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Nonlinear robustified stochastic consensus seeking

机译:非线性强大的随机共识寻求

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In this paper we propose a novel stochastic consensus seeking algorithm based on the introduction of a nonlinear transformation aimed at robustification with respect to noise influence. The introduced nonlinear transformation is selected according to the methodology of stochastic approximation and robust statistics. The proposed algorithm represents a general nonlinear stochastic consensus seeking scheme, not yet treated in the literature. It provides a significant improvement over the linear algorithms from the point of view of robustness to noise, ensuring better convergence rate and lower sensitivity of the limit state value at consensus. One of the main contributions of the paper is the proof that the algorithm converges almost surely to consensus under general conditions. A detailed analysis of the limit state value at consensus is provided together with an insight into achievable convergence rate. Illustrative simulation results are also provided, demonstrating great advantages of the proposed algorithm compared to the existing consensus schemes. (C) 2020 Elsevier B.V. All rights reserved.
机译:本文提出了一种基于引入非线性变换的新型随机共识寻求算法,旨在相对于噪声影响的稳定性。根据随机近似和稳健统计的方法选择引入的非线性变换。所提出的算法代表了一般非线性随机共识寻求方案,尚未在文献中治疗。它从稳健性的角度来提供线性算法的显着改进,确保了更好的收敛速度和相应的极限状态值的较低灵敏度。本文的主要贡献之一是证明算法在一般条件下几乎肯定会融合到共识。对共识的限制状态值进行详细分析,并与可实现的收敛速度的见解一起提供。还提供了说明性仿真结果,展示了与现有共识方案相比该算法的巨大优势。 (c)2020 Elsevier B.V.保留所有权利。

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