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Model reduction of uncertain systems with multiplicative noise based on balancing

机译:基于平衡的乘性噪声对不确定系统的模型约简

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This paper investigates the problem of model reduction based on balancing for uncertain discrete-time systems with multiplicative noise. Such systems can be considered as linear systems with both deterministic and stochastic uncertainties. Two linear matrix inequalities (LMIs) are proposed to find the balancing transformation, through which the original uncertain model with multiplicative noise is balanced. The reduced order model with the same structure as that of the original one is obtained by truncating the balanced model. An upper bound of the model reduction error is guaranteed. Based on the derived model reduction error bound, an optimization problem is suggested so that the solutions of the LMIs can be uniquely found and the model reduction error is ensured to be small.
机译:本文研究了不确定的离散时间带乘性噪声系统基于平衡的模型约简问题。可以将此类系统视为具有确定性和随机不确定性的线性系统。提出了两个线性矩阵不等式(LMI)来找到平衡变换,通过该平衡变换可以平衡原始的具有乘法噪声的不确定模型。通过截断平衡模型,可以得到结构与原始模型相同的降阶模型。保证了模型减少误差的上限。基于导出的模型简化误差界,提出了一个优化问题,以便可以唯一地找到LMI的解,并确保模型简化误差较小。

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