遗传算法在实时多目标优化问题中的应用

Z. Bingul, A. Sekmen, S. Palaniappan, S. Zein-Sabatto
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引用次数: 23

摘要

遗传算法通常适用于多目标优化问题。在这项工作中,使用与THUNDER软件(一个非常大的军事战役模拟模型)相关的多个目标来优化从该软件获得的战争结果。它是一种随机的、双边的、分析的蒙特卡罗模拟军事行动。仿真受内部未知噪声的影响。由于这些噪声和仿真程序的离散性,采用遗传算法求解多目标优化问题。这种方法能够在一次运行中同时搜索多个解。将这个问题转化为适合直接实现遗传算法的形式是我们所面临的主要挑战。实现了三种不同的适应度分配方法,并选出了最优的适应度分配方法。THUNDER软件可能被认为是一个黑匣子,因为关于其内部动力学的信息很少。THUNDER软件的问题是它昂贵的运行时间。为了优化THUNDER软件所涉及的时间,使用了自相关技术来减少THUNDER的运行次数。此外,优化了遗传算法参数,使适应度收敛更快、更平滑。结果表明,遗传算法在多目标优化问题上表现良好,能够有效地为迅雷软件分配力功率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Genetic algorithms applied to real time multiobjective optimization problems
Genetic algorithms (GAs) are often well-suited for multi-objective optimization problems. In this work, multiple objectives pertaining to the THUNDER software (a very large military campaign simulation model) were used to optimize the war results obtained from the software. It is a stochastic, two-sided, analytical Monte-Carlo simulation of military operations. The simulation is subject to internal unknown noises. Due to these noises and to the discreteness in the simulation program, a GA approach has been applied to this multi-objective optimization problem. This method is capable of searching for multiple solutions concurrently in a single run. Transforming this problem to a form that is suitable for the direct implementation of GA was the major challenge that was achieved. Three different kinds of fitness assignment methods were implemented, and the best one was chosen. The THUNDER software may be considered as a black box, since very little information about its internal dynamics was known. The problem with the THUNDER software is its expensive running time. In order to optimize the time involved with the THUNDER software, autocorrelation techniques were used to reduce the number of THUNDER runs. Furthermore, the GA parameters were set optimally to yield smoother and faster fitness convergence. From these results, the GA was shown to perform well for this multi-objective optimization problem and was effectively able to allocate force power for the THUNDER software.
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