An optimization approach for team coordination through information sharing

Yijie Peng, Edward Huang, Jie Xu, Chun-Hung Chen
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引用次数: 2

Abstract

Team coordination and information sharing are important in concurrent engineering (CE), where multiple design teams execute their tasks simultaneously and then share information to update their designs, e.g., through integrated tests. The process then iterates until the global design objective is optimized. When properly controlled and executed, CE can be an effective method to speed up the design process for complex and large-scale projects thanks to its parallel nature. Recently, a coordinate optimization framework is proposed in [1] to model and control the information sharing in CE. It can be shown that under a convexity assumption, CE converges to a globally optimal design. In this paper, we study how the coordinate optimization framework can be applied to CE in a general environment where the objective function is non-convex. We propose a simulation optimization method using a domain space cutting and optimal computing budget allocation to efficiently select the initial points from which the coordinate optimization can be applied under a mild local convexity condition. The proposed approach has broad potentials in decentralized control and optimization of complex and large-scale systems in automation. Numerical experiments show that the optimal selection of the initial points allow coordination optimization to efficiently find the global optimum.
基于信息共享的团队协调优化方法
团队协调和信息共享在并行工程(CE)中是重要的,在并行工程中,多个设计团队同时执行他们的任务,然后共享信息以更新他们的设计,例如,通过集成测试。然后,该过程迭代,直到优化全局设计目标。在适当控制和执行的情况下,由于其并行性,CE可以成为加快复杂和大型项目设计过程的有效方法。最近,文献[1]提出了一种坐标优化框架来对CE中的信息共享进行建模和控制。结果表明,在凸性假设下,CE收敛于全局最优设计。在本文中,我们研究了如何将坐标优化框架应用于目标函数为非凸的一般环境中。提出了一种采用域空间切割和最优计算预算分配的仿真优化方法,在局部温和凸性条件下,有效地选择可进行坐标优化的初始点。该方法在复杂大型自动化系统的分散控制和优化方面具有广阔的应用前景。数值实验表明,初始点的最优选择使协调优化能够有效地找到全局最优解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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