On the properties of residential rooftop azimuth and tilt uncertainties for photovoltaic power generation modeling and hosting capacity analysis

Umar Hanif Ramadhani, David Lingfors, Joakim Munkhammar, Joakim Widén
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引用次数: 2

Abstract

One of the essential epistemic uncertainties that has not yet been studied enough for distributed photovoltaic systems is the azimuth and tilt of rooftop photovoltaic panels, as previous studies of grid impacts and hosting capacity have tended to assume uniform and optimal roof facet conditions. In this study, rooftop facet orientation distributions are presented and analyzed for all single-family buildings in the Swedish city of Uppsala, based on LiDAR-based data that consist of every roof facet from the around 13,500 single-family buildings in the city. From these distributions, novel methods to proportionally include less suitable roofs for every penetration level are proposed using a simple method based on normal and uniform probability density functions, and are tested for both time-series and stochastic hosting capacity analysis. The results show that under the assumption that the best roof facets are utilized first, a uniform distribution for rooftop facet azimuth and a normal distribution for rooftop facet tilt with parameters that depend linearly on the penetration level were shown to be accurate. The hosting capacity simulations demonstrate how the proposed methods perform significantly better in estimating the photovoltaic hosting capacity than the more common simplified methods for both time-series and stochastic hosting capacity analysis. The proposed model could help distribution system operators as well as researchers in this area to model the rooftop facet orientation uncertainty better and improve the quality of aggregated photovoltaic generation models and hosting capacity analyses.

住宅屋顶方位角和倾斜特性的不确定性,用于光伏发电建模和承载能力分析
分布式光伏系统尚未充分研究的一个基本认识不确定性是屋顶光伏板的方位角和倾斜,因为之前对电网影响和承载能力的研究往往假设屋顶面条件均匀且最佳。在这项研究中,基于基于激光雷达的数据,给出并分析了瑞典乌普萨拉市所有独栋建筑的屋顶面方位分布,这些数据包括该市约13500栋独栋建筑中的每个屋顶面。根据这些分布,使用一种基于正态和均匀概率密度函数的简单方法,提出了在每个穿透水平上按比例包括不太合适的屋顶的新方法,并在时间序列和随机承载能力分析中进行了测试。结果表明,在首先利用最佳屋顶刻面的假设下,屋顶刻面方位角的均匀分布和屋顶刻面倾斜的正态分布是准确的,其参数与穿透水平线性相关。托管容量模拟表明,与时间序列和随机托管容量分析中更常见的简化方法相比,所提出的方法在估计光伏托管容量方面表现得更好。所提出的模型可以帮助配电系统运营商和该领域的研究人员更好地模拟屋顶面方位的不确定性,并提高聚合光伏发电模型和托管容量分析的质量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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