人工神经网络
计算机科学
能源管理
能量(信号处理)
汽车工程
控制工程
人工智能
工程类
数学
统计
作者
K A Sharada,A. Kathiravan,Praveen Mannam,D. Akila,B. Suresh Kumar,Vaibhav Godase
标识
DOI:10.1109/ictmim65579.2025.10988248
摘要
EV and BSS are putting a pressure on power networks, and chaotic charging techniques are a major contributor to this. Due to the nonlinear, unpredictable, and energy-intensive character of electric car charging demands, smart microgrids must have optimal energy management. Our regional energy management system optimises operations for electric vehicles and battery storage by orchestrating grid-connected charging using a price-incentive scheme. The system will implement smart microgrids. They hope to achieve this by maximising the profits from battery storage systems and decreasing the costs of charging electric vehicles. To improve search performance, a new method combines GA with NB. Dimensionality reduction, unbalanced dataset classification, and min-max normalisation are all data preprocessing tasks that genetic algorithms are used for. The proposed NBGA hybrid model outperforms previous imputation methods by a whopping 98% in trials where feature selection is not used. In order to make energy management systems better, evolutionary algorithms and naive Bayes classification are used. Through reducing the impact of uncoordinated charging, the suggested method improves the stability and economic feasibility of smart microgrids.
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