2024
DOI: 10.3390/app14041421
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Deep Q-Learning-Based Smart Scheduling of EVs for Demand Response in Smart Grids

Viorica Rozina Chifu,
Tudor Cioara,
Cristina Bianca Pop
et al.

Abstract: Economic and policy factors are driving the continuous increase in the adoption and usage of electrical vehicles (EVs). However, despite being a cleaner alternative to combustion engine vehicles, EVs have negative impacts on the lifespan of microgrid equipment and energy balance due to increased power demands and the timing of their usage. In our view, grid management should leverage on EV scheduling flexibility to support local network balancing through active participation in demand response programs. In thi… Show more

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