A Data-Driven Loose Contact Diagnosis Method for Smart Meters
Abstract
1. Introduction
- Instead of focusing on detecting either loose contacts or arc faults individually, as seen in prior studies, an experimental system incorporating both loose contacts and arc faults is designed to replicate smart meter operation states within metering enclosures. Authentic datasets with validated electrical signatures are constructed using collected signals, establishing a robust foundation for investigating screw terminal failures in smart meters.
- An interference data cleaning method is developed through analysis of the relationship between voltage fluctuations and load current to eliminate redundant interference. Diffs between co-located smart meters within shared metering enclosures are subsequently established as the primary diagnostic indicator for contact fault identification.
- A two-stage fault diagnosis method combining Local Outlier Factor (LOF) and Multiple Linear Regression (MLR) is proposed, and its effectiveness is evaluated across two types of load datasets. The stability and generalization of the LOF-MLR method are demonstrated through comparisons with three data-driven methods under the same sample conditions.
2. Related Work
2.1. Evolution Mechanism from Loose Contacts to Arc Faults
2.2. Method Application Context
2.3. Anomaly Detection Techniques
3. Data Acquisition and Feature Extraction
3.1. Data Acquisition Platform
- Normal contact experiments: M1, M2, and M3 are connected under standardized terminal contact conditions, with voltage and current data systematically recorded across multiple load configurations to establish operational baselines.
- Loose contact experiments: M3 is designated as the fault terminal while M1 and M2 maintain normal contact. To simulate loose contact conditions, the terminal screw torque on M3 is intentionally reduced, causing partial disengagement between the screw and copper wire. During testing, various loads are applied to all smart meters, with real-time voltage and current monitoring to ensure data accuracy.
- Arc fault experiments: Arc fault conditions are replicated by inserting the copper wire deep into the terminal hole, making it difficult to visually confirm arcing events. This obstruction prevents accurate dataset labeling. Therefore, the copper wire is repositioned to the upper section of the screw metal block, as depicted in (3) arc fault of Figure 3, to enable controlled validation.
3.2. Experimental Data Analysis
3.3. Feature Extraction
3.4. Comparison with Other Feature Extraction Methods
4. Contact Fault Diagnosis Method
- Arc fault diagnosis: The LOF algorithm performs outlier detection on the Diffs dataset. For smart meter IDs exhibiting continuous outliers, the corresponding points on their voltage curves are marked as arc faults. Due to the irreversible nature of arc faults, the remaining non-arc points in the sequence are labeled as loose contacts.
- Loose contact diagnosis: Based on the linear relationship between voltage drops, current, and contact resistance established in Formula (10), the MLR model calculates contact resistance for datasets devoid of arc faults. Loose contact diagnosis is achieved through comparative analysis against the predefined threshold.
4.1. Outlier Detection Using LOF
4.2. Solution of Resistance Using MLR
4.3. Evaluation Metrics
5. Frame Results and Discussion
5.1. Model Validation Using Resistor Load Data
5.2. Model Validation Using Appliance Load Data
5.3. Ablation Experiments
5.4. Comparison with Deterministic Approaches
5.5. Challenges in Application
6. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
Abbreviations
AMI | Advanced metering infrastructure |
Diffs | Voltage differentials |
LOF | Local Outlier Factor |
MLR | Multiple Linear Regression |
L | Live wire |
N | Neutral wire |
IF | Isolation Forest |
RP | Receptacles |
ID | Identification code |
FPG | Fluctuation in the power grid |
FTC | Fluctuation caused by changes in |
FBC | Variation in branch load currents |
MEs | Measurement errors of the smart meters |
FAF | Voltage fluctuation due to arc fault |
FLF | Voltage fluctuation due to loose contacts |
VF | Voltage fluctuation |
Norm-Arc | Normal contact smart meter and arc fault smart meter |
Norm-Norm | Normal contact smart meter and normal contact smart meter |
Norm-Loose | Normal contact smart meter and loose contact smart meter |
DTW | Dynamic Time Warping |
SKF | Skewness features |
∆V/∆I | Voltage-to-current difference ratios |
TP | True Positive |
FP | False Positive |
FN | False Negative |
TN | True Negative |
PR | Polynomial Regression |
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Load Type | Normal Contact | Loose Contact | Arc Fault * | |
---|---|---|---|---|
M1 | Resistors | 0 A/0.4 A/3.8 A/7.8 A | 0 A/0.4 A/3.8 A/7.8 A | 0 A/3.8 A/7.8 A |
Appliances | 0 A/(0.15~0.35 A)/(0.25~3.11 A) | 0 A/(0.15~0.35 A)/(0.25~3.11 A) | (0.15~0.35 A)/(0.25~3.11 A)/5 A | |
M2 | Resistors | 0 A/0.4 A/3.8 A/7.8 A | 0 A/0.4 A/3.8 A/7.8 A | 0 A/3.8 A/7.8 A |
Appliances | 0 A/(0.15~0.35 A)/(0.25~3.11 A) | 0 A/(0.15~0.35 A)/(0.25~3.11 A) | (0.15~0.35 A)/(0.25~3.11 A)/5 A | |
M3 | Resistors | 0 A/0.4 A/3.8 A/7.8 A/11.6 A | 0.4 A/3.8 A/7.8 A/11.6 A | 0.4 A/3.8 A |
Appliances | 5 A | 5 A | (0.15~0.35 A)/(0.25~3.11 A)/5 A |
Resistance | Normal Contact | Loose Contact | Arc Fault | ||||||
---|---|---|---|---|---|---|---|---|---|
DS1 | DS2 | DS3 * | DS4 | DS5 | DS6 * | DS7 | DS8 | DS9 * | |
M1 (mΩ) | 76.9 | 76.6 | 71.1 | 53.9 | 88.1 | 82.1 | 88.4 | 55.2 | 66.4 |
M2 (mΩ) | 30.2 | 9.8 | 57.8 | 31.6 | 29.9 | 27.7 | 26.4 | 6.9 | 5.2 |
M3 (mΩ) * | 50.0 | 49.0 | 77.3 | 136.8 | 270.3 | 131.2 | 512.8 | 431.8 | 699.4 |
Load Type | Method | PPV | TPR | FAR | F1 | Diagnostic Error Count |
---|---|---|---|---|---|---|
Resistors | LOF | 0.98 | 0.97 | 0.06 | 0.98 | 2 |
MLR | 0.75 | 0.89 | 0.34 | 0.81 | 2 | |
LOF-MLR | 0.98 | 0.97 | 0.06 | 0.98 | 1 | |
K-means-MLR | 0.97 | 0.55 | 0.06 | 0.70 | 4 | |
DBSCAN-MLR | 1 | 0.90 | 0 | 0.95 | 1 | |
IF-PR | 0.87 | 1 | 0.09 | 0.93 | 2 | |
SVM | 0.86 | 1 | 0.17 | 0.92 | 2 | |
Appliances | LOF | 0.92 | 1 | 0.05 | 0.96 | 2 |
MLR | 0.79 | 0.85 | 0.27 | 0.82 | 1 | |
LOF-MLR | 0.92 | 1 | 0.05 | 0.96 | 0 | |
K-means-MLR | 1 | 0.69 | 0 | 0.82 | 2 | |
DBSCAN-MLR | 0.64 | 1 | 0.09 | 0.78 | 4 | |
IF-PR | 0.88 | 1 | 0.20 | 0.94 | 1 | |
SVM | 1 | 0.58 | 0.23 | 0.73 | 2 |
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Luan, W.; Huang, Y.; Zhao, B.; Cai, H.; Han, Y.; Liu, B. A Data-Driven Loose Contact Diagnosis Method for Smart Meters. Sensors 2025, 25, 3682. https://doi.org/10.3390/s25123682
Luan W, Huang Y, Zhao B, Cai H, Han Y, Liu B. A Data-Driven Loose Contact Diagnosis Method for Smart Meters. Sensors. 2025; 25(12):3682. https://doi.org/10.3390/s25123682
Chicago/Turabian StyleLuan, Wenpeng, Yajuan Huang, Bochao Zhao, Hanju Cai, Yang Han, and Bo Liu. 2025. "A Data-Driven Loose Contact Diagnosis Method for Smart Meters" Sensors 25, no. 12: 3682. https://doi.org/10.3390/s25123682
APA StyleLuan, W., Huang, Y., Zhao, B., Cai, H., Han, Y., & Liu, B. (2025). A Data-Driven Loose Contact Diagnosis Method for Smart Meters. Sensors, 25(12), 3682. https://doi.org/10.3390/s25123682