Department of Mechanical Engineering, Piraeus University of Applied Sciences, Athens, Greece.
Meteorology Laboratory, Agricultural University of Athens, Athens, Greece.
Int J Biometeorol. 2018 Jul;62(7):1265-1274. doi: 10.1007/s00484-018-1531-5. Epub 2018 Apr 11.
The present study deals with the development and application of artificial neural network models (ANNs) to estimate the values of a complex human thermal comfort-discomfort index associated with urban heat and cool island conditions inside various urban clusters using as only inputs air temperature data from a standard meteorological station. The index used in the study is the Physiologically Equivalent Temperature (PET) index which requires as inputs, among others, air temperature, relative humidity, wind speed, and radiation (short- and long-wave components). For the estimation of PET hourly values, ANN models were developed, appropriately trained, and tested. Model results are compared to values calculated by the PET index based on field monitoring data for various urban clusters (street, square, park, courtyard, and gallery) in the city of Athens (Greece) during an extreme hot weather summer period. For the evaluation of the predictive ability of the developed ANN models, several statistical evaluation indices were applied: the mean bias error, the root mean square error, the index of agreement, the coefficient of determination, the true predictive rate, the false alarm rate, and the Success Index. According to the results, it seems that ANNs present a remarkable ability to estimate hourly PET values within various urban clusters using only hourly values of air temperature. This is very important in cases where the human thermal comfort-discomfort conditions have to be analyzed and the only available parameter is air temperature.
本研究旨在开发和应用人工神经网络 (ANN) 模型,仅使用标准气象站的空气温度数据,估算与城市热岛和冷岛条件相关的复杂人体热舒适-不舒适指数的数值,该指数用于研究的是生理等效温度 (PET) 指数,该指数需要输入空气温度、相对湿度、风速和辐射(短波和长波分量)等参数。为了估算 PET 每小时的值,开发了 ANN 模型,对其进行了适当的训练和测试。模型结果与基于各种城市集群(街道、广场、公园、庭院和画廊)在雅典市(希腊)极端炎热天气期间的现场监测数据计算得出的 PET 指数值进行了比较。为了评估开发的 ANN 模型的预测能力,应用了几个统计评估指标:平均偏差误差、均方根误差、一致性指数、决定系数、真实预测率、误报率和成功率。根据结果,似乎 ANN 具有使用仅每小时空气温度值估算各种城市集群内每小时 PET 值的显著能力。在必须分析人体热舒适-不舒适条件且仅可用参数为空气温度的情况下,这一点非常重要。