基于双向GRU - AM方法的智能电动汽车充电网络管理

M. A. Gandhi, K. Priya, Piyush Charan, Ritu Sharma, G. Rao, D. Suganthi
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引用次数: 1

摘要

电动汽车(ev)现在是必不可少的,因为电气化交通已被证明是在全球工业中提高可持续和环保平台的游戏规则改变者。将电动汽车充电系统(EVCS)作为一种新型实体整合到配电系统中是目前最重要和最具挑战性的问题之一。EVCS网络基础设施的发展是实现电动汽车广泛采用的关键一步。为了对输电、配电、能源分配和充电站布局做出明智的判断,控制中心或中央聚合器必须对占用、消耗和能源或充电需求进行准确的预测。数据分析和其他方法可以定期从EVCS获取信息,以便存档和处理收集到的所有数据。该方法为EVCS网络的能源需求预测问题提供了一种解决方案。该方法由预处理、特征选择和模型性能评估三个步骤组成。通过归一化预处理数据,通过K-Means进行特征选择,最终通过K-Means进行模型评估。该模型与LSTM、GRU和BIGRU - AM模型相比,具有较好的效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Smart Electric Vehicle (EVs) Charging Network Management Using Bidirectional GRU - AM Approaches
Electric Vehicles (EVs) are now essential since electrifying transportation has shown to be a game-changer in raising the sustainable and eco-friendly platform in global industry. Integrating Electric Vehicle Charging System (EVCS) as a new entity into the power distribution system is one of the most important and challenging concerns. The development of an EVCS network infrastructure is a key step toward the broad adoption of EVs. In order to make informed judgments about transmission, distribution, energy allocation, and charging station placement, the control center or central aggregator must have an accurate forecast of occupancy, consumption, and energy or charging demand. Data analytics and other methods have made it possible to regularly get information from the EVCS for the purposes of archiving and processing all of the data collected. This proposed approach to presents a solution to the aforementioned problems with energy demand forecasting for EVCS networks. Three steps make up the proposed method: preprocessing, feature selection, and model performance evaluation. Preprocessing data via normalization, feature selection by K-Means, and ultimately model evaluation via K-means. The proposed model has superior results to the LSTM, GRU, and BIGRU - AM models.
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