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Subset measurement selection for globally self-optimizing control of Tennessee Eastman process

机译:子集测量选择,用于田纳西·伊士曼过程的全局自优化控制

摘要

The concept of globally optimal controlled variable selection has recently been proposed to improve self-optimizing control performance of traditional local approaches. However, the associated measurement subset selection problem has not be studied. In this paper, we consider the measurement subset selection problem for globally self-optimizing control (gSOC) of Tennessee Eastman (TE) process. The TE process contains substantial measurements and had been studied for SOC with controlled variables selected from individual measurements through exhaustive search. This process has been revisited with improved performance recently through a retrofit approach of gSOC. To extend the improvement further, the measurement subset selection problem for gSOC is considered in this work and solved through a modification of an existing partially bidirectional branch and bound (PB3) algorithm originally developed for local SOC. The modified PB3 algorithm efficiently identifies the best measurement candidates among the full set which obtains the globally minimal economic loss. Dynamic simulations are conducted to demonstrate the optimality of proposed results.
机译:最近提出了全局最优控制变量选择的概念,以改善传统局部方法的自优化控制性能。但是,尚未研究相关的测量子集选择问题。在本文中,我们考虑田纳西州伊士曼(TE)过程的全局自优化控制(gSOC)的度量子集选择问题。 TE过程包含大量测量值,并且已经通过穷举搜索对SOC进行了研究,并从各个测量值中选择了控制变量。最近通过gSOC的改进方法重新审视了该过程,并提高了性能。为了进一步扩展改进,在这项工作中考虑了gSOC的测量子集选择问题,并通过修改最初为本地SOC开发的现有部分双向分支定界(PB3)算法来解决。改进的PB3算法可有效地从整套设备中识别出最佳的测量候选者,从而获得全球最小的经济损失。进行动态仿真以证明所提出结果的最优性。

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