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Distributed Algorithm via Continuously Differentiable Exact Penalty Method for Network Optimization

机译:连续微分精确罚分法的网络优化分布式算法

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This paper proposes a distributed optimization framework for solving nonlinear programming problems with separable objective function and local constraints. Our novel approach is based on first reformulating the original problem as an unconstrained optimization problem using continuously differentiable exact penalty function methods and then using gradient based optimization algorithms. The reformulation is based on replacing the Lagrange multipliers in the augmented Lagrangian of the original problem with Lagrange multiplier functions. The problem of calculating the gradient of the penalty function is challenging as it is non-distributed in general even if the original problem is distributed. We show that we can reformulate this problem as a distributed, unconstrained convex optimization problem. The proposed framework opens new opportunities for the application of various distributed algorithms designed for unconstrained optimization.
机译:本文提出了一种分布式优化框架,用于解决具有可分目标函数和局部约束的非线性规划问题。我们的新颖方法是基于先使用连续可微的精确罚函数方法将原始问题重新构造为无约束优化问题,然后再使用基于梯度的优化算法。重新公式化的基础是,用拉格朗日乘子函数替换原始问题的增强拉格朗日中的拉格朗日乘子。计算惩罚函数的梯度的问题是具有挑战性的,因为即使原始问题是分布式的,它也通常是非分布式的。我们表明,我们可以将该问题重新表述为分布式,无约束的凸优化问题。所提出的框架为设计用于无约束优化的各种分布式算法提供了新的机会。

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