利用预测控制改善粉末混合过程中的控制器性能

Niall O' Mahony, Trevor Murphy, Krishna Panduru, D. Riordan, Joseph Walsh
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引用次数: 6

摘要

本文将讨论工业应用预测控制技术的一般主题,特别是卡尔曼滤波状态估计器在这种控制方案中的实现。本文研究了预测控制方法对模型粉末混合过程的控制。本研究是为了改进闭环控制系统的性能,该系统受到一套智能传感器测量参数的不准确性的限制,在本例中,通过分析多传感器数据的统计模型估计了两部分粉末混合物的成分浓度和流量。使用MATLAB®软件研究了许多预测控制原理,包括在传统闭环控制和模型预测控制中添加卡尔曼滤波器,以改进这些参数的估计,从而更精确地控制它们。结果表明,采用卡尔曼滤波可以实现更快的动态响应和更高的精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improving controller performance in a powder blending process using predictive control
The paper will discuss the general topic of predictive control techniques for industrial applications, in particular the implementation of Kalman Filter State Estimators in such control schemes. The paper presents the investigation of predictive control methodologies for the control of a model powder blending process. This investigation was carried out in an effort to improve the performance of a closed loop control system which was limited by the inaccuracy of parameters measured by a suite of smart sensors, in this instance constituent concentration and flowrate of a two-part powder blend as estimated by statistical models analysing multi-sensor data. A number of predictive control principles, including the addition of Kalman Filters to traditional closed loop control and Model Predictive Control, were investigated using MATLAB® Software to improve the estimation of these parameters and thus control them more precisely. The results obtained show that faster dynamic response and greater accuracy can be achieved through the implementation of Kalman filters.
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