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Electric vehicle load forecasting using data mining methods

机译:使用数据挖掘方法的电动汽车负荷预测

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The continuous growth and evolve of vehicle electrification causes the electric power systems to confront new challenges, since the load profile changes, and new parameters are being set. With the number of EVs gradually rising, problems may occur in technical characteristics of the network, like bus voltages and line congestion [1]. Therefore, it is necessary to develop EV management systems so as to prevent such phenomena. The effectiveness of such systems is heavily depended on the early knowledge of future demand. This knowledge can be provided by accurate EV load forecasting techniques. In this paper, the use of various data mining methods is examined and their performance in EV load forecasting is evaluated.
机译:车辆电气化的不断发展和演变使电力系统面临新的挑战,因为负载曲线会发生变化,并且会设置新的参数。随着电动汽车数量的逐渐增加,网络的技术特性可能会出现问题,例如总线电压和线路拥塞[1]。因此,有必要开发EV管理系统以防止这种现象。这种系统的有效性在很大程度上取决于对未来需求的早期了解。可以通过准确的EV负荷预测技术提供此知识。本文研究了各种数据挖掘方法的使用,并评估了它们在电动汽车负荷预测中的性能。

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