一种新的数据驱动估算隐形太阳能发电的方法:以台湾为例

Thi Bich Phuong Nguyen, Yuan-Kang Wu, Manh-Hai Pham
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引用次数: 4

摘要

随着光伏(PV)太阳能发电的普及,许多没有电表的住宅和商业太阳能光伏系统正在安装。然而,这些系统中的大多数都不受电力系统运营商的监控。因此,这些隐形太阳能发电所带来的净负荷的不确定性将给电力系统运行带来额外的挑战。为了减少上述影响,本文提出了一种新的方法,从一个小的代表性子集估计大区域的太阳能总发电量。所提出的方法能够捕获有助于识别代表性子集的所有相关信息。此外,利用并评估了不同的优化算法来选择最优的聚类数量和代表性子集。以台湾地区166个光伏电站的发电情况为例,进行了数据收集和分析。与已有的研究相比,该方法在估算聚合发电量方面有了显著的改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Novel Data-Driven Method to Estimate Invisible Solar Power Generation: A Case Study in Taiwan
As the penetration of photovoltaic (PV) solar generation increases, numerous residential and commercial solar PV systems without meters are being installed. The majority of these systems, however, are not monitored by power system operators. Therefore, the uncertainty of net load owing to these invisible solar power generation will raise additional challenges for power system operation. To reduce the above-mentioned impact, this work proposes a novel method to estimate the total solar power generation in a large region from a small representative subset. The proposed method is capable of capturing all relevant information that assists in the identification of representative subsets. Moreover, different optimization algorithms are utilized and evaluated to select the optimal number of clusters and representative subsets. As a case study, the power generation of 166 PV sites in Taiwan was collected and analyzed. The proposed method demonstrates a significant improvement in estimating the aggregated power generation compared to other existing studies.
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