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Nonlinear fuzzy model predictive iterative learning control for drum-type boiler-turbine system

机译:鼓式汽轮机系统的非线性模糊模型预测迭代学习控制

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摘要

Advanced control strategy is necessary to ensure high efficiency and high load-following capability in the operation of modern power plant. Model predictive control (MPC) has been widely used for controlling power plant. Nevertheless, MPC needs to further improve its learning ability especially as power plants are nonlinear under load-cycling operation. Iterative learning control (ILC) and MPC are both popular approaches in industrial process control and optimization. The integration of model-based ILC with a real-time feedback MPC constitutes the model predictive iterative learning control (MPILC). Considering power plant, this paper presents a nonlinear model predictive controller based on iterative learning control (NMPILC). The nonlinear power plant dynamic is described by a fuzzy model which contains local liner models. The resulting NMPILC is constituted based on this fuzzy model. Optimal performance is realized within both the time index and the iterative index. Convergence property has been proven under the fuzzy model. Deep analysis and simulations on a drum-type boiler-turbine system show the effectiveness of the fuzzy-model-based NMPILC.
机译:先进的控制策略对于确保现代电厂运行中的高效率和高负荷跟随能力是必要的。模型预测控制(MPC)已被广泛用于控制电厂。尽管如此,MPC还需要进一步提高其学习能力,尤其是在负荷循环操作下电厂是非线性的情况下。迭代学习控制(ILC)和MPC都是工业过程控制和优化中的流行方法。基于模型的ILC与实时反馈MPC的集成构成了模型预测迭代学习控制(MPILC)。考虑到电厂,本文提出了一种基于迭代学习控制(NMPILC)的非线性模型预测控制器。非线性电厂动态由包含局部线性模型的模糊模型描述。基于该模糊模型来构造所得的NMPILC。在时间索引和迭代索引中都可以实现最佳性能。在模糊模型下证明了收敛性。鼓式锅炉水轮机系统的深入分析和仿真显示了基于模糊模型的NMPILC的有效性。

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