Load profiling for residential aggregates encounters challenges due to data scarcity and the inadequacy of standard profiles obtained from statistical analyses. In the absence of hourly data, many methods rely on standard profiles, which could lead to significant errors in consumption estimation, especially for evaluating specific aggregates. This article presents PyARC, a Python-based algorithm trainable with customizable consumption data, which addresses the problem related to evaluating the energy consumption of specific aggregates by using typological profiles extracted from similar users, thereby improving accuracy. The algorithm’s innovative approach uses Association Rule Mining and Random Forest Classification to reconstruct the load profiles of aggregates, providing a more robust solution for estimating the electrical load with limited data.

PyARC the Python Algorithm for Residential load profiles reConstruction / Giannuzzo, Lorenzo; Schiera, DANIELE SALVATORE; Minuto, FRANCESCO DEMETRIO; Lanzini, Andrea. - In: SOFTWAREX. - ISSN 2352-7110. - ELETTRONICO. - 28:(2024). [10.1016/j.softx.2024.101878]

PyARC the Python Algorithm for Residential load profiles reConstruction

Lorenzo Giannuzzo;Daniele Salvatore Schiera;Francesco Demetrio Minuto;Andrea Lanzini
2024

Abstract

Load profiling for residential aggregates encounters challenges due to data scarcity and the inadequacy of standard profiles obtained from statistical analyses. In the absence of hourly data, many methods rely on standard profiles, which could lead to significant errors in consumption estimation, especially for evaluating specific aggregates. This article presents PyARC, a Python-based algorithm trainable with customizable consumption data, which addresses the problem related to evaluating the energy consumption of specific aggregates by using typological profiles extracted from similar users, thereby improving accuracy. The algorithm’s innovative approach uses Association Rule Mining and Random Forest Classification to reconstruct the load profiles of aggregates, providing a more robust solution for estimating the electrical load with limited data.
2024
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11583/2992436