Machine learning-based energy management system for prosumer

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Abstract

The rapid development of RES technology produces cheaper and compact devices. This condition has attracted the household to install the RES devices on their premises. Hence, the household has changed from the passive electricity consumer into the active prosumer. The active prosumer not only consumes the electricity but also have the capability to produce electricity. However, the electricity produced by RES devices is intermittence and unstable. Moreover, the behavior of the inhabitants of the prosumer also changes over time. Hence, a smart energy management system is needed by the prosumer to maintain the balance of its electricity demand and supply. In this paper, we explore the integration of the Machine-learning based on the prosumer’s EMS to address the uncertainty problem in the prosumer.

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Nugraha, G. D., Sudiarto, B., & Ramli, K. (2020). Machine learning-based energy management system for prosumer. Evergreen, 7(2), 309–313. https://doi.org/10.5109/4055238

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