Artificial Neural Network for Fault Diagnosis of Solar Photovoltaic Systems: A Survey
Abstract
:1. Introduction
2. Application of ANNs in PV Systems
- (1)
- Energy supply forecasting. In essence, the intermittent nature of different renewable energy sources is derived from volatile climatic conditions. In this context, the complexity of matching power sources and loads makes it difficult to determine energy supply options, but the use of an ANN can be a good solution to this problem. In general, forecasting models for energy supply based on historical data can be achieved using temperature, solar radiation, date, humidity, and operating hours as inputs for an ANN [57,58,59,60,61,62,63].
- (2)
- Performance prediction of collector systems. The performance prediction model mainly includes a mathematical model of collectors and an ANN prediction model. In general, the instantaneous flow rate of the medium inside the solar collector, temperature data including inlet temperature, ambient temperature, etc., radiant illumination, and heat collection area are mainly used for the mathematical model of the collector. The medium outlet temperature is generally set as the ANN’s input [64,65,66,67,68,69].
- (3)
- Maximum power point tracking (MPPT). MPPT maximizes the output power of PV systems to maximize the energy conversion efficiency. The cell temperature and the prevailing irradiance are often used as input parameters for the ANN. In addition, the voltage inverse can be also used as an input to improve the MPPT performance by black-boxing the ANN internally [70,71,72,73,74,75,76,77].
- (4)
- Solar radiation prediction. Solar radiation prediction is heavily affected by the weather, and using an ANN to solve this problem is an accurate and applicable approach. In general, latitude, longitude, altitude, sunshine rate, and month are often used as inputs for the ANN-based prediction model [78,79,80,81,82,83,84].
- (5)
- Determination of PV system size. Accurate sizing of PV systems ensures that the system produces the right amount of power to satisfy the load demand with low costs. Generally, peak insolation data, total electricity, and the maximum value of load consumption are usually used as inputs for the ANN to determine the system size [85,86,87,88,89,90].
3. Fault Diagnosis of PV Systems with ANN
3.1. Multi-Layer Perceptron Neural Network (MLP)
3.2. Radial Basis Function (RBF) Neural Network
3.3. Probabilistic Neural Network (PNN)
3.4. Deep Neural Networks (DNN)
3.4.1. Convolutional Neural Network (CNN)
3.4.2. Stacked Auto Encoder (SAE) Network
3.4.3. Other DNNs
3.5. Other Neural Networks
4. Comparative Analysis
- (1)
- Although MLP and PNN are more frequently used in this area, CNN has been the most frequently used ANN during the past three years. In addition, the frequency of using DNN models for PV system fault diagnosis has increased significantly in the past five years.
- (2)
- Both climate data (solar irradiance and temperature) and electrical parameters (voltage and current) are the most common input attributes for ANN models. The CNN utilizes additional image information as part of the inputs in addition to climate data and electrical parameters.
- (3)
- The diagnosis of types of faults using ANN models mainly focuses on the PV array side, including strings and modules. These faults mainly include short circuit faults, open circuit faults, masking faults, and mixed faults. In addition, some studies have also focused on arcing faults, soiling, module mismatch, etc.
- (4)
- DNN models for identifying complex faults occurring in PV systems have greater potential as they are better able to extract valid features from the original input with less data cost.
- (5)
- Overall, the ANN has shown good accuracy in identifying and classifying different faults in PV systems. The correct rates are over 90% in the vast majority of cases.
5. Discussions
6. Conclusions and Future Works
- (1)
- Most of the existing fault detection and diagnosis techniques based on ANNs were tested in experiments and have not been practically applied in engineering.
- (2)
- The training of ANNs requires a large number of labeled samples, but it is often challenging to obtain enough actual fault data. In addition, the cost of acquiring valid raw data is high.
- (3)
- The PV systems are subject to a large amount of interference during the operation process, resulting in a large amount of noise in the operation data. Determining how to filter the noise and improve the authenticity of the data source is worthy of attention.
- (4)
- The performance of ANNs is seriously affected by the network hyperparameters, and it is not easy to obtain accurate hyperparameters, especially for DNNs.
- (5)
- The training of ANNs frequently suffers from under-fitting and over-fitting.
- (1)
- For the existing ANNs in fault diagnosis, the training time cost is a large problem. These ANNs can be combined with the embedded system of digital signals to achieve real-time diagnosis, maximizing the effectiveness of the fault diagnosis system.
- (2)
- Using ANNs alone cannot identify some complex faults and some faults with similar characteristics. In this context, although they can discover the existence of faults, identifying the exact type of faults is challenging. For this, combining ANNs with other diagnosis methods is a potentially effective approach.
- (3)
- For some PV plants in remote areas, it is costly to conduct fault detection. UAVs can be used to locate faults and combined with IoT technology to achieve monitoring of PV systems to improve the quality of diagnosis.
- (4)
- It is often challenging to extract a large number of labeled samples, and there may be noise in realistic fault data. Some deep learning techniques and data cleaning techniques can be integrated with ANNs to achieve fault diagnosis.
- (5)
- To increase the fault tolerance of ANNs, some architecture search methods, including evolutionary algorithms, can be hybridized with common training methods to identify accurate structure hyperparameters.
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
- Abdalla, A.N.; Nazir, M.S.; Tao, H.; Cao, S.; Ji, R.; Jiang, M.; Yao, L. Integration of energy storage system and renewable energy sources based on artificial intelligence: An overview. J. Energy Storage 2021, 40, 102811. [Google Scholar] [CrossRef]
- Olabi, A.; Abdelkareem, M.A. Renewable energy and climate change. Renew. Sustain. Energy Rev. 2022, 158, 112111. [Google Scholar] [CrossRef]
- Gawre, S.K. Advanced Fault Diagnosis and Condition Monitoring Schemes for Solar PV Systems, in Planning of Hybrid Renewable Energy Systems. In Electric Vehicles and Microgrid; Springer: Berlin, Germany, 2022; pp. 27–59. [Google Scholar] [CrossRef]
- Firth, S.; Lomas, K.; Rees, S. A simple model of PV system performance and its use in fault detection. Sol. Energy 2010, 84, 624–635. [Google Scholar] [CrossRef] [Green Version]
- Garoudja, E.; Harrou, F.; Sun, Y.; Kara, K.; Chouder, A.; Silvestre, S. Statistical fault detection in photovoltaic systems. Solar Energy 2017, 150, 485–499. [Google Scholar] [CrossRef]
- Brooks, B.; White, S. Photovoltaic Systems and the National Electric Code; Routledge: London, UK, 2018. [Google Scholar] [CrossRef]
- Albers, M.J.; Ball, G. Comparative evaluation of DC fault-mitigation techniques in large PV systems. IEEE J. Photovoltaics 2015, 5, 1169–1174. [Google Scholar] [CrossRef]
- Ram, J.P.; Manghani, H.; Pillai, D.S.; Babu, T.S.; Miyatake, M.; Rajasekar, N. Analysis on solar PV emulators: A review. Renew. Sustain. Energy Rev. 2018, 81, 149–160. [Google Scholar] [CrossRef]
- Tina, G.M.; Cosentino, F.; Ventura, C. Monitoring and diagnostics of photovoltaic power plants. In Renewable Energy in the Service of Mankind Volume II; Springer: Berlin, Germany, 2016; pp. 505–516. [Google Scholar] [CrossRef]
- Tsanakas, J.A.; Ha, L.D.; Al Shakarchi, F. Advanced inspection of photovoltaic installations by aerial triangulation and terrestrial georeferencing of thermal/visual imagery. Renew. Energy 2017, 102, 224–233. [Google Scholar] [CrossRef]
- Tsanakas, J.A.; Ha, L.; Buerhop, C. Faults and infrared thermographic diagnosis in operating c-Si photovoltaic modules: A review of research and future challenges. Renew. Sustain. Energy Rev. 2016, 62, 695–709. [Google Scholar] [CrossRef]
- Davarifar, M.; Rabhi, A.; El-Hajjaji, A.; Dahmane, M. Real-time model base fault diagnosis of PV panels using statistical signal processing. In Proceedings of the 2013 International Conference on Renewable Energy Research and Applications (ICRERA), Madrid, Spain, 20–23 October 2013. [Google Scholar]
- Dhanalakshmi, B.; Rajasekar, N. Dominance square based array reconfiguration scheme for power loss reduction in solar PhotoVoltaic (PV) systems. Energy Convers. Manag. 2018, 156, 84–102. [Google Scholar] [CrossRef]
- Pillai, D.S.; Rajasekar, N. A comprehensive review on protection challenges and fault diagnosis in PV systems. Renew. Sustain. Energy Rev. 2018, 91, 18–40. [Google Scholar] [CrossRef]
- Chouder, A.; Silvestre, S. Automatic supervision and fault detection of PV systems based on power losses analysis. Energy Convers. Manag. 2010, 51, 1929–1937. [Google Scholar] [CrossRef]
- Rahman, M.; Khan, I.; Alameh, K. Potential measurement techniques for photovoltaic module failure diagnosis: A review. Renew. Sustain. Energy Rev. 2021, 151, 111532. [Google Scholar] [CrossRef]
- Alam, M.K.; Khan, F.; Johnson, J.; Flicker, J. A comprehensive review of catastrophic faults in PV arrays: Types, detection, and mitigation techniques. IEEE J. Photovoltaics 2015, 5, 982–997. [Google Scholar] [CrossRef]
- Jadidi, S.; Badihi, H.; Zhang, Y. Fault Diagnosis in Microgrids with Integration of Solar Photovoltaic Systems: A Review. IFAC-Pap. Online 2020, 53, 12091–12096. [Google Scholar] [CrossRef]
- Abubakar, A.; Almeida, C.F.M.; Gemignani, M. Review of Artificial Intelligence-Based Failure Detection and Diagnosis Methods for Solar Photovoltaic Systems. Machines 2021, 9, 328. [Google Scholar] [CrossRef]
- Triki-Lahiani, A.; Abdelghani, A.B.-B.; Slama-Belkhodja, I. Fault detection and monitoring systems for photovoltaic installations: A review. Renew. Sustain. Energy Rev. 2018, 82, 2680–2692. [Google Scholar] [CrossRef]
- Stefenon, S.F.; Branco, N.W.; Nied, A.; Bertol, D.W.; Finardi, E.C.; Sartori, A.; Meyer, L.H.; Grebogi, R.B. Analysis of training techniques of ANN for classification of insulators in electrical power systems. IET Gener. Transm. Distrib. 2020, 14, 1591–1597. [Google Scholar] [CrossRef]
- Karthikeyan, M.; Sharmilee, K.; Balasubramaniam, P.; Prakash, N.; Babu, M.R.; Subramaniyaswamy, V.; Sudhakar, S. Design and implementation of ANN-based SAPF approach for current harmonics mitigation in industrial power systems. Microprocess. Microsystems 2020, 77, 103194. [Google Scholar] [CrossRef]
- Gil-González, W.; Montoya, O.D.; Grisales-Noreña, L.F.; Cruz-Peragón, F.; Alcalá, G. Economic dispatch of renewable generators and Bess in DC microgrids using second-order cone optimization. Energies 2020, 13, 1703. [Google Scholar] [CrossRef] [Green Version]
- Khalid, M. Wind power economic dispatch—Impact of radial basis functional networks and battery energy storage. IEEE Access 2019, 7, 36819–36832. [Google Scholar] [CrossRef]
- Liu, H.; Shen, X.; Guo, Q.; Sun, H. A data-driven approach towards fast economic dispatch in electricity–gas coupled systems based on artificial neural network. Appl. Energy 2021, 286, 116480. [Google Scholar] [CrossRef]
- Saeed, I.K. Artificial Neural Network Based on Optimal Operation of Economic Load Dispatch in Power System. ZANCO J. PURE Appl. Sci. 2019, 31, 94–102. [Google Scholar] [CrossRef]
- Ajagekar, A.; You, F. Quantum computing based hybrid deep learning for fault diagnosis in electrical power systems. Appl. Energy 2021, 303, 117628. [Google Scholar] [CrossRef]
- Lopes, S.M.D.A.; Flauzino, R.A.; Altafim, R.A.C. Incipient fault diagnosis in power transformers by data-driven models with over-sampled dataset. Electr. Power Syst. Res. 2021, 201, 107519. [Google Scholar] [CrossRef]
- Ledesma, J.J.G.; do Nascimento, K.B.; de Araujo, L.R.; Penido, D.R.R. A two-level ANN-based method using synchro-nized measurements to locate high-impedance fault in distribution systems. Electr. Power Syst. Res. 2020, 188, 106576. [Google Scholar] [CrossRef]
- Mukherjee, A.; Kundu, P.K.; Das, A. Transmission line faults in power system and the different algorithms for identifi-cation, classification and localization: A brief review of methods. J. Inst. Eng. Ser. B 2021, 102, 855–877. [Google Scholar]
- Vaish, R.; Dwivedi, U.; Tewari, S.; Tripathi, S.M. Machine learning applications in power system fault diagnosis: Re-search advancements and perspectives. Eng. Appl. Artif. Intell. 2021, 106, 104504. [Google Scholar] [CrossRef]
- Xiong, G.; Shi, D. An improved analytic model for fault diagnosis of power grids and its selfadaptive biogeogra-phy-based optimization method. Trans. China Electrotech. Soc. 2014, 29, 205–211. [Google Scholar]
- Li, C.; Xiong, G.; Fu, X.; Mohamed, A.W.; Yuan, X.; Al-Betar, M.A.; Suganthan, P.N. Takagi–Sugeno fuzzy based power system fault section diagnosis models via genetic learning adaptive GSK algorithm. Knowl. Based Syst. 2022, 255, 109773. [Google Scholar] [CrossRef]
- Shi, D.; Xiong, G.; Chen, J.; Li, Y. Divisional fault diagnosis of power grids based on RBF neural network and fuzzy in-tegral fusion. Proc. CSEE 2014, 34, 562–569. [Google Scholar]
- Xie, X.; Xiong, G.; Chen, J.; Zhang, J. Universal Transparent Artificial Neural Network-Based Fault Section Diagnosis Models for Power Systems. Adv. Theory Simul. 2022, 5, 402. [Google Scholar] [CrossRef]
- Xiong, G.; Shi, D.; Chen, J. Implementing fuzzy reasoning spiking neural P system for fault diagnosis of power systems. In Proceedings of the 2013 IEEE Power & Energy Society General Meeting, Vancouver, BC, Canada, 21–25 July 2013. [Google Scholar] [CrossRef]
- Xiong, G.; Shi, D.; Chen, J.; Lin, Z.; Duan, X. Divisional fault diagnosis of large-scale power systems based on radial ba-sis function neural network and fuzzy integral. Electr. Power Syst. Res. 2013, 105, 9–19. [Google Scholar] [CrossRef]
- Xiong, G.; Shi, D.; Zhang, J.; Zhang, Y. A binary coded brain storm optimization for fault section diagnosis of power systems. Electr. Power Syst. Res. 2018, 163, 441–451. [Google Scholar] [CrossRef]
- Xiong, G.; Yuan, X.; Mohamed, A.W.; Chen, J.; Zhang, J. Improved binary gaining–sharing knowledge-based algorithm with mutation for fault section location in distribution networks. J. Comput. Des. Eng. 2022, 9, 393–405. [Google Scholar] [CrossRef]
- Xiong, G.; Shi, D.; Zhu, L.; Duan, X. A new approach to fault diagnosis of power systems using fuzzy reasoning spiking neural P systems. Math. Probl. Eng. 2013, 2013, 815352. [Google Scholar] [CrossRef] [Green Version]
- Xiong, G.; Yuan, X.; Mohamed, A.W.; Zhang, J. Fault section diagnosis of power systems with logical operation binary gaining-sharing knowledge-based algorithm. Int. J. Intell. Syst. 2021, 37, 1057–1080. [Google Scholar] [CrossRef]
- Zhang, J.; Fan, L.; Yao, G.; Yu, P.; Xiong, G.; Meng, K.; Chen, X.; Dong, Z. A probabilistic assessment method for voltage stability considering large scale correlated stochastic variables. IEEE Access 2019, 8, 5407–5415. [Google Scholar] [CrossRef]
- Aly, H.H. A proposed intelligent short-term load forecasting hybrid models of ANN, WNN and KF based on clustering techniques for smart grid. Electr. Power Syst. Res. 2020, 182, 106191. [Google Scholar] [CrossRef]
- Arif, M.; Liu, Y.; Haq, I.U.; Ashfaq, A. Load forecasting using neural network integrated with economic dispatch problem. Int. J. Electr. Comput. Eng. 2018, 12, 885–890. [Google Scholar]
- Waseem, M.; Lin, Z.; Yang, L. Data-driven load forecasting of air conditioners for demand response using levenberg–marquardt algorithm-based ANN. Big Data Cogn. Comput. 2019, 3, 36. [Google Scholar] [CrossRef]
- Gupta, A.; Lakra, P. A Combined Voltage and Frequency Stability Enhancement using Artificial Neural Network and Fast Voltage Stability Index Based Load Shedding. In Proceedings of the 2022 IEEE 11th International Conference on Communication Systems and Network Technologies (CSNT), Indore, India, 23–24 April 2022. [Google Scholar] [CrossRef]
- Huang, W.; Zhang, X.; Hill, D.J. Impact of network structure on short-term voltage stability using data-driven method. In Proceedings of the 2019 IEEE Innovative Smart Grid Technologies-Asia (ISGT Asia), Chengdu, China, 21–24 May 2019. [Google Scholar] [CrossRef]
- Poursaeed, A.H.; Namdari, F. Real-time voltage stability monitoring using weighted least square support vector machine considering overcurrent protection. Int. J. Electr. Power Energy Syst. 2022, 136, 107690. [Google Scholar] [CrossRef]
- Shakerighadi, B.; Aminifar, F.; Afsharnia, S. Power systems wide-area voltage stability assessment considering dissimilar load variations and credible contingencies. J. Mod. Power Syst. Clean Energy 2019, 7, 78–87. [Google Scholar] [CrossRef] [Green Version]
- Villa-Acevedo, W.M.; López-Lezama, J.M.; Colomé, D.G. Voltage Stability Margin Index Estimation Using a Hybrid Kernel Extreme Learning Machine Approach. Energies 2020, 13, 857. [Google Scholar] [CrossRef] [Green Version]
- Li, B.; Delpha, C.; Diallo, D.; Migan-Dubois, A. Application of Artificial Neural Networks to photovoltaic fault detection and diagnosis: A review. Renew. Sustain. Energy Rev. 2021, 138, 110512. [Google Scholar] [CrossRef]
- Yang, G.R.; Wang, X.-J. Artificial Neural Networks for Neuroscientists: A Primer. Neuron 2020, 107, 1048–1070. [Google Scholar] [CrossRef] [PubMed]
- Abiodun, O.I.; Jantan, A.; Omolara, A.E.; Dada, K.V.; Mohamed, N.A.; Arshad, H. State-of-the-art in artificial neural network applications: A survey. Heliyon 2018, 4, e00938. [Google Scholar] [CrossRef] [PubMed] [Green Version]
- Abiodun, O.I.; Jantan, A.; Omolara, A.E.; Dada, K.V.; Umar, A.M.; Linus, O.U.; Arshad, H.; Kazaure, A.A.; Gana, U.; Kiru, M.U. Comprehensive review of artificial neural network applications to pattern recognition. IEEE Access 2019, 7, 158820–158846. [Google Scholar] [CrossRef]
- Elsheikh, A.H.; Sharshir, S.W.; Elaziz, M.A.; Kabeel, A.; Guilan, W.; Haiou, Z. Modeling of solar energy systems using artificial neural network: A comprehensive review. Sol. Energy 2019, 180, 622–639. [Google Scholar] [CrossRef]
- Olivencia Polo, F.; Ferrero Bermejo, J.; Gómez Fernández, J.F.; Crespo Márquez, A. Failure Mode Prediction and Energy Forecasting of PV Plants to Assist Maintenance Task by ANN Based Models. In Value Based and Intelligent Asset Management; Springer: Berlin, Germany, 2020; pp. 187–209. [Google Scholar]
- Ferrero Bermejo, J.; Gómez Fernández, J.F.; Olivencia Polo, F.; Crespo Márquez, A. A review of the use of artificial neural network models for energy and reliability prediction. A study of the solar PV, hydraulic and wind energy sources. Appl. Sci. 2019, 9, 1844. [Google Scholar] [CrossRef] [Green Version]
- Ghadami, N.; Gheibi, M.; Kian, Z.; Faramarz, M.G.; Naghedi, R.; Eftekhari, M.; Fathollahi-Fard, A.M.; Dulebenets, M.A.; Tian, G. Implementation of solar energy in smart cities using an integration of artificial neural network, photovoltaic system and classical Delphi methods. Sustain. Cities Soc. 2021, 74, 103149. [Google Scholar] [CrossRef]
- Nam, K.; Hwangbo, S.; Yoo, C. A deep learning-based forecasting model for renewable energy scenarios to guide sus-tainable energy policy: A case study of Korea. Renew. Sustain. Energy Rev. 2020, 122, 109725. [Google Scholar] [CrossRef]
- Pazikadin, A.R.; Rifai, D.; Ali, K.; Malik, M.Z.; Abdalla, A.N.; Faraj, M.A. Solar irradiance measurement instrumenta-tion and power solar generation forecasting based on Artificial Neural Networks (ANN): A review of five years research trend. Sci. Total Environ. 2020, 715, 136848. [Google Scholar] [CrossRef]
- Qadir, Z.; Khan, S.I.; Khalaji, E.; Munawar, H.S.; Al-Turjman, F.; Mahmud, M.P.; Kouzani, A.Z.; Le, K. Predicting the energy output of hybrid PV–wind renewable energy system using feature selection technique for smart grids. Energy Rep. 2021, 7, 8465–8475. [Google Scholar] [CrossRef]
- Zamee, M.A.; Won, D. Novel mode adaptive artificial neural network for dynamic learning: Application in renewable energy sources power generation prediction. Energies 2020, 13, 6405. [Google Scholar] [CrossRef]
- Xiong, G.; Shuai, M.; Hu, X. Combined heat and power economic emission dispatch using improved bare-bone mul-ti-objective particle swarm optimization. Energy 2022, 244, 123108. [Google Scholar] [CrossRef]
- Delfani, S.; Esmaeili, M.; Karami, M. Application of artificial neural network for performance prediction of a nanofluid-based direct absorption solar collector. Sustain. Energy Technol. Assess. 2019, 36, 100559. [Google Scholar] [CrossRef]
- Diez, F.; Navas-Gracia, L.; Martínez-Rodríguez, A.; Correa-Guimaraes, A.; Chico-Santamarta, L. Modelling of a flat-plate solar collector using artificial neural networks for different working fluid (water) flow rates. Sol. Energy 2019, 188, 1320–1331. [Google Scholar] [CrossRef]
- Ghritlahre, H.K.; Prasad, R.K. Prediction of thermal performance of unidirectional flow porous bed solar air heater with optimal training function using artificial neural network. Energy Procedia 2017, 109, 369–376. [Google Scholar] [CrossRef]
- Ghritlahre, H.K.; Prasad, R.K. Application of ANN technique to predict the performance of solar collector systems—A review. Renew. Sustain. Energy Rev. 2018, 84, 75–88. [Google Scholar] [CrossRef]
- Heng, S.Y.; Asako, Y.; Suwa, T.; Nagasaka, K. Transient thermal prediction methodology for parabolic trough solar col-lector tube using artificial neural network. Renew. Energy 2019, 131, 168–179. [Google Scholar] [CrossRef]
- Sadeghi, G.; Nazari, S.; Ameri, M.; Shama, F. Energy and exergy evaluation of the evacuated tube solar collector using Cu2O/water nanofluid utilizing ANN methods. Sustain. Energy Technol. Assess. 2020, 37, 100578. [Google Scholar] [CrossRef]
- Ali, M.N. Improved Design of Artificial Neural Network for MPPT of Grid-Connected PV Systems. In Proceedings of the 2018 Twentieth International Middle East Power Systems Conference (MEPCON), Cairo, Egypt, 18–20 December 2018; pp. 97–102. [Google Scholar] [CrossRef]
- Belhachat, F.; Larbes, C. A review of global maximum power point tracking techniques of photovoltaic system under partial shading conditions. Renew. Sustain. Energy Rev. 2018, 92, 513–553. [Google Scholar] [CrossRef]
- Xiong, G.; Li, L.; Mohamed, A.W.; Yuan, X.; Zhang, J. A new method for parameter extraction of solar photovoltaic models using gaining–sharing knowledge based algorithm. Energy Rep. 2021, 7, 3286–3301. [Google Scholar] [CrossRef]
- Bouzidi, M.; Abdelkader, H.; Mansouri, S.; Dumbrava, V. Modeling of a Photovoltaic Array with Maximum Power Point Tracking Using Neural Networks. Appl. Mech. Mater. 2022, 905, 53–64. [Google Scholar] [CrossRef]
- Eltamaly, A.M.; Farh, H.M.; Othman, M.F. A novel evaluation index for the photovoltaic maximum power point tracker techniques. Sol. Energy 2018, 174, 940–956. [Google Scholar] [CrossRef]
- Jiang, L.L.; Srivatsan, R.; Maskell, D.L. Computational intelligence techniques for maximum power point tracking in PV systems: A review. Renew. Sustain. Energy Rev. 2018, 85, 14–45. [Google Scholar] [CrossRef]
- Seyedmahmoudian, M.; Kok Soon, T.; Jamei, E.; Thirunavukkarasu, G.S.; Horan, B.; Mekhilef, S.; Stojcevski, A. Maxi-mum power point tracking for photovoltaic systems under partial shading conditions using bat algorithm. Sustainability 2018, 10, 1347. [Google Scholar] [CrossRef]
- Troudi, F.; Jouini, H.; Mami, A.; Ben Khedher, N.; Aich, W.; Boudjemline, A.; Boujelbene, M. Comparative Assessment between Five Control Techniques to Optimize the Maximum Power Point Tracking Procedure for PV Systems. Mathematics 2022, 10, 1080. [Google Scholar] [CrossRef]
- Alsharif, M.H.; Younes, M.K. Evaluation and forecasting of solar radiation using time series adaptive neuro-fuzzy infer-ence system: Seoul city as a case study. IET Renew. Power Gener. 2019, 13, 1711–1723. [Google Scholar] [CrossRef]
- Gaballa, H.; Cho, S. Verification of ANN solar radiation prediction algorithm for real-time energy simulation. In ASHRAE Topical Conference Proceedings; American Society of Heating, Refrigeration and Air Conditioning Engineers, Inc.: Atlanta, GA, USA, 2020. [Google Scholar]
- Hussain, M.; Dhimish, M.; Titarenko, S.; Mather, P. Artificial neural network based photovoltaic fault detection algo-rithm integrating two bi-directional input parameters. Renew. Energy 2020, 155, 1272–1292. [Google Scholar] [CrossRef]
- Iqbal, S.; Kabir, M.; Surja, A.S.; Rouf, A. Solar Radiation Prediction using Ant Colony Optimization and Artificial Neural Network. Eur. J. Eng. Technol. Res. 2022, 7, 99–111. [Google Scholar] [CrossRef]
- Ozoegwu, C.G. Artificial neural network forecast of monthly mean daily global solar radiation of selected locations based on time series and month number. J. Clean. Prod. 2019, 216, 96. [Google Scholar] [CrossRef]
- Qazi, A.; Fayaz, H.; Wadi, A.; Raj, R.G.; Rahim, N.; Khan, W.A. The artificial neural network for solar radiation predic-tion and designing solar systems: A systematic literature review. J. Clean. Prod. 2015, 104, 1–12. [Google Scholar] [CrossRef]
- Yang, L.; Huo, X.; Li, D.H.W.; Lam, J.C. A climate zone approach to global solar radiation modelling using artificial neural networks. IOP Conf. Series: Mater. Sci. Eng. 2019, 556, 012018. [Google Scholar] [CrossRef]
- Kerdphol, T.; Tripathi, R.N.; Hanamoto, T.; Khairudin; Qudaih, Y.; Mitani, Y. ANN based optimized battery energy storage system size and loss analysis for distributed energy storage location in PV-microgrid. In Proceedings of the 2015 IEEE Innovative Smart Grid Technologies-Asia (ISGT ASIA), Bangkok, Thailand, 3–6 November 2015; pp. 1–6. [CrossRef]
- Khatib, T.; Mohamed, A.; Sopian, K. A software tool for optimal sizing of PV systems in Malaysia. Model. Simul. Eng. 2012, 2012, 969248. [Google Scholar] [CrossRef] [Green Version]
- Kulaksız, A.A.; Akdemir, B.; Bakır, H. ANN-Based Sizing of Battery Storage in a Stand-Alone PV System. J. Au-Tomation Control. Eng. 2016, 4, 8–12. [Google Scholar] [CrossRef]
- Mellit, A. ANN-based GA for generating the sizing curve of stand-alone photovoltaic systems. Adv. Eng. Softw. 2010, 41, 687–693. [Google Scholar] [CrossRef]
- Mellit, A.; Benghanem, M.; Arab, A.H.; Guessoum, A. An adaptive artificial neural network model for sizing stand-alone photovoltaic systems: Application for isolated sites in Algeria. Renew. Energy 2005, 30, 1501–1524. [Google Scholar] [CrossRef] [Green Version]
- Nor, A.F.M.; Salimin, S.; Abdullah, M.N.; Ismail, M.N. Application of artificial neural network in sizing a stand-alone photovoltaic system: A review. Int. J. Power Electron. Drive Syst. (IJPEDS) 2020, 11, 342–349. [Google Scholar] [CrossRef] [Green Version]
- Sundari, S.; Begum, A.S. A study on different deep learning algorithms used in deep neural nets: MLP SOM and DBN. Wirel. Pers. Commun. 2022, 1–24, Online ahead of print. [Google Scholar]
- Mekki, H.; Mellit, A.; Salhi, H. Artificial neural network-based modelling and fault detection of partial shaded photo-voltaic modules. Simul. Model. Pract. Theory 2016, 67, 1–13. [Google Scholar] [CrossRef]
- Chine, W.; Mellit, A.; Lughi, V.; Malek, A.; Sulligoi, G.; Pavan, A.M. A novel fault diagnosis technique for photovoltaic systems based on artificial neural networks. Renew. Energy 2016, 90, 501–512. [Google Scholar] [CrossRef]
- Rao, S.; Spanias, A.; Tepedelenlioglu, C. Solar array fault detection using neural networks. In Proceedings of the 2019 IEEE International Conference on Industrial Cyber Physical Systems (ICPS), Taipei, Taiwan, 6–9 May 2019; pp. 196–200. [Google Scholar]
- Li, K.; Zhao, S.; Wang, Y. A planar location method for DC arc faults using dual radiation detection points and DANN. IEEE Trans. Instrum. Meas. 2020, 69, 5478–5487. [Google Scholar] [CrossRef]
- Ul-Haq, A.; Sindi, H.F.; Gul, S.; Jalal, M. Modeling and fault categorization in thin-film and crystalline PV arrays through multilayer neural network algorithm. IEEE Access 2020, 8, 102235–102255. [Google Scholar] [CrossRef]
- Khelil, C.K.M.; Amrouche, B.; Kara, K.; Chouder, A. The impact of the ANN’s choice on PV systems diagnosis quality. Energy Convers. Manag. 2021, 240, 114278. [Google Scholar] [CrossRef]
- Popescu, F.; Enache, F. Training of RBF neural networks: A comparative overview. Sci. Bull. Nav. Acad. 2013, 26, 39–48. [Google Scholar]
- Dhimish, M.; Holmes, V.; Mehrdadi, B.; Dales, M. Comparing Mamdani Sugeno fuzzy logic and RBF ANN network for PV fault detection. Renew. Energy 2018, 117, 257–274. [Google Scholar] [CrossRef] [Green Version]
- Mohebali, B.; Tahmassebi, A.; Meyer-Baese, A.; Gandomi, A.H. Probabilistic neural networks: A brief overview of theory, implementation, and application. In Handbook of Probabilistic Models; Elsevier: Amsterdam, The Netherlands, 2020; pp. 347–367. [Google Scholar]
- Akram, M.N.; Lotfifard, S. Modeling and health monitoring of DC side of photovoltaic array. IEEE Trans. Sustain. Energy 2015, 6, 1245–1253. [Google Scholar] [CrossRef]
- Garoudja, E.; Chouder, A.; Kara, K.; Silvestre, S. An enhanced machine learning based approach for failures detection and diagnosis of PV systems. Energy Convers. Manag. 2017, 151, 496–513. [Google Scholar] [CrossRef] [Green Version]
- Zhu, H.; Lu, L.; Yao, J.; Dai, S.; Hu, Y. Fault diagnosis approach for photovoltaic arrays based on unsupervised sample clustering and probabilistic neural network model. Sol. Energy 2018, 176, 395–405. [Google Scholar] [CrossRef]
- Basnet, B.; Chun, H.; Bang, J. An intelligent fault detection model for fault detection in photovoltaic systems. J. Sensors 2020, 2020, 6960328. [Google Scholar] [CrossRef]
- Alzubaidi, L.; Zhang, J.; Humaidi, A.J.; Al-Dujaili, A.; Duan, Y.; Al-Shamma, O.; Santamaría, J.; Fadhel, M.A.; Al-Amidie, M.; Farhan, L. Review of deep learning: Concepts, CNN architectures, challenges, applications, future directions. J. Big Data 2021, 8, 1–74. [Google Scholar] [CrossRef] [PubMed]
- Deitsch, S.; Christlein, V.; Berger, S.; Buerhop-Lutz, C.; Maier, A.; Gallwitz, F.; Riess, C. Automatic classification of de-fective photovoltaic module cells in electroluminescence images. Sol. Energy 2019, 185, 455–468. [Google Scholar] [CrossRef] [Green Version]
- Gao, W.; Wai, R.-J. A novel fault identification method for photovoltaic array via convolutional neural network and re-sidual gated recurrent unit. IEEE Access 2020, 8, 159493–159510. [Google Scholar] [CrossRef]
- Espinosa, A.R.; Bressan, M.; Giraldo, L.F. Failure signature classification in solar photovoltaic plants using RGB images and convolutional neural networks. Renew. Energy 2020, 162, 249–256. [Google Scholar] [CrossRef]
- Aziz, F.; Haq, A.U.; Ahmad, S.; Mahmoud, Y.; Jalal, M.; Ali, U. A novel convolutional neural network-based approach for fault classification in photovoltaic arrays. IEEE Access 2020, 8, 41889–41904. [Google Scholar] [CrossRef]
- Manno, D.; Cipriani, G.; Ciulla, G.; Di Dio, V.; Guarino, S.; Brano, V.L. Deep learning strategies for automatic fault di-agnosis in photovoltaic systems by thermographic images. Energy Convers. Manag. 2021, 241, 114315. [Google Scholar] [CrossRef]
- Lu, X.; Lin, P.; Cheng, S.; Fang, G.; He, X.; Chen, Z.; Wu, L. Fault diagnosis model for photovoltaic array using a du-al-channels convolutional neural network with a feature selection structure. Energy Convers. Manag. 2021, 248, 114777. [Google Scholar] [CrossRef]
- Yang, Z.; Xu, B.; Luo, W.; Chen, F. Autoencoder-based representation learning and its application in intelligent fault diagnosis: A review. Measurement 2021, 189, 110460. [Google Scholar] [CrossRef]
- Thirukovalluru, R.; Dixit, S.; Sevakula, R.K.; Verma, N.K.; Salour, A. Generating feature sets for fault diagnosis using denoising stacked auto-encoder. In Proceedings of the 2016 IEEE International Conference on Prognostics and Health Management (ICPHM), Detroit, MI, USA, 6–8 June 2016. [Google Scholar]
- Manohar, M.; Koley, E.; Ghosh, S. Enhancing the reliability of protection scheme for PV integrated microgrid by dis-criminating between array faults and symmetrical line faults using sparse auto encoder. IET Renew. Power Gener. 2019, 13, 308–317. [Google Scholar] [CrossRef]
- Liu, Y.; Ding, K.; Zhang, J.; Li, Y.; Yang, Z.; Zheng, W.; Chen, X. Fault diagnosis approach for photovoltaic array based on the stacked auto-encoder and clustering with I-V curves. Energy Convers. Manag. 2021, 245, 114603. [Google Scholar] [CrossRef]
- Chen, Z.; Chen, Y.; Wu, L.; Cheng, S.; Lin, P. Deep residual network based fault detection and diagnosis of photovoltaic arrays using current-voltage curves and ambient conditions. Energy Convers. Manag. 2019, 198, 111793. [Google Scholar] [CrossRef]
- Appiah, A.Y.; Zhang, X.; Ayawli, B.B.K.; Kyeremeh, F. Long short-term memory networks based automatic feature ex-traction for photovoltaic array fault diagnosis. IEEE Access 2019, 7, 30089–30101. [Google Scholar] [CrossRef]
- Tao, C.; Wang, X.; Gao, F.; Wang, M. Fault diagnosis of photovoltaic array based on deep belief network optimized by genetic algorithm. Chin. J. Electr. Eng. 2020, 6, 106–114. [Google Scholar] [CrossRef]
- Jazayeri, K.; Jazayeri, M.; Uysal, S. Artificial neural network-based all-sky power estimation and fault detection in pho-tovoltaic modules. J. Photonics Energy 2017, 7, 025501. [Google Scholar] [CrossRef]
- Chen, Z.; Wu, L.; Cheng, S.; Lin, P.; Wu, Y.; Lin, W. Intelligent fault diagnosis of photovoltaic arrays based on optimized kernel extreme learning machine and I-V characteristics. Appl. Energy 2017, 204, 912–931. [Google Scholar] [CrossRef]
- Hwang, H.-R.; Kim, B.-S.; Cho, T.-H.; Lee, I.-S. Implementation of a fault diagnosis system using neural networks for solar panel. Int. J. Control Autom. Syst. 2019, 17, 1050–1058. [Google Scholar] [CrossRef]
- Natsheh, E.; Samara, S. Tree Search Fuzzy NARX Neural Network Fault Detection Technique for PV Systems with IoT Support. Electronics 2020, 9, 1087. [Google Scholar] [CrossRef]
Ref | ANN Type | Year | Input | Fault Type | Correct Rate |
---|---|---|---|---|---|
[92] | MLP | 2016 | Solar irradiance, cell temperature, PV current, and voltage | Photovoltaic module shading failure | - |
[93] | MLP | 2016 | Solar irradiance and PV module temperature | Short-circuit fault, diode fault, disconnection fault, connection resistance fault, shadow fault | 90.3% |
[94] | MLP | 2019 | Voc, Id, Vmax, Imax, Tm, module irradiance, fill factor, γ, and power | Ground fault, arc fault, module shadow, module temperature change (change temperature), dirty, short circuit | 99% |
[95] | MLP | 2020 | Images | Arc fault | - |
[96] | MLP | 2020 | Irradiance, T, Id, Voc, and peak power | Module mismatches, short circuits, open circuits, and fault combinations in multi-fault scenarios | 99.6% |
[97] | MLP | 2021 | I–V characteristics of cell T, solar radiation, Vmmp and Immp | Short circuit failure, broken circuit fault | 97.27% |
[93] | RBF | 2016 | Solar irradiance and Tm | Short circuit failure, diode failure, breakage failure, connection resistance failure, shadow failure | 68.4% |
[99] | RBF | 2017 | Power ratio and voltage ratio | Normal operation, 1–4 optical multiplex module failure, shading failure, PV string failure, MPPT device failure | 92.1% |
[97] | RBF | 2020 | I–V characteristics of cell T, solar radiation, Vmmp and Immp | Short circuit fault, broken circuit fault | 97.27% |
[80] | RBF | 2021 | Solar irradiance and output power | PV string failure, 1–9 PV modules, and PV string disconnection failure | 97% |
[101] | PNN | 2015 | Irradiation, temperature, maximum power point voltage, current, power | Short circuit fault, open circuit fault | 98.53% |
[102] | PNN | 2017 | Module temperature, tilt irradiance, maximum power point voltage, current | Healthy systems, multiple modules in a string break circuit, and one string disconnected from the array | 98.19% |
[103] | PNN | 2018 | Voc, Id, Vmmp and Immp | Normal, short circuit fault, open circuit fault, abnormal aging, masking fault | 92.48% |
[104] | PNN | 2020 | Current, voltage, irradiation level and temperature data | Permanent masking, hot spot failure, line failure, aging | 100% |
[97] | PNN | 2021 | I–V characteristics of Tc, solar radiation, Vmmp and Immp | Short circuit fault, open circuit fault | 100% |
[106] | CNN | 2019 | Solar cell electroluminescence image | Defects on the surface of photovoltaic modules | 88.42% |
[109] | CNN | 2020 | Images | Partial masking and high impedance failure, low location mismatch, line failure, aging | 73.53% |
[107] | CNN | 2020 | I–V curve, temperature, and irradiance | Short circuit, partial shadow, abnormal aging, mixed fault | 95.23% |
[108] | CNN | 2020 | RGB images | Free of faults, cracks, shadows, and dust | 70% |
[110] | CNN | 2021 | Thermal image | Hot spot failure, masking failure, battery damage | 100% |
[111] | CNN | 2021 | Current and voltage electrical time series diagram | Partial shadow condition, open circuit fault, line fault | 99.6% |
[114] | SAE | 2018 | Grayscale images | Array failure, symmetrical line failure | 100% |
[115] | SAE | 2021 | Residuals between I–V and P–V curves | Short-circuit faults, degradation faults, local shadows, and concurrent faults | 98.5% |
[116] | ResNet | 2019 | Id, Voc, Vmmp and Immp | Short-circuit faults, open-circuit faults, degradation faults and local shadows | 99.940, 95.778% |
[117] | LSTM | 2019 | I, V, P | Line-line fault, Hot spot fault, Normal condition | 100% |
[118] | DBN | 2020 | Voc, Id, Vmmp and Immp | Normal operation, ground short, series break, local shading, and abnormal aging | 95.73% |
[119] | DANN | 2017 | Photovoltaic module output power and irradiance | Masking effect, dirt or dust accumulation on the module surface | 99.8% |
[120] | ELM | 2017 | Voc, Id, Vmmp, Immp, photocurrent, saturation current, ideal factor, series resistance, parallel resistance | Short circuit failure, Degradation fault, broken circuit fault, Partial shading condition | 100% |
[121] | ART2NN and MNN | 2018 | Open Circuit Voltage | Battery board failure | 100% |
[122] | NARX | 2020 | Voltage, current, temperature, irradiance | 23 types of faults in 8 PV panels | 98.2% |
Publisher’s Note: MDPI stays neutral with regard to jurisdictional claims in published maps and institutional affiliations. |
© 2022 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
Share and Cite
Yuan, Z.; Xiong, G.; Fu, X. Artificial Neural Network for Fault Diagnosis of Solar Photovoltaic Systems: A Survey. Energies 2022, 15, 8693. https://doi.org/10.3390/en15228693
Yuan Z, Xiong G, Fu X. Artificial Neural Network for Fault Diagnosis of Solar Photovoltaic Systems: A Survey. Energies. 2022; 15(22):8693. https://doi.org/10.3390/en15228693
Chicago/Turabian StyleYuan, Zixia, Guojiang Xiong, and Xiaofan Fu. 2022. "Artificial Neural Network for Fault Diagnosis of Solar Photovoltaic Systems: A Survey" Energies 15, no. 22: 8693. https://doi.org/10.3390/en15228693
APA StyleYuan, Z., Xiong, G., & Fu, X. (2022). Artificial Neural Network for Fault Diagnosis of Solar Photovoltaic Systems: A Survey. Energies, 15(22), 8693. https://doi.org/10.3390/en15228693