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Data-driven Identification of Causal Dependencies in Cyber-Physical Production Systems

机译:网络 - 物理生产系统中因果依赖性的数据驱动识别

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Cyber-Physical Systems (CPS) are systems that connect physical components with software components. CPS used for production are called Cyber-Physical Production Systems (CPPS). Since the complexity of these systems can be very high, finding the cause of an error takes a lot of effort. In this paper, a data-driven approach to identify causal dependencies in cyber-physical production systems (CPPS) is presented. The approach is based on two different layers of learning algorithms: one low-level layer that processes the direct machine data and a higher-level learning layer that processes the output of the low-level layer. The low-level layer is based on different learning modules that can process differently typed data (continuous, discrete or both). The high-level learning algorithms are based on rule-based and case-based reasoning. Thus, causal dependencies are detected allowing the plant operator to find the error cause quickly.
机译:网络物理系统(CPS)是将物理组件与软件组件连接的系统。用于生产的CPS称为网络物理生产系统(CPP)。由于这些系统的复杂性非常高,发现错误的原因需要很多努力。本文提出了一种识别网络物理生产系统(CPP)中识别因果依赖性的数据驱动方法。该方法基于两个不同的学习算法层:一个低级层处理直接机器数据和处理低级层输出的更高级别学习层。低级层基于不同的学习模块,可以处理不同类型的数据(连续,离散或两者)。高级学习算法基于基于规则和基于案例的推理。因此,检测到因果依赖项,允许工厂运算符快速找到错误原因。

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