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Two-Phase Software Fault Localization Based on Relational Graph Convolutional Neural Networks 被引量:1
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作者 Xin Fan Zhenlei Fu +2 位作者 Jian Shu Zuxiong Shen Yun Ge 《Computers, Materials & Continua》 2025年第2期2583-2607,共25页
Spectrum-based fault localization (SBFL) generates a ranked list of suspicious elements by using the program execution spectrum, but the excessive number of elements ranked in parallel results in low localization accu... Spectrum-based fault localization (SBFL) generates a ranked list of suspicious elements by using the program execution spectrum, but the excessive number of elements ranked in parallel results in low localization accuracy. Most researchers consider intra-class dependencies to improve localization accuracy. However, some studies show that inter-class method call type faults account for more than 20%, which means such methods still have certain limitations. To solve the above problems, this paper proposes a two-phase software fault localization based on relational graph convolutional neural networks (Two-RGCNFL). Firstly, in Phase 1, the method call dependence graph (MCDG) of the program is constructed, the intra-class and inter-class dependencies in MCDG are extracted by using the relational graph convolutional neural network, and the classifier is used to identify the faulty methods. Then, the GraphSMOTE algorithm is improved to alleviate the impact of class imbalance on classification accuracy. Aiming at the problem of parallel ranking of element suspicious values in traditional SBFL technology, in Phase 2, Doc2Vec is used to learn static features, while spectrum information serves as dynamic features. A RankNet model based on siamese multi-layer perceptron is constructed to score and rank statements in the faulty method. This work conducts experiments on 5 real projects of Defects4J benchmark. Experimental results show that, compared with the traditional SBFL technique and two baseline methods, our approach improves the Top-1 accuracy by 262.86%, 29.59% and 53.01%, respectively, which verifies the effectiveness of Two-RGCNFL. Furthermore, this work verifies the importance of inter-class dependencies through ablation experiments. 展开更多
关键词 Software fault localization graph neural network RankNet inter-class dependency class imbalance
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Automatic software fault localization based on artificial bee colony 被引量:2
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作者 Linzhi Huang Jun Ai 《Journal of Systems Engineering and Electronics》 SCIE EI CSCD 2015年第6期1325-1332,共8页
Software debugging accounts for a vast majority of the financial and time costs in software developing and maintenance. Thus, approaches of software fault localization that can help automate the debugging process have... Software debugging accounts for a vast majority of the financial and time costs in software developing and maintenance. Thus, approaches of software fault localization that can help automate the debugging process have become a hot topic in the field of software engineering. Given the great demand for software fault localization, an approach based on the artificial bee colony (ABC) algorithm is proposed to be integrated with other related techniques. In this process, the source program is initially instrumented after analyzing the dependence information. The test case sets are then compiled and run on the instrumented program, and execution results are input to the ABC algorithm. The algorithm can determine the largest fitness value and best food source by calculating the average fitness of the employed bees in the iteralive process. The program unit with the highest suspicion score corresponding to the best test case set is regarded as the final fault localization. Experiments are conducted with the TCAS program in the Siemens suite. Results demonstrate that the proposed fault localization method is effective and efficient. The ABC algorithm can efficiently avoid the local optimum, and ensure the validity of the fault location to a larger extent. 展开更多
关键词 software debugging software fault localization arti-ficial bee colony (ABC) algorithm program instrumentation.
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Statistical Debugging Effectiveness as a Fault Localization Approach: Comparative Study 被引量:1
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作者 Ishaq Sandoqa Fawaz Alzghoul +3 位作者 Hamad Alsawalqah Isra Alzghoul Loai Alnemer Mohammad Akour 《Journal of Software Engineering and Applications》 2016年第8期412-423,共12页
Fault localization is an important topic in software testing, as it enables the developer to specify fault location in their code. One of the dynamic fault localization techniques is statistical debugging. In this stu... Fault localization is an important topic in software testing, as it enables the developer to specify fault location in their code. One of the dynamic fault localization techniques is statistical debugging. In this study, two statistical debugging algorithms are implemented, SOBER and Cause Isolation, and then the experimental works are conducted on five programs coded using Python as an example of well-known dynamic programming language. Results showed that in programs that contain only single bug, the two studied statistical debugging algorithms are very effective to localize a bug. In programs that have more than one bug, SOBER algorithm has limitations related to nested predicates, rarely observed predicates and complement predicates. The Cause Isolation has limitations related to sorting predicates based on importance and detecting bugs in predicate condition. The accuracy of both SOBER and Cause Isolation is affected by the program size. Quality comparison showed that SOBER algorithm requires more code examination than Cause Isolation to discover the bugs. 展开更多
关键词 Testing and Debugging Dynamic Language Statistical Debugging fault localization
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Explainable Software Fault Localization Model: From Blackbox to Whitebox
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作者 Abdulaziz Alhumam 《Computers, Materials & Continua》 SCIE EI 2022年第10期1463-1482,共20页
The most resource-intensive and laborious part of debugging is finding the exact location of the fault from the more significant number of code snippets.Plenty of machine intelligence models has offered the effective ... The most resource-intensive and laborious part of debugging is finding the exact location of the fault from the more significant number of code snippets.Plenty of machine intelligence models has offered the effective localization of defects.Some models can precisely locate the faulty with more than 95%accuracy,resulting in demand for trustworthy models in fault localization.Confidence and trustworthiness within machine intelligencebased software models can only be achieved via explainable artificial intelligence in Fault Localization(XFL).The current study presents a model for generating counterfactual interpretations for the fault localization model’s decisions.Neural system approximations and disseminated presentation of input information may be achieved by building a nonlinear neural network model.That demonstrates a high level of proficiency in transfer learning,even with minimal training data.The proposed XFL would make the decisionmaking transparent simultaneously without impacting the model’s performance.The proposed XFL ranks the software program statements based on the possible vulnerability score approximated from the training data.The model’s performance is further evaluated using various metrics like the number of assessed statements,confidence level of fault localization,and TopN evaluation strategies. 展开更多
关键词 Software fault localization explainable artificial intelligence statement ranking vulnerability detection
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Long Distance GIL PD Fault Localization Method Based on Amplitude Difference and Time Difference Calculation of UHF Coupling Signal
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作者 Zhang Hui Hu Po Tao Ke 《Journal of Mechanics Engineering and Automation》 2016年第1期39-46,共8页
In the long distance GIL under certain conditions, this paper researches and realizes detection of PD characters and accurate fault localization through UHF coupling sensors at different positions of the GIL pipeline.... In the long distance GIL under certain conditions, this paper researches and realizes detection of PD characters and accurate fault localization through UHF coupling sensors at different positions of the GIL pipeline. The main methods for the detection are UHF signal amplitude difference (DOA) and time difference (TOF). We analyze the localization error by using TE and TEM component and high order TE mode component in electromagnetic coaxial wave guide theory. Research and field test prove the DOA detection error can meet the requirements of real-time online diagnosis and for history tracking analysis. The error of TOF detection method can be controlled within 3% and can be applied to the site. 展开更多
关键词 GIL partial discharge UHF EM-wave amplitude difference time difference fault localization.
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Waveguide Bragg Grating for Fault Localization in PON
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作者 HU Jin LIU Xu +4 位作者 ZHU Songlin ZHUANG Yudi WU Yuejun XIA Xiang HE Zuyuan 《ZTE Communications》 2024年第2期94-98,共5页
Femtosecond laser direct inscription is a technique especially useful for prototyping purposes due to its distinctive advantages such as high fabrication accuracy,true 3D processing flexibility,and no need for mold or... Femtosecond laser direct inscription is a technique especially useful for prototyping purposes due to its distinctive advantages such as high fabrication accuracy,true 3D processing flexibility,and no need for mold or photomask.In this paper,we demonstrate the design and fabrication of a planar lightwave circuit(PLC)power splitter encoded with waveguide Bragg gratings(WBG)using a femtosecond laser inscription technique for passive optical network(PON)fault localization application.Both the reflected wavelengths and intervals of WBGs can be conveniently tuned.In the experiment,we succeeded in directly inscribing WBGs in 1×4 PLC splitter chips with a wavelength interval of about 4 nm and an adjustable reflectivity of up to 70% in the C-band.The proposed method is suitable for the prototyping of a PLC splitter encoded with WBG for PON fault localization applications. 展开更多
关键词 planar light circuit power splitter waveguide Bragg gratings femtosecond laser optical network fault localization
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Multimode Process Fault Detection Using Local Neighborhood Similarity Analysis 被引量:6
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作者 邓晓刚 田学民 《Chinese Journal of Chemical Engineering》 SCIE EI CAS CSCD 2014年第Z1期1260-1267,共8页
Traditional data driven fault detection methods assume unimodal distribution of process data so that they often perform not well in chemical process with multiple operating modes. In order to monitor the multimode che... Traditional data driven fault detection methods assume unimodal distribution of process data so that they often perform not well in chemical process with multiple operating modes. In order to monitor the multimode chemical process effectively, this paper presents a novel fault detection method based on local neighborhood similarity analysis(LNSA). In the proposed method, prior process knowledge is not required and only the multimode normal operation data are used to construct a reference dataset. For online monitoring of process state, LNSA applies moving window technique to obtain a current snapshot data window. Then neighborhood searching technique is used to acquire the corresponding local neighborhood data window from the reference dataset. Similarity analysis between snapshot and neighborhood data windows is performed, which includes the calculation of principal component analysis(PCA) similarity factor and distance similarity factor. The PCA similarity factor is to capture the change of data direction while the distance similarity factor is used for monitoring the shift of data center position. Based on these similarity factors, two monitoring statistics are built for multimode process fault detection. Finally a simulated continuous stirred tank system is used to demonstrate the effectiveness of the proposed method. The simulation results show that LNSA can detect multimode process changes effectively and performs better than traditional fault detection methods. 展开更多
关键词 MULTIMODE chemical PROCESS fault detection local NEIGHBORHOOD SIMILARITY ANALYSIS Principal component ANALYSIS
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Sparse Kernel Locality Preserving Projection and Its Application in Nonlinear Process Fault Detection 被引量:31
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作者 DENG Xiaogang TIAN Xuemin 《Chinese Journal of Chemical Engineering》 SCIE EI CAS CSCD 2013年第2期163-170,共8页
Locality preserving projection (LPP) is a newly emerging fault detection method which can discover local manifold structure of a data set to be analyzed, but its linear assumption may lead to monitoring performance de... Locality preserving projection (LPP) is a newly emerging fault detection method which can discover local manifold structure of a data set to be analyzed, but its linear assumption may lead to monitoring performance degradation for complicated nonlinear industrial processes. In this paper, an improved LPP method, referred to as sparse kernel locality preserving projection (SKLPP) is proposed for nonlinear process fault detection. Based on the LPP model, kernel trick is applied to construct nonlinear kernel model. Furthermore, for reducing the computational complexity of kernel model, feature samples selection technique is adopted to make the kernel LPP model sparse. Lastly, two monitoring statistics of SKLPP model are built to detect process faults. Simulations on a continuous stirred tank reactor (CSTR) system show that SKLPP is more effective than LPP in terms of fault detection performance. 展开更多
关键词 nonlinear locality preserving projection kernel trick sparse model fault detection
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Fault Diagnosis Approach of Local Ventilation System in Coal Mines Based on Multidisciplinary Technology 被引量:18
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作者 GONG Xiao-yan XUE He +1 位作者 TAO Xin-li HU Ning 《Journal of China University of Mining and Technology》 EI 2006年第3期317-320,共4页
In order to reduce the probability of fault occurrence of local ventilation system in coal mine and prevent gas from exceeding the standard limit, an approach incorporating the reliability analysis, rough set theory, ... In order to reduce the probability of fault occurrence of local ventilation system in coal mine and prevent gas from exceeding the standard limit, an approach incorporating the reliability analysis, rough set theory, genetic algorithm (GA), and intelligent decision support system (IDSS) was used to establish and develop a fault diagnosis system of local ventilation in coal mine. Fault tree model was established and its reliability analysis was performed. The algorithms and software of key fault symptom and fault diagnosis rule acquiring were also analyzed and developed. Finally, a prototype system was developed and demonstrated by a mine instance. The research results indicate that the proposed approach in this paper can accurately and quickly find the fault reason in a local ventilation system of coal mines and can reduce difficulty of the fault diagnosis of the local ventilation system, which is significant to decrease gas exploding accidents in coal mines. 展开更多
关键词 fault diagnosis local ventilation rough set theory genetic algorithm IDSS
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Fault Diagnosis Model Based on Feature Compression with Orthogonal Locality Preserving Projection 被引量:14
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作者 TANG Baoping LI Feng QIN Yi 《Chinese Journal of Mechanical Engineering》 SCIE EI CAS CSCD 2011年第5期891-898,共8页
Based on feature compression with orthogonal locality preserving projection(OLPP),a novel fault diagnosis model is proposed in this paper to achieve automation and high-precision of fault diagnosis of rotating machine... Based on feature compression with orthogonal locality preserving projection(OLPP),a novel fault diagnosis model is proposed in this paper to achieve automation and high-precision of fault diagnosis of rotating machinery.With this model,the original vibration signals of training and test samples are first decomposed through the empirical mode decomposition(EMD),and Shannon entropy is constructed to achieve high-dimensional eigenvectors.In order to replace the traditional feature extraction way which does the selection manually,OLPP is introduced to automatically compress the high-dimensional eigenvectors of training and test samples into the low-dimensional eigenvectors which have better discrimination.After that,the low-dimensional eigenvectors of training samples are input into Morlet wavelet support vector machine(MWSVM)and a trained MWSVM is obtained.Finally,the low-dimensional eigenvectors of test samples are input into the trained MWSVM to carry out fault diagnosis.To evaluate our proposed model,the experiment of fault diagnosis of deep groove ball bearings is made,and the experiment results indicate that the recognition accuracy rate of the proposed diagnosis model for outer race crack、inner race crack and ball crack is more than 90%.Compared to the existing approaches,the proposed diagnosis model combines the strengths of EMD in fault feature extraction,OLPP in feature compression and MWSVM in pattern recognition,and realizes the automation and high-precision of fault diagnosis. 展开更多
关键词 orthogonal locality preserving projection(OLPP) manifold learning feature compression Morlet wavelet support vector machine(MWSVM) empirical mode decomposition(EMD) fault diagnosis
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Locally Linear Back-propagation Based Contribution for Nonlinear Process Fault Diagnosis 被引量:6
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作者 Jinchuan Qian Li Jiang Zhihuan Song 《IEEE/CAA Journal of Automatica Sinica》 SCIE EI CSCD 2020年第3期764-775,共12页
This paper proposes a novel locally linear backpropagation based contribution(LLBBC) for nonlinear process fault diagnosis. As a method based on the deep learning model of auto-encoder(AE), LLBBC can deal with the fau... This paper proposes a novel locally linear backpropagation based contribution(LLBBC) for nonlinear process fault diagnosis. As a method based on the deep learning model of auto-encoder(AE), LLBBC can deal with the fault diagnosis problem through extracting nonlinear features. When the on-line fault diagnosis task is in progress, a locally linear model is firstly built at the current fault sample. According to the basic idea of reconstruction based contribution(RBC), the propagation of fault information is described by using back-propagation(BP) algorithm. Then, a contribution index is established to measure the correlation between the variable and the fault, and the final diagnosis result is obtained by searching variables with large contributions. The smearing effect, which is an important factor affecting the performance of fault diagnosis, can be suppressed as well,and the theoretical analysis reveals that the correct diagnosis can be guaranteed by LLBBC. Finally, the feasibility and effectiveness of the proposed method are verified through a nonlinear numerical example and the Tennessee Eastman benchmark process. 展开更多
关键词 Auto-encoder(AE) deep learning fault diagnosis localLY LINEAR model nonlinear process reconstruction BASED contribution(RBC)
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Fault Detection Based on Incremental Locally Linear Embedding for Satellite TX-I 被引量:1
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作者 程月华 胡国飞 +2 位作者 陆宁云 姜斌 邢琰 《Transactions of Nanjing University of Aeronautics and Astronautics》 EI CSCD 2015年第6期600-609,共10页
A fault detection method based on incremental locally linear embedding(LLE)is presented to improve fault detecting accuracy for satellites with telemetry data.Since conventional LLE algorithm cannot handle incremental... A fault detection method based on incremental locally linear embedding(LLE)is presented to improve fault detecting accuracy for satellites with telemetry data.Since conventional LLE algorithm cannot handle incremental learning,an incremental LLE method is proposed to acquire low-dimensional feature embedded in high-dimensional space.Then,telemetry data of Satellite TX-I are analyzed.Therefore,fault detection are performed by analyzing feature information extracted from the telemetry data with the statistical indexes T2 and squared prediction error(SPE)and SPE.Simulation results verify the fault detection scheme. 展开更多
关键词 incremental locally linear embedding(LLE) telemetry data fault detection dimensionality reduction statistical indexes
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Multivariate time delay analysis based local KPCA fault prognosis approach for nonlinear processes 被引量:7
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作者 Yuan Xu Ying Liu Qunxiong Zhu 《Chinese Journal of Chemical Engineering》 SCIE EI CAS CSCD 2016年第10期1413-1422,共10页
Currently, some fault prognosis technology occasionally has relatively unsatisfied performance especially for in- cipient faults in nonlinear processes duo to their large time delay and complex internal connection. To... Currently, some fault prognosis technology occasionally has relatively unsatisfied performance especially for in- cipient faults in nonlinear processes duo to their large time delay and complex internal connection. To overcome this deficiency, multivariate time delay analysis is incorporated into the high sensitive local kernel principal component analysis. In this approach, mutual information estimation and Bayesian information criterion (BIC) are separately used to acquire the correlation degree and time delay of the process variables. Moreover, in order to achieve prediction, time series prediction by back propagation (BP) network is applied whose input is multivar- iate correlated time series other than the original time series. Then the multivariate time delayed series and future values obtained by time series prediction are combined to construct the input of local kernel principal component analysis (LKPCA) model for incipient fault prognosis. The new method has been exemplified in a sim- ple nonlinear process and the complicated Tennessee Eastman (TE) benchmark process. The results indicate that the new method has suoerioritv in the fault prognosis sensitivity over other traditional fault prognosis methods. 展开更多
关键词 fault prognosis Time delay estimation local kernel principal component analysis
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Fault Diagnosis of a Rotor Based on a Lifting Wavelet and Local Wave 被引量:1
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作者 WANG Feng-li GAO Hong-tao ZHAO De-you 《International Journal of Plant Engineering and Management》 2010年第1期13-17,共5页
Aiming at the mode mixture in local wave decomposition(LWD) caused by a noise signal, the original data is preprocessed using the lifting wavelet transformation to suppress abnormal interference of noise and improve... Aiming at the mode mixture in local wave decomposition(LWD) caused by a noise signal, the original data is preprocessed using the lifting wavelet transformation to suppress abnormal interference of noise and improve the quality of decomposition. It is employed to analyze the vibration signal of rotor rub-impact for extracting the weak impulsive feature. The signal is decomposed into intrinsic mode functions by LWD, then the high-frequency components are analyzed by Hilbert envelop demodulation. The period of the impulse response can be achieved, and the modulate fault feature of the vibration signal of a rotor system with rub-impact fault can be extracted exactly. Analysis results show that the proposed method is accurate and efficient, and is expected to be applied in engineering practice effectively. 展开更多
关键词 local wave lifting scheme fault diagnosis envelope demodulation RUB-IMPACT
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Application of local wave ti me-frequency method in reciprocating mechanical fault diagnosis
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作者 Wang Lei Wang Fengtao Ma Xiaojiang 《仪器仪表学报》 EI CAS CSCD 北大核心 2006年第z1期380-381,共2页
To diagnosethe reciprocating mechanical fault.We utilizedlocal waveti me-frequency approach.Firstly,we gave the principle.Secondly,the application of local wave ti me-frequency was given.Finally,we discusseditsvirtue ... To diagnosethe reciprocating mechanical fault.We utilizedlocal waveti me-frequency approach.Firstly,we gave the principle.Secondly,the application of local wave ti me-frequency was given.Finally,we discusseditsvirtue in reciprocating mechanical fault diagnosis. 展开更多
关键词 local WAVE method TIME-FREQUENCY analysis fault DIAGNOSIS
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Origin of Gold-Bearing Fluid and Its Initiative Localization Mechanism in Xiadian Gold Deposit,Shandong Province 被引量:3
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作者 邓军 王庆飞 孙忠实 《Chinese Journal Of Geochemistry》 EI CAS 2002年第3期282-288,共7页
The composition of quartz inclusions and trace elements in ore indicate that gold\|bearing fluid in the Xiadian gold deposit, Shandong Province, stemmed from both mantle and magma, belonging to a composite origin. Bas... The composition of quartz inclusions and trace elements in ore indicate that gold\|bearing fluid in the Xiadian gold deposit, Shandong Province, stemmed from both mantle and magma, belonging to a composite origin. Based on theoretical analysis and high temperature and high pressure experimental studies, gold\|bearing fluid initiative localization mechanism and the forming environment of ore\|host rocks are discussed in the present paper. The composite fluid extracted gold from rocks because of its expanding and injecting forces and flew through ore\|conducive structures, leading to the breakup of rocks. The generation of ore\|host faults and the precipitation of gold\|bearing fluid occurred almost simultaneously. This study provides further information about the relationships between gold ore veins and basic\|ultrabasic vein rocks and intermediate vein rocks, the spatial distribution of gold ore veins and the rules governing the migration of ore fluids. 展开更多
关键词 成矿流体 元素分析 金矿床 空间分布 山东
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A Fault Location Method for Student Homework Program
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作者 Li Zhang Zheyu Yang +2 位作者 Hao Li Jing Jiang Zian Sun 《计算机教育》 2025年第3期111-121,共11页
In order to solve the code debugging difficulties faced by students and relieve the pressure of manual personalized tutoring,this paper proposes a method for locating faults in student code,called SCFL(student code fa... In order to solve the code debugging difficulties faced by students and relieve the pressure of manual personalized tutoring,this paper proposes a method for locating faults in student code,called SCFL(student code fault location).This method utilizes a historical correct code repository composed of correct codes submitted by previous students in the same assignments.It standardizes the erroneous code and historical correct code variables simultaneously and calculates the abstract syntax change tree.Then,by establishing the mapping between the abstract syntax change tree and the student assignment code,the fault location results of the student assignment are calculated.The evaluation experiments show that the SCFL method has a result of 9.25 in the cumulative inspection statement count and 15.9%in the fault localization cost indicator.Both indicators are better than the three currently commonly used spectrum-based baseline methods. 展开更多
关键词 Programming education fault localization Personalized tutoring Programming practice
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Transformer-Enhanced Intelligent Microgrid Self-Healing:Integrating Large Language Models and Adaptive Optimization for Real-Time Fault Detection and Recovery
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作者 Qiang Gao Lei Shen +9 位作者 Jiaming Shi Xinfa Gu Shanyun Gu Yuwei Ge Yang Xie Xiaoqiong Zhu Baoguo Zang Ming Zhang Muhammad Shahzad Nazir Jie Ji 《Energy Engineering》 2025年第7期2767-2800,共34页
The rapid proliferation of renewable energy integration and escalating grid operational complexity have intensified demands for resilient self-healing mechanisms in modern power systems.Conventional approaches relying... The rapid proliferation of renewable energy integration and escalating grid operational complexity have intensified demands for resilient self-healing mechanisms in modern power systems.Conventional approaches relying on static models and heuristic rules exhibit limitations in addressing dynamic fault propagation and multimodal data fusion.This study proposes a Transformer-enhanced intelligent microgrid self-healing framework that synergizes large languagemodels(LLMs)with adaptive optimization,achieving three key innovations:(1)Ahierarchical attention mechanism incorporating grid impedance characteristics for spatiotemporal feature extraction,(2)Dynamic covariance estimation Kalman filtering with wavelet packet energy entropy thresholds(Daubechies-4 basis,6-level decomposition),and(3)A grouping-stratified ant colony optimization algorithm featuring penalty-based pheromone updating.Validated on IEEE 33/100-node systems,our framework demonstrates 96.7%fault localization accuracy(23%improvement over STGCN)and 0.82-s protection delay,outperforming MILP-basedmethods by 37%in reconfiguration speed.The system maintains 98.4%self-healing success rate under cascading faults,resolving 89.3%of phase-toground faults within 500 ms through adaptive impedance matching.Field tests on 220 kV substations with 45%renewable penetration show 99.1%voltage stability(±5%deviation threshold)and 40%communication efficiency gains via compressed GOOSE message parsing.Comparative analysis reveals 12.6×faster convergence than conventional ACO in 1000-node networks,with 95.2%robustness against±25%load fluctuations.These advancements provide a scalable solution for real-time fault recovery in renewable-dense grids,reducing outage duration by 63%inmulti-agent simulations compared to centralized architectures. 展开更多
关键词 Large language model MICROGRID fault localization grid self-healing mechanism improved ant colony optimization algorithm
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基于环流的同步调相机不同位置定子匝间短路故障诊断
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作者 李俊卿 黄涛 +3 位作者 韩小平 张承志 苑浩 何玉灵 《电力工程技术》 北大核心 2026年第1期125-133,共9页
同步调相机作为特高压直流输电系统中提供无功补偿和电压支撑的重要设备,其运行安全性与可靠性对直流输电工程意义重大。针对轻微定子匝间短路难以诊断以及故障槽难以定位的问题,文中提出一种基于定子支路环流的故障诊断方法。首先,从... 同步调相机作为特高压直流输电系统中提供无功补偿和电压支撑的重要设备,其运行安全性与可靠性对直流输电工程意义重大。针对轻微定子匝间短路难以诊断以及故障槽难以定位的问题,文中提出一种基于定子支路环流的故障诊断方法。首先,从定子支路单个线圈磁动势出发,分析定子匝间短路故障位置对电枢磁动势以及定子支路环流的影响。其次,搭建同步调相机定子匝间短路的场-路耦合模型,对不同位置下定子匝间短路的故障特征进行仿真。最后,总结不同匝间短路故障位置下定子支路环流的变化规律。仿真和实验结果表明,在同步调相机发生相同匝数的定子匝间短路时,短路位置越靠近支路绕组轴线位置,定子支路环流幅值越大;短路位置越远离绕组轴线位置,定子支路环流幅值越小。 展开更多
关键词 同步调相机 定子匝间短路 定子支路环流 故障定位 故障诊断 特高压直流输电系统
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五相永磁同步电动机无模型预测容错控制
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作者 周华伟 朱流川 +1 位作者 周振伍 颜黎浩 《江苏大学学报(自然科学版)》 北大核心 2026年第1期71-78,共8页
针对开路故障下运行时五相永磁同步电动机参数易发生摄动,严重影响模型预测电流控制性能的问题,提出一种新的无模型预测容错控制策略.在同步旋转坐标系中建立五相永磁同步电动机相开路故障情况下的模型,分析由参数摄动及未建模动态引起... 针对开路故障下运行时五相永磁同步电动机参数易发生摄动,严重影响模型预测电流控制性能的问题,提出一种新的无模型预测容错控制策略.在同步旋转坐标系中建立五相永磁同步电动机相开路故障情况下的模型,分析由参数摄动及未建模动态引起的总扰动.基于超局部模型,在基波和三次谐波平面中设计扩展状态观测器估计扰动,并将其补偿到基于无差拍控制得到的参考电压中.在MATLAB/Simulink中搭建基于五相PMSM的MF-PFTC模型,并与传统MPFTC进行性能对比仿真分析.建立五相PMSM试验平台,分别对传统MPFTC策略和所提出MF-PFTC策略进行相关试验.结果表明:所提出方法在正常和开路故障情况下均具备优良的稳态、动态和鲁棒性能,验证了所提出策略的有效性. 展开更多
关键词 永磁同步电动机 无模型预测控制 容错控制 开路故障 参数失配 超局部模型 扩展状态观测器
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