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Smart H20 - turning data into business intelligence tool

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THE SmartH2O PROJECT
Our vision
- Water efficiency requires new business link between utilities and their customers

Our mission
1. Turn water consumption smart meter data into a business intelligence tool
2. Help water utilities predicting water demand and optimize network operations and water production
3. Foster behavioral change of water consumers towards a more sustainable society

Published in: Technology
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Smart H20 - turning data into business intelligence tool

  1. 1. The SmartH2O Technology Jacopo Mossina, Research Fellow at Politecnico di Milano
  2. 2. Why We Are Here • THE SmartH2O PROJECT – The SmartH2O project receives funding from the European Commission and is part of the ICT4Water cluster • PARTNERSHIPS – Short-term collaborations for technology development and deployment • BUSINESS DEVELOPMENT – Investors to follow up of the project – Markets: Mediterranean area, Europe, USA • VISION – Water efficiency requires new business link between utilities and their customers • MISSION – Turn water consumption smart meter data into a business intelligence tool – Help water utilities predicting water demand and optimize network operations and water production – Foster behavioral change of water consumers towards a more sustainable society 1
  3. 3. • Digital + real games • Personalized tips Hour the day 0 5 10 15 20 25 Normalizedhouseholdconsumption 0 0.05 0.1 0.15 WATER DATA END_USE ANALYTICS CUSTOMER SEGMENTATION ENGAGEMENT AND BEHAVIOURAL CHANGE DATA acquisition and consolidation Consumption data REPOSITORY • Privacy • Security CONSUMER PORTAL Gamification And Data Analytics For Consumption Behavioral Change 2
  4. 4. Gamified Consumer Portal 3
  5. 5. 4 HOUSEHOLD WATER CONSUMPTION Users’ consumption class (label) USERS CLUSTERING FEATURE EXTRACTION MODEL LEARNING HOUSEHOLD and CONSUMERS’ PSYCHOGRAPHICS Relevant consumption determinants subset Users’ consumption class (label) forecast Feature Extraction-based User Profiling
  6. 6. Serious Games For Engagement And Behavior Change 5
  7. 7. Where We Are DEPLOYMENT AND TESTING TIMELINE • End of 2015 – Gamified Consumer Portal in alpha test – 400 households in Canton Ticino (CH), AMI at 1 hr resolution • Q1 2016 – Deployment in Valencia with Emivasa, Grupo Aguas de Valencia. – 650'000 smart meters (490'000 already deployed), of which 2500+ high resolution (1h) • 2016 / 2017 – Deployment in London with Thames Water • Long term investment: 3 M smart meter before 2030 (40’000 in 2015) DEPLOYMENT MODEL • On premises • SaaS BUSINESS DEVELOPMENT • Uptake by 2 partners (Set Mobile, WebRatio) • Demos and contacts at major events in EU and US 6
  8. 8. http://www.smarth2o-fp7.eu/ @smartH2Oproject #SmartH2O @JMossina @AndreaCominola jacopo.mossina | andrea.cominola @polimi.it Politecnico di Milano Department of Electronics, Information and Bioengineering consortium cluster

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