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Model-Based Multivariable Control of a Secondary Air System Using Controlled Finite Markov Chains

机译:基于模型的多变量控制使用受控的有限马尔可夫链的二级空气系统

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Controlled finite Markov chains are used for solving a multivariable control problem. The controlled system was the secondary air flow system in a fluidized-bed combustion power plant. A four-input four-output system control problem was formulated as a CFMC, and solved using dynamic programming. A non-linear system model, developed in earlier studies, was used in this model-based design. Three filters were applied to smoothen the (finite) control actions, for feasible plant control. These were based on averaging over finite state-space, references, and averaging over time. Simulations were conducted to illustrate the approach, and compare it with respect to SISO PID design. The simulations indicated that system control can be succesfully designed based on CFMC techniques, even for a 4×4 MIMO system.
机译:控制有限市场用于解决多变量控制问题。受控系统是流化床燃烧发电厂中的二次空气流量系统。四输入四输出系统控制问题被配制为CFMC,并使用动态编程解决。在早期研究中开发的非线性系统模型用于该模型的设计。应用三个过滤器以使(有限)控制作用平滑,以获得可行的工厂控制。这些基于平均在有限状态 - 空间,参考文献以及随时间的平均值。进行了模拟以说明方法,并将其与SISO PID设计进行比较。仿真表明,即使对于4×4 MIMO系统,也可以根据CFMC技术成功设计系统控制。

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