Zalmijn Errol, Heskes Tom, Claassen Tom
Institute for Computing and Information Sciences, Radboud University, 6525 EC Nijmegen, The Netherlands.
ASML Research Department, 5504 DT Veldhoven, The Netherlands.
Entropy (Basel). 2021 Mar 20;23(3):369. doi: 10.3390/e23030369.
Similar to natural complex systems, such as the Earth's climate or a living cell, semiconductor lithography systems are characterized by nonlinear dynamics across more than a dozen orders of magnitude in space and time. Thousands of sensors measure relevant process variables at appropriate sampling rates, to provide time series as primary sources for system diagnostics. However, high-dimensionality, non-linearity and non-stationarity of the data are major challenges to efficiently, yet accurately, diagnose rare or new system issues by merely using model-based approaches. To reliably narrow down the causal search space, we validate a ranking algorithm that applies transfer entropy for bivariate interaction analysis of a system's multivariate time series to obtain a weighted directed graph, and graph eigenvector centrality to identify the system's most important sources of original information or causal influence. The results suggest that this approach robustly identifies the true drivers or causes of a complex system's deviant behavior, even when its reconstructed information transfer network includes redundant edges.
与自然复杂系统(如地球气候或活细胞)类似,半导体光刻系统的特点是在空间和时间上跨越十几个数量级的非线性动力学。数千个传感器以适当的采样率测量相关的工艺变量,以提供时间序列作为系统诊断的主要来源。然而,数据的高维度、非线性和非平稳性是仅使用基于模型的方法来高效且准确地诊断罕见或新的系统问题的主要挑战。为了可靠地缩小因果搜索空间,我们验证了一种排序算法,该算法应用转移熵对系统的多变量时间序列进行双变量交互分析,以获得加权有向图,并使用图特征向量中心性来识别系统最重要的原始信息来源或因果影响。结果表明,即使其重建的信息传递网络包含冗余边,这种方法也能稳健地识别复杂系统异常行为的真正驱动因素或原因。