基于CNN与ResNte的离心式冷水机组故障诊断

作者:刘飞天 韩华 杨钰婷 高嘉檠 叶晖云
单位:上海理工大学
摘要:卷积神经网络(convolutional neural network, CNN)因其具有自主学习并从大量数据中提取特征的能力被广泛应用于各种领域,但在制冷系统故障诊断领域中应用较少。本文提出了一种基于卷积神经网络构建、适用于离心式冷水机组的故障诊断模型,并采用残差结构对模型进行了优化。对ASHRAE RP-1043项目离心式冷水机组7种典型故障的诊断结果显示:包含21个卷积层的ResNet_21模型的整体故障诊断正确率达到了99.40%,较浅层网络CNN_3提升7.48%;系统级故障中的制冷剂泄漏故障诊断正确率较CNN_14提升1.24%,达到98.55%;对正常工况的识别更准确,达到98.77%,虚警率降低1.43%;局部故障的诊断正确率均达到99.7%以上。
关键词:制冷系统离心式冷水机组故障检测与诊断卷积神经网络残差神经网络
作者简介:刘飞天,男,1999年生,在读硕士研究生;*韩华,200093上海市杨浦区军工路516号上海理工大学能源与动力工程学院,E-mail:happier_han@126.com;
基金:国家自然科学基金资助项目(编号:51506125);
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参考文献[1] 王跃峰.离心式冷水机组在空调系统中的应用分析[J].科学之友,2011(11):22- 23.

[2] ZHAO Y,LI T,ZHANG X,et al.Artificial intelligence-based fault detection and diagnosis methods for building energy systems:advantages,challenges and the future[J].Renewable and sustainable energy reviews,2019,109:85- 101.

[3] KOCYIGIT N.Fault and sensor error diagnostic strategies for a vapor compression refrigeration system by using fuzzy inference systems and artificial neural network[J].International journal of refrigeration,2015,50:69- 79.

[4] SUN S,LI G,CHEN H,et al.A hybrid ICA-BPNN-based FDD strategy for refrigerant charge faults in variable refrigerant flow system[J].Applied thermal engineering,2017,127:718- 728.

[5] HAN H,CAO Z,GU B,et al.PCA-SVM-based automated fault detection and diagnosis (AFDD) for vapor-compression refrigeration systems[J].HVAC&R research,2010,16(3):295- 313.

[6] BEGHI A,BRIGNOLI R,CECCHINATO L,et al.Data-driven fault detection and diagnosis for HVAC water chillers[J].Control engineering practice,2016,53:79- 91.

[7] HASSANPOUR H,MHASKAR P,HOUSE J M,et al.A hybrid modeling approach integrating first-principles knowledge with statistical methods for fault detection in HVAC systems[J].Computers & chemical engineering,2020,142:107022.

[8] 谷波,韩华,洪迎春,等.基于SVM的制冷系统多故障并发检测与诊断[J].化工学报,2011,62(增刊2):112- 119.

[9] 李前舸,薛扬帆,张帅,等.基于纵横交叉支持向量机的制冷剂充注量故障诊断[J].制冷技术,2021,41(1):23- 28.

[10] 吴斌,杜鑫,杜志敏,等.基于随机森林的屋顶机空调系统故障诊断研究[J].制冷技术,2018,38(5):50- 57.

[11] 刘倩,李正飞,陈焕新,等.基于最大相关最小冗余-随机森林算法的多联机系统在线故障诊断策略研究[J].制冷技术,2019,39(6):1- 8.

[12] LI P,ANDUV B,ZHU X,et al.Across working conditions fault diagnosis for chillers based on IoT intelligent agent with deep learning model[J].Energy and buildings,2022,268:112188.

[13] 黄雅静,廖爱华,于淼,等.基于改进CNN的轴承声学故障诊断[J].电子科技,2023,36(1):75- 80,94.

[14] 昝涛,王辉,刘智豪,等.基于多输入层卷积神经网络的滚动轴承故障诊断模型[J].振动与冲击,2020,39(12):142- 149,163.

[15] 郑一珍,牛蔺楷,熊晓燕,等.基于一维卷积神经网络的圆柱滚子轴承保持架故障诊断[J].振动与冲击,2021,40(19):230- 238,285.

[16] ZHOU Z,LI G,CHEN H,et al.Fault diagnosis method for building VRF system based on convolutional neural network:considering system defrosting process and sensor fault coupling[J].Building and environment,2021,195:107775.

[17] ELNOUR M,MESKIN N.Actuator fault diagnosis in multi-zone HVAC systems using 2D convolutional neural networks[C]//2020 IEEE International Conference on Informatics,IoT,and Enabling Technologies (ICIoT),2020:404- 409.

[18] LIAO H,CAI W,CHENG F,et al.An online data-driven fault diagnosis method for air handling units by rule and convolutional neural networks[J].Sensors,2021,21 (13):4358.

[19] COMSTOCK M C,BRAUN J E.Development of analysis tools for the evaluation of fault detection and diagnostics for chillers[R].Indiana:[s.n.],1999:1- 204.

[20] 李玉鑑,张婷,单传辉,等.深度学习:卷积神经网络从入门到精通[M].北京:机械工业出版社,2018:4.

[21] GLOROT X,BENGIO Y.Understanding the difficulty of training deep feedforward neural networks[C]//JMLR Workshop and Conference Proceedings,2010:249- 256.

[22] 武国宁,胡汇丰,于萌萌.深度学习中的正则化方法研究[J].计算机科学与应用,2020,10(6):1224- 1233.

[23] KINGMA D P,BA J.Adam:a method for stochastic optimization[C]//International Conference on Learning Representations,2014:2- 3.

[24] ZHOU B,KHOSLA A,LAPEDRIZA A,et al.Learning deep features for discriminative localization[C]//Proceedings of the IEEE Conference on Computer Vision and Pattern Recognition,2016:2921- 2929.

[25] 刘天舒.BP神经网络的改进研究及应用[D].哈尔滨:东北农业大学,2011:24- 27.

[26] HE K,ZHANG X,REN S,et al.Deep residual learning for image recognition[C]//Proceedings of the IEEE Conference on Computer Vision and Pattern Recognition,2016:770- 778.
Fault diagnosis of centrifugal chillers based on CNN and ResNet
Liu Feitian Han Hua Yang Yuting Gao Jiaqing Ye Huiyun
(University of Shanghai for Science and Technology)
Abstract: Convolutional neural network(CNN) is widely used in various fields due to its ability of autonomous learning and extracting features from a large amount of data, but it is rarely used in the field of refrigeration system fault diagnosis. In this paper, a fault diagnosis model for centrifugal chillers based on CNN is proposed, and the residual structure is used to optimize the model. The diagnosis results of seven typical faults of centrifugal chiller of ASHRAE RP-1043 project show that the overall fault diagnosis accuracy rate of ResNet_21 model with 21 convolutional layers is 99.40%, 7.48% higher than that of shallow network CNN_3. The refrigerant leakage fault diagnosis accuracy rate of system-level faults is 1.24% higher than that of CNN_14, reaching 98.55%. The identification of normal working conditions is more accurate, reaching 98.77%, and the false alarm rate is reduced by 1.43%. The diagnostic accuracy rate of local faults is above 99.7%.
Keywords: refrigeration system; centrifugal chiller; fault detection and diagnosis; convolutional neural network; residual neural network;
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