LIU JIAHUI, LIU JIANGYAN, CHEN HUANXIN, et al. Energy Assessment and Diagnosis of Variable Refrigerant Flow System Based on SVR-OCSVM Model. [J]. Journal of refrigeration, 2020, 41(4).
LIU JIAHUI, LIU JIANGYAN, CHEN HUANXIN, et al. Energy Assessment and Diagnosis of Variable Refrigerant Flow System Based on SVR-OCSVM Model. [J]. Journal of refrigeration, 2020, 41(4). DOI: 10.3969/j.issn.0253-4339.2020.04.075.
and operation conditions or abnormal factors such as refrigerant charge faults in variable refrigerant flow (VRF) systems can lead to complex and varying fluctuations in the energy consumption. It is difficult to directly diagnose whether normal or abnormal factors cause such fluctuations based on the energy consumption. In this study
an effective energy assessment and diagnosis method is proposed
which combines the support vector regression (SVR) algorithm with the one-class support vector machine (OCSVM) algorithm to diagnose the energy performance of a VRF system. An energy assessment and diagnosis model is constructed based on the normal data set
and is verified by the abnormal energy data set. The results show that the energy assessment and diagnosis model based on SVR-OCSVM has a high accuracy of up to 70%.
关键词
多联机系统用能评估与诊断支持向量回归单类支持向量机
Keywords
variable refrigerant flow systemenergy assessment and diagnosissupport vector regression algorithmone-class support vector machine