Development of Anomaly Detectors for HVAC Systems Using Machine Learning

被引:16
作者
Borda, Davide [1 ,2 ]
Bergagio, Mattia [1 ,2 ]
Amerio, Massimo [1 ,2 ]
Masoero, Marco Carlo [3 ]
Borchiellini, Romano [2 ,3 ]
Papurello, Davide [2 ,3 ]
机构
[1] EURIX, Corso Vittorio Emanuele II, 61, I-10128 Turin, Italy
[2] Polytech Univ Turin, Energy Ctr Initiat, Via Paolo Borsellino, 38-16, I-10138 Turin, Italy
[3] Polytech Univ Turin, Dept Energy DENERG, 24 Corso Duca Abruzzi, I-10129 Turin, Italy
关键词
HVAC; fault detection and diagnosis; anomaly detection; artificial intelligence; machine learning; energy savings; FAULT-DETECTION; DIAGNOSIS; OPTIMIZATION; DESIGN;
D O I
10.3390/pr11020535
中图分类号
TQ [化学工业];
学科分类号
0817 ;
摘要
Faults and anomalous behavior affect the operation of Heating, Ventilation and Air Conditioning (HVAC) systems. This causes performance loss, energy waste, noncompliance with regulations and discomfort among occupants. To prevent damage, automated, fast identification of faults in HVAC systems is needed. Fault Detection and Diagnosis (FDD) techniques are very effective for these purposes. The best FDD methods, in terms of cost effectiveness and data exploitation, are based on process history; i.e., on sensor data from automation systems. In this work, supervised and semi-supervised models were developed. Other than with regard to outdoor temperature and humidity, the input parameters of an HVAC system have few internal variables. Performance of traditional methods (e.g., VAR, Random Forest) is low, so Artificial Neural Networks (ANNs) were selected, since they can capture nonlinear relationships among features and are easily optimized. ANNs can detect simultaneous faults from different classes. ANN metrics are easily evaluated. The ground truth is obtained from process history (supervised case) and from a mix of deterministic methods and clustering (semi-supervised case). The derivation of the ground truth in the semi-supervised case, and extensive comparison with advanced supervised models, set this work apart from previous studies. The Mean Absolute Error (MAE) of the best supervised model was 0.032 over 15 min and 0.034 over 30 min. The Balanced Accuracy Score (BAS) of the best semi-supervised model was 86%.
引用
收藏
页数:26
相关论文
共 42 条
[21]   A review of fault detection and diagnostics methods for building systems [J].
Kim, Woohyun ;
Katipamula, Srinivas .
SCIENCE AND TECHNOLOGY FOR THE BUILT ENVIRONMENT, 2018, 24 (01) :3-21
[22]  
Krese G, 2012, STROJ VESTN-J MECH E, V58, P107, DOI [10.5545/sv-jme.2011.160, 10.5545/sv-jme.2011160]
[23]   Deep-learning-based fault detection and diagnosis of air-handling units [J].
Lee, Kuei-Peng ;
Wu, Bo-Huei ;
Peng, Shi-Lin .
BUILDING AND ENVIRONMENT, 2019, 157 :24-33
[24]   A novel semi-supervised data-driven method for chiller fault diagnosis with unlabeled data [J].
Li, Bingxu ;
Cheng, Fanyong ;
Zhang, Xin ;
Cui, Can ;
Cai, Wenjian .
APPLIED ENERGY, 2021, 285
[25]   Semi-Supervised Transfer Learning Methodology for Fault Detection and Diagnosis in Air-Handling Units [J].
Martinez-Viol, Victor ;
Urbano, Eva M. ;
Torres Rangel, Jose E. ;
Delgado-Prieto, Miguel ;
Romeral, Luis .
APPLIED SCIENCES-BASEL, 2022, 12 (17)
[26]  
Masdoua Y, 2022, INT C CONTROL DECISI, P1375, DOI [10.1109/CODIT55151.2022.9803907, 10.1109/CoDIT55151.2022.9803907]
[27]   Fault detection and diagnosis of large-scale HVAC systems in buildings using data-driven methods: A comprehensive review [J].
Mirnaghi, Maryam Sadat ;
Haghighat, Fariborz .
ENERGY AND BUILDINGS, 2020, 229
[28]   LSTM-based indoor air temperature prediction framework for HVAC systems in smart buildings [J].
Mtibaa, Fatma ;
Nguyen, Kim-Khoa ;
Azam, Muhammad ;
Papachristou, Anastasios ;
Venne, Jean-Simon ;
Cheriet, Mohamed .
NEURAL COMPUTING & APPLICATIONS, 2020, 32 (23) :17569-17585
[29]  
OMalley T., KERAS TUNER
[30]  
Pedregosa F, 2011, J MACH LEARN RES, V12, P2825