Please use this identifier to cite or link to this item: http://hdl.handle.net/10397/118737
DC FieldValueLanguage
dc.contributorDepartment of Industrial and Systems Engineeringen_US
dc.creatorXu, Zen_US
dc.creatorZhang, Ben_US
dc.creatorFan, LLen_US
dc.creatorYan, EHen_US
dc.creatorLi, Den_US
dc.creatorZhao, Zen_US
dc.creatorYip, WSen_US
dc.creatorTo, Sen_US
dc.date.accessioned2026-05-15T06:34:36Z-
dc.date.available2026-05-15T06:34:36Z-
dc.identifier.issn1474-0346en_US
dc.identifier.urihttp://hdl.handle.net/10397/118737-
dc.language.isoenen_US
dc.publisherElsevieren_US
dc.subjectHigh-precision machiningen_US
dc.subjectHybrid CNN-BiLSTM-GCN modelen_US
dc.subjectIntelligent tool wear identificationen_US
dc.subjectUnsupervised MTICC clusteringen_US
dc.titleDeep-learning-driven intelligent tool wear identification of high-precision machining with multi-scale CNN-BiLSTM-GCNen_US
dc.typeJournal/Magazine Articleen_US
dc.identifier.volume65en_US
dc.identifier.doi10.1016/j.aei.2025.103234en_US
dcterms.abstractIn high-precision machining, the inevitable tool wear will significantly affect the surface quality. Traditional tool wear modeling is complicated due to the complex mathematical reasoning process and the identification of numerous unknown parameters linked to the wear mechanism. Data-driven modeling for tool wear prediction can avoid the above issues but suffers from high-cost and low-efficiency because of amounts of expensive tool consumption and time-consumed experiments for generating the training dataset. To fill this gap, this study proposed an innovative approach to accurately identifying tool wear in high-precision machining effortlessly. Firstly an unsupervised Modified Toeplitz Inverse Covariance Clustering (MTICC) algorithm was first proposed to objectively categorize tool wear phase from multi-channel time-series data to break through traditional manual-experience-based division, whose effectiveness was validated by the well-designed experiments. Then, a hybrid deep learning model with a multi-scale CNN-BiLSTM-GCN and cross-attention structures was developed to deeply extract spatial–temporal features from multi-channel signals by first considering the interdependencies of the sensor network for higher accuracy. After hyperparameters optimization, features importance analysis was conducted to identify the most important features, which are “X-force”, “Y-force” and “Phase1 Active Power”, and the hyperparameters importance quantitatively analyze the contribution of CNN, BiLSTM, and GCN modules, respectively. Through the comparative studies, the proposed multi-scale CNN-BiLSTM-GCN model performed better with a weighted average F1 score of 0.987 than other models. The proposed model was finally employed on the intelligent IoT platform and successfully achieved the real-time identification of tool wear in the HPM process.en_US
dcterms.accessRightsembargoed accessen_US
dcterms.bibliographicCitationAdvanced engineering informatics, May 2025, v. 65, pt. B, 103234en_US
dcterms.isPartOfAdvanced engineering informaticsen_US
dcterms.issued2025-05-
dc.identifier.scopus2-s2.0-85219019326-
dc.identifier.eissn1873-5320en_US
dc.identifier.artn103234en_US
dc.description.validate202605 bchyen_US
dc.description.oaNot applicableen_US
dc.identifier.SubFormIDG001580/2025-12-
dc.description.fundingSourceOthersen_US
dc.description.fundingTextThe work described in this paper was fully supported by the funding for Projects of Strategic Importance of The Hong Kong Polytechnic University (Project Code: 1-ZE0G). The first and the second authors contributed the equal to this work.en_US
dc.description.pubStatusPublisheden_US
dc.date.embargo2027-05-31en_US
dc.description.oaCategoryGreen (AAM)en_US
Appears in Collections:Journal/Magazine Article
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Embargo End Date 2027-05-31
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