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Projection-Free Distributed Optimization With Nonconvex Local Objective Functions and Resource Allocation Constraint

机译:非透射局部目标函数和资源分配约束的投影分布式优化

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摘要

We present a novel generalized constrained convex optimization model for multiagent systems that contains both the local, coupled equality, and inequality constraints, and a global resource allocation constraint. This model unifies the traditional constrained optimization problem, the resource allocation problem, and the economic dispatch problem. Unlike the majority of literature where each local objective function is required to be convex, we only require a milder condition that the global objective function is convex. The gradient of the global Lagrangian is estimated locally by each agent using the dynamic average consensus protocol. Synchronously, modified primal-dual dynamics produce the optimal solution via the estimated gradient. The generalized Lagrange multiplier method is introduced to avoid the usual positive projections in the presence of inequality constraints. This leads to smooth dynamics and a continuous Lyapunov derivative, which enables the exponential stability analysis. Simulation examples support the proposed distributed methods.
机译:我们提出了一种新的广泛约束凸优化模型,用于多层系统,其包含本地,耦合的平等和不等式约束以及全局资源分配约束。该模型统一了传统的约束优化问题,资源分配问题和经济派遣问题。与大多数本地目标函数需要凸起的大多数文献不同,我们只需要一个较温和的条件,即全球目标函数是凸的。每个试剂使用动态平均共识协议估计全球拉格朗日的梯度。同步地,修改的原始 - 双重动力学通过估计的梯度产生最佳解决方案。引入广义拉格朗日乘法器方法以避免在不等式约束存在下通常的正投影。这导致平稳动态和连续的Lyapunov衍生物,这使得指数稳定性分析能够。仿真示例支持所提出的分布式方法。

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