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1.
针对输入和状态受约束的多胞不确定线性系统,提出了基于容许集的扩大吸引域三模鲁棒模型预测控制方法.在多面体不变集离线模型预测控制算法的基础上引入容许集,以多面体不变集序列的并集作为模态1,基于N步容许集的控制容许集作为模态2,并利用离线设计和在线优化的控制策略,设计了三模变终端约束鲁棒模型预测控制算法,以实现系统渐近稳定.该算法不仅降低了在线运算量,而且扩大了吸引域.最后的仿真结果验证了所提出算法的有效性.  相似文献   

2.
针对输入和状态受约束的干扰有界多胞不确定线性系统,提出了基于鲁棒容许集的扩大吸引域鲁棒模型预测控制(RMPC)方法.首先给出了多面体不变集的鲁棒容许集计算方法,并推导了鲁棒容许集存在的充分必要条件.其次,为了拓展Tube不变集鲁棒模型预测控制算法的适用范围,讨论了干扰有界多胞不确定线性系统的Tube不变集控制策略.之后为了扩大约束系统吸引域,提出了干扰有界多胞不确定系统的鲁棒容许集模型预测控制策略.通过采用鲁棒容许集和Tube不变集RMPC,该方法不仅扩大了吸引域,而且降低了在线计算量;同时,采用基于最小鲁棒正不变集的Tube不变集策略保证了算法的鲁棒性.最后仿真结果验证了算法的有效性.  相似文献   

3.
针对具有持续有界扰动的线性变参数系统,设计一种基于Tube不变集的鲁棒模型预测控制算法。离线算法结合系统多胞体模型参数变化的影响,构建系统的Tube不变集。在对应标称模型状态变量的多面体不变集算法基础上,得到系统的多面体状态允许不变集序列。在线算法通过强控制优化得到标称模型系统的控制量,以得到符合实际控制过程的系统控制量,给出本算法的详细步骤和系统稳定性证明。仿真结果验证了本算法的有效性,表明本算法将持续有界扰动对系统的影响限制在Tube不变集中,实现了系统的快速稳定控制。  相似文献   

4.
针对一类具有分段仿射形式的混杂系统模型的控制方法问题,提出了一种高效显式模型预测控制算法;该算法通过将最优控制问题转化为多参数规划问题,离线求得具有分段仿射形式的显式控制器;在线过程,应用一种新的搜索算法,它能够快速准确地对系统状态点进行定位,确定其所属的控制器分区,再根据该分区所对应的子控制率,进行简单的线性运算,即可得到系统的输入;该控制方法避免了反复的在线优化计算,大大减少了计算量,并且,在线计算的速度更快,控制的实时性更好;将该算法应用到具有典型混杂特性的两容水箱系统中,仿真结果表明:水箱的液位从初始液位能够快速平稳的达到期望的液位,且与其它的控制算法相比较,该算法更加高效。  相似文献   

5.
针对一类具有输入输出约束的多胞体结构线性变参数系统,提出了一种基于最小衰减率多面体不变集的鲁棒模型预测控制算法,算法分为在线和离线两个部分.为增强系统控制效果,提高系统响应速度,离线算法首先采用寻求状态变量的最小衰减率的方法优化出一系列状态变量及相应的状态反馈控制律,然后构建出相应的多面体不变集序列;在线算法根据当前实测状态变量,在多面体不变集序列内确定状态变量所处的最小多面体不变集,通过在线优化得出系统的控制输入.给出了鲁棒模型预测控制算法的详细步骤和系统的闭环稳定性证明.仿真结果验证了本算法的有效性,表明本算法使系统的闭环响应更为快速和稳定.  相似文献   

6.
针对一类具有输入和状态约束的干扰有界非线性系统,提出了基于区间分析的约束非线性鲁棒模型预测控制,以降低计算量并扩大系统吸引域.首先,在集合运算的基础上,利用区间运算和函数区间扩展,给出了一种计算效能更好、保守性更低的非线性系统鲁棒一步集计算方法;其次,构造重叠的多面体控制不变集序列并以此计算约束非线性系统的鲁棒多步集,并通过设计基于集合的在线优化策略,提出了基于鲁棒一步集的单步优化非线性模型预测控制,有效降低了非线性优化的在线计算量;最后,仿真实例验证了算法的有效性.  相似文献   

7.
在工业过程的模型预测控制中,离线算法和在线算法是基于线性矩阵不等式的鲁棒模型预测算法的两个部分,离线得到的椭圆集序列是在线算法的基础.为了得到合适的控制规律,使系统的响应快速稳定,离线时根据状态变量的每个一维子空间得到相应的多个椭圆集序列.在线时,每个采样周期根据当前测量的状态变量值,在多个椭圆集序列中选择一个合适椭圆集序列,确定状态变量位于其中的两个椭圆集之间,并用优化的方式精确定位状态变量的位置,并得到系统控制量,使在线优化得到了证明.通过和传统算法的仿真比较,验证了所提出算法对系统的响应更迅速.  相似文献   

8.
基于多步控制集的鲁棒预测控制器设计   总被引:1,自引:1,他引:0  
针对有约束多胞不确定系统, 本文提出多步控制集的概念, 并将其作为终端集进而设计鲁棒预测控制器. 由于设计了一系列可变的反馈律, 鲁棒预测控制器可以得到更好的控制性能和更大的初始可行域. 另外, 利用多步控制集的特性, 本文提出了一种将预测控制器的在线计算量转移到离线完成的算法. 通过该算法, 可以有效地平衡鲁棒预测控制器的控制性能、在线计算量和初始可行域. 仿真算例验证了这些算法的有效性.  相似文献   

9.
不确定系统的鲁棒与随机模型预测控制算法比较研究   总被引:2,自引:0,他引:2  
近几十年来,不确定系统模型预测控制的理论和应用得到了飞速发展.本文简要地回顾了不确定系统中鲁棒模型预测控制和随机模型预测控制的发展历史,总结了它们的相关应用,并较为细致地分析了线性不确定系统模型预测控制的各种主要算法.通过总结各种算法的通用模型、运作方式、问题规模,以及它们保证递归可行性、稳定性的方法,分析了部分算法可行域间的关系,揭示了各种算法的主要特点、适用场合和未来可发展方向,并通过仿真实例直观地分析了各种算法的性能和可靠性.  相似文献   

10.
基于在线优化的切换多模型自适应控制   总被引:7,自引:0,他引:7       下载免费PDF全文
介绍了切换多模型控制方法,针对多模型方法中子模型数量过多的问题,提出一种基于模型集在线优化方案的多模型自适应控制算法,并对其实时性进行讨论,该方法能减少子模型数量,降低计算复杂度,缩短系统的采样间隔,计算机仿真结果表明,该方法在控制精度,计算复杂度等方面均优于采用固定模型集的切换方案。  相似文献   

11.
This paper presents an alternative technology for adaptive control of a DC motor servo system based on multiple models. A dynamic mechanical model of the controlled plant is built, where the unmeasurable variables can be estimated by a filter observer. According to the mechanical model, an adaptive controller is designed. Specific attention is given to the jumping parameters in the control process, which motivate the proposition of multiple models, including fixed models, identified model, and adaptive model, to approximate the global dynamic characteristics of the plant model. A model switching rule is proposed to select the optimal model matching the plant, and the identified and adaptive models are reset when switching occurs, minimizing the effect caused by jumping parameters. Simulation results demonstrate that the introduced scheme is superior to the conventional adaptive control in that it yields a significant improvement of transient stability and response speed as well as steady accuracy, guaranteeing better low‐speed performance.  相似文献   

12.
针对存在不确定执行器故障和未知不匹配干扰的可反馈线性化非线性系统, 提出一种鲁棒自适应容错控 制策略. 首先分别给出系统输入和扰动关于系统输出的相对阶, 针对两种相对阶之间的不同关系设计鲁棒控制器, 抑制干扰对系统输出的影响; 然后针对各故障情况分别设计容错控制器; 最后将各控制器进行融合得到一个综合 故障补偿控制器, 从而有效解决故障模式、类型、大小、时间和外界干扰等多重不确定性, 保证闭环系统稳定和渐近 输出跟踪性能. 仿真结果验证了所设计控制方案的可行性与有效性.  相似文献   

13.
In this paper, the multiple model adaptive control scheme is first introduced into a class of switched systems. A switched multiple model adaptive control scheme is proposed to improve the transient behavior by resetting the controller parameters. Firstly, a finite‐time parameter identification model is presented, which greatly reduces the number of identification models. Secondly, a two‐layer switching strategy is constructed. The outer layer switching mechanism is to ensure the stability of the switched systems. The inner layer switching mechanism is to improve the transient behavior. Then, by using the constructed jumping multiple Lyapunov functions, the proposed adaptive control scheme guarantees that all the closed‐loop system signals remain bounded and the state tracking error converges to a small ball whose radius can be made arbitrarily small by appropriately choosing the design parameter. Finally, a practical example about model reference adaptive control of an electrohydraulic system using multiple models is given to demonstrate the validity of the main results.  相似文献   

14.
An adaptive control algorithm for linear systems with unknown constant parameters and quadratic performance criterion has been obtained. The control is nonlinear in the estimate of the state of the plant and is given as the weighted integral of the model conditional optimal controls with the a-posteriori probabilities as weights. The control scheme is separated into a bank of model-conditional deterministic control gains, and a corresponding bank of known nonlinear functions of the model conditional, causal, mean-square state-vector estimate. The separation here can be viewed as a decomposition of the control into a bank of model conditional optimal non-adaptive linear controls, one for each admissible value of the unknown parameter, and the bank of a-posteriori model probabilities which incorporate the learning nature of the adaptive control. The computational requirements are reduced by a great extent for the special case when the uncertainity is only in the measurement matrix.  相似文献   

15.
16.
作为简单、鲁棒的设计方法,基于继电反馈的PID控制器巳广泛应用于工业过程控制。它可以由继电反馈引起的振荡近似估计过程临界信息进行控制器的设计。多模型控制是解决系统时变、非线性、参数不确定性等复杂问题得一种有效方法。该文将继电反馈控制与多模型控制相结合,对时变、非线性的电厂主汽温系统过进行控制。首先在各个工况点应用继电反馈方法设计子控制器。然后在系统整个运行区间进行多模型自适应控制以克服非线性、时变对系统的影响。仿真表明本方法所建立的控制系统具有良好的控制品质及较强的自适应能力。  相似文献   

17.
Adaptive control with multiple models can further improve the adaptation ability of controllers for the plant with wide-range uncertain parameters. Fuzzy modeling and control are introduced into the multiple-model adaptive control in this paper, which facilitates the intelligent behavior of a plant facing with uncertainty. Within the combination of fuzzy sets of state variables, the corresponding combined kernel functions of support vector machine are utilized to describe the unknown nonlinear dynamics. The coefficients of kernel functions are learned online through adaptive laws. The multiple identification models and indirect adaptive controllers are assigned to the plant through fuzzy inferences. The stability of adaptive law corresponding to the fuzzy identification model and the synthetic control input through fuzzy fusion has been proved for the proposed fuzzy multiple-model adaptive control (FMMAC). The simulation results demonstrate that the proposed FMMAC can achieve favorable control performance for a class of nonlinear systems.  相似文献   

18.
基于多层概率集的随机预测控制算法设计   总被引:1,自引:0,他引:1  
考虑具有乘型不确定性的离散随机系统约束控制问题, 设计了一种基于多层概率集的随机预测控制算法. 多层概率集描述了状态在多步反馈控制律下的一系列不同概率的分布区域, 因此能够同时保证多个不同概率要求的软约束. 通过动态优化多步反馈律, 算法具有较大的可行范围. 之后设计的简化算法在降低计算负担的同时保证了算法的可行范围.  相似文献   

19.
A new indirect adaptive switching fuzzy control method for fuzzy dynamical systems, based on Takagi–Sugeno (T–S) multiple models is proposed in this article. Motivated by the fact that indirect adaptive control techniques suffer from poor transient response, especially when the initialisation of the estimation model is highly inaccurate and the region of uncertainty for the plant parameters is very large, we present a fuzzy control method that utilises the advantages of multiple models strategy. The dynamical system is expressed using the T–S method in order to cope with the nonlinearities. T–S adaptive multiple models of the system to be controlled are constructed using different initial estimations for the parameters while one feedback linearisation controller corresponds to each model according to a specified reference model. The controller to be applied is determined at every time instant by the model which best approximates the plant using a switching rule with a suitable performance index. Lyapunov stability theory is used in order to obtain the adaptive law for the multiple models parameters, ensuring the asymptotic stability of the system while a modification in this law keeps the control input away from singularities. Also, by introducing the next best controller logic, we avoid possible infeasibilities in the control signal. Simulation results are presented, indicating the effectiveness and the advantages of the proposed method.  相似文献   

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