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Understanding Energy
Industry– Oil and Gas
      By Suvradeep Rudra
PPDM - Public Petroleum Data Model Association
                  (“PPDM™”)




    PPDM Association (PPDM) is a not-for-profit organization
   that develops data model defines the structure and
   relationships of data
   It maintains standards for the energy industry. With over 100
   member companies comprised of petroleum businesses, data
   vendors, software vendors and service firms
   PPDM Association provides a roundtable process to bring
   experts together to build useful and business-driven standards
PPDM - Public Petroleum Data Model Association
                  (“PPDM™”)



   Current version 3.8
   Based on entry level SQL 92 standards
   PPDM can be implemented in any fully using SQL*92
   database (Oracle, SQL*Server, POSTGRE and others).
   PPDM cover 53 subject areas
   1238 tables
PPDM light weight model




PPDM Lite 1.0 based on entry level SQL 92
requirements.
This model contains 79 tables that summarize important
Exploration and Production information for use in a GIS
PPDM Lite 1.1 includes a greatly enhanced Well Table
PPDM Subject Areas – Bottom up
          Approach
PPDM - Public Petroleum Data Model Association
                  (“PPDM™”)



 PPDM is focused on the needs of the upstream oil and
 gas community. The subjects included in the current
 production model version are:
     Wells
     Production
     Seismic
     Land mineral rights
     Data management
     Lithology
     Support
PPDM Architecture Rules


Rules and guidelines that govern the development of the
PPDM data model
Establish procedures for naming tables, columns and
constraints
Guidelines for columns format, reference tables subject
areas management
Impact - Changes to PPDM


Adherence to open standards
Impact on users of various data base platforms (Oracle, Sybase, etc.)
Integration or modification required to existing model structures
Effort needed for development or conversion of software by members
Effort required for implementation or conversion of data models by
members
Effect on performance, usability and understand-ability of the model
Cost to implement recommendation in the model
Data model Artifacts - Structure


 The structure of a table names is: SUBJECT AREA +
 MODIFIER1(sub-area) + MODIFIER2(grouping)...
 Example:
   WELL
   WELL_PRESSURE
   WELL_PRESSURE_AOF
   WELL_PRESSURE_AOF_4PT
Data model Artifacts - Structure
               Rules


Maximum of 24 characters is used for PPDM table names.
Table names are singular and in present tense.

Intersection / associate tables will be named according to business
usage and by borrowing from the names of the intersecting tables.
Example: WELL_TEST

Cross-reference tables created from a single parent table are named by
adding an XREF qualifier to the name of the table.
Example: BA_XREF
Internal sites / External site


Internal Sites
  Wells and related assets, areas/lands, pools/basins, fields,
  stratigraphic units,
  Facilites, production entités, Eco-zones and
  environnements
  Production facilites (pipelines, batteries, compressor
  stations, gas plants, meters, separators, and more),
  Support facilities (rigs, roads, transmission or radio
  towers, airstrips, an more), logistic sites
Internal sites / External site


External sites
  Include partners’ locations
  Facilities
  Suppliers’ locations and facilities, etc.
PPDM lite - Tables


Wells - Well name and desc .

Applications and Area – identifier for Application/Area

Business Associate - Person ,Company, Agency etc

Contacts – contract
PPDM lite - Tables


Land – all rights for the land and land Sale details

Licenses – all approval granted

Production – production entity

Projects – Project Details
PPDM lite - Tables

Reserves – Confidence /producing status of res volume

Fields and pools – Details of a field ,country /state

Financials – All financial components od the business

Entitlement s – Seismic Lease data entitlement

Facilities – Storage, Company, Person
Advantages to the Energy
                Community


Exploration geophysicists and geologists get Quality exploration data
Drilling engineers also will have timely access to relevant drilling data, and
therefore decisions are made with more accurate data
Production engineers can use a Single Source of Truth for production and
reserves data and oilfield KPIs
Oilfield Operation are able to share well, land, maintenance and production
information
Finance has single version of truth as in oilfield and ERP records, revenue
recognition, reserves and less credit collection risk.
Bibliography/References


PPDM Manages Oil & Gas Data Better, Faster By Yogi Schulz, Dave Fisher and Trudy
Curtis
Oracle - http://www.oracle.com/us/products/applications/master-data-management/mdm-
for-digital-oilfield-304647.pdf
http://en.wikipedia.org/wiki/Professional_Petroleum_Data_Management_Association

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Overview ppdm data_architecture_in_oil and gas_ industry

  • 1. Understanding Energy Industry– Oil and Gas By Suvradeep Rudra
  • 2. PPDM - Public Petroleum Data Model Association (“PPDM™”) PPDM Association (PPDM) is a not-for-profit organization that develops data model defines the structure and relationships of data It maintains standards for the energy industry. With over 100 member companies comprised of petroleum businesses, data vendors, software vendors and service firms PPDM Association provides a roundtable process to bring experts together to build useful and business-driven standards
  • 3. PPDM - Public Petroleum Data Model Association (“PPDM™”) Current version 3.8 Based on entry level SQL 92 standards PPDM can be implemented in any fully using SQL*92 database (Oracle, SQL*Server, POSTGRE and others). PPDM cover 53 subject areas 1238 tables
  • 4. PPDM light weight model PPDM Lite 1.0 based on entry level SQL 92 requirements. This model contains 79 tables that summarize important Exploration and Production information for use in a GIS PPDM Lite 1.1 includes a greatly enhanced Well Table
  • 5. PPDM Subject Areas – Bottom up Approach
  • 6. PPDM - Public Petroleum Data Model Association (“PPDM™”) PPDM is focused on the needs of the upstream oil and gas community. The subjects included in the current production model version are: Wells Production Seismic Land mineral rights Data management Lithology Support
  • 7. PPDM Architecture Rules Rules and guidelines that govern the development of the PPDM data model Establish procedures for naming tables, columns and constraints Guidelines for columns format, reference tables subject areas management
  • 8. Impact - Changes to PPDM Adherence to open standards Impact on users of various data base platforms (Oracle, Sybase, etc.) Integration or modification required to existing model structures Effort needed for development or conversion of software by members Effort required for implementation or conversion of data models by members Effect on performance, usability and understand-ability of the model Cost to implement recommendation in the model
  • 9. Data model Artifacts - Structure The structure of a table names is: SUBJECT AREA + MODIFIER1(sub-area) + MODIFIER2(grouping)... Example: WELL WELL_PRESSURE WELL_PRESSURE_AOF WELL_PRESSURE_AOF_4PT
  • 10. Data model Artifacts - Structure Rules Maximum of 24 characters is used for PPDM table names. Table names are singular and in present tense. Intersection / associate tables will be named according to business usage and by borrowing from the names of the intersecting tables. Example: WELL_TEST Cross-reference tables created from a single parent table are named by adding an XREF qualifier to the name of the table. Example: BA_XREF
  • 11. Internal sites / External site Internal Sites Wells and related assets, areas/lands, pools/basins, fields, stratigraphic units, Facilites, production entités, Eco-zones and environnements Production facilites (pipelines, batteries, compressor stations, gas plants, meters, separators, and more), Support facilities (rigs, roads, transmission or radio towers, airstrips, an more), logistic sites
  • 12. Internal sites / External site External sites Include partners’ locations Facilities Suppliers’ locations and facilities, etc.
  • 13. PPDM lite - Tables Wells - Well name and desc . Applications and Area – identifier for Application/Area Business Associate - Person ,Company, Agency etc Contacts – contract
  • 14. PPDM lite - Tables Land – all rights for the land and land Sale details Licenses – all approval granted Production – production entity Projects – Project Details
  • 15. PPDM lite - Tables Reserves – Confidence /producing status of res volume Fields and pools – Details of a field ,country /state Financials – All financial components od the business Entitlement s – Seismic Lease data entitlement Facilities – Storage, Company, Person
  • 16. Advantages to the Energy Community Exploration geophysicists and geologists get Quality exploration data Drilling engineers also will have timely access to relevant drilling data, and therefore decisions are made with more accurate data Production engineers can use a Single Source of Truth for production and reserves data and oilfield KPIs Oilfield Operation are able to share well, land, maintenance and production information Finance has single version of truth as in oilfield and ERP records, revenue recognition, reserves and less credit collection risk.
  • 17. Bibliography/References PPDM Manages Oil & Gas Data Better, Faster By Yogi Schulz, Dave Fisher and Trudy Curtis Oracle - http://www.oracle.com/us/products/applications/master-data-management/mdm- for-digital-oilfield-304647.pdf http://en.wikipedia.org/wiki/Professional_Petroleum_Data_Management_Association