基于机器学习算法的多单元空调系统制冷剂充注故障定量检测

IF 3.5 2区 工程技术 Q1 ENGINEERING, MECHANICAL International Journal of Refrigeration-revue Internationale Du Froid Pub Date : 2024-10-26 DOI:10.1016/j.ijrefrig.2024.10.026
Tong Zhao, Junhong Yang, Junda Zhu, Mengbo Peng, Can Lu, Zekun Shi
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引用次数: 0

摘要

制冷剂充注差异是空调系统的主要故障。达到最佳充注量对系统性能至关重要,这就凸显了精确制冷剂充注量预测的重要性。本研究介绍了一种通过整合马尔可夫变换场(MTF)、卷积神经网络(CNN)和多头自注意(MSA)机制来定量检测制冷剂充注误差的算法。利用高精度焓差室建立了可变制冷剂流量(VRF)制冷剂充注试验台。这种设置有助于分析系统参数对充注故障的敏感性,并帮助创建算法的训练数据集。与支持向量机 (SVM)、随机森林 (RF)、带自注意 (AT) 的 CNN 和 MTF-CNN-MSA 进行了比较分析。研究结果表明,我们的方法能够以可视化的方式捕捉时间序列中的时间依赖性和动态变化,为辨别此类数据中的故障模式提供了新的见解。值得注意的是,高压点和低压点的最大压力变化分别为 0.25 兆帕和 0.07 兆帕,高温点和低温点的温度变化分别为 12 摄氏度和 3.5 摄氏度。高压点和高温点对制冷剂充注量的变化特别敏感,因此利用这些部分的参数来构建数据集。CNN-MSA 算法在各种故障类型中表现出一致的性能,有效地划分了故障特征。SVM、RF、CNN-AT 和 MTF-CNN-MSA 算法的准确率分别为 84.38%、73.75%、88.13% 和 93.75%。相比之下,CNN-MSA 算法能更准确地检测出不同级别的制冷剂充注故障。
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Quantitative detection of refrigerant charge faults in multi-unit air conditioning systems based on machine learning algorithms
Refrigerant charging discrepancies constitute the predominant malfunctions in air conditioning systems. Achieving the optimal charging level is crucial for system performance, underscoring the importance of precise refrigerant level prediction. This study introduces an algorithm designed for the quantitative detection of refrigerant charging errors by integrating the Markov Transition Field (MTF), Convolutional Neural Networks (CNN), and Multi-head Self-Attention (MSA) mechanisms. A high-precision enthalpy difference chamber was employed to establish a Variable Refrigerant Flow (VRF) refrigerant charging test bench. This setup facilitated the analysis of system parameter sensitivity to charging faults and aided in the creation of a training dataset for the algorithm. Comparative analysis was conducted against Support Vector Machines (SVM), Random Forests (RF), CNN with Self-Attention (AT), and MTF-CNN-MSA. The findings reveal that our method adeptly captures temporal dependencies and dynamic shifts in time series as visual representations, offering novel insights for discerning fault patterns within such data. Notably, the maximum pressure variations at high-pressure and low-pressure points were 0.25 MPa and 0.07 MPa, respectively, with temperature shifts of 12 °C and 3.5 °C at the high and low-temperature points. The high-pressure and high-temperature points are particularly sensitive to changes in refrigerant charging, and parameters from these sections were utilized to construct the dataset. The CNN-MSA algorithm demonstrates consistent performance across various fault types, effectively delineating fault characteristics. The accuracies achieved by SVM, RF, CNN-AT, and MTF-CNN-MSA were 84.38 %, 73.75 %, 88.13 %, and 93.75 %, respectively. In comparison, the CNN-MSA algorithm was able to more accurately detect refrigerant charge faults at different levels.
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来源期刊
CiteScore
7.30
自引率
12.80%
发文量
363
审稿时长
3.7 months
期刊介绍: The International Journal of Refrigeration is published for the International Institute of Refrigeration (IIR) by Elsevier. It is essential reading for all those wishing to keep abreast of research and industrial news in refrigeration, air conditioning and associated fields. This is particularly important in these times of rapid introduction of alternative refrigerants and the emergence of new technology. The journal has published special issues on alternative refrigerants and novel topics in the field of boiling, condensation, heat pumps, food refrigeration, carbon dioxide, ammonia, hydrocarbons, magnetic refrigeration at room temperature, sorptive cooling, phase change materials and slurries, ejector technology, compressors, and solar cooling. As well as original research papers the International Journal of Refrigeration also includes review articles, papers presented at IIR conferences, short reports and letters describing preliminary results and experimental details, and letters to the Editor on recent areas of discussion and controversy. Other features include forthcoming events, conference reports and book reviews. Papers are published in either English or French with the IIR news section in both languages.
期刊最新文献
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