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Escaping local optima in a class of multi-agent distributed optimization problems: A boosting function approach

机译:避免一类多主体分布式优化问题中的局部最优:一种提升函数方法

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摘要

We address the problem of multiple local optima commonly arising in optimization problems for multi-agent systems, where objective functions are nonlinear and nonconvex. For the class of coverage control problems, we propose a systematic approach for escaping a local optimum, rather than randomly perturbing controllable variables away from it. We show that the objective function for these problems can be decomposed to facilitate the evaluation of the local partial derivative of each node in the system and to provide insights into its structure. This structure is exploited by defining 'boosting functions' applied to the aforementioned local partial derivative at an equilibrium point where its value is zero so as to transform it in a way that induces nodes to explore poorly covered areas of the mission space until a new equilibrium point is reached. The proposed boosting process ensures that, at its conclusion, the objective function is no worse than its pre-boosting value. However, the global optima cannot be guaranteed. We define three families of boosting functions with different properties and provide simulation results illustrating how this approach improves the solutions obtained for this class of distributed optimization problems. © 2014 IEEE.
机译:我们处理目标函数为非线性和非凸的多智能体系统优化问题中常见的多个局部最优问题。对于一类覆盖控制问题,我们提出了一种避免局部最优的系统方法,而不是随机地使可控变量远离它。我们表明,可以分解这些问题的目标函数,以便于评估系统中每个节点的局部偏导数并提供对其结构的见解。通过在平衡点的值为零的情况下定义应用于上述局部偏导数的“增强函数”来利用这种结构,从而对其进行转换,从而促使节点探索任务空间覆盖不良的区域,直到达到新的平衡点为止点到了。所提出的提升过程确保了结论,目标函数不比其预提升值差。但是,不能保证全局最优。我们定义了具有不同属性的三个升压函数系列,并提供了仿真结果,说明了该方法如何改进针对此类分布式优化问题而获得的解决方案。 ©2014 IEEE。

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