Study on the Control Method of Temperature and Humidity Environment in Building Intelligent System

  • Kuan HuangEmail author
  • Haolin Song
  • Hongrui Fu
Conference paper
Part of the Advances in Intelligent Systems and Computing book series (AISC, volume 890)


Due to the difficulty of establishing the accurate control model for building an intelligent system, a neural network predictive control method is proposed, in this paper, based on a weed optimization algorithm. Through considering indoor temperature and relative humidity environment factors, a control model of temperature and humidity environment is first established in an intelligent building. Then, the hidden layer nodes center of the RBF neural network is optimized by using the weed optimization algorithm. The above mentioned work focuses on improving the shortcomings of Orthogonal Least Squares (OLS) algorithm, and simultaneously simplifies the network architecture. The simulation results show that the RBF neural network predictive control method based on the weed optimization algorithm has better approximation ability and generalization ability contrasting with the OLS algorithm.


Radial basis function Weed optimization algorithm Neural network node centers Building intelligent system 



This research work is partially supported by the National Natural Youth Science Foundation of China (Project Codes: 61305125), Shenyang Jianzhu University Discipline Content Education Project (Project Codes: XKHY2-66), the Natural Science Foundation of University (Project Codes: 2014068) and National Post Doctor Foundation (Project Codes: 2013M530955, 2014T70265).


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Copyright information

© Springer Nature Singapore Pte Ltd. 2019

Authors and Affiliations

  1. 1.Faculty of Information and Control EngineeringShenyang Jianzhu UniversityShenyangChina

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