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Fuzzy model predictive control for small-scale biomass combustion furnaces

机译:小型生物质燃烧炉的模糊模型预测控制

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This work presents a fuzzy model predictive controller for small-scale grate furnaces based on a newly derived biomass combustion model. Several local linear controllers are designed for a selected number of operating points utilizing a gap metric. The resulting local predictive controllers are merged with membership functions to form a global nonlinear fuzzy control structure. The presented framework intends to improve the transient and steady state operation by applying an optimal control strategy with state estimation and to cover the entire operating range of the furnace. The open loop results of the introduced combustion model are parameterized and cross-validated with measured data from a test furnace. In order to find suitable parameters for the grey-box model, a local sensitivity analysis is conducted to contribute to an efficient parameter estimation process. Closed loop simulation results of the fuzzy model predictive controller, a linear model predictive controller and a PI control algorithm are presented and compared. Based on the performance of the proposed fuzzy controller, its application, advantages and disadvantages are discussed. Additionally, the impact of the different controllers on the formation of carbon monoxide is investigated based on estimation models from literature. The simulation results show that the fuzzy model predictive controller performs best in the considered categories.
机译:该工作介绍了基于新衍生的生物质燃烧模型的小型炉炉炉的模糊模型预测控制器。一些本地线性控制器专为使用间隙度量的选定数量的操作点而设计。由此产生的本地预测控制器与隶属函数合并以形成全局非线性模糊控制结构。所提出的框架打算通过应用具有状态估计的最佳控制策略并覆盖炉的整个操作范围来改善瞬态和稳态运行。引入的燃烧模型的开环结果是通过来自测试炉的测量数据进行参数化和交叉验证。为了找到灰度盒模型的合适参数,进行了局部灵敏度分析,以有助于有效的参数估计过程。呈现模糊模型预测控制器的闭环仿真结果,并进行了线性模型预测控制器和线性模型预测控制器和PI控制算法。基于所提出的模糊控制器的性能,讨论了其应用,优缺点。另外,根据文献的估计模型研究了不同控制器对一氧化碳形成的影响。仿真结果表明,模糊模型预测控制器在所考虑的类别中表现最佳。

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