The aim is to face the problem of uncertainty of forecasting. It evaluated the integration of Artificial Intelligence (AI) into a simulator to improve its accuracy in the energy prediction, applied to industrial field. Firstly, a literature review on the main applications of AI into energy consumption forecasting was carried out. Then a case study has been taken and Random Forest has been applied to improve forecasting. The AI model improved accuracy of the prediction, being able to consider real-time data of weather and consumption. Therefore, AI has been proved to be successfully implementable for energy forecasting, in synergy with simulation.

Optimizing Industrial Energy Management: Advanced Simulators Enhanced With Machine Learning For Improved Forecast Accuracy

Marco Mosca;Roberto Mosca;Matteo Lo Russo
2024-01-01

Abstract

The aim is to face the problem of uncertainty of forecasting. It evaluated the integration of Artificial Intelligence (AI) into a simulator to improve its accuracy in the energy prediction, applied to industrial field. Firstly, a literature review on the main applications of AI into energy consumption forecasting was carried out. Then a case study has been taken and Random Forest has been applied to improve forecasting. The AI model improved accuracy of the prediction, being able to consider real-time data of weather and consumption. Therefore, AI has been proved to be successfully implementable for energy forecasting, in synergy with simulation.
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11567/1306336
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