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软传感器训练中同时进行输入选择与异常值过滤的混合整数规划

A Mixed-Integer Formulation for the Simultaneous Input Selection and Outlier Filtering in Soft Sensor Training

Information Systems Frontiers · 2024
被引 1
ABS 3

中文导读

提出一种混合整数优化方法,在软传感器训练中同时选择输入变量和过滤异常值,通过数学重构和分段线性化处理非线性问题,并在两个工业工厂的实际数据上验证了有效性。

Abstract

Abstract Soft sensors are used to calculate the real-time values of process variables which can be measured in the laboratory only or require expensive online measurement tools. A set of mathematical expressions are developed and trained from historical data to exploit the statistical knowledge between online and offline measurements to ensure a reliable prediction performance, for optimization and control purposes. This study focuses on the development of a mixed-integer optimization problem to perform input selection and outlier filtering simultaneously using rigorous algorithms during the training procedure, unlike traditional heuristic and sequential methods. Nonlinearities and nonconvexities in the optimization problem is further tailored for global optimality and computational advancements by reformulations and piecewise linearizations to address the complexity of the task with additional binary variables, representing the selection of a particular input or data. The proposed approach is implemented on actual data from two different industrial plants and compared to traditional approach.

软传感器输入选择异常值过滤混合整数优化工业过程控制