Decentralized optimization for non-convex problems are now demanding by many emerging applications (e.g., smart grids, smart building, etc.). Though dramatic progress has been achieved in convex problems, the results for non-convex cases, especially with non-linear constraints, are still largely unexplored. This is mainly due to the challenges imposed by the non-linearity and non-convexity, which makes establishing the convergence conditions bewildered. This paper investigates decentralized optimization for a class of structured non-convex problems characterized by: (i) nonconvex global objective function (possibly nonsmooth) and (ii) coupled nonlinear constraints and local bounded convex constraints w.r.t. the agents. For such problems, a decentralized approach called Proximal Linearizationbased Decentralized Method (PLDM) is proposed. Different from the traditional (augmented) Lagrangian-based methods which usually require the exact (local) optima at each iteration, the proposed method leverages a proximal linearization-based technique to update the decision variables iteratively, which makes it computationally efficient and viable for the non-linear cases. Under some standard conditions, the PLDM global convergence and local convergence rate to the epsilon-critical points are studied based on the Kurdyka-Lojasiewicz property which holds for most analytical functions. Finally, the performance and efficacy of the method are illustrated through a numerical example and an application to multi-zone heating, ventilation and air-conditioning (HVAC) control.
翻译:由于许多新出现的应用程序(如智能电网、智能建筑等),目前要求非康维x问题的分散优化。虽然在康维x问题方面取得了显著进展,但非康维克斯案件的结果,特别是非线性制约,基本上仍未得到探讨。这主要是由于非线性和非非线性造成的挑战,使建立趋同条件变得模糊不清。本文对结构化非康维x问题类别的分散优化进行了调查,其特征是:(一) 非康维x全球目标功能(可能非线性效率)和(二) 非线性制约和当地封闭性康维克斯案件的结果,特别是非线性制约的结果,在很大程度上尚未探讨。对于这些问题,提出了一种称为Proximal线性线性分解方法(PLDM)的分散化方法。不同于传统的(缩略)基于拉格朗基亚的方法,这种方法通常需要精确(当地)的选取,拟议方法利用一种不直线性线性全球目标应用功能(可能是非线性调调调的离线性线性调技术,而最终地将一个基于快速的解算法,这是对纸质性压的系统压压的系统压的递化方法进行升级。