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An Integrative Machine Learning Method to Improve Fault Detection and Productivity Performance in a Cyber-Physical System

机译:一种改善计算机物理系统中故障检测和生产率性能的集成机器学习方法

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摘要

A cyber-physical system (CPS) is one of the key technologies of industry 4.0. It is an integrated system that merges computing, sensors, and actuators, controlled by computer-based algorithms that integrate people and cyberspace. However, CPS performance is limited by its computational complexity. Finding a way to implement CPS with reduced complexity while incorporating more efficient diagnostics, forecasting, and equipment health management in a real-time performance remains a challenge. Therefore, the study proposes an integrative machine-learning method to reduce the computational complexity and to improve the applicability as a virtual subsystem in the CPS environment. This study utilizes random forest (RF) and a time-series deep-learning model based on the long short-term memory (LSTM) networking to achieve real-time monitoring and to enable the faster corrective adjustment of machines. We propose a method in which a fault detection alarm is triggered well before a machine fails, enabling shop-floor engineers to adjust its parameters or perform maintenance to mitigate the impact of its shutdown. As demonstrated in two empirical studies, the proposed method outperforms other times-series techniques. Accuracy reaches 80% or higher 3 h prior to real-time shutdown in the first case, and a significant improvement in the life of the product (281%) during a particular process appears in the second case. The proposed method can be applied to other complex systems to boost the efficiency of machine utilization and productivity.
机译:网络物理系统(CPS)是工业4.0的关键技术之一。它是一个集成了系统,将计算,传感器和执行器融合在一起,并由基于计算机的算法(将人与网络空间整合在一起)控制。但是,CPS性能受其计算复杂度的限制。寻找一种以降低的复杂度来实施CPS的方法,同时在实时性能中结合更有效的诊断,预测和设备健康管理仍然是一个挑战。因此,本研究提出了一种集成的机器学习方法,以减少计算复杂度并提高在CPS环境中作为虚拟子系统的适用性。这项研究利用随机森林(RF)和基于长期短期记忆(LSTM)网络的时间序列深度学习模型来实现实时监控,并能够更快地对机器进行校正调整。我们提出了一种方法,该方法可以在机器故障之前很早就触发故障检测警报,从而使车间工程师可以调整其参数或执行维护以减轻其停机的影响。正如两项经验研究所证明的那样,所提出的方法优于其他时间序列技术。在第一种情况下,在实时关闭之前3小时,精度达到80%或更高,在第二种情况下,在特定过程中产品的使用寿命显着提高(281%)。所提出的方法可以应用于其他复杂系统,以提高机器利用率和生产率。

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