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Machine-type
detection
Observed KPI
values
Expected
KPI values
M-QoE prediction
Gaps
(M-QoE quantification)
Induced subscriber/vertical
KPI gaps
Device traffic
Vertical KPI
Subscriber KPI
Application-type
inference
Machine learning
ERICSSON
TECHNOLOGY
C H A R T I N G T H E F U T U R E O F I N N O V A T I O N I # 0 8 ∙ 2 0 2 0
MACHINE QOE
IN THE INTERNET
OF THINGS
New capabilities in 5G make it ideal to provide cost-effective solutions for
mission-critical Internet of Things systems that depend on ultra-reliability
and low latency. A necessary component when creating these solutions
is an awareness of the QoE that the network offers the IoT system.
CONSTANT WETTE
TCHOUATI,
STEVEN ROCHEFORT,
GEORGE SARMONIKAS
The Internet of Things (IOT) is a worldwide
network of physical objects – buildings, cars,
wearables, industrial machines and so on –
that are equipped with connectivity devices
to build a communication network where
connected objects can exchange data with
other objects.
■Almostanythingcanbeconnectedtoanythingin
theIOT,creatingacomplexnetworkofconnected
machines,fromsimplewirelesstagstosensorsor
actuatorswithcapabilitiestosense,communicate,
processdataorcontroltheirenvironment.
ThepotentialtoapplyIOTtechnologyisendless,
stretchingacrossallindustryverticals,resulting
inawidevarietyofdevicesandcommunications
requirementsontheunderlyingnetwork.
Large-scaledeploymentofcellularIOTdevices
isexpectedintheyearsaheadwiththewidespread
introductionof5Gtechnology.
Forcommunicationsserviceproviders(CSPs),
atypicalIOTsubscriberisanenterpriseoraservice
providerfromanyverticalthatwantstoenable
connectivityinmanydevicesspreadinoneregion
orworldwide.Giventhespecificityandvariability
ofIOTrequirementspervertical,CSPsneedanew
approachintheassessmentofIOTsubscribers’QOE.
Tomeetthisneed,Ericssonhasdevelopedageneric
MachineQOE(M-QOE)frameworkforaccurate
predictionofIOTsubscribers’QOEandtesteda
vertical-specificversionofitinasmart-gridscenario.
CreatingaframeworkforMachineQOE
IOTnetworkssupportmultipletechnologies,
standards,devicetypesandapplicationtypes
withvariousperformancerequirementsbetween
verticalsandbetweenapplicationsofthesame
vertical.ApreliminarysteptodesignanM-QOE
modelforthiscomplexenvironmentistocreate
classesofIOTapplicationsofthesamevertical
MonitoringIoT
applicationperformance
WITH MACHINE QOE
✱ MACHINE QOE IN THE IOT
2 ERICSSON TECHNOLOGY REVIEW ✱ AUGUST 11, 2020
orsimilarperformancerequirements.Themodel
featurescanthenbeoptimizedforeachCSP
accordingtothespecificrequirementsoftheir
networkenvironment.
ClassificationofIOTapplications
ThereareseveralwaystoclassifyIOTapplications.
Oneapproachistoclassifythemaccordingto
businessverticalssuchashealthcare,agriculture,
automotive,transportation,surveillance,smart
home,smartcity,smartgridandsmartmetering.
Eachverticalcomprisesapplicationswithvarious
degreesofperformancerequirementsranging
fromverylowtohighdataspeed,frombest
efforttoultra-reliable,andfromnolatency
toultra-lowlatency.
Fromanetworkperspective,applicationsare
oftenclassifiedintothreecategoriesbasedontheir
networkperformancerequirements:massiveIOT,
mission-criticalcontrolandenhancedmobile
broadband(eMBB)[1].MassiveIOTrequirements
includedeepcoverage,ultra-lowdeviceenergy
consumption,ultra-lowcomplexityandultra-high
density.Mission-criticalcontrolrequirements
includestrongsecurity,ultra-highreliability,
ultra-lowlatencyandextremeusermobility.
TheeMBBrequirementsincludeextreme
capacity,extremedataratesanddeepawareness
(fordiscoveryandoptimization).
The3GPPspecificationsdefinethreemain
categoriesofapplications,twoofwhichare
dedicatedtoIOT,namelyultra-reliableand
low-latencycommunications(URLLC)and
massiveMachine-TypeCommunications(mMTC).
URLLCprovidestheultra-reliabilityorultra-low
latencyrequiredfornumeroususescasesin
smartgrid,intelligenttransportationsystems
andsmartmanufacturing,whilemMTCenables
connectivitytolotsoflow-powerandlow-cost
devicesforbest-effortapplicationsandlong-range
coverageinsmartcitiesorsmartlogistics.
AtEricsson,wehavedefinedfourcategories
ofIOTapplications:MassiveIOT,CriticalIOT,
BroadbandIOTandIndustrialAutomationIOT.
Thefirsttwocorrespondtothe3GPPmMTC
andURLLCcategoriesrespectively.
BroadbandIOTprovidesthehigh-datarates
andlargedatavolumerequiredforunmanned
aerialvehicles/dronesandaugmentedreality/
virtualrealityapplications.IndustrialIOT
providesthepreciseindoorpositioningand
time-sensitivenetworkingforreal-time
applicationsthatrequiredeterministic
communication.
TheM-QOEframeworkthatwehavedesigned
generalizesonthefourIOTcategoriesbyinferring
fromspecificcases.Forthispurpose,wefirst
investigatedtheimportantcharacteristicsofIOT
applicationsinthreebusinessverticals:utilities,
automotiveandsmartcities[2].
KPIsformachines
OurframeworktoassesstheQOEofIOTsubscribers
comprisesalistofcommonIOTKPIsasshownin
Table1.TheseKPIsarecalculatedonaperdevice,
persubscriberandperverticalbasis.Thethreshold
valuesarebasedontheapplicationtypeandthe
IOTverticalthatthedevicebelongsto.
Terms and abbreviations
AI – Artificial Intelligence | CSP – Communications Service Provider | E-KPIs – Expected Value KPIs |
eMBB – Enhanced Mobile Broadband | IOT – Internet of Things | KPI – Key Performance Indicator |
M-QOE – Machine QOE | ML – Machine Learning | mMTC – Massive Machine-Type Communications |
O-KPIs – Observed KPIs | PDC – Phasor Data Concentrator | PMU – Phasor Measurement Unit |
URLLC – Ultra-Reliable and Low-Latency Communications | WAMS – Wide Area Measurement System
MACHINE QOE IN THE IOT ✱
AUGUST 11, 2020 ✱ ERICSSON TECHNOLOGY REVIEW 3
KPI Definition
latency (millisecond) thetimeittakestotransferagivenpieceofinformationfromthe
momentitistransmittedbythesourcetothemomentitissuccessfully
receivedatthedestination
packet loss (ratio) thepercentageofframesthatshouldhavebeenforwarded
byanetworkbutwerenot
bit error ratio thenumberofbiterrorsdividedbythetotalnumberoftransferredbits
duringastudiedtimeinterval
energy efficiency (joule/byte) theenergyconsumedfortheend-to-endtransportofabyte
security levelofimportanceforattackprevention
data (messages) rate,
downlink/uplink (bit/s)
atime-variablefunctionthatmightbeimportanttodefinesome
parameters(suchaspeak,burst,average,minimum,maximum)
inordertobetterdescribethedatarate(messages)
jitter (ms) theshort-termvariationsofadigitalsignal’ssignificantinstantsfrom
theiridealpositionsintime
packet delay variation (ms) variationinlatencyasmeasuredinthevariabilityovertimeofthe
packetlatencyacrossanetwork(expressedasanaverageofthe
deviationfromthenetworkmeanlatency)
reliability percentageofsentnetworklayerpacketssuccessfullydeliveredtoa
givennodewithinthetimeconstraintrequiredbythetargetedservice,
dividedbythetotalnumberofsentnetworklayerpackets
availability thepercentageofavailabletime(withrespecttototaltime)inageneric
observationperiodoftheconnectionacrossthetransportnetwork
mobility (km/h) fixed(nomobility:office,home)ormaximumspeedinmovement
(pedestrianorusingameansoftransportationsuchasatrain,
roadvehicle,airplaneordrone)
traffic density (Mbit/s/sq km) trafficinaspecificarea
connection density (devices/sq km) numberofdevicesinaspecificarea
coverage (sq km) areaofapplicationinterest
battery lifetime (days, years) timeofbatteryduration
data size (bytes) sizeoftheatomicpacketorframe(average,maximum)
location accuracy themaximumpositioningerrortoleratedbytheapplication
(canbemeasuredoutdoorandindoorin5G)
cost overallcostincludingconnection,deviceandcloudservices
Table 1 List of common IoT KPIs
✱ MACHINE QOE IN THE IOT
4 ERICSSON TECHNOLOGY REVIEW ✱ AUGUST 11, 2020
FrameworkarchitectureforMachineQOE
ThesystemarchitecturefortheM-QOEframework
hasthesamecommonbaseasEricsson’soperational
supportsystemforsubscriberserviceassurance.
Itisthefoundationtoprovidenotonlyconsistent
IOTserviceassurancebutalsoanenhanced
experiencefortheusersoftheconnectedmachines
(IOTdevices)acrossseveraltouchpointsalong
theusecasejourney.
Figure1showsthehigh-level,end-to-end
architectureforourM-QOEframework.Machines
ofdifferentkindsarewirelesslyconnectedover5G
(orothercellulartechnologies).Theyellowdots
indicatethepointswheretheassurancemetrics
relatedtoM-QOEareusuallymeasured:
	❭ the IOT device
	❭ the RAN
	❭ the edge network
	❭ the core network/services network
	❭ vertical slices and service layers (not shown).
Themetricsaretheningestedandprocessedat
differentpointsofthenetworksubjecttothe
processingdelayrequirementsofeachusecase.
TherecanbeacombinationofRAN,edgeand
centralizedprocessingofthereceivedmetrics.
Streamprocessingattheedgeisenabledwhen
lowlatencyandreal-timeprocessingarerequired,
whereasprocessingtakesplaceatthecentraldata
centerincaseswherethereisnolow-latency
requirement.Agreatvarietyofinterfacesallowfor
rawdatatobepreprocessedpriortothegeneration
ofanyinsights.Processeddataisstoredina
distributeddatabasetomakeitavailablefor
furtheranalysis.
Arulesengineandmachinelearning(ML)
modelsareusedtoprovideM-QOEscoresalong
withotherinsightssuchasanomalies,patternsof
use,mobilitypatternsandotheruse-case-specific
insights.Thecognitivereasoningsystem,drivenby
businessintentssuchastheproactiveservicelevel
assuranceofsmart-gridinfrastructure,canusethe
insightsforautonomicdecision-making.Itcan
continuouslymaintainautonomouslythedesired
servicelevelspecificationbyrecommendingactions
totheservice/operationsengineersand/or
triggeringclosedloopactionswithminimal
humanintervention.
Figure 1 M-QOE framework architecture
IoT
KPI measurement point
5G
5G
5G
Radio Edge/deep edge
Dataingestion
KPIgeneration
Data
repository
Knowledge
base & policies
IoT operations center
Batch
processing
Stream
processing
Cognitive
reasoning
Sessionprocessing
Rulesengine
AI&ML
Core network/
services network
M-QoE architecture
Decision-making layer
Dashboards
Decisions & actions
Devices KPI measurement points/analytics Rules/scores/insights Decisions/actions
MACHINE QOE IN THE IOT ✱
AUGUST 11, 2020 ✱ ERICSSON TECHNOLOGY REVIEW 5
Allgeneratedinsights,recommendationsand
actionsareexposedthroughdashboardstovarious
businessandoperationallevelmanagementsystems
includingIOTserviceoperations,andusuallyused
forplanning,managementanddecision-making
purposes[3].
MachineQOEmodels
ToimprovetheperformanceofourM-QOEframework,
weaddedsomerule-basedandMLmodelstodetect
insightsoranomaliesinKPImeasurementsthat
operatorscouldusetoimproveIOTsubscribers’
networkexperience,asshowninFigure2.
OurM-QOEframeworkincludesfourmodels:
	❭ machine-type detection
	❭ application-type inference
	❭ M-QOE quantification
	❭ M-QOE prediction.
CSPscanusethemachinedetectionmodelinour
M-QOEframeworktodetectifadeviceaccessing
theirnetworkisanIOTdeviceoramobilephoneto
bettermanagetheirQOE.Thisishelpfulbecause,
unlikemobilephones,thereisnoglobaldatabase
ofIOTdevices,andtheIOTlandscapeishighly
fragmentedwithmanydevicemodelsand
serviceproviders.
OurM-QOEframeworkalsoincludesan
MLmodelforIOTsegmentation,whichwas
trainedwithsamplesoftrafficdataofknown
IOTapplications.Thismodelcanbeusedin
productiontodetecttrafficpatternsandpredict
thetypeofIOTapplicationandvertical.Thisis
valuable,astheIOTecosystemisfueledbyamultitude
ofsmallandmediumverticalserviceproviders
whosetrafficpatternshaveyettobediscovered.
TheM-QOEquantificationinourframework
isdonebycomputingthegapbetweentheobserved
KPIs(O-KPIs)andtheirexpectedvalues(E-KPIs)
definedbytheServiceLevelAgreement.Itshould
benotedthatatypicalIOTsubscriberownsmultiple
devices,andtheiroverallsatisfactionwithaservice
isafunctionofmultiplefeaturesthataremonitored
bythedifferentO-KPIs.Tocomputetheoverall
M-QOEoftheIOTsubscriber,thefirststepisto
aggregatetheO-KPImeasurementsofalltheir
devicesandderiveafeature-specificM-QOE_i
forfeaturei.Thesecondstepistoaddupthe
feature-specificM-QOE_iweightedbytheir
importancefactortoobtaintheoverallM-QOE.
Figure 2 The architecture of ML models in M-QOE
Machine-type
detection
Observed KPI
values
Expected
KPI values
M-QoE prediction
Gaps
(M-QoE quantification)
Induced subscriber/vertical
KPI gaps
Device traffic
Vertical KPI
Subscriber KPI
Application-type
inference
Machine learning
✱ MACHINE QOE IN THE IOT
6 ERICSSON TECHNOLOGY REVIEW ✱ AUGUST 11, 2020
ThecomputationofanIOTsubscriber’sO-KPI
isdonebyaggregatingthemeasurementsoftheir
devicesplusmeasurementsattheverticalnodeover
differentdimensions:temporal,spatial,devicesand
services.Ouraggregationprocedureconsistsof
computingthefollowingstatistics:average,variance,
skewness,kurtosis,percentile(5,25,50,75and95),
minimum,maximumandrange.TheM-QOE_i
scoreisderivedfromthedatasetofthedifference
(O-KPI_i-E-KPI_i)betweenthetwomeasurements
andusinganMLalgorithmonascaleof1to5
labelledas(1)bad,(2)poor,(3)fair,(4)goodor
(5)excellent.
TheoverallM-QOEvalueisM-QOE=Σ[alpha_i*
M-QOE_i]wherealpha_irepresentstheimportance
leveloffeaturei.Mobileoperatorscanoptimizethe
performanceofthisM-QOEmodelbyselectinga
subsetofKPIsthatarerelevanttotheirnetwork
environment.
ThepurposeoftheM-QOEpredictionmodelisto
overcomethechallengeofCSPsnotbeingableto
probetheIOTdevicesorthevertical’snetwork
infrastructuretoaccessmeasurementsofsubscriber
KPIsandverticalKPIs,astheseareexternal
environments.Thesemeasurementsareusually
obtainedfromtheMOS(meanopinionscore)test,
butthisisdoneonlyonce,limitingthedynamic
trackingofusersatisfaction.Toaddressthese
limitations,wetrainedanMLalgorithmtoclassify
andpredicttheunknownE-KPImeasurements
fromtheknownO-KPIfactorsrecords.TheM-QOE
predictionmodelusesaninductivesupervised
learningapproach.
Casestudy:MachineQOEinnext-generation
powergrids
Electricpowergridsareoneoftheverticalsthatwill
benefitmostfromM-QOEinthenearterm.The
businessmodelinthisverticalisundergoinga
transformationfrommegagridsoperatedbyone
largecompanytosegmentedgridsandmicrogrids,
givingconsumersthepossibilitytochoosebetween
severalofferingsfromdifferentsuppliers.Inthis
competitivemarket,consumerQOEbecomesthe
maindifferentiator.
Atthesametime,electricpowergridsand
distributionsystemsarealsounderstrainduetothe
growingintroductionofnon-centralizedrenewable
energyresources,electricstoragesystemsand
increasedelectricaldemandfromnewsourcessuch
aselectricvehicles.Theevolvingneedsofpower
gridsaredrivingdistributionsystemstobemore
dynamic,withsupportforbidirectionalpowerflows
comparedwiththetraditionalcentrallymanaged
systems[4].
Allofthesefactorsintroducenewchallenges
intheoperation,planning,protectionandcontrol
offuturepowergrids.Thegrowingneedfornew
solutionsisbeingmetbytheintroductionofsmart
gridsenabledbyadvancedcommunications
networksincludingsmartdevices,wireless
connectivity,automationandreal-timecontrol,
edgecomputingandanalytics.
Toimprovepowerquality,manyelectricalgrids
arebeingupgradedwithsynchrophasortechnology.
Withthisinmind,wedecidedtotestourproposed
M-QOEframeworkbyapplyingitinasmart-grid
scenariotopredicttheM-QOEofdevicescalled
phasormeasurementunits(PMUs)inacellular-
basedsynchrophasor.
Synchrophasors
Asynchrophasorisatime-synchronized
measurementofaquantitydescribedbyaphasor
[5,6].Likeavector,aphasorhasmagnitudeand
phaseinformation.PMUsinatraditionalPMU
networkaredeployedacrosstransmissiongrids
tomeasurevoltageandcurrent,andwiththese
measurementscalculateparameterssuchas
frequencyandphaseangle.
PMUmeasurementsaretime-stampedtoan
accuracyofamicrosecond,synchronizedusing
thetimingsignalavailablefromGPSsatellites
ELECTRICPOWERGRIDS
AREONEOFTHEVERTICALS
THATWILLBENEFITMOST
FROMM-QOE
MACHINE QOE IN THE IOT ✱
AUGUST 11, 2020 ✱ ERICSSON TECHNOLOGY REVIEW 7
orotherequivalenttimesources.Measurements
takenbyPMUsindifferentlocationsaretherefore
accuratelysynchronizedwitheachotherandcanbe
time-aligned,allowingtherelativephaseangles
betweendifferentpointsinthesystemtobe
determinedasdirectly-measuredquantities.
Synchrophasormeasurementscanthusbe
combinedtoprovideapreciseandcomprehensive
viewofanentireinterconnection.
Atypicalsynchrophasornetworkiscomposedof
PMUsandphasordataconcentrators(PDCs)that
arethecontrolcentersofthewideareameasurement
system(WAMS).Thecommunicationsystemsplay
acrucialroleintheperformanceoftheWAMS.
Requirementsfordatareportingratesaretypically
30to60recordspersecond,andmaybehigher;in
contrast,currentSCADA(supervisorycontroland
dataacquisition)systemsoftenreportdataeveryfour
tosixseconds–over100timesslowerthanPMUs.
Multiplecommunicationstechnologiesareused
insynchrophasors,frompower-linecommunications
tomicrowave,butinordertomeetthelatency
requirements,opticalfiberiswidelyused.Traditional
opticalfibersolutionsmaybecomeprohibitively
expensive,though,assmartgridsbecomemore
complexandtheneedforadditionalmeasurements
indistributiongridsgrows.Inlightofthis,workis
underwaytodevelopanew,micro-PMU(μPMU).
AμPMUisasmaller,lower-costandmoreaccurate
versionofaPMUthatcanbedeployedmore
extensivelyinadistributiongridandprovide
accurateinformationfrommoreplaces,allowing
forbetterdynamicdistributiongridmanagement.
Cellular-basedsynchrophasors
ThecostofextendingtheWAMStoconnectmore
devicescanbecomeanissuewhendeploying
μPMUsatscaleindistributedgrids.5Gwith
networkslicingcanmeettheconnectivity
requirementsofaWAMSandreducethecost
ofdeployingμPMUs.Usinglow-bandandmid-band
radiofrequencies,thedatabandwidthrequirements
ofPMUapplicationscanbeachieved,withlatency
valuesinaccessnetworks(radioaccesstonetwork
edge)of10ms.
IOTConnectivityasaService(CaaS)isa
subscription-basedsolutionofferedbyoperators
thatutilitiescanpurchasetomanagethe
connectivityoftheirPMUsandμPMUs.
PrivateLTEisanothercost-effectivealternative
forgridoperatorstobuildsynchrophasorsovera
dedicatedcommunicationsystemmanagedbythe
mobileoperatortomeetthedesiredrequirements
oflatency,reliabilityandcoverage.
Synchrophasors–MachineQOEassessment
AccordingtoarecentreportfromtheNorth
AmericanSynchroPhasorInitiative(NASPI)[4],
PMUapplicationsinapowersystemcanbe
classifiedintofourmaincategoriesbasedon
theirreliabilityranges:
	❭ automation (latency of ≤ 10-100ms)
	❭ reliability (latency of ≤ 1,000ms)
	❭ planning (latency of ≤ 100-1,000ms)
	❭ operation (latency of ≤ 1,000ms).
ThereportalsoliststherelevantKPIs–accuracy,
reliability,latency,andmessagerate–andranksthem
percategoryonanimportance-levelscaleof1-4in
which4meanscritical,3meansimportant,2means
somewhatimportantand1meanslessimportant.
Table2presentsthekeydetailsoftheNASPI’s
classificationofPMUapplicationsinpowersystems.
Automationreferstotheautomatedprotection
andcontrolapplicationsofPMUsindistribution
systems.Theaimoftheseapplicationsistoimprove
thereliabilityandsecurity,automatedremedial
actionschemes,andassetutilization.Reliabilityisa
classofPMUapplicationsthatcanbedividedinto
topologyanddisturbancedetectionandsituational
awareness.PlanningisaclassofPMUapplications
focusedonbettersystemunderstandingandim-
provedsystemmodelingofthedistributionnetwork.
A µPMU IS A SMALLER,
LOWER-COST AND MORE
ACCURATE VERSION
OF A PMU
✱ MACHINE QOE IN THE IOT
8 ERICSSON TECHNOLOGY REVIEW ✱ AUGUST 11, 2020
Operationsisassociatedwiththemonitoringand
visualizationofthenetworkperformance.
ACSPsupplyingnetworkconnectivityservicesto
asmart-gridoperatorcanusetheproposedframework
fortheassessmentofcustomerM-QOEby
calculatingM-QOE=Σ[alpha_i*M-QOE_i]where:
	❭ i represents the relevant features of
synchrophasor applications (accuracy,
reliability, latency, message rate and security).
	❭ alpha_i represents the importance level
coefficients of the KPIs derived from the
number in Table 2 between 1 and 4.
WetestedthisM-QOEframeworkinanexperimental
5Glabenvironment,wherewebuiltasynchrophasor
networkandconnectedbetweenoneandtenμPMUs
toaPDC,dependingonthetestscenario.Probes
weredesignedandinstalledinthecommunication
network,intheμPMUsandinthePDCtocollectand
streamnetworkanddeviceO-KPI_imeasurements
associatedwiththetransmissionofpayloaddata
betweenμPMUsandthePDC.
ToobtainenoughO-KPImeasurements,
weidentifiedthelocationsofpotentialμPMU
devicesinthegridnetworkandusedtheM-QOE
predictionmodeltogeneratethemeasurementdata.
Thisdatawasaggregatedintheknowledge-based
systemrunningtherules-basedandMLmodelsfor
continuousevaluationandmonitoringoftheoverall
M-QOEofthegridoperator.Theexperiment
confirmedthattheframeworkwillassistCSPs
inmonitoringandpredictingtheM-QOEofan
enterprisewithwidespreaddevicesovertheir
infrastructurewithouttheneedforexpensive
large-scalemeasurements.
Inanotherexperiment,weusedtheM-QOE
frameworkforthemeasurementofpacketslostand
delaygapsinthetransmissionofsynchrophasordata
duetocommunicationlinkfailures.Theresults
showedearlypredictionoffailuresandM-QOE
aswellasaccuratedetectionoffailuretypes[7].
Conclusion
Thedeploymentof5Gnetworkswillaccelerate
thegrowthoftheInternetofThings(IOT)and
offerawealthofnewbusinessopportunitiesfor
communicationsserviceproviders(CSPs).
Itisimportanttorecognize,however,thatthe
churnofasingleIOTenterpriseduetonetwork
issuesmayrepresentmanydeviceconnections
withsignificantrevenueimpact.Toensure
consistentQOEinIOTapplications,CSPsneeda
smartsolutiontoconsistentlymonitorthediversity
ofperformancerequirementsthatarerequestedby
IOTsubscribers.Ericsson’sMachineQOE
frameworkisdesignedwiththisinmind,utilizing
thepowerofartificialintelligenceandmachine
learningtoautomaticallydiscoverandpredict
eventsintheCSPnetwork,sothattheycanbe
addressedbeforetheyhaveanegativeimpact
onQOE.
Application Accuracy
Availability/
reliability
Low latency Message rate
Automation 4 4 4 4
Reliability 2 2 3 2
Planning 4 3 1 4
Operation 1 1 2 2
Table 2 Classification of PMU applications in power systems
MACHINE QOE IN THE IOT ✱
AUGUST 11, 2020 ✱ ERICSSON TECHNOLOGY REVIEW 9
Further reading
	❭ Ericsson, Internet of Things, available at: https://www.ericsson.com/en/internet-of-things
	❭ Ericsson, 5G, available at: https://www.ericsson.com/en/5g
	❭ Ericsson, Network slicing, available at: https://www.ericsson.com/en/digital-services/trending/network-slicing
References
1.	 Qualcomm, Making 5G NR a reality, December 2016, available at: https://www.qualcomm.com/media/
documents/files/whitepaper-making-5g-nr-a-reality.pdf
2.	 Elsevier, Pervasive and Mobile Computing, vol. 48, pp. 59–68, 2018, Traffic characterization and
LTE performance analysis for M2M communications in smart cities, Malandra, F; Chiquette, L.O;
Lafontaine-Bédard, L.-P; Sansò, B, available at: https://www.sciencedirect.com/science/article/abs/pii/
S1574119217306089	
3.	 Ericsson Technology Review, Generating actionable insights from customer experience awareness,
September 30, 2016, Niemöller, J; Washington, N; Sarmonikas, G, available at: https://www.ericsson.com/
en/reports-and-papers/ericsson-technology-review/articles/generating-actionable-insights-from-customer-
experience-awareness
4.	 Energies 2019 vol 12, A Comprehensive Survey on Phasor Measurement Unit Applications in Distribution
Systems, November 29, 2019, Hojabri, M; Dersch, U; Papaemmanouil, A; Bosshart, P, available at: https://
doi.org/10.3390/en12234552
5.	 North American SynchroPhasor Initiative (NAPSI), Synchrophasor Technology Fact Sheet, October
2014, available at: https://www.naspi.org/sites/default/files/reference_documents/33.pdf?fileID=1326
6.	 IEEE, Micro-synchrophasors for distribution systems, ISGT 2014, May 19, 2014, von Meier, A; Culler, D;
McEachern, A; Arghandeh, R, available at: https://ieeexplore.ieee.org/document/6816509	
7.	 IEEE, A New Approach to Reliability Assessment and Improvement of Synchrophasor Communications in
Smart Grids, May 12, 2020, Seyedi Y; Karimi H; Wetté C; Sansò B, available at: https://ieeexplore.ieee.org/
document/9091616
✱ MACHINE QOE IN THE IOT
10 ERICSSON TECHNOLOGY REVIEW ✱ AUGUST 11, 2020
theauthors
Theauthorswould
liketothank
BrunildeSansò,
YounesSeyedi,
OrestesGonzalo
Manzanilla-Salazar,
HakimMellah,
FilippoMalandra
andHoushang
Karimi–allbased
atÉcole
Polytechniquede
Montréal–fortheir
contributionsto
thisarticle.
MACHINE QOE IN THE IOT ✱
AUGUST 11, 2020 ✱ ERICSSON TECHNOLOGY REVIEW 11
Constant Wette
Tchouati
◆ joined Ericsson in 2000
and has since worked as a
developer and project leader
in product development,
research projects, innovation
and new business
development involving
various technologies,
data science, IoT/machine-
to-machine, IMS, and telco
cloud architectures.
He holds an M.Eng.
in electrical engineering
from the National Advanced
School of Engineering in
Yaoundé, Cameroon, an
M.Sc. in computer
engineering from the École
Polytechnique de Montréal,
Canada, an M.B.A. from HEC
Montréal and a graduate
certificate in data science
from Harvard University
in the US.
Steven Rochefort
◆ joined Ericsson in 1994
with a background in
software development
for command and control
systems. Rochefort has
been involved in almost
every aspect of mobile
telephone development
at Ericsson, from software
development to system
design, with a focus on
IoT solutions. In 2016,
he returned to his academic
passion for mathematics,
becoming a data scientist
for Ericsson’s OSS
(Operations Support
Systems) product area.
He holds a B.Sc.
in mathematics and
a graduate certificate
in marketing research
from Concordia University
in Montreal, Canada.
George Sarmonikas
◆ joined Ericsson in 2013
after several years of
working for mobile
operators. He currently
heads AI & IoT Solutions
within Business Unit Digital
Services at Ericsson,
developing novel products.
Prior to this, he was
responsible for the product
management of Ericsson’s
customer experience
management and analytics
portfolio, including assets for
subjective experience
scoring. Sarmonikas holds
both an M.Sc. in
communication systems and
an M.Eng. in electronic
engineering and computer
science from the University
of Bristol in the UK, as well as
a graduate degree in artificial
intelligence from Stanford
University in the US.
ISSN 0014-0171
284 23-3347 | Uen
© Ericsson AB 2020
Ericsson
SE-164 83 Stockholm, Sweden
Phone: +46 10 719 0000

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