机器学习预测消防员对不同类型任务的干预

R. Mallouhy, C. Guyeux, C. A. Jaoude, A. Makhoul
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引用次数: 4

摘要

消防队的行动因时间、气候、季节、场合等而异。例如,事故发生的频率在白天比晚上高。因此,按行动类别调整需要以适应消防部门的需求可导致减少物质、财政和人力资源。因此,在大多数国家面临金融和经济危机时,它可以非常有帮助。通过了解下一次行动所需人力资源的类型和数量,这也有助于消防员做好充分的准备。本研究的目的是预测消防员在紧急和非紧急部署之间的14种不同类别的干预数量。本研究在双法兰西地区消防救援服务SDIS 25提供的数据集上的实验表明,当增加更多的解释变量时,不需要改进预测。有些特征不能提供信息,可能会降低结果的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Learning for Predicting Firefighters’ Interventions Per Type of Mission
Fire brigades’ operations vary with time, climate, season, occasions, etc. For example, the frequency of accidents is greater during the day than at night. Thus, adjusting the need to the demand of fire departments by categories of operations can lead to a reduction of material, financial and human resources. Therefore, it can be very helpful during the financial and economic crisis most countries face. It also helps firefighters to be well prepared by knowing the type and number of human resources needed for the next operation. The aim of this study is to predict the number of firefighters’ interventions of 14 different categories varying between emergency and non-emergency deployments. The experiments in this study on the dataset provided by the fire and rescue service, SDIS 25, in the Doubs-France region showed that it is not necessary to improve the prediction when more explanatory variables are added. Some characteristics are not informative and may reduce the accuracy of the results.
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