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Review of geographic information systems-based rooftop solar photovoltaic potential estimation approaches at urban scales

机译:基于地理信息系统的屋顶太阳能光伏电位估算方法述评城市尺度

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摘要

In urban environments, decentralized energy systems from renewable photovoltaic resources, clean and available, are gradually replacing conventional energy systems as an attractive source for electricity generation. Especially with the availability of unexploited rooftop areas and the ease of installation, along with technological development and permanent cost reductions of photovoltaic panels. However, the optimal use of these systems requires accurate estimates of supply (rooftop solar photovoltaic potential) and the design of an intelligent distributed-system integrated with power grids. Geographic information systems (GISs)-based estimation is justified as a promising approach for estimating rooftop solar photovoltaic potential, in particular, the possibility of combining GISs with LiDAR (Lighting-Detection-And-Ranging) to build robust approaches leading to accurate estimates of the rooftop solar photovoltaic potential. Accordingly, this study aims to present a comprehensive review of GISs-based rooftop solar photovoltaic potential estimation approaches that have been applied at different scales, including countries. The study classified GISs-based approaches into sampling, geostatistics, modeling, and machine learning. The applications, advantages, and disadvantages of each approach were reviewed and discussed. The results revealed that GISs-based rooftop solar photovoltaic potential estimation approaches, can be applied to the large-scale spatial-temporal assessment of future energy systems with decentralized electrical energy grids. Assessment results can be employed to propose effective-policies for rooftop photovoltaic integration in built environments. However, the development of a new methodology that integrates GISs with machine learning to provide an accurate and less computationally demanding alternative to LiDAR-based approaches, will contribute significantly to large-scale estimates of the solar photovoltaic potential of building rooftops.
机译:在城市环境中,来自可再生光伏资源的分散能源系统,清洁和可用,逐渐将传统能源系统替代为发电的有吸引力的来源。特别是随着未开发的屋顶领域的可用性以及易于安装,以及技术开发和永久性降低光伏面板。然而,这些系统的最佳使用需要准确的供应估计(屋顶太阳能光伏电位)和集成电网集成的智能分布式系统的设计。基于地理信息系统(GISS)的估计是估计屋顶太阳能光伏电位的有希望的方法,特别是将俗气与LIDAR(照明检测和测距)结合的可能性,以构建强大的方法,从而实现准确的估计屋顶太阳能光伏电位。因此,本研究旨在全面审查以不同规模应用的基于GISS的屋顶太阳能光伏电位估算方法。该研究将基于GISS的方法分类为抽样,地统计数据,建模和机器学习。审查和讨论了各种方法的应用,优点和缺点。结果表明,基于GISS的屋顶太阳能光伏电位估算方法,可以应用于具有分散电能电网的未来能源系统的大规模空间时间评估。评估结果可用于提出建筑环境中屋顶光伏集成的有效政策。然而,开发新方法,将GISS与机器学习集成,以提供准确和更少的计算要求基于LIDAR的方法的替代方案,这将对建筑屋顶的太阳能光伏电位的大规模估计有显着贡献。

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