利用基于云的天气数据服务预测火灾风险

R. Strand, Sindre Stokkenes, L. Kristensen, T. Log
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引用次数: 3

摘要

干燥和寒冷的冬季导致非常干燥的室内条件,并且在历史上导致了挪威高而密集的木质房屋的严重火灾。2014年1月发生在伊里耶尔达尔斯岛的大火是一个毁灭性的提醒,提醒人们城镇火灾仍然对现代社会构成威胁。为了减少火灾发生的可能性和后果,有必要对当前和近期的火灾风险进行准确的估计,并采取适当的规划预防措施。云计算服务以测量和预报的形式提供对天气数据的访问,结合火灾风险建模的最新发展,可以实现智能和细粒度的火灾风险预测服务。本研究的主要贡献在于木质房屋火灾风险预测指示模型的实施和实验验证,以及木质房屋火灾风险概念的概述。木制房屋火灾风险模型关注的是在潜在的火灾事件中第一个着火的房屋(室内)。这样的火灾将是至关重要的,在火灾发展外部火焰和余烬后闪燃,因此高可能性的火灾蔓延之前进行干预。实现的模型利用云提供的天气测量和预报来预测给定地理位置当前和近期的火灾风险。它利用测量和预测的室外温度和相对湿度,计算可能着火的房屋的室内木质燃料含水率,并估计闪络时间。后者是通过与燃料水分含量的经验关系发现的,并且可以用作火灾风险的指示,超出了模拟的单个房屋。该模型的实现被集成到一个基于微服务的软件系统中,并在选定的地理位置进行了实验验证,实验依据是挪威气象研究所RESTful API提供的天气数据。通过将模型应用于预定义的案例,并从观察或理论中获得已知的结果,从而进行验证。第一部分是对产出的总体评价,考虑到三次历史火灾。然后考虑季节变化和自然气候变化。我们的评估显示,我们有能力结合记录的天气数据和预报,提供可靠和准确的火灾风险指示。此外,我们基于云和微服务的软件系统实现在数据存储和计算时间方面是高效的。最后,基于模型输出,对选定的城市进行了新的火灾风险概念论证。它通过利用特定位置的火灾风险轮廓成功地描述了室内湿度降低后的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fire Risk Prediction Using Cloud-based Weather Data Services
Dry and cold winter seasons result in very dry indoor conditions and have historically contributed to severe fires in the high and dense representation of wooden homes in Norway. The fire in Lærdalsøyri, January 2014, is a devastating reminder of town fires still posing a threat to a modern society. In order to reduce conflagration probability and consequences, it is necessary to have an accurate estimate of the current and near future fire risk to take proper planning precautions. Cloud computing services providing access to weather data in the form of measurements and forecasts, combined with recent developments in fire risk modelling, may enable smart and fine-grained fire risk prediction services. The main contribution of this study is implementation and experimental validation of a wooden home predictive fire risk indication model, as well as outlining a wooden home fire risk concept. The wooden home fire risk model focuses on the first house catching fire (indoors) in a potential conflagration event. Such a fire would be critical to intervene prior to the fire developing exterior flames and embers post flashover, and thus high likelihood of fire spread. The implemented model exploits cloud-provided weather measurements and forecasts, to predict the current- and near future fire risk at given geographical locations. It computes the indoor wooden fuel moisture content of houses that may catch fire, using measured and forecasted outdoor temperature and relative humidity, and estimates the time to flashover. The latter is found through an empirical relation with the fuel moisture content, and can be used as an indication of the fire risk, beyond the modelled single house. The model implementation was integrated into a micro-service based software system and experimentally validated at selected geographical locations, relying on weather data provided by the RESTful API’s of the Norwegian Meteorological Institute. The validation took place by applying the model to predefined cases, with an outcome known from observations or theory. The first part is a general evaluation of the outputs, considering three historical fires. Then, seasonal changes and natural climate variations were considered. Our evaluation demonstrates the ability to provide trustworthy and accurate fire risk indications using a combination of recorded weather data and forecasts. Further, our cloud- and micro-service based software system implementation is efficient with respect to data storage and computation time. Finally, the novel fire risk concept is demonstrated for a selected city, based on model output. It successfully depicts the implications following reduced indoor humidity by utilizing location specific fire risk contours.
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