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基于LS-SVM的制冷系统故障诊断
引用本文:卿红,韩华,崔晓钰.基于LS-SVM的制冷系统故障诊断[J].能源研究与信息,2017,33(1):1-7.
作者姓名:卿红  韩华  崔晓钰
作者单位:上海理工大学 能源与动力工程学院, 上海 200093,上海理工大学 能源与动力工程学院, 上海 200093,上海理工大学 能源与动力工程学院, 上海 200093
基金项目:国家自然科学基金项目(51506125)
摘    要:为了提高制冷系统故障诊断速度及准确性,提出了基于最小二乘支持向量机(LS-SVM)的制冷系统故障诊断模型,并采用ASHRAE制冷系统故障模拟实验数据进行模型训练与验证.对一台90冷吨(约316 kW)的离心式冷水机组的7类制冷循环典型故障进行了实验.研究结果表明,LS-SVM模型对制冷系统七类故障的总体诊断正确率比支持向量机(SVM)诊断模型、误差反向传播(BP)神经网络诊断模型分别提高0.12%和1.32%;尽管对个别局部故障(冷凝器结垢、冷凝器水流量不足、制冷剂含不凝性气体)的诊断性能较SVM模型的略有下降,但对系统故障的诊断性能均有较大改善,特别是对制冷剂泄漏/不足故障;诊断耗时比SVM模型减少近一半,快速性亦有所改善.可见,LS-SVM模型在制冷系统故障诊断中具有良好的应用前景.

关 键 词:制冷系统  故障诊断  最小二乘支持向量机  误差反向传播  支持向量机
收稿时间:2015/12/8 0:00:00

Fault Diagnosis for Refrigeration System Based on LS-SVM
QING Hong,HAN Hua and CUI Xiaoyu.Fault Diagnosis for Refrigeration System Based on LS-SVM[J].Energy Research and Information,2017,33(1):1-7.
Authors:QING Hong  HAN Hua and CUI Xiaoyu
Affiliation:School of Energy and Power Engineering, University of Shanghai for Science and Technology, Shanghai 200093, China,School of Energy and Power Engineering, University of Shanghai for Science and Technology, Shanghai 200093, China and School of Energy and Power Engineering, University of Shanghai for Science and Technology, Shanghai 200093, China
Abstract:In order to improve the fault diagnosis speed and accuracy for refrigeration system,a fault diagnosis model based on least squares support vector machine(LS-SVM) was proposed.American Society of Heating,Refrigerating,and Air-conditioning Engineering(ASHRAE) refrigeration system fault simulation data was used for the model training and validation.The experiments of a centrifugal chiller of 90 tons with seven types of typical faults were conducted.The results showed that the overall diagnostic accuracy of LS-SVM model for seven types of faults increased by 0.12% and 1.32% respectively,compared with support vector machine(SVM) diagnosis model and error back-propagation(BP) neural network model.Although diagnostic performance of LS-SVM model for individual component-level fault(ConFoul/ReduCF/NonCon) was low slightly compared with SVM model,the diagnosis performance for system-level were greatly improved,especially for refrigerant leakage or lack of refrigerant.The diagnosis time of LS-SVM model reduced nearly half than that of SVM model.At the same time,its rapidity improved.Therefore,LS-SVM diagnostic model had good application in the fault diagnosis of refrigeration system.
Keywords:refrigeration system  fault diagnosis  least squares support vector machine  error back-propagation  support vector machine
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