Study on Sensor Fault-Tolerant Control for Central Air-Conditioning Systems Using Bayesian Inference with Data Increments
Abstract
:1. Introduction
1.1. Background
1.2. Research and Challenges in Fault-Tolerant Control of Building Energy Systems
1.3. Research and Challenges in Data Incremental Learning for FTC
1.4. Research Objectives
- (1)
- The first objective was to propose an FTC strategy for the in situ selective incremental calibration of HVAC system sensors based on the multiple linear regression–Bayesian inference (MLR-BI) and principal component analysis (PCA) methods.
- (2)
- The second objective was the quantification of the FTC results for three target sensors in the central air-conditioning system, including the target variables, energy consumption, and thermal comfort.
- (3)
- The last objective was to explore the impacts of several influencing factors (i.e., the data quality, data volume, and number of variables) on the FTC results and determine the appropriate FTC strategies for the target sensors.
2. Principle of In Situ Selective Incremental Calibration
2.1. Fault Calibration Using Multiple Linear Regression–Bayesian Inference
2.2. Data Filtering Using Principal Component Analysis
3. Research Methodology
3.1. Research Framework
- (1)
- The FTC strategy for in situ selective incremental calibration (ISIC) was proposed. MLR-BI and PCA were used to realize fault calibration and data filtering, respectively. A brief flow of the ISIC strategy is shown in Appendix A.
- (2)
- The fault modeling and FTC of the indoor air thermostat (Ttz1), supply air temperature (Tsa), and chilled water supply temperature (Tchws) in the CAC system using the EnergyPlus–Python co-simulation testbed was carried out to demonstrate the variations in target variables and energy consumption on a typical day and the changes in thermal comfort in August.
- (3)
- The effects of the data quality, data volume, and number of variables on the FTC results were evaluated.
3.2. Process of ISIC Fault-Tolerant Control Strategy
3.3. Thermal Comfort Metrics
3.4. Evaluation of FTC Strategy
3.4.1. Evaluation Metrics
3.4.2. Analysis of the Influencing Factors of MLR-BI-Based FTC Strategies
- (1)
- Data quality: The results of the FTC of the two strategies were evaluated using steady-state (10:30–17:30) versus non-steady-state data and different standard deviations of noise (SDN) (0.01, 0.05, 0.1, 0.15, 0.5, 1, 1.5, and 2.0), respectively.
- (2)
- Data volume: Different time periods of 1 day, 7 days, 14 days, 1 month, 2 months, and 3 months were selected as the original training set for MLR-BI.
- (3)
- The number of variables: Regression models for the target sensors in different variable scenarios were constructed as shown in Figure 3.
4. Case Study
4.1. Central Air-Conditioning System and Target Building
4.2. Operation Schedule and Fault Settings
5. Results and Discussion
5.1. PCA Filtering Fault-Tolerant Data Results
5.2. Comparison of the Accuracy between MLR-BI Calibration and PCA Reconstruction
5.3. FTC Results of CAC Temperature Sensor Bias Faults
5.3.1. FTC Results for a Typical Day
5.3.2. Thermal Comfort in August
5.4. Factors Impacting FTC Results
5.4.1. Data Quality
- (a)
- Data Noise
- (b)
- Steady State and Non-steady State
5.4.2. Data Volume
5.4.3. Variable Number
6. Conclusions
- (1)
- The fault-tolerant control strategy using data increments can lead to good fault-tolerant control results for a central air-conditioning system. Compared with the sensor fault operation, the fault-tolerant control strategy reduced the total energy consumption by 2.98%, 3.72%, and 4.87% for the thermostat and the faulty and sensors, respectively. For the thermostat and faulty , the predicted percentage dissatisfaction was reduced by 0.67% and 0.63%, respectively. The system energy consumption and indoor thermal comfort were close to normal levels after fault-tolerant control.
- (2)
- For the thermostat and sensor, better fault-tolerant control results were obtained by using in situ selective incremental calibration when the standard deviation of noise was small. When non-steady-state data were used, better results were obtained by using in situ selective incremental calibration for the thermostat. For the sensor, the data quality had less influence on the fault-tolerant control results.
- (3)
- Compared with in situ calibration, the thermostat obtained good fault-tolerant control results with the in situ selective incremental calibration strategy with a 7-day data volume and sufficiently variable scenarios. The and sensors obtained better fault-tolerant control results with the in situ selective incremental calibration strategy with a 14-day data volume and variable scenarios with limited information.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
Nomenclature
CAC | Central air conditioning |
FTC | Fault-tolerant control |
HVAC | Heating, ventilation, and air conditioning |
IC | In situ calibration |
ISIC | In situ selective incremental calibration |
MLR | Multiple linear regression |
MLR-BI | Multiple linear regression and Bayesian inference |
PCA | Principal component analysis |
SDN | Standard deviation of noise |
Cumulative contribution of variation | |
Total energy consumption of CAC system | |
Regression function for a system-level model | |
Benchmark for a reliable system | |
Principal element | |
Posterior distribution | |
Normalized function | |
Likelihood function | |
Statistics in the residual subspace | |
Threshold value | |
Relative error of energy consumption | |
Target sensors to be calibrated | |
Physical sensors other than the target sensor to be calibrated | |
Correction value | |
Target variables data in normal condition | |
Target variables data in fault-tolerant control conditions | |
Base value | |
Test data sample | |
Projection of test data into principal component molecular space | |
Projection of test data into residual subspace | |
Time step | |
Prior function | |
Prior standard deviation | |
Constant terms of the MLR models | |
, | Coefficients corresponding to each of the above variables |
Normal deviation corresponding to the upper percentile | |
Eigenvalue of the covariance array | |
chws | Chilled water supply |
f | Fault condition |
in | Inlet air in independent fresh air system |
n | Normal conditions |
sa | Supply air |
Time | |
tz1 | Thermal zone 1 |
Appendix A
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Thermal Sensation | Hot | Warm | Mildly Warm | Moderate | A Little Cool | Cool | Cold |
---|---|---|---|---|---|---|---|
PMV | +3 | +2 | +1 | 0 | −1 | −2 | −3 |
Period | Conditions |
---|---|
07:00–12:00 | Normal |
12:00–12:30 | Fault |
12:30 | Start of in situ calibration |
12:30–18:00 | FTC |
Target Sensor | Setpoint | Bias Amplitude |
---|---|---|
26 °C | +2 °C | |
14 °C | +2 °C | |
7 °C | +2 °C |
Target Sensor | IC | ISIC | ||
---|---|---|---|---|
Non-Steady State | Steady State | Non-Steady State | Steady State | |
0.173 °C | 0.168 °C | 0.170 °C | 0.176 °C | |
0.075 °C | 0.075 °C | 0.399 °C | 0.105 °C | |
0.002 °C | 0.003 °C | 0.002 °C | 0.003 °C |
Target Sensor | Data State | IC | ISIC | ||
---|---|---|---|---|---|
REf | REn | REf | REn | ||
Non-steady state | 2.96% | 0.22% | 2.98% | 0.20% | |
Steady state | 3.39% | 0.22% | 3.42% | 0.26% | |
Non-steady state | 4.49% | 0.18% | 3.72% | 0.98% | |
Steady state | 4.48% | 0.18% | 4.41% | 0.26% | |
Non-steady state | 4.87% | 0.02% | 4.87% | 0.02% | |
Steady state | 4.87% | 0.02% | 4.87% | 0.02% |
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Li, G.; Wang, C.; Liu, L.; Fang, X.; Kuang, W.; Xiong, C. Study on Sensor Fault-Tolerant Control for Central Air-Conditioning Systems Using Bayesian Inference with Data Increments. Sensors 2024, 24, 1150. https://doi.org/10.3390/s24041150
Li G, Wang C, Liu L, Fang X, Kuang W, Xiong C. Study on Sensor Fault-Tolerant Control for Central Air-Conditioning Systems Using Bayesian Inference with Data Increments. Sensors. 2024; 24(4):1150. https://doi.org/10.3390/s24041150
Chicago/Turabian StyleLi, Guannan, Chongchong Wang, Lamei Liu, Xi Fang, Wei Kuang, and Chenglong Xiong. 2024. "Study on Sensor Fault-Tolerant Control for Central Air-Conditioning Systems Using Bayesian Inference with Data Increments" Sensors 24, no. 4: 1150. https://doi.org/10.3390/s24041150
APA StyleLi, G., Wang, C., Liu, L., Fang, X., Kuang, W., & Xiong, C. (2024). Study on Sensor Fault-Tolerant Control for Central Air-Conditioning Systems Using Bayesian Inference with Data Increments. Sensors, 24(4), 1150. https://doi.org/10.3390/s24041150