Vehicles
CarStream: An Industrial System of Big Data Processing for Internet of VehiclesCarStream: An Industrial System of Big Data Processing for Internet of Vehicles
CarStream: An Industrial System of Big Data Processing for Internet of Vehicles
Ā 
IRJET- Smart Bus Ticket System using IoT Technology
IRJET- Smart Bus Ticket System using IoT TechnologyIRJET- Smart Bus Ticket System using IoT Technology
IRJET- Smart Bus Ticket System using IoT Technology
Ā 
Realtime Big Data Analytics for Event Detection in Highways
Realtime Big Data Analytics for Event Detection in HighwaysRealtime Big Data Analytics for Event Detection in Highways
Realtime Big Data Analytics for Event Detection in Highways
Ā 
Doron REU Final Paper
Doron REU Final PaperDoron REU Final Paper
Doron REU Final Paper
Ā 
Tips For Implementing Smart City Technology
Tips For Implementing Smart City TechnologyTips For Implementing Smart City Technology
Tips For Implementing Smart City Technology
Ā 
Big data helps pedestrian planning take a big step forward
Big data helps pedestrian planning take a big step forwardBig data helps pedestrian planning take a big step forward
Big data helps pedestrian planning take a big step forward
Ā 
Asia-Pacific: smart mobility for the public sector with Orange
Asia-Pacific: smart mobility for the public sector with Orange Asia-Pacific: smart mobility for the public sector with Orange
Asia-Pacific: smart mobility for the public sector with Orange
Ā 
Apache Kafka in the Public Sector (Government, National Security, Citizen Ser...
Apache Kafka in the Public Sector (Government, National Security, Citizen Ser...Apache Kafka in the Public Sector (Government, National Security, Citizen Ser...
Apache Kafka in the Public Sector (Government, National Security, Citizen Ser...
Ā 
Smart Cities, Smart Cars, Smart Living
Smart Cities, Smart Cars, Smart LivingSmart Cities, Smart Cars, Smart Living
Smart Cities, Smart Cars, Smart Living
Ā 
382020 Originality Reporthttpsucumberlands.blackboard.docx
382020 Originality Reporthttpsucumberlands.blackboard.docx382020 Originality Reporthttpsucumberlands.blackboard.docx
382020 Originality Reporthttpsucumberlands.blackboard.docx
Ā 

More from Tristan Wiggill

Business Fleet Africa May 2023.pdf
Business Fleet Africa May 2023.pdfBusiness Fleet Africa May 2023.pdf
Business Fleet Africa May 2023.pdfTristan Wiggill
Ā 
Business Fleet Africa April 2023.pdf
Business Fleet Africa April 2023.pdfBusiness Fleet Africa April 2023.pdf
Business Fleet Africa April 2023.pdfTristan Wiggill
Ā 
Business Fleet Africa March 2023.pdf
Business Fleet Africa March 2023.pdfBusiness Fleet Africa March 2023.pdf
Business Fleet Africa March 2023.pdfTristan Wiggill
Ā 
Business Fleet Africa January 2023.pdf
Business Fleet Africa January 2023.pdfBusiness Fleet Africa January 2023.pdf
Business Fleet Africa January 2023.pdfTristan Wiggill
Ā 
Business Fleet Africa December 2022.pdf
Business Fleet Africa December 2022.pdfBusiness Fleet Africa December 2022.pdf
Business Fleet Africa December 2022.pdfTristan Wiggill
Ā 
Business Fleet Africa November 2022.pdf
Business Fleet Africa November 2022.pdfBusiness Fleet Africa November 2022.pdf
Business Fleet Africa November 2022.pdfTristan Wiggill
Ā 
Business Fleet Africa October 2022.pdf
Business Fleet Africa October 2022.pdfBusiness Fleet Africa October 2022.pdf
Business Fleet Africa October 2022.pdfTristan Wiggill
Ā 
How do we keep Gauteng moving?
How do we keep Gauteng moving?How do we keep Gauteng moving?
How do we keep Gauteng moving?Tristan Wiggill
Ā 
Gauteng Transport Authority update
Gauteng Transport Authority updateGauteng Transport Authority update
Gauteng Transport Authority updateTristan Wiggill
Ā 
Road Funding in South Africa
Road Funding in South AfricaRoad Funding in South Africa
Road Funding in South AfricaTristan Wiggill
Ā 
Self regulation and road funding perspectives from the road transport managem...
Self regulation and road funding perspectives from the road transport managem...Self regulation and road funding perspectives from the road transport managem...
Self regulation and road funding perspectives from the road transport managem...Tristan Wiggill
Ā 
Roads: So how do we pay for them?
Roads: So how do we pay for them?Roads: So how do we pay for them?
Roads: So how do we pay for them?Tristan Wiggill
Ā 
Road funding from a freight forwarding and logistics perspective
Road funding from a freight forwarding and logistics perspectiveRoad funding from a freight forwarding and logistics perspective
Road funding from a freight forwarding and logistics perspectiveTristan Wiggill
Ā 
Feedback on DRiVE: Distance-based Road user charge Voluntary Experiment
Feedback on DRiVE: Distance-based Road user charge Voluntary ExperimentFeedback on DRiVE: Distance-based Road user charge Voluntary Experiment
Feedback on DRiVE: Distance-based Road user charge Voluntary ExperimentTristan Wiggill
Ā 
E-tolls: The Impact on Development in Gauteng
E-tolls: The Impact on Development in GautengE-tolls: The Impact on Development in Gauteng
E-tolls: The Impact on Development in GautengTristan Wiggill
Ā 
Transport and the economy: Understanding the relationship...and the dangers
Transport and the economy: Understanding the relationship...and the dangersTransport and the economy: Understanding the relationship...and the dangers
Transport and the economy: Understanding the relationship...and the dangersTristan Wiggill
Ā 
Sout Africa's fuel price
Sout Africa's fuel priceSout Africa's fuel price
Sout Africa's fuel priceTristan Wiggill
Ā 
The Future of National Roads: The 2030 Roads Plan and a Sustainable Funding M...
The Future of National Roads: The 2030 Roads Plan and a Sustainable Funding M...The Future of National Roads: The 2030 Roads Plan and a Sustainable Funding M...
The Future of National Roads: The 2030 Roads Plan and a Sustainable Funding M...Tristan Wiggill
Ā 
Beneficiaries of an optimally designed transportation system
Beneficiaries of an optimally designed transportation system Beneficiaries of an optimally designed transportation system
Beneficiaries of an optimally designed transportation system Tristan Wiggill
Ā 
Road Funds and Road User Charging in SADC
Road Funds and Road User Charging in SADC Road Funds and Road User Charging in SADC
Road Funds and Road User Charging in SADC Tristan Wiggill
Ā 

More from Tristan Wiggill (20)

Business Fleet Africa May 2023.pdf
Business Fleet Africa May 2023.pdfBusiness Fleet Africa May 2023.pdf
Business Fleet Africa May 2023.pdf
Ā 
Business Fleet Africa April 2023.pdf
Business Fleet Africa April 2023.pdfBusiness Fleet Africa April 2023.pdf
Business Fleet Africa April 2023.pdf
Ā 
Business Fleet Africa March 2023.pdf
Business Fleet Africa March 2023.pdfBusiness Fleet Africa March 2023.pdf
Business Fleet Africa March 2023.pdf
Ā 
Business Fleet Africa January 2023.pdf
Business Fleet Africa January 2023.pdfBusiness Fleet Africa January 2023.pdf
Business Fleet Africa January 2023.pdf
Ā 
Business Fleet Africa December 2022.pdf
Business Fleet Africa December 2022.pdfBusiness Fleet Africa December 2022.pdf
Business Fleet Africa December 2022.pdf
Ā 
Business Fleet Africa November 2022.pdf
Business Fleet Africa November 2022.pdfBusiness Fleet Africa November 2022.pdf
Business Fleet Africa November 2022.pdf
Ā 
Business Fleet Africa October 2022.pdf
Business Fleet Africa October 2022.pdfBusiness Fleet Africa October 2022.pdf
Business Fleet Africa October 2022.pdf
Ā 
How do we keep Gauteng moving?
How do we keep Gauteng moving?How do we keep Gauteng moving?
How do we keep Gauteng moving?
Ā 
Gauteng Transport Authority update
Gauteng Transport Authority updateGauteng Transport Authority update
Gauteng Transport Authority update
Ā 
Road Funding in South Africa
Road Funding in South AfricaRoad Funding in South Africa
Road Funding in South Africa
Ā 
Self regulation and road funding perspectives from the road transport managem...
Self regulation and road funding perspectives from the road transport managem...Self regulation and road funding perspectives from the road transport managem...
Self regulation and road funding perspectives from the road transport managem...
Ā 
Roads: So how do we pay for them?
Roads: So how do we pay for them?Roads: So how do we pay for them?
Roads: So how do we pay for them?
Ā 
Road funding from a freight forwarding and logistics perspective
Road funding from a freight forwarding and logistics perspectiveRoad funding from a freight forwarding and logistics perspective
Road funding from a freight forwarding and logistics perspective
Ā 
Feedback on DRiVE: Distance-based Road user charge Voluntary Experiment
Feedback on DRiVE: Distance-based Road user charge Voluntary ExperimentFeedback on DRiVE: Distance-based Road user charge Voluntary Experiment
Feedback on DRiVE: Distance-based Road user charge Voluntary Experiment
Ā 
E-tolls: The Impact on Development in Gauteng
E-tolls: The Impact on Development in GautengE-tolls: The Impact on Development in Gauteng
E-tolls: The Impact on Development in Gauteng
Ā 
Transport and the economy: Understanding the relationship...and the dangers
Transport and the economy: Understanding the relationship...and the dangersTransport and the economy: Understanding the relationship...and the dangers
Transport and the economy: Understanding the relationship...and the dangers
Ā 
Sout Africa's fuel price
Sout Africa's fuel priceSout Africa's fuel price
Sout Africa's fuel price
Ā 
The Future of National Roads: The 2030 Roads Plan and a Sustainable Funding M...
The Future of National Roads: The 2030 Roads Plan and a Sustainable Funding M...The Future of National Roads: The 2030 Roads Plan and a Sustainable Funding M...
The Future of National Roads: The 2030 Roads Plan and a Sustainable Funding M...
Ā 
Beneficiaries of an optimally designed transportation system
Beneficiaries of an optimally designed transportation system Beneficiaries of an optimally designed transportation system
Beneficiaries of an optimally designed transportation system
Ā 
Road Funds and Road User Charging in SADC
Road Funds and Road User Charging in SADC Road Funds and Road User Charging in SADC
Road Funds and Road User Charging in SADC
Ā 

Recently uploaded

How to Get Started in Social Media for Art League City
How to Get Started in Social Media for Art League CityHow to Get Started in Social Media for Art League City
How to Get Started in Social Media for Art League CityEric T. Tung
Ā 
Marel Q1 2024 Investor Presentation from May 8, 2024
Marel Q1 2024 Investor Presentation from May 8, 2024Marel Q1 2024 Investor Presentation from May 8, 2024
Marel Q1 2024 Investor Presentation from May 8, 2024Marel
Ā 
It will be International Nurses' Day on 12 May
It will be International Nurses' Day on 12 MayIt will be International Nurses' Day on 12 May
It will be International Nurses' Day on 12 MayNZSG
Ā 
Call Girls Hebbal Just Call šŸ‘— 7737669865 šŸ‘— Top Class Call Girl Service Bangalore
Call Girls Hebbal Just Call šŸ‘— 7737669865 šŸ‘— Top Class Call Girl Service BangaloreCall Girls Hebbal Just Call šŸ‘— 7737669865 šŸ‘— Top Class Call Girl Service Bangalore
Call Girls Hebbal Just Call šŸ‘— 7737669865 šŸ‘— Top Class Call Girl Service Bangaloreamitlee9823
Ā 
Quick Doctor In Kuwait +2773`7758`557 Kuwait Doha Qatar Dubai Abu Dhabi Sharj...
Quick Doctor In Kuwait +2773`7758`557 Kuwait Doha Qatar Dubai Abu Dhabi Sharj...Quick Doctor In Kuwait +2773`7758`557 Kuwait Doha Qatar Dubai Abu Dhabi Sharj...
Quick Doctor In Kuwait +2773`7758`557 Kuwait Doha Qatar Dubai Abu Dhabi Sharj...daisycvs
Ā 
Falcon Invoice Discounting: Empowering Your Business Growth
Falcon Invoice Discounting: Empowering Your Business GrowthFalcon Invoice Discounting: Empowering Your Business Growth
Falcon Invoice Discounting: Empowering Your Business GrowthFalcon investment
Ā 
Call Girls in Delhi, Escort Service Available 24x7 in Delhi 959961-/-3876
Call Girls in Delhi, Escort Service Available 24x7 in Delhi 959961-/-3876Call Girls in Delhi, Escort Service Available 24x7 in Delhi 959961-/-3876
Call Girls in Delhi, Escort Service Available 24x7 in Delhi 959961-/-3876dlhescort
Ā 
Organizational Transformation Lead with Culture
Organizational Transformation Lead with CultureOrganizational Transformation Lead with Culture
Organizational Transformation Lead with CultureSeta Wicaksana
Ā 
The Path to Product Excellence: Avoiding Common Pitfalls and Enhancing Commun...
The Path to Product Excellence: Avoiding Common Pitfalls and Enhancing Commun...The Path to Product Excellence: Avoiding Common Pitfalls and Enhancing Commun...
The Path to Product Excellence: Avoiding Common Pitfalls and Enhancing Commun...Aggregage
Ā 
BAGALUR CALL GIRL IN 98274*61493 ā¤CALL GIRLS IN ESCORT SERVICEā¤CALL GIRL
BAGALUR CALL GIRL IN 98274*61493 ā¤CALL GIRLS IN ESCORT SERVICEā¤CALL GIRLBAGALUR CALL GIRL IN 98274*61493 ā¤CALL GIRLS IN ESCORT SERVICEā¤CALL GIRL
BAGALUR CALL GIRL IN 98274*61493 ā¤CALL GIRLS IN ESCORT SERVICEā¤CALL GIRLkapoorjyoti4444
Ā 
Malegaon Call Girls Service ā˜Ž ļø82500ā€“77686 ā˜Žļø Enjoy 24/7 EscortĀ Service
Malegaon Call Girls Service ā˜Ž ļø82500ā€“77686 ā˜Žļø Enjoy 24/7 EscortĀ ServiceMalegaon Call Girls Service ā˜Ž ļø82500ā€“77686 ā˜Žļø Enjoy 24/7 EscortĀ Service
Malegaon Call Girls Service ā˜Ž ļø82500ā€“77686 ā˜Žļø Enjoy 24/7 EscortĀ ServiceDamini Dixit
Ā 
Call Girls ZirakpuršŸ‘§ Book NowšŸ“±7837612180 šŸ“žšŸ‘‰Call Girl Service In Zirakpur No A...
Call Girls ZirakpuršŸ‘§ Book NowšŸ“±7837612180 šŸ“žšŸ‘‰Call Girl Service In Zirakpur No A...Call Girls ZirakpuršŸ‘§ Book NowšŸ“±7837612180 šŸ“žšŸ‘‰Call Girl Service In Zirakpur No A...
Call Girls ZirakpuršŸ‘§ Book NowšŸ“±7837612180 šŸ“žšŸ‘‰Call Girl Service In Zirakpur No A...Sheetaleventcompany
Ā 
Call Girls Ludhiana Just Call 98765-12871 Top Class Call Girl Service Available
Call Girls Ludhiana Just Call 98765-12871 Top Class Call Girl Service AvailableCall Girls Ludhiana Just Call 98765-12871 Top Class Call Girl Service Available
Call Girls Ludhiana Just Call 98765-12871 Top Class Call Girl Service AvailableSeo
Ā 
Chandigarh Escorts Service šŸ“ž8868886958šŸ“ž JustšŸ“² Call Nihal Chandigarh Call Girl...
Chandigarh Escorts Service šŸ“ž8868886958šŸ“ž JustšŸ“² Call Nihal Chandigarh Call Girl...Chandigarh Escorts Service šŸ“ž8868886958šŸ“ž JustšŸ“² Call Nihal Chandigarh Call Girl...
Chandigarh Escorts Service šŸ“ž8868886958šŸ“ž JustšŸ“² Call Nihal Chandigarh Call Girl...Sheetaleventcompany
Ā 
Nelamangala Call Girls: šŸ“ 7737669865 šŸ“ High Profile Model Escorts | Bangalore...
Nelamangala Call Girls: šŸ“ 7737669865 šŸ“ High Profile Model Escorts | Bangalore...Nelamangala Call Girls: šŸ“ 7737669865 šŸ“ High Profile Model Escorts | Bangalore...
Nelamangala Call Girls: šŸ“ 7737669865 šŸ“ High Profile Model Escorts | Bangalore...amitlee9823
Ā 
šŸ‘‰Chandigarh Call Girls šŸ‘‰9878799926šŸ‘‰Just CallšŸ‘‰Chandigarh Call Girl In Chandiga...
šŸ‘‰Chandigarh Call Girls šŸ‘‰9878799926šŸ‘‰Just CallšŸ‘‰Chandigarh Call Girl In Chandiga...šŸ‘‰Chandigarh Call Girls šŸ‘‰9878799926šŸ‘‰Just CallšŸ‘‰Chandigarh Call Girl In Chandiga...
šŸ‘‰Chandigarh Call Girls šŸ‘‰9878799926šŸ‘‰Just CallšŸ‘‰Chandigarh Call Girl In Chandiga...rajveerescorts2022
Ā 
Value Proposition canvas- Customer needs and pains
Value Proposition canvas- Customer needs and painsValue Proposition canvas- Customer needs and pains
Value Proposition canvas- Customer needs and painsP&CO
Ā 
Russian Call Girls In Gurgaon ā¤ļø8448577510 āŠ¹Best Escorts Service In 24/7 Delh...
Russian Call Girls In Gurgaon ā¤ļø8448577510 āŠ¹Best Escorts Service In 24/7 Delh...Russian Call Girls In Gurgaon ā¤ļø8448577510 āŠ¹Best Escorts Service In 24/7 Delh...
Russian Call Girls In Gurgaon ā¤ļø8448577510 āŠ¹Best Escorts Service In 24/7 Delh...lizamodels9
Ā 
Call Girls From Pari Chowk Greater Noida ā¤ļø8448577510 āŠ¹Best Escorts Service I...
Call Girls From Pari Chowk Greater Noida ā¤ļø8448577510 āŠ¹Best Escorts Service I...Call Girls From Pari Chowk Greater Noida ā¤ļø8448577510 āŠ¹Best Escorts Service I...
Call Girls From Pari Chowk Greater Noida ā¤ļø8448577510 āŠ¹Best Escorts Service I...lizamodels9
Ā 
Uneak White's Personal Brand Exploration Presentation
Uneak White's Personal Brand Exploration PresentationUneak White's Personal Brand Exploration Presentation
Uneak White's Personal Brand Exploration Presentationuneakwhite
Ā 

Recently uploaded (20)

How to Get Started in Social Media for Art League City
How to Get Started in Social Media for Art League CityHow to Get Started in Social Media for Art League City
How to Get Started in Social Media for Art League City
Ā 
Marel Q1 2024 Investor Presentation from May 8, 2024
Marel Q1 2024 Investor Presentation from May 8, 2024Marel Q1 2024 Investor Presentation from May 8, 2024
Marel Q1 2024 Investor Presentation from May 8, 2024
Ā 
It will be International Nurses' Day on 12 May
It will be International Nurses' Day on 12 MayIt will be International Nurses' Day on 12 May
It will be International Nurses' Day on 12 May
Ā 
Call Girls Hebbal Just Call šŸ‘— 7737669865 šŸ‘— Top Class Call Girl Service Bangalore
Call Girls Hebbal Just Call šŸ‘— 7737669865 šŸ‘— Top Class Call Girl Service BangaloreCall Girls Hebbal Just Call šŸ‘— 7737669865 šŸ‘— Top Class Call Girl Service Bangalore
Call Girls Hebbal Just Call šŸ‘— 7737669865 šŸ‘— Top Class Call Girl Service Bangalore
Ā 
Quick Doctor In Kuwait +2773`7758`557 Kuwait Doha Qatar Dubai Abu Dhabi Sharj...
Quick Doctor In Kuwait +2773`7758`557 Kuwait Doha Qatar Dubai Abu Dhabi Sharj...Quick Doctor In Kuwait +2773`7758`557 Kuwait Doha Qatar Dubai Abu Dhabi Sharj...
Quick Doctor In Kuwait +2773`7758`557 Kuwait Doha Qatar Dubai Abu Dhabi Sharj...
Ā 
Falcon Invoice Discounting: Empowering Your Business Growth
Falcon Invoice Discounting: Empowering Your Business GrowthFalcon Invoice Discounting: Empowering Your Business Growth
Falcon Invoice Discounting: Empowering Your Business Growth
Ā 
Call Girls in Delhi, Escort Service Available 24x7 in Delhi 959961-/-3876
Call Girls in Delhi, Escort Service Available 24x7 in Delhi 959961-/-3876Call Girls in Delhi, Escort Service Available 24x7 in Delhi 959961-/-3876
Call Girls in Delhi, Escort Service Available 24x7 in Delhi 959961-/-3876
Ā 
Organizational Transformation Lead with Culture
Organizational Transformation Lead with CultureOrganizational Transformation Lead with Culture
Organizational Transformation Lead with Culture
Ā 
The Path to Product Excellence: Avoiding Common Pitfalls and Enhancing Commun...
The Path to Product Excellence: Avoiding Common Pitfalls and Enhancing Commun...The Path to Product Excellence: Avoiding Common Pitfalls and Enhancing Commun...
The Path to Product Excellence: Avoiding Common Pitfalls and Enhancing Commun...
Ā 
BAGALUR CALL GIRL IN 98274*61493 ā¤CALL GIRLS IN ESCORT SERVICEā¤CALL GIRL
BAGALUR CALL GIRL IN 98274*61493 ā¤CALL GIRLS IN ESCORT SERVICEā¤CALL GIRLBAGALUR CALL GIRL IN 98274*61493 ā¤CALL GIRLS IN ESCORT SERVICEā¤CALL GIRL
BAGALUR CALL GIRL IN 98274*61493 ā¤CALL GIRLS IN ESCORT SERVICEā¤CALL GIRL
Ā 
Malegaon Call Girls Service ā˜Ž ļø82500ā€“77686 ā˜Žļø Enjoy 24/7 EscortĀ Service
Malegaon Call Girls Service ā˜Ž ļø82500ā€“77686 ā˜Žļø Enjoy 24/7 EscortĀ ServiceMalegaon Call Girls Service ā˜Ž ļø82500ā€“77686 ā˜Žļø Enjoy 24/7 EscortĀ Service
Malegaon Call Girls Service ā˜Ž ļø82500ā€“77686 ā˜Žļø Enjoy 24/7 EscortĀ Service
Ā 
Call Girls ZirakpuršŸ‘§ Book NowšŸ“±7837612180 šŸ“žšŸ‘‰Call Girl Service In Zirakpur No A...
Call Girls ZirakpuršŸ‘§ Book NowšŸ“±7837612180 šŸ“žšŸ‘‰Call Girl Service In Zirakpur No A...Call Girls ZirakpuršŸ‘§ Book NowšŸ“±7837612180 šŸ“žšŸ‘‰Call Girl Service In Zirakpur No A...
Call Girls ZirakpuršŸ‘§ Book NowšŸ“±7837612180 šŸ“žšŸ‘‰Call Girl Service In Zirakpur No A...
Ā 
Call Girls Ludhiana Just Call 98765-12871 Top Class Call Girl Service Available
Call Girls Ludhiana Just Call 98765-12871 Top Class Call Girl Service AvailableCall Girls Ludhiana Just Call 98765-12871 Top Class Call Girl Service Available
Call Girls Ludhiana Just Call 98765-12871 Top Class Call Girl Service Available
Ā 
Chandigarh Escorts Service šŸ“ž8868886958šŸ“ž JustšŸ“² Call Nihal Chandigarh Call Girl...
Chandigarh Escorts Service šŸ“ž8868886958šŸ“ž JustšŸ“² Call Nihal Chandigarh Call Girl...Chandigarh Escorts Service šŸ“ž8868886958šŸ“ž JustšŸ“² Call Nihal Chandigarh Call Girl...
Chandigarh Escorts Service šŸ“ž8868886958šŸ“ž JustšŸ“² Call Nihal Chandigarh Call Girl...
Ā 
Nelamangala Call Girls: šŸ“ 7737669865 šŸ“ High Profile Model Escorts | Bangalore...
Nelamangala Call Girls: šŸ“ 7737669865 šŸ“ High Profile Model Escorts | Bangalore...Nelamangala Call Girls: šŸ“ 7737669865 šŸ“ High Profile Model Escorts | Bangalore...
Nelamangala Call Girls: šŸ“ 7737669865 šŸ“ High Profile Model Escorts | Bangalore...
Ā 
šŸ‘‰Chandigarh Call Girls šŸ‘‰9878799926šŸ‘‰Just CallšŸ‘‰Chandigarh Call Girl In Chandiga...
šŸ‘‰Chandigarh Call Girls šŸ‘‰9878799926šŸ‘‰Just CallšŸ‘‰Chandigarh Call Girl In Chandiga...šŸ‘‰Chandigarh Call Girls šŸ‘‰9878799926šŸ‘‰Just CallšŸ‘‰Chandigarh Call Girl In Chandiga...
šŸ‘‰Chandigarh Call Girls šŸ‘‰9878799926šŸ‘‰Just CallšŸ‘‰Chandigarh Call Girl In Chandiga...
Ā 
Value Proposition canvas- Customer needs and pains
Value Proposition canvas- Customer needs and painsValue Proposition canvas- Customer needs and pains
Value Proposition canvas- Customer needs and pains
Ā 
Russian Call Girls In Gurgaon ā¤ļø8448577510 āŠ¹Best Escorts Service In 24/7 Delh...
Russian Call Girls In Gurgaon ā¤ļø8448577510 āŠ¹Best Escorts Service In 24/7 Delh...Russian Call Girls In Gurgaon ā¤ļø8448577510 āŠ¹Best Escorts Service In 24/7 Delh...
Russian Call Girls In Gurgaon ā¤ļø8448577510 āŠ¹Best Escorts Service In 24/7 Delh...
Ā 
Call Girls From Pari Chowk Greater Noida ā¤ļø8448577510 āŠ¹Best Escorts Service I...
Call Girls From Pari Chowk Greater Noida ā¤ļø8448577510 āŠ¹Best Escorts Service I...Call Girls From Pari Chowk Greater Noida ā¤ļø8448577510 āŠ¹Best Escorts Service I...
Call Girls From Pari Chowk Greater Noida ā¤ļø8448577510 āŠ¹Best Escorts Service I...
Ā 
Uneak White's Personal Brand Exploration Presentation
Uneak White's Personal Brand Exploration PresentationUneak White's Personal Brand Exploration Presentation
Uneak White's Personal Brand Exploration Presentation
Ā 

Big data and public transport

  • 1. 1 Melbourne Sydney Brisbane Wellington Johannesburg Cape Town Windhoek www.sahainternational.com ISO Big Data in Transport Potsdam Workshop Neil Frost and Warwick Frost May 2016
  • 2. What is Big Data Big Data conceptualizes how we capture and process very large complex sets of data. Big Data has its roots in time series and predictive analytics. Traditional data warehousing techniques are no longer adequate. Where Big Data differs is in the sophistication of analytics. The big difference is that correlations and patterns can be derived from information which was previously considered unconnected. The result is a far greater level of precision in terms of predictive capability. Reference: PTV Group; White paper; NEW DATA SOURCES FOR TRANSPORT MODELLING, DECEMBER 2014; pg.04
  • 3. What is Big Data Big data is an evolving term that describes any voluminous amount of structured, semi-structured and unstructured data that has the potential to be mined for information. Processing Methodology Data Sources Web & Social Media Machine generated Human generated Internal Data Sources Transaction Data Via Data Providers Via Data Originator Data Consumers Human Business Process Other Enterprise Applications Other Data Repositories Text Videos Documents Audio Images Structured Content Format Unstructured Semi-structured All formats can be type structured, unstructured or semi- structured Data Type Meta Data Master Data Historical Transactional Continuous feeds Real time feeds Time series Data Frequency On demand feeds Predictive Analysis Analytical Query & Reporting Miscellaneous Social Network Analysis Location base Analysis Features recognition Text Analytics Statistical Algorithms Transcription Speech Analytics Translation 3D Reconstruction Real Time Near Real Time Analysis Type The feeds may be available on monthly, weekly, daily, hourly, per minute or per second basis Periodic Batch Reference: IBM, Big data classification, http://www.ibm.com/developerworks/library/bd-archpatterns1/
  • 4. Internet of Transport The IoTransport can assist in integration of communications, control, and information processing across various transportation systems and modes. Application of the IoTransport extends to all aspects of transportation systems, i.e. the vehicle, the infrastructure, and the driver or user. Dynamic interaction between these components of a transport system enables inter and intra vehicular communication, smart traffic control, smart parking, electronic toll collection systems, logistic and fleet management, vehicle control, and safety and road assistance. Reference: Wikipedia
  • 5. How does this relate to ITS Ā© iSAHA
  • 6. Storm water Extent of Data requirements Ā© iSAHA
  • 7. Real Time Traffic Flow ETA Predictions Reference: Google Maps; https://maps.google.com/
  • 8. INRIX Traffic Information Reference: INRIX; http://www.inrix.com/products/
  • 9. INRIX Connected Driver Reference: INRIX; http://www.inrix.com/products/
  • 10. NAVIGATION SERVICE BUS OPERATOR CITY POLICE STATION RAILWAY OPERATOR ID MANAGEMENT SYSTEM TOUCH SMARTCARD WHEN BOARDING BUS CURRENT BUS LOCATION EV BUS STATE OF CHARGE BUS OPERATION MANAGEMENT SYSTEM EV BUS POWER MANAGEMENT SYSTEMINTEGRATED GUIDANCE ON BEST ROUTE Station 12 The roads will likely be crowded today, so he decides to take a bus instead Arrives at station more quickly than if driven by car The train comes just as he arrives at the station The integrated fare system means changing from bus to train is economical Transportation user experience layer Transportation services layer NAVIGATION SERVICE BUS OPERATOR CITY POLICE STATION RAILWAY OPERATOR MULTI-MODAL NAVIGATION Advise on best transportation company route based on todayā€™s forecast BUS PRIORITY SIGNAL SYSTEM Prioritize green lights for bus to ensure it arrives at the station on time INTEGRATED TRANSFER BETWEEN BUS & TRAIN Bus operation management ensures bus arrives on time to catch desired train INTEGRATED FARE COLLECTION SERVICE As a single fare gets him all the way to his destination, transfers between transportation companies are economical Information collection layer ITS MANAGEMENT SYSTEM ITS MANAGEMENT SYSTEM RAILWAY OPERATION MANAGEMENT SYSTEM TRAIN ARRIVAL TIME TABLE URBAN MANAGEMENT INFRASTRUCTURE Information management and control layer Transportation company coordination layer Integrated analysis and simulation flow of people Smartcard integrated management Integrated analysis and simulations of electric power usage PERSONAL DETAILS DESTINATION CURRENT LOCATION Title
  • 11. Typical Enterprise Architecture Enterprise Discretionary & Non-Discretionary Standards/ Requirements Feedback Business Architecture Information Architecture Information Systems Architecture Data Architecture Delivery Systems Architecture Hardware, Software, Communications Drives Prescribes Indentifies Supported By External Discretionary & Non-discretionary Standards/ Requirements Reference: Wikipedia
  • 12. Future State of Transport Massively Networked Integrated Public and Private Collaboration Dynamically Priced User Centred Ā© iSAHA
  • 13. Concept Analytical Enterprise Design Enterprise Service Bus (ESB) Data Warehouse User Interface Portal Browser/ Web Page Print Thick Clients Email Thin Clients Mobile App M2M Non-user Interface IntegratedManagementSystem DATA WAREHOUSEBusiness Intelligence / Knowledge Reporting Data Analytics Data Mining Reporting Scorecards Predictive Analytics In-memory Analytics ? ? Data Management Master Data Management Metadata Management Data Models Data Mapping + Extract, Transform & Load Integration Hub Import/ Export Scripts Message Queues File Transfer (FTP & SFTP) Integration Internal/External Data Sources Ā© iSAHA
  • 14. Future High Level Abstract Architecture GIS Traveller Phone App Vehicle Telemetrics Network Status Smart Cards Accident Data Journey Planner CRM Command & Control Engineering Systems Real Estate Mgt Licensing Performance Mgt Revenue Mgt Enforcement Real-time Fare Mgt Traffic Mgt Systems Employee Apps Real-time Messaging ? Publish Data Back Office Systems Event Processing Data Traveller Profile Integrated Multi-modal What if? Planning & Analysis Key elements Integrated Event Processing Big Data Partnerships Reference: Russ Heasman: HCL: March 2016
  • 15. News Big Data & Transport Source: http://www.information-age.com/it-management/strategy- and-innovation/123459878/how-tfl-will-use-data-about-you-keep- london-moving-its-population-soars Source: http://acceleratecapetown.co.za/digital-cape-town/ Source: http://www.computing.co.uk/ctg/news/2452328/how-big-data-is-driving- more-intelligent-transport Source: http://www.iol.co.za/scitech/technology/software/app-a-game-changer- for-commuters-1768183 Source: http://www.africanbusinessreview.co.za/technology/2192/Big-Data-can- enable-world-class-transportation-in-South-Africa
  • 16. Big Data Case Study Rio de Janeiro Municipal Operations Centre After a series of floods and mudslides claimed the lives of 72 people in April 2010, city officials recognised the need to overhaul city operations more significantly in preparation for the 2014 World Cup and Olympics in 2016. (United States Environmental Protection Agency, 2014) In collaboration with IBM, the City of Rio de Janeiro launched the Rio de Janeiro Operations Centre (ROC) in 2010 with the initial aim of preventing deaths from annual floods. This centre was later expanded to include all emergency response situations in Rio de Janeiro. In traditional applications of top-down sensor networks, data from each department operates in isolation. However, ROCā€™s approach to information exchange is based on the understanding that overall communication channels are essential to getting the right data to the right place and can make all the difference in an effective response to an emergency situation. The information-sharing platform they created enables them to tap into various departments and agencies, and look for patterns across diverse data sets to better coordinate resources during a crisis. The centrally located facility surveys 560 cameras around the city and another 350 from private sector utility concessionaires and public sector authorities (Centro de OperaƧƵes da Prefeitura do Rio de Janeiro, 2014). The incoming feeds are aggregated on a single server and displayed across a 80-square meter (861 square feet) wall of tiled screens ā€“ a smart map comprised of 120 layers of information updated in real-time such as GPS tracking of buses, city officials and local traffic. With over 400 employees working in shifts 24 hours per day, seven days a week ROC performs a variety of functions aimed at improving the efficiency, safety, and effectiveness of relevant government agencies in the city. While much of the attention paid to the centre focuses on emergency monitoring and response, especially related to weather, a significant portion of the work undertaken relates to ensuring the smooth functioning of day-to-day operations like transport. Source: Photo: http://www.museumofthecity.org/project/rio-de-janeiro-and-ibms-smarter-cities-project/ | Case Study: International Transport Forum ā€“ Big Data and Transport Side by side feeds for weather and traffic feeds help city officials to respond effectively to oncoming storms and traffic issues In a statement on the use of sensor-based systems to correlate situational events with historical data at their Intelligent Operations Centre for Smarter Cities, IBMā€™s Director of Public Safety explained ā€œThe aim is to help cities of all sizes use analytics more effectively to make intelligent decisions based on better quality and timelier information. City managers can access information that crosses boundaries, so theyā€™re not focusing on a problem within a single domain. They can start to think about how one agencyā€™s response to an event affects other agenciesā€.
  • 17. Conclusion The world has become a massive interconnection of smart device that generate data continuously and this is extremely relevant to Transport In terms of ITS this is a limitless opportunity that will change the way we view, plan and manage transport. Traffic prediction has a major benefit for determining demand and supply and simulating alternate options to resolve issues. Congestion management options and impacts can be determined Disaster response planning can be simulated and planned in advance. Numerous other opportunities to many to mention are becoming possible.
  • 18. 18 Melbourne Sydney Brisbane Wellington Johannesburg Cape Town Windhoek www.sahainternational.com Thank you