SecFL – Secure Federated Learning Framework for predicting defects in sheet metal forming under variability
| Main Author: | |
|---|---|
| Publication Date: | 2024 |
| Other Authors: | , |
| Format: | Article |
| Language: | eng |
| Source: | Repositórios Científicos de Acesso Aberto de Portugal (RCAAP) |
| Download full: | http://hdl.handle.net/10773/42507 |
Summary: | With the ongoing digitization of the manufacturing industry and the ability to bring together data from specific manufacturing processes, there is enormous potential to use machine learning (ML) techniques to improve such processes. In this context, the competitive automotive industry can take advantage of the ML power by predicting defects before they occur, aiming to reduce the scrap rate and increase the robustness and reliability of the production processes. In a real world scenario, small and medium size companies do not have the amount of data the big companies have, which can prevent the usage of ML models in this vital niche for the industry. A collaboration in terms of data usage to develop powerful and general industry solutions is hindered by data privacy concerns despite similar problems. This paper addresses these concerns by providing a framework based on the Federated Learning (FL) method combined with Digital Envelopes (DE) to allow the ML models training while keeping the data of the partners and the models parameters private and protected against external cyber-attacks, which is one of the weaknesses of FL as of now. A case study was carried out to demonstrate the effectiveness of the proposed framework on handling data poisoning attacks to the training data and also the models’ weights. |
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SecFL – Secure Federated Learning Framework for predicting defects in sheet metal forming under variabilityFederated learningDigital envelopesMachine learningDefect predictionData poisoningSheet metal formingWith the ongoing digitization of the manufacturing industry and the ability to bring together data from specific manufacturing processes, there is enormous potential to use machine learning (ML) techniques to improve such processes. In this context, the competitive automotive industry can take advantage of the ML power by predicting defects before they occur, aiming to reduce the scrap rate and increase the robustness and reliability of the production processes. In a real world scenario, small and medium size companies do not have the amount of data the big companies have, which can prevent the usage of ML models in this vital niche for the industry. A collaboration in terms of data usage to develop powerful and general industry solutions is hindered by data privacy concerns despite similar problems. This paper addresses these concerns by providing a framework based on the Federated Learning (FL) method combined with Digital Envelopes (DE) to allow the ML models training while keeping the data of the partners and the models parameters private and protected against external cyber-attacks, which is one of the weaknesses of FL as of now. A case study was carried out to demonstrate the effectiveness of the proposed framework on handling data poisoning attacks to the training data and also the models’ weights.Elsevier2024-09-25T17:07:51Z2024-01-01T00:00:00Z2024-01info:eu-repo/semantics/publishedVersioninfo:eu-repo/semantics/articleapplication/pdfhttp://hdl.handle.net/10773/42507eng0957-417410.1016/j.eswa.2023.121139Dib, Mario Alberto da SilveiraPrates, PedroRibeiro, Bernardeteinfo:eu-repo/semantics/openAccessreponame:Repositórios Científicos de Acesso Aberto de Portugal (RCAAP)instname:FCCN, serviços digitais da FCT – Fundação para a Ciência e a Tecnologiainstacron:RCAAP2024-09-30T01:46:10Zoai:ria.ua.pt:10773/42507Portal AgregadorONGhttps://www.rcaap.pt/oai/openaireinfo@rcaap.ptopendoar:https://opendoar.ac.uk/repository/71602025-05-28T18:54:33.774986Repositórios Científicos de Acesso Aberto de Portugal (RCAAP) - FCCN, serviços digitais da FCT – Fundação para a Ciência e a Tecnologiafalse |
| dc.title.none.fl_str_mv |
SecFL – Secure Federated Learning Framework for predicting defects in sheet metal forming under variability |
| title |
SecFL – Secure Federated Learning Framework for predicting defects in sheet metal forming under variability |
| spellingShingle |
SecFL – Secure Federated Learning Framework for predicting defects in sheet metal forming under variability Dib, Mario Alberto da Silveira Federated learning Digital envelopes Machine learning Defect prediction Data poisoning Sheet metal forming |
| title_short |
SecFL – Secure Federated Learning Framework for predicting defects in sheet metal forming under variability |
| title_full |
SecFL – Secure Federated Learning Framework for predicting defects in sheet metal forming under variability |
| title_fullStr |
SecFL – Secure Federated Learning Framework for predicting defects in sheet metal forming under variability |
| title_full_unstemmed |
SecFL – Secure Federated Learning Framework for predicting defects in sheet metal forming under variability |
| title_sort |
SecFL – Secure Federated Learning Framework for predicting defects in sheet metal forming under variability |
| author |
Dib, Mario Alberto da Silveira |
| author_facet |
Dib, Mario Alberto da Silveira Prates, Pedro Ribeiro, Bernardete |
| author_role |
author |
| author2 |
Prates, Pedro Ribeiro, Bernardete |
| author2_role |
author author |
| dc.contributor.author.fl_str_mv |
Dib, Mario Alberto da Silveira Prates, Pedro Ribeiro, Bernardete |
| dc.subject.por.fl_str_mv |
Federated learning Digital envelopes Machine learning Defect prediction Data poisoning Sheet metal forming |
| topic |
Federated learning Digital envelopes Machine learning Defect prediction Data poisoning Sheet metal forming |
| description |
With the ongoing digitization of the manufacturing industry and the ability to bring together data from specific manufacturing processes, there is enormous potential to use machine learning (ML) techniques to improve such processes. In this context, the competitive automotive industry can take advantage of the ML power by predicting defects before they occur, aiming to reduce the scrap rate and increase the robustness and reliability of the production processes. In a real world scenario, small and medium size companies do not have the amount of data the big companies have, which can prevent the usage of ML models in this vital niche for the industry. A collaboration in terms of data usage to develop powerful and general industry solutions is hindered by data privacy concerns despite similar problems. This paper addresses these concerns by providing a framework based on the Federated Learning (FL) method combined with Digital Envelopes (DE) to allow the ML models training while keeping the data of the partners and the models parameters private and protected against external cyber-attacks, which is one of the weaknesses of FL as of now. A case study was carried out to demonstrate the effectiveness of the proposed framework on handling data poisoning attacks to the training data and also the models’ weights. |
| publishDate |
2024 |
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2024-09-25T17:07:51Z 2024-01-01T00:00:00Z 2024-01 |
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info:eu-repo/semantics/publishedVersion |
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info:eu-repo/semantics/article |
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article |
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http://hdl.handle.net/10773/42507 |
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eng |
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eng |
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0957-4174 10.1016/j.eswa.2023.121139 |
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info:eu-repo/semantics/openAccess |
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openAccess |
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application/pdf |
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Elsevier |
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Elsevier |
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