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Neural Network-Based Passive Filtering for Delayed Neutral-Type Semi-Markovian Jump Systems

机译:延迟中立型半马尔可夫跳跃系统的基于神经网络的无源滤波

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摘要

This paper investigates the problem of exponential passive filtering for a class of stochastic neutral-type neural networks with both semi-Markovian jump parameters and mixed time delays. Our aim is to estimate the states by designing a Luenberger-type observer, such that the filter error dynamics are mean-square exponentially stable with an expected decay rate and an attenuation level. Sufficient conditions for the existence of passive filters are obtained, and a convex optimization algorithm for the filter design is given. In addition, a cone complementarity linearization procedure is employed to cast the nonconvex feasibility problem into a sequential minimization problem, which can be readily solved by the existing optimization techniques. Numerical examples are given to demonstrate the effectiveness of the proposed techniques.
机译:本文研究了具有半马尔可夫跳跃参数和混合时滞的一类随机中立型神经网络的指数被动滤波问题。我们的目的是通过设计一个Luenberger型观测器来估计状态,以使滤波器误差动态均方根指数稳定,并具有预期的衰减率和衰减水平。获得了无源滤波器存在的充分条件,并给出了滤波器设计的凸优化算法。另外,采用锥互补线性化程序将非凸可行性问题转化为顺序最小化问题,可以通过现有的优化技术轻松解决。数值例子说明了所提出技术的有效性。

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