ACTA AERONAUTICAET ASTRONAUTICA SINICA >
Application issues of data-driven intelligent fault diagnosis technologies for liquid rocket engines
Received date: 2024-10-21
Revised date: 2024-11-25
Accepted date: 2025-02-10
Online published: 2025-02-25
Supported by
National Natural Science Foundation of China(T2221002)
Fault diagnosis is one of the key technologies to ensure the safety of liquid rocket engines. The model-based diagnostic methods are limited by the irreconcilable contradiction between diagnostic accuracy and model accuracy, while data-driven diagnostic methods, typified by signal processing techniques, rely heavily on expert domain knowledge. With the rapid development of artificial intelligence and big data, the data-driven intelligent fault diagnosis methods have received extensive attention and achieved great success in a great variety of engineering applications. Therefore, the application modes of the data-driven intelligent fault diagnosis methods in liquid rocket engines was reviewed from the perspectives of model structures and feature engineering of machine learning. The three major challenges faced by the the data-driven intelligent fault diagnosis methods in the practical health monitoring application of liquid rocket engines were further analyzed, and the corresponding solutions based on research achievements of our team were presented, respectively. Finally, review conclusions and future works of the data-driven intelligent fault diagnosis technology were proposed to inspire further exploration in this field.
Shuming YANG , Jianjun WU , Changlin XIE , Yuqiang CHENG , Biao WANG . Application issues of data-driven intelligent fault diagnosis technologies for liquid rocket engines[J]. ACTA AERONAUTICAET ASTRONAUTICA SINICA, 2025 , 46(15) : 131427 -131427 . DOI: 10.7527/S1000-6893.2025.31427
| [1] | 吴建军, 朱晓彬, 程玉强, 等. 液体火箭发动机智能健康监控技术研究进展[J]. 推进技术, 2022, 43(1): 7-19. |
| WU J J, ZHU X B, CHENG Y Q, et al. Research progress of intelligent health monitoring technology for liquid-propellant rocket engines[J]. Journal of Propulsion Technology, 2022, 43(1): 7-19 (in Chinese). | |
| [2] | 包为民. 可重复使用运载火箭技术发展综述[J]. 航空学报, 2023, 44(23): 629555. |
| BAO W M. A review of reusable launch vehicle technol-ogy development[J]. Acta Aeronautica et Astronautica Sinica, 2023, 44(23): 629555 (in Chinese). | |
| [3] | KANSO S, JHA M S, GALEOTTA M, et al. Remaining useful life prediction with uncertainty quantification of liquid propulsion rocket engine combustion chamber[J]. IFAC-PapersOnLine, 2022, 55(6): 96–101. |
| [4] | 陈泽灏, 陈晖, 高玉闪, 等. 基于模型的液体火箭发动机故障诊断技术回顾与展望[J]. 航空学报, 2023, 44(23): 629016. |
| CHEN Z H, CHEN H, GAO Y S, et al. Review and prospect of model-based fault diagnosis technology for liquid rocket engines[J]. Acta Aeronautica et Astronautica Sinica, 2023, 44(23): 629016 (in Chinese). | |
| [5] | IANNETTI A, MARZAT J, LAHANIER H P, et al. Automatic tuning strategies for model-based diagnosis methods applied to a rocket engine demonstrator[C]∥PHM Society European Conference, 2016. |
| [6] | MARU Y, MORI H, OGAI T, et al. Anomaly detection configured as a combination of state observer and mahalanobis-taguchi method for a rocket engine[J]. Transactions of the Japan Society for Aeronautical and Space Sciences, Aerospace Technology Japan, 2018, 16(2): 195-201. |
| [7] | CHA J, KO S, PARK SY, et al. Fault detection and diagnosis algorithms for transient state of an open-cycle liquid rocket engine using nonlinear Kalman filter methods[J]. Acta Astronautica, 2019, 163: 147-56. |
| [8] | LEE K, CHA J, KO S, et al. Fault detection and diagnosis algorithms for an open-cycle liquid propellant rocket engine using the Kalman filter and fault factor methods[J]. Acta Astronautica, 2018, 150: 15-27. |
| [9] | 许亮, 芦弘炜, 王闻浩, 等. 基于无迹卡尔曼滤波的液体火箭发动机故障诊断[J]. 载人航天, 2024, 30(4): 516-525. |
| XU L, LU H W, WANG W H, et al. Fault diagnosis of liquid rocket engine based on unscented Kalman filter [J]. Manned Spaceflight, 2024, 30(4): 516-525 (in Chinese). | |
| [10] | ZENG Y Z, SHAO X D, HU Q L,et al. Fault diagnosis of liquid rocket engine thrust chamber based on improved augmented particle filter [C]∥The 40th Chinese Control Conference(CCC). Piscataway: IEEE Press, 2021. |
| [11] | BROCK DC, GRAD B. Expert systems: Commercializing artificial intelligence[J]. IEEE Annals of the History of Computing, 2022, 44 (1): 5-7. |
| [12] | CHEN M Q, QU R, FANG W G. Case-based reasoning system for fault diagnosis of aero-engines[J]. Expert Systems With Applications, 2022, 202: 117350. |
| [13] | 黄敏超, 张育林, 陈启智. 基于模糊规则集度量的液体火箭发动机故障诊断[J]. 推进技术, 1997, 18(5): 5-8. |
| HUANG M C, ZHANG Y L, CHEN Q Z. Fault diagnosis of liquid rocket engine based on fuzzy measuring of fuzzy rules sets[J]. Journal of Propulsion Technology, 1997, 18(5): 5-8 (in Chinese). | |
| [14] | 董周杰, 郭迎清. 基于综合模糊聚类算法的液体火箭发动机故障诊断[J]. 航空动力学报, 2020, 35(6): 1326-1334. |
| DONG Z J, GUO Y Q. Fault diagnosis of liquid rocket engine based on comprehensive fuzzy clustering algorithm[J]. Journal of Aerospace Power, 2020,35(6): 1326-1334 (in Chinese). | |
| [15] | 孙成志, 闫晓东. 基于神经网络和证据理论的火箭发动机故障诊断[J]. 宇航总体技术, 2020, 4(4): 20-30. |
| SUN C Z, YAN X D. Fault diagnosis of rocket engine based on neural network and evidence theory[J]. Astronautical Systems Engineering Technology,2020, 4(4): 20-30 (in Chinese). | |
| [16] | 黄卫东, 王克昌. 基于深层知识规则的液体火箭发动机故障诊断[J]. 宇航学报, 1997, 18(4): 61-65. |
| HUANG W D, WANG K C. Rocket engine fault diagnosis based on rules of deep knowledge representation[J]. Journal of Astronautics, 1997, 18(4) :61-65 (in Chinese). | |
| [17] | 陈启智. 液体火箭发动机故障检测与诊断研究的若干进展[J]. 宇航学报, 2003, 24(1): 1-11. |
| CHEN Q Z. Advances in fault detection and diagnosis of liquid rocket engines[J]. Journal of Astronautics, 2003, 24(1):1-11 (in Chinese). | |
| [18] | 刘冰, 张育林. 奇偶空间法用于液体火箭发动机故障诊断[J]. 推进技术, 1999, 20(6): 6-9. |
| LIU B, ZHANG Y L. Parity space method for fault diagnosis of liquid rocket engine[J]. Journal of Propulsion Technology, 1999, 20(6): 6-9 (in Chinese). | |
| [19] | 高鸣, 任海峰, 胡小平, 等. 独立分量分析在液体火箭发动机故障诊断中的应用[J]. 导弹与航天运载技术, 2013(4): 74-77. |
| GAO M, REN H F, HU X P, et al. Independent component analysis for fault diagnosis of the liquid rocket engine[J]. Missiles and Space Vehicles, 2013(4): 74-77 (in Chinese). | |
| [20] | GEBRAEEL N, LEI Y G, LI N P, et al. Prognostics and remaining useful life prediction of machinery: Advances, opportunities and challenges[J]. Journal of Dynamics, Monitoring and Diagnostics, 2023, 2(1): 1-12 |
| [21] | 文成林, 吕菲亚. 基于深度学习的故障诊断方法综述[J]. 电子与信息学报, 2020, 42(1): 234-248. |
| WEN C L, Lü F Y. Review on Deep Learning Based Fault Diagnosis[J]. Journal of Electronics and Information Technology, 2020, 42(1): 234-248 (in Chinese). | |
| [22] | FOROOTAN M M, LARKI I, ZAHEDI R, et al. Machine learning and deep learning in energy systems: A review[J]. Sustainability, 2022, 14(8): 4832. |
| [23] | GAO Q, WU X, GUO J, et al. Machine-learning-based intelligent mechanical fault detection and diagnosis of wind turbines[J]. Mathematical Problems in Engineering, 2021, 2021: 9915084. |
| [24] | OCHELLA S, SHAFIEE M, DINMOHAMMADI F. Artificial intelligence in prognostics and health management of engineering systems[J]. Engineering Applications of Artificial Intelligence, 2022, 108: 104552. |
| [25] | GONG Y, CHEN Z H. A sequential approach to feature selection in high-dimensional additive models[J]. Journal of Statistical Planning and Inference, 2021, 215: 289-298. |
| [26] | 余萍, 曹洁. 深度学习在故障诊断与预测中的应用[J]. 计算机工程与应用, 2020, 56(3): 1-18. |
| YU P, CAO J. Deep learning approach and its application in fault diagnosis and prognosis[J]. Computer Engineering and Applications, 2020, 56(3): 1-18 (in Chinese). | |
| [27] | NIE Y, CHENG, Y Q, WU J. Dynamic cloud back-propagation networks and its application in fault diagnostic for liquid-propellant rocket engines[J], Proceedings of the Institution of Mechanical Engineers, Part G: Journal of Aerospace Engineering, 2018, 232(3): 583-594. |
| [28] | LI N N, XUE W, GUO X, et al. Fault detection in liquid-propellant rocket engines based on improved PSO-BP neural network[J]. Journal of Software, 2019, 14(8): 380-387. |
| [29] | XU L, ZHAO S B, LI N B, et al. Application of QGA-BP for fault detection of liquid rocket engines[J]. IEEE Transactions on Aerospace and Electronic Systems, 2019, 55(5): 2464-2472. |
| [30] | PARK S Y, AHN J. Deep neural network approach for fault detection and diagnosis during startup transient of liquid-propellant rocket engine[J]. Acta Astronautica, 2020, 177: 714-730. |
| [31] | ZHOU Y F, CHANG B H, ZOU H F, et al. Online visual monitoring method for liquid rocket engine nozzle welding based on a multi-task deep learning model[J]. Journal of Manufacturing Systems, 2023, 68: 1-11. |
| [32] | FENG Y, LIU Z J, CHEN J L, et al. Make the rocket intelligent at IoT edge: Stepwise GAN for anomaly detection of LRE with multisource fusion[J]. IEEE Internet of Things Journal, 2022; 9(4): 3135-3149. |
| [33] | TSUTSUMI S, HIRABAYASHI M, SATO D, et al. Data-driven fault detection in a reusable rocket engine using bivariate time-series analysis[J]. Acta Astronautica, 2021, 179: 685-694. |
| [34] | FENG Z G, XU T. Comparison of SOM and PCA-SOM in fault diagnosis of ground-testing bed[J]. Procedia Engineering, 2011, 15: 1271-1276. |
| [35] | RAMACHANDRAN S, ROSENGARTEN M, BELARDI C. Semi-supervised machine learning for spacecraft anomaly detection & diagnosis[C]∥2020 IEEE Aerospace Conference. Piscataway: IEEE Press, 2020. |
| [36] | SCHWABACHER M, OZA N, MATTHEWS B. Unsupervised anomaly detection for liquid-fueled rocket propulsion health monitoring[J]. Journal of Aerospace Computing, Information, and Communication, 2009, 6(7): 464-482. |
| [37] | ZHU X B, CHENG Y Q, WU J J, et al. Steady-state process fault detection for liquid rocket engines based on convolutional auto-encoder and one-class support vector machine[J]. IEEE Access, 2019, 8: 3144-3158. |
| [38] | LI F D, CHEN J L, LIU Z J, et al. A soft-target difference scaling network via relational knowledge distillation for fault detection of liquid rocket engine under multi-source trouble-free samples[J]. Reliability Engineering and System Safety, 2022, 228: 10875. |
| [39] | LV H X, CHEN J L, WANG J, et al. A supervised framework for recognition of liquid rocket engine health state under steady-state process without fault samples[J]. IEEE Transactions on Instrumentation and Measurement, 2021, 70: 3518610. |
| [40] | AISWARYA N, SUJA PRIYADHARSINI S, MONI K S. An efficient approach for the diagnosis of faults in turbo pump of liquid rocket engine by employing FFT and time-domain features[J]. Australian Journal of Mechanical Engineering, 2018, 16(3): 163-172. |
| [41] | XU Y, ZHAO Y, KE W, et al. A multi-fault diagnosis method based on improved SMOTE for class-imbalanced data[J]. The Canadian Journal of Chemical Engineering, 2023, 101(4): 1986-2001. |
| [42] | JIN Y P, YANG J F, YANG X, et al. Cross-domain bearing fault diagnosis method based on SMOTENC and deep transfer learning under imbalanced data[J]. Measurement Science and Technology, 2023, 35(1): 015121. |
| [43] | ZHANG H P, HUANG L L, WU C Q, et al. An effective convolutional neural network based on SMOTE and Gaussian mixture model for intrusion detection in imbalanced dataset[J]. Computer Networks, 2020, 177: 107315. |
| [44] | YANG X W, XU X Y, WANG Y R, et al. The fault diagnosis of a plunger pump based on the SMOTE + tomek link and dual-channel feature fusion[J]. Applied Sciences, 2024, 14 (11): P4785. |
| [45] | SATOH D, TSUTSUMI S, HIRABAYASHI M, et al. Estimating model parameters of liquid rocket engine simulator using data assimilation[J]. Acta Astronautica, 2020, 177: 373-385. |
| [46] | HIRABAYASHI M, SATOH D, TSUTSUMI S, et al. Complementary-integrated approach to model-based and data-driven prognostics and fault diagnosis for reusable rocket engine systems[J]. Transactions of the Japan Society for Aeronautical and Space Sciences, Aerospace Technology Japan, 2021, 19(2): 160-9. |
| [47] | WANG C X, ZHANG Y X, ZHAO Z B, et al. Dynamic model-assisted transferable network for liquid rocket engine fault diagnosis using limited fault samples[J]. Reliability Engineering & System Safety, 2024, 243: 109837. |
| [48] | 程玉强, 邓凌志. Wasserstein距离在液体火箭发动机故障检测中的应用[J]. 国防科技大学学报, 2023, 45(4): 20-27. |
| CHENG Y Q, DENG L Z. Application of Wasserstein distance in fault detection for liquid-propellant rocket engines[J]. Journal of National University of Defense Technology, 2023,45 (4): 20-27 (in Chinese). | |
| [49] | DENG L Z, CHENG Y Q, YANG S M, et al. Fault detection and diagnosis for liquid rocket engines with sample imbalance based on Wasserstein generative adversarial nets and multilayer perceptron[J]. Proceedings of the Institution of Mechanical Engineers, Part G: Journal of Aerospace Engineering, 2022, 237 (8): 1751-1763. |
| [50] | ZHAO D F, LIU S L, MIAO Z H, et al. Subdomain adaptation joint attention network enabled two-stage strategy towards few-shot fault diagnosis of LRE turbopump [J]. Advanced Engineering Informatics, 2024, 60: 102366. |
| [51] | YAN S, ZHONG X, SHAO H D, et al. Digital twin-assisted imbalanced fault diagnosis framework using subdomain adaptive mechanism and margin-aware regularization[J]. Reliability Engineering & System Safety, 2023, 239: 109522. |
| [52] | QIN Y, LIU H Y, MAO Y F. Faulty rolling bearing digital twin model and its application in fault diagnosis with imbalanced samples[J]. Advanced Engineering Informatics, 2024, 61: 102513. |
| [53] | YU X, YIN HS, SUN L, et al. A new cross-domain bearing fault diagnosis framework based on transferable features and manifold embedded discriminative distribution adaption under class imbalance[J]. IEEE Sensors Journal, 2023, 23 (7): 7525-7545. |
| [54] | IRFAN M, MUSHTAQ Z, KHAN N A, et al. Improving bearing fault identification by using novel hybrid involution-convolution feature extraction with adversarial noise injection in conditional GANs[J]. IEEE Access, 2023, 11: 118253-118267. |
| [55] | LI S, PENG Y F, SHEN Y P, et al. Rolling bearing fault diagnosis under data imbalance and variable speed based on adaptive clustering weighted oversampling[J]. Reliability Engineering & System Safety, 2024, 244: 109938. |
| [56] | HAN Z Z, WANG H R, SHEN C, et al. Attention features selection oversampling technique (AFS-O) for rolling bearing fault diagnosis with class imbalance[J]. Measurement Science and Technology, 2024, 35(3): 035002. |
| [57] | XING Z Y, ZHAO R Z, WU Y C, et al. Intelligent fault diagnosis of rolling bearing based on novel CNN model considering data imbalance[J]. Applied Intelligence, 2022, 52(14): 16281-16293. |
| [58] | YU H, LIU W Z, GU Y J, et al. TEM-SDRF: A novel approach for machinery fault diagnosis amid dual imbalances in fault and noise samples[J]. IEEE Sensors Journal, 2024, 24 (14): 22259-22270. |
| [59] | SAUFI S R, AHMAD Z A B, LEONG M S, et al. Gearbox fault diagnosis using a deep learning model with limited data sample[J]. IEEE Trans Ind Informatics, 2020, 16(10): 6263-6271. |
| [60] | JIA F, LEI YG, LU N, et al. Deep normalized convolutional neural network for imbalanced fault classification of machinery and its understanding via visualization[J]. Mechanical Systems and Signal Processing, 2018, 110: 349-367. |
| [61] | MALDONADO S, LóPEZ J. Dealing with high-dimensional class imbalanced datasets: Embedded feature selection for SVM classification[J]. Applied Soft Computing, 2018, 67: 94-105. |
| [62] | XU Q F, LU S X, JIA W Y, et al. Imbalanced fault diagnosis of rotating machinery via multi-domain feature extraction and cost-sensitive learning[J]. Journal of Intelligent Manufacturing, 2020, 31(6): 1467-1481. |
| [63] | JIA F, LI S H, ZUO H, et al. Deep neural network ensemble for the intelligent fault diagnosis of machines under imbalanced data[J]. IEEE Access, 2020, 8:120974-120982. |
| [64] | ZHUANG F, QI Z Y, DUAN K Y, et al. A comprehensive survey on transfer learning[J]. Proceedings of the IEEE, 2020, 109(1): 43-76. |
| [65] | YU F C, XIU X C, LI Y H. A survey on deep transfer learning and beyond[J]. Mathematics, 2022, 10(19): 3619. |
| [66] | TANG S N, MA J T, YAN Z Q, et al. Deep transfer learning strategy in intelligent fault diagnosis of rotating machinery[J]. Engineering Applications of Artiffcial Intelligence, 2024, 134: 108678. |
| [67] | ZHANG C X, TANG S, TANG K. Strategies of parameter fault detection for rocket engines based on transfer learning[J]. Journal of Computer Applications, 2020, 40(9): 2774-2780. |
| [68] | PAN T Y, CHEN J L, YE Z S, et al. A multi-head attention network with adaptive meta-transfer learning for RUL prediction of rocket engines[J]. Reliability Engineering and System Safety, 2022, 225: 108610. |
| [69] | ZHAO Y P, JIN H J, LIU H. Gas path fault diagnosis of turboshaft engine based on novel transfer learning methods[J]. Journal of Dynamic Systems, Measurement and Control, Transactions of the ASME, 2024, 146(3): 031010. |
| [70] | HU J T, CHEN M, TANG H L, et al. An adversarial transfer learning method based on domain distribution prediction for aero-engine fault diagnosis[J]. Engineering Applications of Artificial Intelligence, 2024, 133: 108287. |
| [71] | FENG Y, CHEN J L, XIE J S, et al. Meta-learning as a promising approach for few-shot cross-domain fault diagnosis: Algorithms, applications, and prospects[J]. Knowledge-Based Systems, 2022, 235: 107646. |
| [72] | WANG L, HUANG D K, HUANG K, et al. Online meta-learning approach for sensor fault diagnosis using limited data[J]. Smart Materials and Structures, 2024, 33(8): 085016. |
| [73] | XU Z, GAO X Y, FU J, et al. A novel fault diagnosis method under limited samples based on an extreme learning machine and meta-learning[J]. Journal of the Taiwan Institute of Chemical Engineers, 2024, 161: 105522. |
| [74] | ZHAO J, TANG T, YU Y, et al. Adaptive meta transfer learning with efficient self-attention for few-shot bearing fault diagnosis[J]. Neural Processing Letters, 2023, 55(2): 949-968. |
| [75] | VINYALS O, BLUNDELL C, LILLICRAP T, et al. Matching networks for one shot learning[C]∥Proceedings of the 30th International Conference on Neural Information Processing Systems, 2016: 3637-3645. |
| [76] | ZHONG J H, GU K R, JIANG H F, et al. A fine-tuning prototypical network for few-shot cross-domain fault diagnosis[J]. Measurement Science and Technology, 2024, 35(11): 116124. |
| [77] | MA R Y, HAN T, LEI W X. Cross-domain meta learning fault diagnosis based on multi-scale dilated convolution and adaptive relation module[J]. Knowledge-Based Systems, 2023, 261: 110175. |
| [78] | LAZAROS K, KOUMADORAKIS D E, VRAHATIS A G, et al. A comprehensive review on zero-shot-learning techniques[J]. Intelligent Decision Technologies, 2024, 18(2): 1001-1028. |
| [79] | ZHANG S Y, WEI H L, DING J L. An effective zero-shot learning approach for intelligent fault detection using 1D CNN[J]. Applied Intelligence, 2023, 53(12): 16041-16058. |
| [80] | XU J, LIANG S K, DING X, et al. A zero-shot fault semantics learning model for compound fault diagnosis[J]. Expert Systems with Applications, 2023, 221: 119642. |
| [81] | LI CJ, LUO K, YANG L, et al. A zero-shot fault detection method for UAV sensors based on a novel CVAE-GAN model[J]. IEEE Sensors Journal, 2024, 24(14): 23239-23254. |
| [82] | ZHAO D D, YIN H P, ZHOU H, et al. A zero-sample fault diagnosis method based on transfer learning[J]. IEEE Transactions on Industrial Informatics, 2024, 20(10):11542-11552. |
| [83] | KIRANYAZ S, DEVECIOGLU O C, ALHAMS A, et al. Zero-shot motor health monitoring by blind domain transition[J]. Mechanical Systems and Signal Processing, 2024, 210: 111147. |
| [84] | ORTIGOSSA E S, GON?ALVES T, NONATO L G. Explainable artificial intelligence (XAI)—from theory to methods and applications[J]. IEEE Access, 2024,12: 80799-80846. |
| [85] | MOOSAVI S, FARAJZADEH-ZANJANI M, RAZAVI- FAR R, et al. Explainable AI in manufacturing and industrial cyber-physical systems: A survey[J]. Electronics, 2024, 13(17): 3497. |
| [86] | 蒲天骄, 乔骥, 赵紫璇, 等. 面向电力系统智能分析的机器学习可解释性方法研究(一): 基本概念与框架[J]. 中国电机工程学报, 2023, 43(18): 7010-7030. |
| PU T J, QIAO J, ZHAO Z X, et al. Research on interpretable methods of machine learning applied in intelligent analysis of power system (Part Ⅰ): Basic concept and framework[J]. Proceedings of the CSEE, 2023, 43(18): 7010-7030 (in Chinese). | |
| [87] | HERWIG N, BORGHESANI P. Explaining deep neural networks processing raw diagnostic signals[J]. Mechanical Systems and Signal Processing, 2023, 200: 110584. |
| [88] | AMIN A, BIBO A, PANYAM M, et al. Wind turbine gearbox fault diagnosis using cyclostationary analysis and interpretable CNN[J]. Journal of Vibration Engineering & Technologies, 2024, 12(2): 1695-1705. |
| [89] | FERRARO A, GALLI A, MOSCATO V, et al. Evaluating explainable artificial intelligence tools for hard disk drive predictive maintenance[J]. Artificial Intelligence Review, 2023, 56(7): 7279-7314. |
| [90] | UTAMA C, MESKE C, SCHNEIDER J, et al. Explainable artificial intelligence for photovoltaic fault detection: A comparison of instruments[J]. Solar Energy, 2023, 249: 139-151. |
| [91] | FIGUEROA BARRAZA J, LóPEZ DROGUETT E, RAMOS MARTINS M. FS-SCF network: Neural network interpretability based on counterfactual generation and feature selection for fault diagnosis[J]. Expert Systems with Applications, 2024, 237: 121670. |
| [92] | OBREGON J, JUNG J Y. Rule-based visualization of faulty process conditions in the die-casting manufacturing[J]. Journal of Intelligent Manufacturing, 2024, 35(2): 521-537. |
| [93] | HSU H C, LU C C, WANG S W, et al. Rule generation for classifying slt failed parts[C]∥2022 IEEE 40th VLSI Test Symposium (VTS). Piscataway: IEEE Press, 2022: 1-7. |
| [94] | LIU J Q, HOU L, ZHANG R, et al. Explainable fault diagnosis of oil-gas treatment station based on transfer learning[J]. Energy, 2023, 262: 125258. |
| [95] | HOOVER B, STROBELT H, GEHRMANN S. exBERT: A visual analysis tool to explore learned representations in transformer models[C]∥Annual Meeting of the Association for Computational Linguistics, 2020. |
| [96] | SHAJALAL M, BODEN A, STEVENS G. ForecastExplainer: Explainable household energy demand forecasting by approximating shapley values using deeplift[J]. Technological Forecasting and Social Change, 2024, 206: 123588. |
| [97] | LI G N, LI F, XU C L, et al. A spatial-temporal layer-wise relevance propagation method for improving inter- pretability and prediction accuracy of LSTM building energy prediction[J]. Energy and Buildings, 2022, 271: 112317. |
| [98] | 纪守领, 李进锋, 杜天宇,等. 机器学习模型可解释性方法、应用与安全研究综述[J]. 计算机研究与发展, 2019, 56(10): 2071-2096. |
| JI S L, LI J F, DU T Y, et al. Survey on techniques, applications and security of machine learning interpretablity [J]. Journal of Computer Research and Development, 2019, 56(10): 2071-2096 (in Chinese). | |
| [99] | 陈珂锐, 孟小峰. 机器学习的可解释性[J]. 计算机研究与发展, 2020, 57(9): 1971-1986. |
| CHEN K R, MENG X F. Interpretation and understanding in machine learning[J]. Journal of Computer Research and Development, 2020, 57(9): 1971-1986 (in Chinese). |
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