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Net-Zero Smart city AI-based Strategic Decision System

Started ‎02-25-2021 by
Modified ‎10-20-2022 by
Views 704
                                                       

Develop a smart Deep Learning model (AI, ML, NN) to analyze thousands of energy sources in a Smart city / Municipality (public lighting, buildings energy consumption, use of external data sources, degree days, Temps, local weather conditions, demographics, geospatial data, financial data, utility bills, etc) and create specific KPIs (quantitative, qualitative) in order to model, predict and detect anomalies and outliers (energy, C02, etc) so that to propose automatically specific solutions (storage, RES, Eco mobility, DERs) to covert this City into a Net-Zero City

 

 

 

 

 

The model will be applied to one Smart City in Greece (we have data) and then after the supervised learning process and the finalization, the model will be able to be applied to ALL Cities in the World, in order to convert them into Net-Zero Cities

 

 

This applies to UNSDG 11

 

We will also apply this model to our customers (Smart Cities) as one of the leading Utilities in Greece

                                                       
 
Team Name PIL
Track Data for Good
Use Case Smart City decision support system to self-adapt and propose Net-zero driven solutions, based on various large data inputs
Technology Platform-based offering, Python Algos, AI approach, Data analysis, Agents, Supervised Learning
Region Europe, Smart Cities, Municipalities
Team lead Dr. Vassilis Nikolopoulos @Vnikolop
Team members Nikos Babis, Dimitris Karpodinis (Data Scientists)

 

Smart City AssetsSmart City Assets

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‎10-20-2022 12:11 PM
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