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A data-driven approach to identify households with plug-in electrical vehicles (PEVs)

机译:一种数据驱动的方法来识别使用插电式电动汽车(PEV)的家庭

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摘要

In recent years popularity of plug-in electric (PEV) vehicles has grown significantly. Charging of such vehicles is typically done at home from a standard outlet or at corporate car locations and thus adds extra load on the distribution grid. Due to high power consumption of PEV charging, the utility industries face enormous challenges to provide this extra demand. The identification of charging patterns of PEV is thus of paramount importance to balance the electric load and assure coordinated charging. More specifically, there is a need to identify users with PEVs to better manage the load distribution. In the present research, an analysis based on energy envelopes of the usage patterns is performed. A set of well-known data mining algorithms are used to identify the best classifier to help identify customers with PEVs. (C) 2015 Elsevier Ltd. All rights reserved.
机译:近年来,插电式(PEV)车辆的普及已显着增长。此类车辆的充电通常在家里从标准插座或公司车辆处进行,因此会给配电网增加额外的负载。由于PEV充电的高功耗,为了提供这种额外需求,公用事业行业面临巨大挑战。因此,PEV充电模式的识别对于平衡电负载并确保协调充电至关重要。更具体地说,需要识别具有PEV的用户以更好地管理负载分配。在本研究中,基于使用模式的能量包络进行了分析。一组著名的数据挖掘算法用于识别最佳分类器,以帮助识别具有PEV的客户。 (C)2015 Elsevier Ltd.保留所有权利。

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