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首页> 外文期刊>IEEE transactions on industrial informatics >PDM: Privacy-Aware Deployment of Machine-Learning Applications for Industrial Cyber–Physical Cloud Systems
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PDM: Privacy-Aware Deployment of Machine-Learning Applications for Industrial Cyber–Physical Cloud Systems

机译:PDM:隐私感知工业网络物理云系统机器学习应用程序的部署

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摘要

The cyber-physical cloud systems (CPCSs) release powerful capability in provisioning the complicated industrial services. Due to the advances of machine learning (ML) in attack detection, a wide range of ML applications are involved in industrial CPCSs. However, how to ensure the implementation efficiency of these applications, and meanwhile avoid the privacy disclosure of the datasets due to data acquisition by different operators, remain challenging for the design of the CPCSs. To fill this gap, in this article a privacy-aware deployment method (PDM), named PDM, is devised for hosting the ML applications in the industrial CPCSs. In PDM, the ML applications are partitioned as multiple computing tasks with certain execution order, like workflows. Specifically, the deployment problem is formulated as a multiobjective problem for improving the implementation performance and resource utility. Then, the most balanced and optimal strategy is selected by leveraging an improved differential evolution technique. Finally, through comprehensive experiments and comparison analysis, PDM is fully evaluated.
机译:网络 - 物理云系统(CPCS)在提供复杂的工业服务时发布强大的能力。由于机器学习(ML)在攻击检测中,各种ML应用涉及工业CPC。但是,如何确保这些应用程序的实现效率,同时避免由于不同运营商的数据采集导致数据集的隐私披露,对CPC设计保持具有挑战性。要填补此差距,请在本文中,设计了名为PDM的隐私感知部署方法(PDM),用于托管工业CPCS中的ML应用程序。在PDM中,ML应用程序作为多个计算任务分区,具有某些执行顺序,如工作流。具体而言,部署问题被制定为用于改善实现性能和资源实用程序的多目标问题。然后,通过利用改进的差分演进技术来选择最平衡和最佳的策略。最后,通过全面的实验和比较分析,PDM完全评估。

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