住宅电动汽车充电负荷非侵入式提取与预测

Run Zhou, Yue Xiang, Yang Wang, Yuan Huang, S. Xia
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引用次数: 4

摘要

随着需求侧电动汽车的不断增长,如何准确识别电动汽车充电行为对于实现电网的稳定运行和加强可能的辅助服务至关重要。由于直接监测数据有限,从家庭角度出发,利用汇总的智能电表数据提取电动汽车充电负荷具有重要意义。为了解决这一问题,本文提出了一种新的框架来实现住宅电动汽车充电负荷的非侵入式提取和预测。首先,采用阶乘隐马尔可夫模型(FHMM)算法提取住宅电动汽车充电负荷;采用迭代k-means方法选择适当数量的隐藏状态,建立多设备同时运行的FHMM模型。然后,利用长短期记忆(LSTM)深度学习算法对短时间内的住宅电动汽车充电负荷进行预测;用实际的智能电表数据对该方法进行了测试,结果表明该方法在提取和预测方面具有显著的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Non-intrusive Extraction and Forecasting of Residential Electric Vehicle Charging Load
As with increasing growth of electric vehicles in the demand side, how to accurate identify the electric vehicle charging behavior is crucial to achieve stable operation of the power grid and strengthen possible ancillary services. Due to the limited direct monitoring data, it is of great significance to extract electric vehicle charging load with the aggregated smart meter data from the household perspective. In order to deal with that, this paper presents a novel framework to realize the non-intrusive extraction and forecasting of residential electric vehicle charging load. Firstly, the Factorial Hidden Markov Model (FHMM) algorithm is used to extract the charging load of the residential electric vehicles. The appropriate number of hidden states is selected by the iterative k-means method to establish the FHMM model of simultaneous operation of multiple devices. Then, the Long-Short Term Memory (LSTM) deep learning algorithm is used to forecast the electric vehicle charging load of residential electric vehicle in a short time period. Real smart meter data is used to test the proposed method and the result shows its feasibility for significant performance in the extraction, as well as the forecasting.
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