Please use this identifier to cite or link to this item: http://hdl.handle.net/10397/118710
DC FieldValueLanguage
dc.contributorDepartment of Industrial and Systems Engineeringen_US
dc.creatorXu, Zen_US
dc.creatorZhang, Ben_US
dc.creatorYip, WSen_US
dc.creatorTo, Sen_US
dc.date.accessioned2026-05-12T08:49:32Z-
dc.date.available2026-05-12T08:49:32Z-
dc.identifier.issn0360-5442en_US
dc.identifier.urihttp://hdl.handle.net/10397/118710-
dc.language.isoenen_US
dc.publisherPergamon Pressen_US
dc.subjectComponents-level energy predictionen_US
dc.subjectIoT platformen_US
dc.subjectMulti-output 1DCNN-LSTMen_US
dc.subjectUltra-precision machiningen_US
dc.titleDeep-learning-driven intelligent component-level energy prediction of ultra-precision machine tools with IoT platformen_US
dc.typeJournal/Magazine Articleen_US
dc.identifier.volume320en_US
dc.identifier.doi10.1016/j.energy.2025.135378en_US
dcterms.abstractThis study aims to investigate the utilization of deep learning technology to accurately predict the energy consumption of ultra-precision machining tools (UPMT)s at the component level. First, the energy consumption characteristics were thoroughly evaluated to serve as the foundation for separating the power data of various components. The training dataset was then generated using a modified Discrete Wavelet Transform (DWT) technique that extracted the component power depending on its frequency characteristic. Next, a multi-outputs 1-Dimension Convolutional Neural Network - Long Short Term Memory (1DCNN-LSTM) model was established and deployed on the Internet of Things (IoT) platform to classify component status while also predicting component power. For better model performance, the Optuna framework was leveraged to find the optimal hyperparameters configuration. The results indicated that the accuracy of the classification model of working components could reach 99 %. Additionally, the power consumption predictions of 11 working components performed well. The R2 values of the regression model for 11 types of components varied from 0.975 to 0.996. Notably, this research has significant theoretical and practical implications for enhancing the accuracy of UPMT energy consumption predictions and supporting the development of intelligent manufacturing.en_US
dcterms.accessRightsembargoed accessen_US
dcterms.bibliographicCitationEnergy, 1 Apr. 2025, v. 320, 135378en_US
dcterms.isPartOfEnergyen_US
dcterms.issued2025-04-01-
dc.identifier.scopus2-s2.0-85219674847-
dc.identifier.eissn1873-6785en_US
dc.identifier.artn135378en_US
dc.description.validate202605 bchyen_US
dc.description.oaNot applicableen_US
dc.identifier.SubFormIDG001578/2025-12-
dc.description.fundingSourceOthersen_US
dc.description.fundingTextThe work described in this paper was fully supported by the Research Committee of The Hong Kong Polytechnic University (Project Code: RJSH) and Projects of Strategic Importance of The Hong Kong Polytechnic University (Project Code: 1-ZE0G).en_US
dc.description.pubStatusPublisheden_US
dc.date.embargo2027-04-01en_US
dc.description.oaCategoryGreen (AAM)en_US
Appears in Collections:Journal/Magazine Article
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Embargo End Date 2027-04-01
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