Renewable and Sustainable Energy Reviews, Journal Year: 2024, Volume and Issue: 211, P. 115303 - 115303
Published: Dec. 31, 2024
Renewable and Sustainable Energy Reviews, Journal Year: 2024, Volume and Issue: 211, P. 115303 - 115303
Published: Dec. 31, 2024
IEEE photonics journal, Journal Year: 2024, Volume and Issue: 16(3), P. 1 - 17
Published: April 22, 2024
In practical industrial environment, variable working condition can result in shifts data distributions, and the labeled fault various conditions is difficult to collect because rotating machines often works normal status, insufficient brings samples imbalance performance degradation of intelligent diagnosis model. To overcome these problems, by integrating superiority deep learning method feature-based transfer method, this work proposes an innovative cross-domain framework based on convolutional neural network supervised joint matching. Firstly, continue wavelet transform used process original bearing vibration signals extract time-frequency images. Secondly, a built way fine-tuning, trained features from different domains. Thirdly, new domain adaptation approach, matching, developed conduct feature distribution matching instance reweighting with consideration maximum marginal criterion. The model then predict labels target domain's data. verify proposed approaches, study uses two distinct datasets pertaining defects for conducting presence balanced imbalanced experimental analysis indicates that designed methods achieve desirable diagnostic accuracy possess robust generalization ability
Language: Английский
Citations
1Reliability Engineering & System Safety, Journal Year: 2024, Volume and Issue: unknown, P. 110552 - 110552
Published: Oct. 1, 2024
Language: Английский
Citations
1Lecture notes in computer science, Journal Year: 2024, Volume and Issue: unknown, P. 165 - 186
Published: Oct. 30, 2024
Abstract This paper overviews the challenges of using artificial intelligence (AI) methods when building healthcare systems, as discussed at AIsola Conference in 2023. It focuses on topics (i) medical data, (ii) decision support, (iii) software engineering for AI-based health (iv) regulatory affairs well (v) privacy-preserving machine learning and highlights importance involved utilizing AI systems.
Language: Английский
Citations
1Machine Learning Science and Technology, Journal Year: 2024, Volume and Issue: 6(1), P. 015005 - 015005
Published: Dec. 17, 2024
Abstract The complexity and fusion dynamism of the modern industrial chemical sectors have been increasing with rapid progress IR 4.0–5.0. transformative characteristics Industry 4.0–5.0 not fully explored in terms fundamental importance explainability. Traditional monitoring techniques for automatic anomaly detection, identifying potential variables, root cause analysis fault information are intelligent enough to tackle intricate problems real-time practices sectors. This study presents a novel dynamic machine learning based explainable approach address issues process systems. methodology aims detect faults, identify their key causes feature analyze path propagation time magnitude one variable another impact. proposed using domain multivariate granger-entropy-aided independent component (DICA)—distributed canonical correlation approach, incorporating dynamics wrapping supported delay-signed directed graph. utilized application processes verified continuous stirred tank reactor Tennessee Eastman as practical benchmarks. framework’s validations efficiency evaluated established such classic computed ICA DICA standard model scenarios. outcomes results showed that newly developed strategy is preferable previous approaches regarding explainability robust detection identification actual high FDRs low FARs.
Language: Английский
Citations
1Renewable and Sustainable Energy Reviews, Journal Year: 2024, Volume and Issue: 211, P. 115303 - 115303
Published: Dec. 31, 2024
Citations
1