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Challenge / Goal

The dependencies in the energy sector are complex and a human cannot make reliable forecasts without efficient tools. Therefore, more automatisation and self-learning IoT tools are needed in order to increase the accuracy and overall system efficiency.

Solution

Automatised forecasting tools were developed. The solution is based on AI which collects data automatically via open interfaces from public data sources. The goal is to improve the prediction accuracy for energy and power market participation. For the end user, the data is collected nearly in real-time and stored historical data can be used to optimise the Virtual Power Plant (VPP) operations. 

Ultimately, the solution was successfully implemented across several locations in Finland, with multiple asset buildings participating in the VPP, stretching from Espoo to Lapland. The prediction models operate in a virtual environment, using cloud-based solutions and data centres.

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Implementers

Siemens

Service providers

Siemens

End users

Sello, Vibeco

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