A novel historical data-based method for predicting firefighters demand in urban fires

IF 3.4 3区 工程技术 Q2 ENGINEERING, CIVIL Fire Safety Journal Pub Date : 2024-06-06 DOI:10.1016/j.firesaf.2024.104200
Chen-yue Zhang, Rui Zhao, Ning Wang, Xin Nie
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Abstract

Urban fires are a prevalent type of fire that requires prompt and effective responses. Determining the appropriate number of firefighters at the alarm time is crucial, but it mostly relies on the experience of decision-makers. Due to the fuzziness and limitations of human knowledge, there is often a deviation between the number of firefighters dispatched relying on personal subjective experience and the realistic demand. This paper proposed a historical data-based method for predicting the demand number of firefighters in urban fire. Initially, the National Fire Incident Reporting System (NFIRS) data and Global Historical Climatology Network Daily (GHCN-D) weather data were combined to create a fused dataset. The dataset was subjected to anomaly detection and feature selection, then the processed data was used to predict the number of firefighters using artificial neural network (ANN). In this process, the Genetic Algorithm (GA) was applied to optimize ANN structure. Finally, comparative experiments were conducted to evaluate the performance of the proposed method, which demonstrated superior accuracy in comparison to common regression models and traditional ANN. This advancement brings the number of dispatched firefighters closer to the actual demand and contributes to ensuring an adequate allocation of firefighters for urban fires. Consequently, decision-makers can make more informed decisions regarding the number of firefighters to dispatch, leading to more effective responses to urban fires.

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基于历史数据的预测城市火灾中消防员需求的新方法
城市火灾是一种普遍存在的火灾类型,需要迅速有效的应对措施。在报警时间确定适当的消防员人数至关重要,但这主要依赖于决策者的经验。由于人类知识的模糊性和局限性,依靠个人主观经验派遣的消防员人数往往与现实需求存在偏差。本文提出了一种基于历史数据的城市火灾消防员需求人数预测方法。首先,将国家火灾事故报告系统(NFIRS)数据和全球历史气候学网络每日(GHCN-D)天气数据结合起来,创建一个融合数据集。对数据集进行异常检测和特征选择,然后利用人工神经网络(ANN)对处理后的数据进行消防员人数预测。在此过程中,应用了遗传算法(GA)来优化 ANN 结构。最后,进行了对比实验来评估所提出方法的性能,结果表明,与普通回归模型和传统 ANN 相比,该方法具有更高的准确性。这一进步使派遣的消防员数量更接近实际需求,有助于确保为城市火灾分配足够的消防员。因此,决策者可以就派遣消防员的数量做出更明智的决定,从而更有效地应对城市火灾。
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来源期刊
Fire Safety Journal
Fire Safety Journal 工程技术-材料科学:综合
CiteScore
5.70
自引率
9.70%
发文量
153
审稿时长
60 days
期刊介绍: Fire Safety Journal is the leading publication dealing with all aspects of fire safety engineering. Its scope is purposefully wide, as it is deemed important to encourage papers from all sources within this multidisciplinary subject, thus providing a forum for its further development as a distinct engineering discipline. This is an essential step towards gaining a status equal to that enjoyed by the other engineering disciplines.
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