Electric utilities are struggling to manage increasing wildfire risk in a hotter and drier climate. Utility transmission and distribution lines regularly ignite destructive fires when they make contact with surrounding vegetation. Trimming vegetation to maintain the separation from utility assets is as critical to safety as it is difficult. Each utility has tens of thousands of linear miles to manage, poor knowledge of where those assets are located, and no way to prioritize trimming. Feature-enhanced convolutional neural networks (CNNs) have proven effective in this problem space. Histograms of oriented gradients (HOG) and Hough transforms are used to increase the salience of the linear structures like power lines and poles. Data is frequently taken from drone or satellite footage, but Google Street View offers an even more scalable and lower cost solution. This paper uses $1,320$ images scraped from Street View, transfer learning on popular CNNs, and feature engineering to place images in one of three classes: (1) no utility systems, (2) utility systems with no overgrown vegetation, or (3) utility systems with overgrown vegetation. The CNN output thus yields a prioritized vegetation management system and creates a geotagged map of utility assets as a byproduct. Test set accuracy with reached $80.15\%$ using VGG11 with a trained first layer and classifier, and a model ensemble correctly classified $88.88\%$ of images with risky vegetation overgrowth.
翻译:在炎热和干燥的气候下,电力公用事业正在努力管理日益增加的野火风险。在与周围植被接触时,实用性传输和分配线经常点燃破坏性火灾。利用植被来维持与公用事业资产的分离对安全至关重要,但数据往往取自无人机或卫星镜头,但Google Street View提供了更可扩缩和更低的成本解决方案。本文使用了从街道视图中剪掉的1 320美元的图像,在流行的CNN上传授学习知识,以及将图像放入三个类别之一的地貌工程:(1)没有实用系统,(2)没有过度生长的植被的实用系统,或者(3)有过度生长的植被的公用系统。CNN产出因此产生了一个优先的植被管理系统或卫星镜头,而Google Streetview提供了一种更精密的植被管理系统,并且用经过培训的GOV的GIS Glasmagal 的GVAGAGAGA图像制作了一套高额的GVGAGGGGA 。