Self-adaptive Butterfly Optimization for Simultaneous Optimal Integration of Electric Vehicle Fleets and Renewable Distribution Generation

TKS Pandraju, V Janamala - Congress on Intelligent Systems, 2022 - Springer
Congress on Intelligent Systems, 2022Springer
Fuel prices and environmental concerns have prompted an increase in the use of electric
vehicle (EV) technology in recent years. Charging stations (CSs) are a great way to support
this shift to sustainability. This has increased the demand for EV charging on electrical
distribution networks (EDNs). However, optimal EV charging stations along with renewable
energy sources (RES) integration can maintain EDN performance. This paper proposes a
novel hybrid approach based on self-adaptive butterfly optimization algorithm (SABOA) for …
Abstract
Fuel prices and environmental concerns have prompted an increase in the use of electric vehicle (EV) technology in recent years. Charging stations (CSs) are a great way to support this shift to sustainability. This has increased the demand for EV charging on electrical distribution networks (EDNs). However, optimal EV charging stations along with renewable energy sources (RES) integration can maintain EDN performance. This paper proposes a novel hybrid approach based on self-adaptive butterfly optimization algorithm (SABOA) for optimal integration of EV CSs and RES problems under various EV load growth scenarios. A multi-objective function is created from distribution losses, GHG emissions, and VSI. The ideal locations for CSs and RES are found using SABOA while minimizing the proposed multi-objective function. The simulation results on IEEE 33-bus EDN validate the suggested technique's superiority in terms of global optima. This type of hybrid strategy is required for optimal real-time integration of EV CSs and RES, taking into account emerging high EV load penetrations.
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