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Robust incentive Stackelberg strategy for Markov jump linear stochastic systems via static output feedback

机译:Markov跳跃线性随机系统的稳健激励策略通过静态输出反馈

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摘要

In this study, a robust static output feedback (SOF) incentive Stackelberg game for a Markov jump linear stochastic system governed by Ito differential equations with multiple leaders and multiple followers is investigated. The existence conditions for the SOF incentive Stackelberg strategies are derived in terms of the solvability of a set of higher-order cross-coupled stochastic algebraic Lyapunov type equations (CCSALTEs). A classical Lagrange multiplier technique is employed to solve the CCSALTEs; therefore, the solution of the bilinear matrix inequality, which is a common NP-hard problem when designing SOF strategies, is not required. A heuristic algorithm is developed based on the CCSALTEs. In particular, it is shown that a robust convergence is guaranteed by combining the Krasnoselskii-Mann iterative algorithm with a new convergence condition. The performance of the proposed algorithm is discussed and a simple practical example is provided to demonstrate the effectiveness of the proposed algorithm and the SOF incentive Stackelberg strategies.
机译:在这项研究中,由具有多个领导者和多个追随者的ITO微分方程治理的Markov跳跃线性随机系统的强大静态输出反馈(SOF)激励Stackelberg游戏。根据一组高阶交叉耦合随机代数Lyapunov型方程(CCSALTES)的可溶性来得出SOF激励Stackelberg策略的存在条件。使用经典拉格朗日乘法器技术来解决CCSALTES;因此,不需要在设计SOF策略时是携带双线性矩阵不等式的求解,这是一个常见的NP难题。基于CCSaltes开发了一种启发式算法。特别地,示出通过将Krasnoselskii-Mann迭代算法与新的收敛条件组合来保证稳健的收敛。讨论了所提出的算法的性能,并提供了一个简单的实际例子,以展示所提出的算法和SOF激励Stackelberg策略的有效性。

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