Evaluation, Analysis and Diagnosis for HVDC Transmission System Faults via Knowledge Graph under New Energy Systems Construction: A Critical Review
Abstract
:1. Introduction
- A variety of fault types and corresponding adverse effects of HVDC transmission system are summarized in detail;
- Prior fault diagnosis strategies for HVDC transmission systems in recent years are systematically reviewed. Meanwhile, this work particularly focuses on the application of AI technology in fault diagnosis of HVDC transmission systems;
- The knowledge graph technology is introduced in detail, along with its application in power systems. Inspiringly, a new fault diagnosis framework for HVDC transmission systems based on knowledge graph technology is proposed;
- According to the current technical foundation and research direction of AI technology, the application of AI technology in HVDC transmission systems is prospected;
- The main purpose of this work is to provide a one-stop manual for future researchers who may be involved in this field of research.
2. Fault Types and Effects of HVDC Transmission Systems
2.1. Development of HVDC Transmission Technology
2.2. Fault Types of HVDC Transmission Systems
2.3. Fault Effect of HVDC Transmission Systems
3. Fault Diagnosis of HVDC Transmission Systems
- The three-phase current or voltage at the AC side of the inverter in one fundamental wave period is sampled as the fault signal;
- The fault signal is decomposed by an n-layer wavelet packet, and the wavelet packet coefficients at the node (j + 1, p) are given by Equation (6), where (k) and (k) are a pair of conjugate orthogonal filters, which can be obtained by wavelet basis function calculation;
- The wavelet packet coefficient at the node (j, p) is reconstructed to obtain the reconstructed wavelet packet coefficient (k) of the node;
- Calculate the energy value at the pth node of the nth layer according to Equation (7), where l is the number of data points sampled in one fundamental wave period;
- Obtain the percentage of the energy value of each frequency interval in the total energy value according to Equation (8) and select the percentage of the energy value of the first s nodes (0 < s < ) of the nth layer as the fault characteristic quantity.
4. Fault Diagnosis Based on Knowledge Graph Technology
4.1. Knowledge Graph Technology
4.2. Knowledge Graph Technology in Power System
5. Discussion
- Data acquisition: (a) Reliable data quality; (b) High data accuracy; (c) Large data volume; (d) Sufficient data type.
- Data transmission: (a) High data transmission speed; (b) Low data lost during transmission; (c) Low transmission noises.
- Data processing: (a) Online processing capability; (b) Fast processing rate; (c) Secure processing environment.
6. Conclusions and Prospects
- (1)
- Converter station fault and DC line fault of HVDC transmission systems are summarized and analyzed, respectively. The adverse effects that can be caused by all fault types are also discussed;
- (2)
- With the rapid development of AI technology, it has been widely concerned and applied in the areas of fault diagnosis. The prior fault analysis and diagnosis of power systems based on knowledge graph technology are summarized and analyzed comprehensively;
- (3)
- Finally, based on knowledge graph technology, a new fault diagnosis framework for HVDC transmission systems is proposed.
- (1)
- Knowledge graphs can be used to construct the whole system to establish the whole life cycle analysis and evaluation of the power grid;
- (2)
- Digital twin technology can be used to simulate the operation state of the whole system to analyze and estimate the potential faults;
- (3)
- More equipment state measurement devices can be added to achieve the construction of transparent power grids;
- (4)
- Accelerated integration of various advanced AI algorithms for fault diagnosis to satisfy specific requirements, and thus to achieve the construction of digital power grids;
- (5)
- The industrial knowledge graph needs to make further breakthroughs in the deep semantic representation of logical relations, causal relations, and turning relations;
- (6)
- Since AI techniques can effectively simplify solutions’ complexity and enhance self-learning ability, they can be used to deal with highly nonlinear and multiple correlation problems. Meanwhile, the time series or correlation prediction model is established to improve the efficiency and accuracy of the operation state prediction of power equipment;
- (7)
- An HVDC fault diagnosis network based on a cloud computing service platform is one feasible and promising application to diagnose fault data in the “cloud”, which can improve the data and information processing speed.
Funding
Conflicts of Interest
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Types | Advantage | Disadvantage | Robustness |
---|---|---|---|
Fault diagnosis based on analytical model | This method can go deep into the nature of dynamic system. It can detect and diagnose faults in real time. | It is difficult to establish an accurate mathematical model; The simplification of the model can bring negative effects due to the limitations of the data itself. | General |
Fault diagnosis based on signal processing | The difficulty of system modeling is avoided; Strong practicability; High sensitivity. | There is a time delay under certain conditions; It is relatively difficult to analyze and interpret the fault. | Relatively strong |
Fault diagnosis based on AI | The difficulty of system modeling is avoided; Real-time fault detection; High running speed. | Large demand for data. | Strong |
Fault Point | Number | Fault Type |
---|---|---|
AC side | 1 | Converter transformer inlet failure |
2 | Converter transformer outlet failure | |
3 | Converter valve AC side phase to phase failure | |
4 | Single-phase grounding fault on the AC side of the commutation valve | |
5 | Low voltage fault on the AC side of the converter valve | |
Converter valve | 6, 7, 8, 10, 11, 12 | Short circuit fault of converter valve |
9, 13 | Ground fault of converter valve | |
DC side | 14, 15, 17 | DC line ground fault |
16 | DC line positive grounding fault | |
18, 19 | Break-line fault | |
20 | Ground fault | |
21 | DC grounding electrode failure | |
22 | DC filter ground fault | |
23 | Capacitor fault |
Name | Fault Type | Location of Fault | Influence |
---|---|---|---|
AC system of rectifier side | One-wire ground | AC line | An asymmetrical drop of AC voltage; the DC voltage and current may decrease accordingly and the non-characteristic harmonics increase. |
Two-phase ground | AC line | An asymmetrical drop of AC voltage; the DC voltage and current may decrease accordingly and the non-characteristic harmonics increase. | |
Three-phase ground | AC line | An asymmetrical drop of AC voltage; the DC voltage and current may decrease accordingly. | |
Rectifier bridge | False firing | Bridge arm | DC voltage slightly rises (type I false firing) or decreases (type II false firing). |
Not open | Bridge arm | DC voltage drop. | |
Component failure | Valve element | The voltage applied to the element of the valve increases. | |
Bridge arm short circuit | Bridge arm | AC increases and DC goes down. | |
Outlet short circuit | DC bus | AC increases and DC decreases to zero | |
DC line | One-wire ground | DC line | DC increases and an overvoltage occurs. |
Two wire short circuit | DC line | DC increases and an overvoltage occurs. | |
Switching overvoltage | DC line | Overvoltage | |
Inverter bridge | False firing | Bridge arm | Voltage decreases and current increases. |
Not open | Bridge arm | Voltage decreases and current increases. | |
Component failure | Valve element | The voltage applied to the element of the valve increases. | |
Bridge arm short circuit | Bridge arm | Voltage decreases and current increases. | |
Outlet short circuit | Bridge arm | Voltage decreases and current increases. | |
AC system of inverter side | One-wire ground | AC line | When AC voltage drops asymmetrically, the commutation may fail and the non-characteristic harmonics may increase. |
Two-phase short circuit | AC line | When AC voltage drops asymmetrically, the commutation may fail and the non-characteristic harmonics may increase. | |
Three-phase short circuit | AC line | When AC voltage drops asymmetrically, the commutation may fail. |
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Wu, J.; Li, Q.; Chen, Q.; Peng, G.; Wang, J.; Fu, Q.; Yang, B. Evaluation, Analysis and Diagnosis for HVDC Transmission System Faults via Knowledge Graph under New Energy Systems Construction: A Critical Review. Energies 2022, 15, 8031. https://doi.org/10.3390/en15218031
Wu J, Li Q, Chen Q, Peng G, Wang J, Fu Q, Yang B. Evaluation, Analysis and Diagnosis for HVDC Transmission System Faults via Knowledge Graph under New Energy Systems Construction: A Critical Review. Energies. 2022; 15(21):8031. https://doi.org/10.3390/en15218031
Chicago/Turabian StyleWu, Jiyang, Qiang Li, Qian Chen, Guangqiang Peng, Jinyu Wang, Qiang Fu, and Bo Yang. 2022. "Evaluation, Analysis and Diagnosis for HVDC Transmission System Faults via Knowledge Graph under New Energy Systems Construction: A Critical Review" Energies 15, no. 21: 8031. https://doi.org/10.3390/en15218031
APA StyleWu, J., Li, Q., Chen, Q., Peng, G., Wang, J., Fu, Q., & Yang, B. (2022). Evaluation, Analysis and Diagnosis for HVDC Transmission System Faults via Knowledge Graph under New Energy Systems Construction: A Critical Review. Energies, 15(21), 8031. https://doi.org/10.3390/en15218031