Eine Plattform für die Wissenschaft: Bauingenieurwesen, Architektur und Urbanistik
Study on Thermal Comfort Model Based on Genetic Algorithm with Backpropagation Neural Network
Abstract To reduce fossil fuel energy consumption and improve the using efficiency, it is of great significance to study the thermal comfort model based on multiple physiological parameters. Compared with the classical models, comfort can be reflected more accurate by using the thermal comfort model based on multiple physiological parameters. In this paper, the experiments were performed to verify the effectiveness of the thermal comfort model. In particular, to verify the practicability of the thermal comfort model based on multiple physiological parameters, the established thermal comfort model based on the genetic algorithm with a backpropagation neural network and the classical PMV were compared. The results indicate that the established thermal comfort model is reasonable, which provides a feasible option for achieving a comfortable indoor environment. Finally, it puts forward further study on the thermal comfort model based on more physiological parameters.
Study on Thermal Comfort Model Based on Genetic Algorithm with Backpropagation Neural Network
Abstract To reduce fossil fuel energy consumption and improve the using efficiency, it is of great significance to study the thermal comfort model based on multiple physiological parameters. Compared with the classical models, comfort can be reflected more accurate by using the thermal comfort model based on multiple physiological parameters. In this paper, the experiments were performed to verify the effectiveness of the thermal comfort model. In particular, to verify the practicability of the thermal comfort model based on multiple physiological parameters, the established thermal comfort model based on the genetic algorithm with a backpropagation neural network and the classical PMV were compared. The results indicate that the established thermal comfort model is reasonable, which provides a feasible option for achieving a comfortable indoor environment. Finally, it puts forward further study on the thermal comfort model based on more physiological parameters.
Study on Thermal Comfort Model Based on Genetic Algorithm with Backpropagation Neural Network
Yang, Yalong (Autor:in) / Hong, Dejian (Autor:in) / Zhang, Rui (Autor:in) / Fang, Qiansheng (Autor:in) / Zhu, Xulai (Autor:in) / Wu, Wenmiao (Autor:in)
01.01.2019
11 pages
Aufsatz/Kapitel (Buch)
Elektronische Ressource
Englisch
British Library Conference Proceedings | 2014
|A Pavement Condition Rating Model using Backpropagation Neural Network
Online Contents | 1995
|A Backpropagation Neural Network Model for Semi-Rigid Steel Connections
Online Contents | 1995
|A neural network evaluation model for individual thermal comfort
Online Contents | 2007
|