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Distributed adaptive iterative learning control for nonlinear multiagent systems with state constraints

机译:具有状态约束的非线性多主体系统的分布式自适应迭代学习控制

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摘要

This paper addresses the consensus problem of nonlinear multiagent system with state constraints. A novel -type barrier Lyapunov function is adopted to handle with the bounded constraints. The iterative learning control strategy is introduced to estimate the unknown parameter and basic control signal. Five control schemes are designed, in turn, to address the consensus problem comprehensively from both theoretical and practical viewpoints. These schemes include the original adaptive scheme, projection-based scheme, smooth function-based scheme and its alternative, and dead-zone-like scheme. The consensus convergence and constraints guarantee are strictly proved for each control scheme by using the barrier composite energy function approach. Illustrative simulations verify the theoretical analysis.
机译:本文讨论了具有状态约束的非线性多主体系统的共识问题。采用一种新型的屏障李雅普诺夫函数来处理有界约束。引入了迭代学习控制策略来估计未知参数和基本控制信号。依次设计了五种控制方案,从理论和实践的角度全面解决了共识问题。这些方案包括原始的自适应方案,基于投影的方案,基于平滑函数的方案及其替代方案以及类似死区的方案。通过使用势垒复合能量函数方法,严格证明了每种控制方案的共识收敛性和约束保证。说明性仿真验证了理论分析。

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