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Dynamic Structure-Based Neural NetworksDetermination Approach Based on theOrthogonal Genetic Algorithm withQuantization

机译:基于正交遗传算法的基于动态结构的神经网络分析方法

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Simulation optimization studies the problem of optimizing simulation-based objectives. This field has a strong history in engineering but often suffers from several difficulties including being time-consuming and NP-hardness. Simulation optimization is a new and hot topic in the field of system simulation and operational research. This paper presents a hybrid approach that combines Evolutionary Algorithms with Neural Networks for solving simulation optimization problems. In our research, Neural Networks are applied to replace the known simulation model for evaluating subsequent iterative solutions. Further, we apply the dynamic structure-based neural networks to learn and replace the known simula-tion model. The determination of dynamic structure-based neural net-works is the kernel of this paper. The experimental results demonstrated that our approach can find optimal or close-to-optimal solutions, and is superior to other recent algorithms in simulation optimization.
机译:仿真优化研究了优化基于仿真目标的问题。该领域具有强劲的工程历史,但往往遭受了几个困难,包括耗时和NP硬度。仿真优化是系统仿真和操作研究领域的一个新的热门话题。本文介绍了一种混合方法,将进化算法与神经网络相结合,以解决模拟优化问题。在我们的研究中,应用神经网络以取代已知的仿真模型来评估随后的迭代解决方案。此外,我们应用基于动态结构的神经网络来学习和替换已知的Simula-Tion模型。基于动态结构的神经网络作品的确定是本文的内核。实验结果表明,我们的方法可以找到最佳或近距离的解决方案,并且优于仿真优化中的其他最近算法。

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