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A Dynamic Pipeline for Spatio-Temporal Fire Risk Prediction

机译:一种动态管道,用于时空火灾风险预测

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Recent high-profile fire incidents in cities around the world have highlighted gaps in fire risk reduction efforts, as cities grapple with fewer resources and more properties to safeguard. To address this resource gap, prior work has developed machine learning frameworks to predict fire risk and prioritize fire inspections. However, existing approaches were limited by not including time-varying data, never deploying in real-time, and only predicting risk for a small subset of commercial properties in their city. Here, we have developed a predictive risk framework for all 20,636 commercial properties in Pittsburgh, based on time-varying data from a variety of municipal agencies. We have deployed our fire risk model on Pittsburgh Bureau of Fire's (PBF), and we have developed preliminary risk models for residential property fire risk prediction. Our commercial risk model outperforms the prior state of the art with a kappa of 0.33 compared to their 0.17, and is able to be applied to nearly 4 times as many properties as the prior model. In the 5 weeks since our model was first deployed, 58% of our predicted high-risk properties had a fire incident of any kind, while 23% of the building fire incidents that occurred took place in our predicted high or medium risk properties. The risk scores from our commercial model are visualized on an interactive dashboard and map to assist the PBF with planning their fire risk reduction initiatives. This work is already helping to improve fire risk reduction in Pittsburgh and is beginning to be adopted by other cities.
机译:最近在世界各地的城市的高调火灾事件突出了消防风险减少努力的差距,因为城市努力赢得了较少的资源和更多的保障财产。为了解决这一资源缺口,事先工作已经开发了机器学习框架,以预测火灾风险并优先考虑消防检查。然而,现有方法不受不包括时变数据的限制,从未在实时部署,并且仅预测其城市中商业特性小组的风险。在这里,我们为匹兹堡的所有20,636个商业物业制定了预测风险框架,基于来自各种市政代理商的时变数据。我们在匹兹堡火灾局(PBF)上部署了我们的火灾风险模型,我们已经为住宅物业火灾风险预测制定了初步风险模型。我们的商业风险模型与0.17相比,Kappa为0.33的现有技术优于现有技术,并且能够应用于与先前模型的近4倍的特性。 5周以来,我们的模型首次部署后,我们预测的高风险特性的58%具有任何类型的火灾事件,而我们预期的高或中等风险特性发生了23%的建筑物火灾事件。我们商业模式的风险分数在交互式仪表板上可视化,以绘制PBF规划其火灾风险降低举措。这项工作已经有助于提高匹兹堡的火灾风险减少,并开始被其他城市采用。

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