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日常救护车呼叫短期预测中的天气因素。

Weather factors in the short-term forecasting of daily ambulance calls.

作者信息

Wong Ho-Ting, Lai Poh-Chin

机构信息

Department of Geography, The University of Hong Kong, Pokfulam Road, Hong Kong, People's Republic of China.

出版信息

Int J Biometeorol. 2014 Jul;58(5):669-78. doi: 10.1007/s00484-013-0647-x. Epub 2013 Mar 3.

Abstract

The daily ambulance demand for Hong Kong is rising, and it has been shown that weather factors (temperature and humidity) play a role in the demand for ambulance services. This study aimed at developing short-term forecasting models of daily ambulance calls using the 7-day weather forecast data as predictors. We employed the autoregressive integrated moving average (ARIMA) method to analyze over 1.3 million cases of emergency attendance in May 2006 through April 2009 and the 7-day weather forecast data for the same period. Our results showed that the ARIMA model could offer reasonably accurate forecasts of daily ambulance calls at 1-7 days ahead of time and with improved accuracy by including weather factors. Specifically, the inclusion of average temperature alone in our ARIMA model improved the predictability of the 1-day forecast when compared to that of a simple ARIMA model (8.8% decrease in the root mean square error, RMSE=53 vs 58). The improvement in the 7-day forecast with average temperature as a predictor was more pronounced, with a 10% drop in prediction error (RMSE=62 vs 69). These findings suggested that weather forecast data can improve the 1- to 7-day forecasts of daily ambulance demand. As weather forecast data are readily accessible from Hong Kong Observatory's official website, there is virtually no cost to including them in the ARIMA models, which yield better prediction for forward planning and deployment of ambulance manpower.

摘要

香港每日的救护车需求量在上升,并且已有研究表明天气因素(温度和湿度)对救护车服务需求有影响。本研究旨在利用7天天气预报数据作为预测因子,建立每日救护车呼叫量的短期预测模型。我们采用自回归积分滑动平均(ARIMA)方法,分析了2006年5月至2009年4月期间超过130万例的紧急出诊病例以及同期的7天天气预报数据。我们的结果显示,ARIMA模型能够提前1至7天对每日救护车呼叫量提供较为准确的预测,并且通过纳入天气因素可提高预测准确性。具体而言,与简单ARIMA模型相比,在我们的ARIMA模型中仅纳入平均温度,可提高1天预测的可预测性(均方根误差下降8.8%,RMSE分别为53和58)。以平均温度作为预测因子时,7天预测的改善更为显著,预测误差下降了10%(RMSE分别为62和69)。这些发现表明,天气预报数据可以改善对每日救护车需求的1至7天预测。由于香港天文台官方网站可轻松获取天气预报数据,将其纳入ARIMA模型几乎无需成本,这能为救护车人力的前瞻性规划和部署带来更好的预测效果。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/d965/7087605/bd51997769b1/484_2013_647_Fig1_HTML.jpg

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