By enabling the nodes or agents to solve small-sized subproblems to achieve coordination, distributed algorithms are favored by many networked systems for efficient and scalable computation. While for convex problems, substantial distributed algorithms are available, the results for the more broad nonconvex counterparts are extremely lacking. This paper develops a distributed algorithm for a class of nonconvex and nonsmooth problems featured by i) a nonconvex objective formed by both separate and composite objective components regarding the decision components of interconnected agents, ii) local bounded convex constraints, and iii) coupled linear constraints. This problem is directly originated from smart buildings and is also broad in other domains. To provide a distributed algorithm with convergence guarantee, we revise the powerful tool of alternating direction method of multiplier (ADMM) and proposed a proximal ADMM. Specifically, noting that the main difficulty to establish the convergence for the nonconvex and nonsmooth optimization within the ADMM framework is to assume the boundness of dual updates, we propose to update the dual variables in a discounted manner. This leads to the establishment of a so-called sufficiently decreasing and lower bounded Lyapunov function, which is critical to establish the convergence. We prove that the method converges to some approximate stationary points. We besides showcase the efficacy and performance of the method by a numerical example and the concrete application to multi-zone heating, ventilation, and air-conditioning (HVAC) control in smart buildings.
翻译:通过使节点或代理商能够解决小小问题以实现协调,分布式算法得到许多网络化系统的支持,以便高效和可缩进的计算。虽然对于螺旋问题,可以提供大量分布式算法,但对于较广泛的非曲线对应方而言,结果极为缺乏。本文为一类非螺旋和非脉冲问题(一) 一种非螺旋和非脉冲问题(一) 一种非螺旋和非脉冲问题(二) 由关于相互关联的代理人决策组成部分的单独和复合目标组成部分形成的非螺旋目标(二) 当地受约束的螺旋制约(三) 以及线性限制(三) 。这个问题直接来自智能建筑,在其他领域也很广泛。为了提供分布式算法,并有趋同保证,我们修订交错方向的乘法(ADMM)的有力工具,并提出了一种准式的ADMMM。 具体地指出,在ADMM框架内,非螺旋和非脉冲优化的主要困难是假定双向更新的内装,我们提议以折扣方式更新双重变量。这导致建立一个关键的结构的变压式结构。在高压式上建立一个关键的压式系统。我们所的压式的压式的机率的压式的压低的压式的机率。