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A systematic extreme learning machine approach to analyze visitors' thermal comfort at a public urban space

机译:一种系统的极限学习机方法,用于分析公共城市空间中访客的热舒适度

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Thermal quality of open public spaces in every city influences its residents' outdoor life. Higher level of thermal comfort attracts more visitors to such places; hence, brings benefits to the community. Previous research works have used the body energy balance or adaptation model for predicting the thermal comfort in outdoor spaces. However, limited research works have applied computational methods in this field. For the first of its' type, this study applied a systematic approach using a class of soft-computing methodology known as the extreme learning machine (ELM) to forecast the thermal comfort of the subject visitors at an open area in Iran. For data collection, this study used common thermal indices for assessing the thermal perceptions of the subjects. The fieldworks comprised of measuring the micro climatic conditions and interviewing the visitors. This study compared the results of ELM with other conventional soft-computing methods (i.e., artificial neural network (ANN) and genetic programming (GP)). The findings indicate that the ELM results match with the field data. This implies that a model constructed by ELM can accurately predict visitors' thermal sensations. We conclude that the proposed model's predictability performance is reliable and superior compared to other approaches (i.e., GP and ANN). Besides, the ELM methodology significantly reduces training time for a Neural Network as compared to the conventional methods. (C) 2016 Elsevier Ltd. All rights reserved.
机译:每个城市开放式公共场所的热质量都会影响其居民的户外生活。更高级别的热舒适性吸引了更多的游客前往此类场所。因此,为社区带来了好处。先前的研究工作已使用人体能量平衡或适应模型来预测室外空间的热舒适性。然而,有限的研究工作已经在该领域中应用了计算方法。对于第一种类型的研究,本研究采用一种系统方法,使用一类称为极端学习机(ELM)的软计算方法来预测伊朗空旷地区对象的热舒适度。对于数据收集,本研究使用常见的热指数来评估受试者的热感。现场工作包括测量微气候条件并采访访问者。这项研究将ELM的结果与其他传统的软计算方法(即人工神经网络(ANN)和遗传编程(GP))进行了比较。结果表明,ELM结果与现场数据相符。这意味着由ELM构建的模型可以准确预测访客的热感。我们得出结论,与其他方法(即GP和ANN)相比,所提出的模型的可预测性性能可靠且优越。此外,与传统方法相比,ELM方法大大减少了神经网络的训练时间。 (C)2016 Elsevier Ltd.保留所有权利。

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