结合图与遗传规划在机电系统设计中的几个关键问题

R. Rosenberg, E. Goodman, Kisung Seo
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引用次数: 6

摘要

机电一体化系统设计不同于单一领域系统的设计,如电子电路、机械和流体动力系统,部分原因是需要在预测系统行为时整合几个不同的领域特征。我们工作的目标是开发一种自动化的程序,可以以拓扑开放的方式探索机电一体化设计空间,但仍然有效地找到适当的配置,足够有用。我们的方法结合了用于模型表示的键合图和用于生成合适的候选设计的遗传编程,作为探索设计空间的一种手段。键合图使我们能够以统一的符号捕捉机电系统的几个物理域的共同能量行为。遗传规划是一种有效的方法,以一种开放式的,但统计结构化的方式生成候选设计。我们最初的目标是确定合并键合图建模工具与遗传规划进行搜索的关键问题。我们选择的第一个设计问题是找到一个具有特定特征值集的模型。这个问题可以用一组受限的键合图元素来表示合适的拓扑。我们介绍了我们研究的初步结果,并确定了在推进成为机电一体化系统有效和高效的开放式设计工具的方法中的关键问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Some Key Issues in Using Bond Graphs and Genetic Programming for Mechatronic System Design
Mechatronic system design differs from design of single-domain systems, such as electronic circuits, mechanisms, and fluid power systems, in part because of the need to integrate the several distinct domain characteristics in predicting system behavior. The goal of our work is to develop an automated procedure that can explore mechatronic design space in a topologically open-ended manner, yet still find appropriate configurations efficiently enough to be useful. Our approach combines bond graphs for model representation with genetic programming for generating suitable design candidates as a means of exploring the design space. Bond graphs allow us to capture the common energy behavior underlying the several physical domains of mechatronic systems in a uniform notation. Genetic programming is an effective way to generate design candidates in an open-ended, but statistically structured, manner. Our initial goal is to identify the key issues in merging the bond graph modeling tool with genetic programming for searching. The first design problem we chose is that of finding a model that has a specified set of eigenvalues. The problem can be studied using a restricted set of bond graph elements to represent suitable topologies. We present the initial results of our studies and identify key issues in advancing the approach toward becoming an effective and efficient open-ended design tool for mechatronic systems.
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