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Identifying and quantifying nonlinear structured relationships in complex manufactural systems

机译:识别和量化复杂制造系统中的非线性结构关系

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Accurately identifying time-invariant operational relationships among different components is critical to autonomic management of complex manufactural systems. In this paper, we collect time series of sensor readings from manufacturing systems, and propose a solution leveraging Sparse Group LASSO to discover structured pairwise nonlinear relationships and quantify them by mathematical formulas. We consider both real-life operational patterns and underlying physical reactions inside the manufactural systems, which leads to a learning formulation for combined periodic and aperiodic system behaviors. An accelerated gradient descent algorithm is developed to efficiently solve the related optimization problem. We estimate sample correlations between proximal time points to improve the accuracy of the discovered relationships and the nonlinear quantitative formulas. The method is evaluated using both synthetic and real-world datasets, which shows superior performance over the state of the art in discovering nonlinear relationships in manufactural systems.
机译:准确识别不同组件之间的时不变操作关系对于复杂制造系统的自主管理至关重要。在本文中,我们收集了来自制造系统的传感器读数的时间序列,并提出了一个利用稀疏组LASSO来发现结构化的成对非线性关系并通过数学公式对其进行量化的解决方案。我们考虑了现实生活中的操作模式和制造系统内部的潜在物理反应,这为组合的周期性和非周期性系统行为提供了一种学习表述。提出了一种加速梯度下降算法,以有效解决相关的优化问题。我们估计近端时间点之间的样本相关性,以提高发现的关系和非线性定量公式的准确性。使用合成数据集和实际数据集对这种方法进行了评估,在发现制造系统中的非线性关系方面,该方法具有优于现有技术的出色性能。

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