Date post: | 08-Jan-2017 |
Category: |
Data & Analytics |
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Data Analytics for Monitoring IoT
G.Madhusudan
Orange Labs
LPWA Use cases
Smart City
• Street Lighting
• Waste management
• Air monitoring
• Parking
• Traffic Lightning
• Advertising monitoring
• Tracking (bikes, mobile ads, …)
• Fire Hydrant monitoring
• Flood detection / monitoring
Smart Building
• Heating / T°, humidity, CO2 monitoring
• Water, Gas, Elec metering
• Presence detection
• Zoning / indoor location
• Smoke detection / security equipment monitoring
• Access control & monitoring
• Alerting, monitoring
• Monitoring of prescriptedequipment use
• Home services and badging
• Feedback buttons
• Bridge, railway , tank, vibration, road T°… sensors
• Objects and people tracking
• Weighing machines
• Lightning receptor for wind turbine
Smart Agriculture
• Connected beehives
• Ground sensors
• Animal monitoring• High end home
objects
• Tracking
• Secondary residence automation
• Smoke detection monitoring
• Oil/Gas tank monitoring
Technical
• Coverage verification
smart territories
industry
healthcare retail
smart
home
transport
logistics
Best TTM in bold: existing use cases, with improved ROI due to deployment facility (on battery, no repeaters, use of global network)
Changing scenario for IoT networks
Déploiement du réseau LoRa ® dans 18 agglomérations françaises et progressivement au niveau national
� A fin S1 2016, dans 18 agglomérations soit 1200 communes
� A fin janvier 2017, dans 120 agglomérations soit 2600 communes
� Capacité d’étendre cette couverture par une offre site
From raw IoT data to IoT dashboard
System architecture
Dashboard
• Provides B2B client-centric view of the IoT
networks
• SLA obligations
• KPIs
• Anomalies
• Predicted events
8 Interne Orange Orange Labs Research Exhibition 2016
B2B client-centric view of IoT
• multi tenant
• multiple services
• provide a B2B client centric view of the functioning of the IoT network
• how are my set of devices functioning?
• KPIs adapted to the services
• All this on unlicensed bands for LPWA i.e. radio frequencies that are free for everyone to use if a few conditions are respected (transmit power, duty cycle,)
9 Interne Orange Orange Labs Research Exhibition 2016
IoT NMS – Data analysis• data collection• data cleaning• exploratory data analysis� visualization� scatter plot� correlation• Modeling• Machine learning
10 Interne Orange Orange Labs Research Exhibition 2016
IoT NMS – machine learning aspects
Activity Machine Learning techniques Examples
Anomaly detection k-means clustering. DCs that need more analysis. Can be
extended to use external open data sets
such as road works and meteorological
inputs.
Model construction Random forest , Open ML in the
future?
Establishing the variables that most
influence a KPI (such as packet delivery
rate), which model to use?
Event prediction in
a streaming context
Incremental learning on non-
stationary streams – concept drift,
Adaptive Hoeffding Trees
The goal is for the model to adapt itself
dynamically to potentially changing
environments. The prediction is verified
against the real label and the model
adapted accordingly.
11 Interne Orange Orange Labs Research Exhibition 2016
Anomaly detection - 1
12 Interne Orange Orange Labs Research Exhibition 2016
Anomaly detection - 2
Challenges - stream processing
• Integration of ML libraries such as Samoa with
Stream processing engines
• Delayed/Missing labels
• Missing features – imputation?
• Concept Drift (change in seasons, new
building sites)
Challenges – system view
• Prediction model is at the level of devices or
links.
• How do we go from these atomic predictions
to network level and system level views?
• Use traffic pattern profiles and map low level
prediction to KPIs associated with the profiles
Thank you!
Questions