Using Deep Learning to Identify Potential Roof Spaces for Solar Panels

Dorian House, M. Lech, Melissa N. Stolar
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引用次数: 8

Abstract

Solar photovoltaic (PV) installation businesses frequently encounter problems with lead generation. A commonly used approach to identify credible customers involves cold-calling contacts from a purchased database containing very limited information or information that is inaccurate, out of date, and doesn't identify whether the building already has solar PV installed. This process of contacting potential customers, therefore, is often time-consuming, cost-ineffective, and inefficient, which results in increased costs for customers to account for these limitations. The objective of the current research project is to propose a method of automating this industry problem by applying Deep Neural Networks (DNNs). A Semantic Segmentation Network (SegNet) will be utilized, with a database of satellite images and corresponding pixel label images. The SegN et will seek to identify buildings from satellite imagery, and to in turn identify whether buildings have pre-existing solar installations, using a cascaded Convolutional Neural Network (CNN). Transfer learning on the CNN will fine-tune the network to classify roofs of buildings into two categories of having solar PV installed and not having solar PV installed. The CNN will be trained and tested on separate augmented databases to improve the classification accuracy with the output of the system recording a database of buildings without solar PV installed. By automating what was previously a time-consuming manual process, the savings incurred can be passed onto customers. Results of the current project demonstrate successful segmentation of buildings and identification of pre-existing solar PV installations. Implications of results are discussed.
利用深度学习识别太阳能电池板的潜在屋顶空间
太阳能光伏(PV)安装企业经常遇到引线发电的问题。一种常用的识别可靠客户的方法是从购买的数据库中拨打电话联系,该数据库包含非常有限的信息或不准确、过时的信息,并且无法确定建筑物是否已经安装了太阳能光伏。因此,这种联系潜在客户的过程通常是耗时的,成本无效的,效率低下的,这导致客户增加了考虑这些限制的成本。当前研究项目的目标是通过应用深度神经网络(dnn)提出一种自动化这个行业问题的方法。将使用语义分割网络(SegNet),具有卫星图像数据库和相应的像素标签图像。SegN et将试图从卫星图像中识别建筑物,然后使用级联卷积神经网络(CNN)识别建筑物是否预先存在太阳能装置。CNN上的迁移学习将对网络进行微调,将建筑物的屋顶分为安装太阳能光伏和未安装太阳能光伏两类。CNN将在单独的增强数据库上进行训练和测试,以提高分类精度,系统的输出记录了没有安装太阳能光伏的建筑物的数据库。通过自动化以前耗时的手工流程,节省的费用可以传递给客户。目前项目的结果表明,建筑的成功分割和预先存在的太阳能光伏装置的识别。讨论了结果的含义。
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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