通过后处理改进室外通用热气候指数的业务预报。

IF 3 3区 地球科学 Q2 BIOPHYSICS International Journal of Biometeorology Pub Date : 2024-05-01 Epub Date: 2024-03-05 DOI:10.1007/s00484-024-02640-6
Danijela Kuzmanović, Jana Banko, Gregor Skok
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引用次数: 0

摘要

通用热气候指数(UTCI)是一种热舒适指数,用于描述人体对环境条件的感受。它以温度为单位,并考虑了人体生理方面的因素。它考虑了气温、湿度、风、辐射和衣服的影响。在许多国家,它越来越多地被用作衡量室外条件下热舒适度的指标,其数值的计算是气象业务预报的一部分。与此同时,由于气象预报的误差,室外UTCI 的预报往往存在相对较大的误差。斯洛文尼亚有一个相对密集的气象站网络。最重要的是,这些气象站持续进行全球太阳辐射测量,与没有辐射测量的情况相比,这使得UTCI 实际值的估算更加准确。我们利用 42 个观测站七年来每小时分辨率的测量数据,首先验证了首个预报日的UTCI业务预报,其次尝试通过后处理改进预报。我们使用了两种机器学习方法:线性回归和神经网络。这两种方法都成功地减少了UTCI业务预报的误差。神经网络和线性回归的日平均绝对误差分别从 5 ∘ C 和 3.5 ∘ C 降至 3 ∘ C。这两种方法,特别是神经网络,还大大减少了误差对一天中时间的依赖。
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Improving the operational forecasts of outdoor Universal Thermal Climate Index with post-processing.

The Universal Thermal Climate Index (UTCI) is a thermal comfort index that describes how the human body experiences ambient conditions. It has units of temperature and considers physiological aspects of the human body. It takes into account the effect of air temperature, humidity, wind, radiation, and clothes. It is increasingly used in many countries as a measure of thermal comfort for outdoor conditions, and its value is calculated as part of the operational meteorological forecast. At the same time, forecasts of outdoor UTCI tend to have a relatively large error caused by the error of meteorological forecasts. In Slovenia, there is a relatively dense network of meteorological stations. Crucially, at these stations, global solar radiation measurements are performed continuously, which makes estimating the actual value of the UTCI more accurate compared to the situation where no radiation measurements are available. We used seven years of measurements in hourly resolution from 42 stations to first verify the operational UTCI forecast for the first forecast day and, secondly, to try to improve the forecast via post-processing. We used two machine-learning methods, linear regression, and neural networks. Both methods have successfully reduced the error in the operational UTCI forecasts. Both methods reduced the daily mean error from about 2.6 C to almost zero, while the daily mean absolute error decreased from 5 C to 3 C for the neural network and 3.5 C for linear regression. Both methods, especially the neural network, also substantially reduced the dependence of the error on the time of the day.

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来源期刊
CiteScore
6.40
自引率
9.40%
发文量
183
审稿时长
1 months
期刊介绍: The Journal publishes original research papers, review articles and short communications on studies examining the interactions between living organisms and factors of the natural and artificial atmospheric environment. Living organisms extend from single cell organisms, to plants and animals, including humans. The atmospheric environment includes climate and weather, electromagnetic radiation, and chemical and biological pollutants. The journal embraces basic and applied research and practical aspects such as living conditions, agriculture, forestry, and health. The journal is published for the International Society of Biometeorology, and most membership categories include a subscription to the Journal.
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