某核电站反应堆调节系统的高阶建模及非线性神经模型预测控制器设计

A. H. Malik, A. Memon, Feroza Arshad
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引用次数: 0

摘要

在现有的压重水堆核电站运行仪表控制系统中,采用常规控制器对反应堆功率进行控制。本文提出了非线性神经模型预测控制器(NNMPC)的新思想。建立了反应器调节系统(RRS)在不同运行模式和单输入多输出(SIMO)配置下的17阶非线性高阶模型,重点研究了氦控制阀动力学(HCVD)和碘氙耦合非线性动力学(CNIXD)。SIMO RRS模型是基于第一性原理建立的。采用平衡截断法(BTM)将17阶模型降阶为9阶下动态模型。在SIMULINK环境下对降阶SIMO RRS (RO-SIMO-RRS)模型进行了编程、仿真和验证。植物神经SIMO RRS (N-SIMO-RRS)模型是利用从RO-SIMO-RRS模拟中产生的创新数据开发的。采用Levenberg-Marquardt算法对植物神经N-SIMO-RRS模型进行优化。利用所识别的N-SIMO-RRS模型,在SIMULINK环境下利用回溯技术对非线性神经模型预测控制器(NNMPC)进行设计、训练、验证、验证并最终优化。优化结果由设计的闭环RRS得到,并在可接受的设计范围内。在参考跟踪模式下测试了闭环RRS的性能,在最优目标所需功率水平附近具有良好的快速跟踪性。
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Higher Order Modeling of Reactor Regulating System and Nonlinear Neural Model Predictive Controller Design for a Nuclear Power Generating Station
In the existing instrumentation and control system of an operating Pressurized Heavy Water Reactor (PHWR) based nuclear power plant, conventional controllers are used to control the reactor power. A new idea of Nonlinear Neural Model Predictive Controller (NNMPC) is introduced in this research work. The new 17th order nonlinear higher order model of Reactor Regulating System (RRS) is developed under different plant operating modes and various parametric conditions in Single Input Multi Output (SIMO) configuration with special emphasis on Helium Control Valve Dynamics (HCVD) and Coupled Nonlinear Iodine and Xenon Dynamics (CNIXD). The SIMO RRS model is developed based on first principle. The 17th order model is reduced to 9th order lower dynamic model using Balanced Truncation Method (BTM). The Reduced Order SIMO RRS (RO-SIMO-RRS) model is programmed, simulated and validated in SIMULINK environment. The plant Neural SIMO RRS (N-SIMO-RRS) model is developed using innovative data generated from RO-SIMO-RRS simulations. The plant neural N-SIMO-RRS model is optimized using Levenberg-Marquardt Algorithm (LMA). Using the identified N-SIMO-RRS model, the Nonlinear Neural Model Predictive Controller (NNMPC) is designed, trained, verified, validated, and finally optimized using the backtracking technique in the SIMULINK environment. The optimized results are obtained from designed closed loop RRS and found within the acceptable design limits. The performance of the proposed closed loop RRS is also tested in reference tracking mode with excellent fast tractability near the optimal target demanded power level.
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来源期刊
Proceedings of the Pakistan Academy of Sciences: Part A
Proceedings of the Pakistan Academy of Sciences: Part A Computer Science-Computer Science (all)
CiteScore
0.70
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0.00%
发文量
15
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