Switchgear Digitalization—Research Path, Status, and Future Work
Abstract
:1. Introduction
- Section 2 describes previous optimization efforts in switchgear and explains the need to update metering equipment in switchgear.
- Section 2.1 describes the implementation of sensors and the resulting benefits.
- Section 3 describes the communication protocol that allows the switchgear to meet the above definition of a digital switchgear.
- Section 4 describes the different measurements and sensor types.
- Section 5 describes the use of the data manipulations collected by the sensors in terms of fault detection, condition monitoring, and predictive maintenance.
- Section 6 gives a discussion.
- Section 7 gives the conclusions from this research.
2. The Initial Situation
2.1. Replacement of Outdated Measurement Components
- resistive or capacitive voltage dividers as voltage sensors;
- Rogowski coil as current sensor;
- current sensor with non-saturable magnetic core.
- non-saturable, since no iron core is used;
- high degree of accuracy;
- increased personnel safety (low secondary voltages);
- small size and weight;
- wide dynamic range;
- environmental friendliness, as less raw material is used;
- no damage caused in case of overload.
- two incoming feeders;
- twelve outgoing feeders.
3. The Broadening of the Perspective
4. Expansion of the Types of Measurement Sensors
- temperature sensors;
- humidity sensors;
- partial discharge sensors.
4.1. Temperature Measurements
- surface acoustic wave (SAW) temperature sensors;
- infrared (IR) temperature sensors;
- IR window implementation;
- fiber optic sensors.
4.2. Humidity Measurements
4.3. Partial Discharge (Arc) Measurements
5. Applications of Measurement Data Manipulation
5.1. Condition Monitoring
- labor-free measurements;
- accurate data due to real time operational measurements;
- improved service decision due to failure start/progress information;
- unnecessary maintenance reduction due to decisions based on data from continuous measurements;
- prioritization of equipment repair order.
5.2. Fault Detection
5.3. Predictive Maintenance
6. Discussion
7. Conclusions
- Since the framework for conducting experimental studies varies, there is an obvious need to “standardize” the procedures, which are also categorized by the type of data used (temperature, partial discharge, voltage/current, etc.). “Standardization” would lead to a universal framework for data collection (creation of a freely accessible database) that could be used to accurately compare the developed algorithms, and adequately monitor improvements in the application of machine/deep learning algorithms in prediction maintenance.
- The developed dataset could also be used in digital twin simulations of both shore and marine power grids to increase the overall model accuracy, as real data would be implemented, and as the complex dynamics of switchgear are mostly ignored today. Overall, digital twin models offer great optimization opportunities, especially in the maritime domain, which are in line with IMO’s future goals.
- The development of digital switchgear will lead to an effective predictive maintenance plan that will be continuously optimized with the growing measurement database and machine/deep learning analysis. Repair procedures are optimized, as the source of PD is automatically located, reducing labor and replacement costs. In summary, digital switchgear provides a safer and more cost-effective distribution system compared to its “analog” counterparts. Safety and reliability are enhanced by the active monitoring of equipment to predict failures, and there is a reduction in manpower requirements for data interpretation and equipment monitoring/repair procedures.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Description | Reference |
---|---|
Support Vector Machine (SVM) trained with infrared imagery of substations for equipment monitoring | [56] |
Enhancing IR images of rotating machinery and feeding features into SVM and Feed Forward Neural Networks (FFNN) to effectively improve fault diagnosis | [57] |
Deep learning-based component recognition in a switchgear overheating fault diagnostic | [58] |
PD type identification technology based on deep learning method with a comparison of recognition methods using Convolutional Neural Network (CNN) and Back Propagation Neural Network (BPNN) | [59] |
K-Means method to detect partial discharges in equipment | [60,61] |
NN and SVM to detect partial discharges in equipment | [62] |
NN to detect partial discharge in equipment | [63,64] |
Recurrent Neural Network (RNN) to diagnose PD in gas-insulated switchgear | [65] |
Deep Convolutional Neural Network (DCNN) to detect PD patterns in gas-insulated switchgear | [66] |
Reference | Proposed Method | Compared to | Result |
---|---|---|---|
[66] | Deep convolutional neural network (DCNN) for PD recognition | Back propagation neural network (BPNN) and support vector machine (SVM) | DCNN has outperformed both BPNN and SVM with 89.7% accuracy |
[59] | Residual neural network (ResNet) for PD recognition | BPNN | ResNet outperformed BPNN with 95.83% accuracy (with increased network depth) |
[65] | Long short-term memory (LSTM) recurrent neural network (RNN) for PD detection | SVM | LSTM RNN outperformed SVM with 96.74% accuracy |
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Kaštelan, N.; Vujović, I.; Krčum, M.; Assani, N. Switchgear Digitalization—Research Path, Status, and Future Work. Sensors 2022, 22, 7922. https://doi.org/10.3390/s22207922
Kaštelan N, Vujović I, Krčum M, Assani N. Switchgear Digitalization—Research Path, Status, and Future Work. Sensors. 2022; 22(20):7922. https://doi.org/10.3390/s22207922
Chicago/Turabian StyleKaštelan, Nediljko, Igor Vujović, Maja Krčum, and Nur Assani. 2022. "Switchgear Digitalization—Research Path, Status, and Future Work" Sensors 22, no. 20: 7922. https://doi.org/10.3390/s22207922
APA StyleKaštelan, N., Vujović, I., Krčum, M., & Assani, N. (2022). Switchgear Digitalization—Research Path, Status, and Future Work. Sensors, 22(20), 7922. https://doi.org/10.3390/s22207922