A Hybrid Optimization-Based Artificial Neural Network Model for Wireless Power Transfer in Electric Vehicles

Q4 Engineering
Pranjal Jog, R. K. Kumawat
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引用次数: 0

Abstract

Electric Vehicles (EVs) are powered by a battery mounted in the vehicle, which powers the motor and drives the wheels. Most commercial EVs can be charged by plugging them into a charging station. Such conductive recharging has various drawbacks, including physical plugging of the cable, safety concerns, and charging time. Manually charging EVs might be dangerous due to the chance of an electric spark or disaster. Advances in Wireless Power Transfer (WPT) demonstrate the capacity to transfer significant amounts of electricity over short and medium-range distances. The ultimate purpose of this paper is to improve the efficacy of electric car wireless charging systems. Here, a hybrid optimization-based Artificial Neural Network (ANN) model is applied to improve the efficacy of the WPT model in EVs. To optimize the weights of the ANN classifier, a hybrid approach termed as Grasshopper-Assisted Elephant Herd Optimization (GA-EHO) method is proposed. The GA-EHO is derived through the hybridization of Elephant Herd Optimization (EHO) Algorithm and the Grasshopper Optimization Algorithm (GOA) techniques. Finally, the experimental study reveals that at 70% learning rate, the proposed ANN system achieves a minimal MSE value of 0.0528, which is lower than other current classifiers, such as SVM, LSTM, and CNN.
基于优化的混合人工神经网络模型用于电动汽车的无线电力传输
电动汽车(EV)由安装在车内的电池提供动力,电池为电机提供动力并驱动车轮。大多数商用电动汽车可以通过插入充电站进行充电。这种传导式充电方式有各种缺点,包括电缆的物理插入、安全问题和充电时间。由于可能产生电火花或灾难,手动为电动汽车充电可能很危险。无线电力传输(WPT)技术的进步证明了在中短距离内传输大量电力的能力。本文的最终目的是提高电动汽车无线充电系统的效率。本文采用基于混合优化的人工神经网络(ANN)模型来提高电动汽车 WPT 模型的功效。为了优化 ANN 分类器的权重,本文提出了一种称为 "蚱蜢辅助象群优化(GA-EHO)"的混合方法。GA-EHO 是通过象群优化算法(EHO)和草蜢优化算法(GOA)技术的混合而产生的。最后,实验研究表明,在学习率为 70% 的情况下,所提出的 ANN 系统的最小 MSE 值为 0.0528,低于 SVM、LSTM 和 CNN 等其他现有分类器。
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来源期刊
International Journal of High Speed Electronics and Systems
International Journal of High Speed Electronics and Systems Engineering-Electrical and Electronic Engineering
CiteScore
0.60
自引率
0.00%
发文量
22
期刊介绍: Launched in 1990, the International Journal of High Speed Electronics and Systems (IJHSES) has served graduate students and those in R&D, managerial and marketing positions by giving state-of-the-art data, and the latest research trends. Its main charter is to promote engineering education by advancing interdisciplinary science between electronics and systems and to explore high speed technology in photonics and electronics. IJHSES, a quarterly journal, continues to feature a broad coverage of topics relating to high speed or high performance devices, circuits and systems.
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