基于分布式混合整数线性规划的最优负荷控制与调度

V. Yfantis, William Motsch, Nico Bach, A. Wagner, M. Ruskowski
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引用次数: 1

摘要

本文提出了一种基于混合整数线性规划的分布式系统能耗耦合同时优化负荷控制和调度的优化模型。子系统能够在任务执行期间调整其能源消耗,并以最小化其完成时间和能源成本为目标。整个问题以分布式方式解决,其中每个子系统在不共享敏感信息的情况下优化其单独的操作。为此,采用对偶分解,提出了一种更新对偶变量的新算法。它依赖于二次逼近对偶函数的梯度变换和随后的回归问题的解。该算法有效地利用了之前迭代中收集到的信息。将分布式优化得到的子系统解与分散解和全系统解进行了比较,表明分布式解接近于过程的全局最优解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimal Load Control and Scheduling through Distributed Mixed-integer Linear Programming
This paper presents a mixed-integer linear programming-based optimization model for simultaneous optimal load control and scheduling of distributed systems coupled through their energy consumptions. The subsystems are able to adjust their energy consumption during the execution of a task and aim at minimizing their completion time and energy cost. The overall problem is solved in a distributed fashion, where each subsystem optimizes its individual operation without sharing sensitive information. To this end, dual decomposition is employed and a new algorithm to update the dual variables is presented. It relies on a transformation of the gradient of the quadratically approximated dual function and the subsequent solution of a regression problem. The proposed algorithm makes efficient use of information collected in previous iterations. The solution obtained from the distributed optimization of the subsystems is compared to both a decentral and a system-wide solution, showing that the distributed solution lies close to the global optimum of the process.
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