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首页> 外文期刊>Thermal science >Forecasting of outdoor thermal comfort index in urban open spaces: The Nis fortress case study
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Forecasting of outdoor thermal comfort index in urban open spaces: The Nis fortress case study

机译:Nis堡垒案例研究城市开放空间中室外热舒适指数的预测

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摘要

Outdoor thermal environment is affected by variables like air temperature, wind velocity, humidity, temperature of the radiant surfaces, and solar radiation, which can be expressed by a single number - the thermal index. Since these variables are subject to annual and diurnal variations, prediction of thermal comfort is of special importance for people to plan their outdoor activities. The purpose of this research was to develop and apply the extreme learning machine for forecasting physiological equivalent temperature values. The results of the extreme learning machine model were compared with genetic programming and artificial neural network. The reliability of the computational models was accessed based on simulation results and using several statistical indicators. According to obtained results, it can be concluded that extreme learning machine can be utilized effectively in short term forecasting of physiological equivalent temperature.
机译:室外热环境受诸如空气温度,风速,湿度,辐射表面温度和太阳辐射等变量的影响,这些变量可以用一个数字表示-热指数。由于这些变量每年和每天都有变化,因此热舒适度的预测对于人们计划户外活动特别重要。这项研究的目的是开发并应用极限学习机来预测生理等效温度值。将极限学习机模型的结果与遗传编程和人工神经网络进行了比较。基于仿真结果并使用多个统计指标来访问计算模型的可靠性。根据获得的结果,可以得出结论,极限学习机可以有效地用于生理等效温度的短期预测。

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