Privacy-Aware Resource Sharing in Cross-Device Federated Model Training for Collaborative Predictive Maintenance

被引:18
作者
Bharti, Sourabh [1 ]
Mcgibney, Alan [1 ]
机构
[1] Munster Technol Univ, Nimbus Res Ctr, Cork T12 P928, Ireland
基金
爱尔兰科学基金会; 欧盟地平线“2020”;
关键词
Collaboration; Predictive models; Manufacturing; Data models; Training; Servers; Image edge detection; SplitNN; federated learning; predictive maintenance; Industry; 40;
D O I
10.1109/ACCESS.2021.3108839
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
The proliferation of Industry 4.0 has made modern industrial assets a rich source of data that can be leveraged to optimise operations, ensure efficiency, and minimise maintenance costs. The availability of data is advantageous for asset management, however, attempts to maximise the value of this data often fall short due to additional constraints, such as privacy concerns and data stored in distributed silos that is difficult to access and share. Federated Learning (FL) has been explored to address these challenges and has been demonstrated to provide a mechanism that allows highly distributed data to be mined in a privacy-preserving manner and offering new opportunities for a collaborative approach to asset management. Despite the benefits, FL has some challenges that need to be overcome to make it fully compatible for asset management or more specifically predictive maintenance applications. FL requires a set of clients that participate in the model training process, however, orchestration, device heterogeneity and scalability can hinder the speed and accuracy in the context of collaborative predictive maintenance. To address this challenge, this work proposes a split-learning-based framework (SplitPred) that enables FL clients to maximise available resources within their local network without compromising the benefits of a FL approach (i.e., privacy and shared learning). Experiments performed on the benchmark C-MAPSS data-set demonstrate the advantage of applying SplitPred in the FL process in terms of efficient use of resources, i.e., model convergence time, accuracy, and network load.
引用
收藏
页码:120367 / 120379
页数:13
相关论文
共 28 条
[1]  
Abuadbba Sharif, 2020, ASIA CCS '20: Proceedings of the 15th ACM Asia Conference on Computer and Communications Security, P305, DOI 10.1145/3320269.3384740
[2]  
Akkarajitsakul K., ARXIV200511901
[3]  
[Anonymous], 2014, ARXIV14021128CSSTAT
[4]  
Aussel N., ARXIV200107504
[5]  
Balogh Z, 2018, IEEE INT CONF INTELL, P299, DOI 10.1109/INES.2018.8523969
[6]  
Bellavista P., 2020, IEEE ICC, P1
[7]   Edge Computing in IoT-Based Manufacturing [J].
Chen, Baotong ;
Wan, Jiafu ;
Celesti, Antonio ;
Li, Di ;
Abbas, Haider ;
Zhang, Qin .
IEEE COMMUNICATIONS MAGAZINE, 2018, 56 (09) :103-109
[8]  
Dhada M., 2019, P INT C PREC MES MIC, P1
[9]   Secure and communications-efficient collaborative prognosis [J].
Dhada, Maharshi ;
Jain, Amit Kumar ;
Herrera, Manuel ;
Hernandez, Marco Perez ;
Parlikad, Ajith Kumar .
IET COLLABORATIVE INTELLIGENT MANUFACTURING, 2020, 2 (04) :164-173
[10]   Computation Offloading for Mobile-Edge Computing with Multi-user [J].
Dong, Luobing ;
Satpute, Meghana N. ;
Shan, Junyuan ;
Liu, Baoqi ;
Yu, Yang ;
Yan, Tihua .
2019 39TH IEEE INTERNATIONAL CONFERENCE ON DISTRIBUTED COMPUTING SYSTEMS (ICDCS 2019), 2019, :841-850