贝叶斯推理在碱性氧钢炉端点控制系统设计中的应用

Richard J. Kornblum, M. Tribus
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引用次数: 12

摘要

一个数字模拟的基本氧钢炉已经开发,其输出与从文献中获得的可用数据进行了比较。输出浓度在文献数据的10%以内,而模拟温度在0.5%以内。仿真作为过程的离线模型来设计端点控制系统,该系统利用了过程的可用反馈。反馈包括先前存在的用于流出气体分析的仪器和用于快速碳分析的仪器。同样的仪器,由伯利恒钢铁公司独立构思,已被他们证明是有效的。控制系统采用贝叶斯推理对过程反馈进行最优评估。已经开发了方程,并设计了一种计算算法,可以实时计算给定任何控制动作和不完美测量的碳-温度状态的概率。由于目标函数几乎是对称的,并且与端点状态值相比,控制成本最小,因此最优控制将期望状态向量驱动到公差区域的中心。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Use of Bayesian Inference in the Design of an Endpoint Control System for the Basic Oxygen Steel Furnace
A digital simulation of the basic oxygen steel furnace was previously developed, and its output was compared with the available data taken from the literature. The output concentrations were within 10 percent of the literature data, while the simulated temperature was within 0.5 percent. The simulation is used as an off-line model of the process to design an endpoint control system which makes use of the available feedback from the process. Feedback consists of previously existing instrumentation for effluent gas analysis and an instrument designed for quick carbon analysis. The same instrument, independently conceived by Bethlehem Steel, has been proved effective by them. The control system uses Bayesian inference to evaluate process feedback optimally. Equations have been developed and a computational algorithm designed enabling real-time calculation of the probability of a carbon-temperature state given any control action and imperfect measurements. Because the objective function is almost symmetric and the cost of control is minimal compared to the value of an endpoint state, optimal control drives the expected state vector to the center of the tolerance region.
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