论文标题
预测电力基础设施会引起加利福尼亚的野火风险
Predicting Electricity Infrastructure Induced Wildfire Risk in California
论文作者
论文摘要
本文研究了风险模型来预测电力基础设施引起的野火的时间和位置。我们的数据包括由2015年至2019年间在太平洋天然气和电力领域收集的网格基础设施以及各种天气,植被以及网格基础设施(包括位置,年龄,材料)的网格基础设施的非常高分辨率的数据触发的历史点火和降线点。通过这些数据,我们探讨了一系列机器学习方法和管理培训数据不平衡的策略。我们获得的接收器操作特征下的最佳区域为0.776,用于分配馈线点火器,用于传输线向下事件的0.824,均使用基于直方图的梯度增强树算法(HGB),并带有下采样。然后,我们使用这些模型来确定哪些信息提供了最预测的价值。在线长度后,我们发现天气和植被特征主导着点火或降线风险的最重要的重要特征列表。分布点火模型显示出更大的依赖性对慢变化的植被变量,例如燃烧指数,能量释放含量和树高度,而传输线模型更多地依赖于主要天气变量,例如风速和降水量。这些结果表明,改进植被建模对进料器点火风险模型的重要性,以及改善传输线模型的天气预报。我们观察到,基础架构功能可以对风险模型预测能力进行较小但有意义的改进。
This paper examines the use of risk models to predict the timing and location of wildfires caused by electricity infrastructure. Our data include historical ignition and wire-down points triggered by grid infrastructure collected between 2015 to 2019 in Pacific Gas & Electricity territory along with various weather, vegetation, and very high resolution data on grid infrastructure including location, age, materials. With these data we explore a range of machine learning methods and strategies to manage training data imbalance. The best area under the receiver operating characteristic we obtain is 0.776 for distribution feeder ignitions and 0.824 for transmission line wire-down events, both using the histogram-based gradient boosting tree algorithm (HGB) with under-sampling. We then use these models to identify which information provides the most predictive value. After line length, we find that weather and vegetation features dominate the list of top important features for ignition or wire-down risk. Distribution ignition models show more dependence on slow-varying vegetation variables such as burn index, energy release content, and tree height, whereas transmission wire-down models rely more on primary weather variables such as wind speed and precipitation. These results point to the importance of improved vegetation modeling for feeder ignition risk models, and improved weather forecasting for transmission wire-down models. We observe that infrastructure features make small but meaningful improvements to risk model predictive power.