Proximal ADMM for Nonconvex and Nonsmooth Optimization
Yu Yang, Qing-Shan Jia, Zhanbo Xu, Xiaohong Guan, Costas J. Spanos

TL;DR
This paper introduces a proximal ADMM algorithm tailored for distributed nonconvex and nonsmooth optimization problems, ensuring convergence through discounted dual updates, with applications demonstrated in smart building HVAC control.
Contribution
It develops a novel distributed proximal ADMM with convergence guarantees for broad nonconvex, nonsmooth problems involving coupled constraints, extending existing convex-focused methods.
Findings
Proved convergence to approximate stationary points.
Validated effectiveness through numerical experiments.
Applied method successfully to smart building HVAC control.
Abstract
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…
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Taxonomy
TopicsDistributed Control Multi-Agent Systems · Neural Networks Stability and Synchronization · Sparse and Compressive Sensing Techniques
