Publication date: 15 November 2017
Source:Building and Environment, Volume 125
Author(s): Min Hee Chung, Young Kwon Yang, Kwang Ho Lee, Je Hyeon Lee, Jin Woo Moon
The aim of this study was to develop an Artificial Neural Network (ANN) model that can predict the amount of cooling energy consumption for the different settings of the variable refrigerant flow (VRF) cooling system's control variables. Matrix laboratory (MATLAB) and its neural network toolbox were used for the ANN model development and test performance. For the model training and performance evaluation, data sets were collected through the field measurement. Four steps were conducted in the development process: initial model development, input variable selection, model optimization, and performance evaluation. In the initial model development and input variable selection process, seven input variables were selected as input neurons: TEMPOUT , HUMIDOUT , TEMPIN , LOADCOOL , TEMPSA , TEMPCOND , and PRESCOND . In addition, the initial model was optimized to have 2 hidden layers, 15 hidden neurons in each hidden layer, a learning rate of 0.3, and a momentum of 0.3. The optimized model demonstrated its prediction accuracy within the recommended level, thus proved its potential for application in the control algorithm for creating a comfortable indoor thermal environment in an energy-efficient manner.
Source:Building and Environment, Volume 125
Author(s): Min Hee Chung, Young Kwon Yang, Kwang Ho Lee, Je Hyeon Lee, Jin Woo Moon