首页> 外文会议>Proceedings of the Second Asia-Pacific Conference on Genetic Algorithms and Applications May 3-5, 2000, Hong Kong >Hybridized Genetic ALgorithm with Neural Network Technique for Solving Non-linear Mixed Integer Programming Problems
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Hybridized Genetic ALgorithm with Neural Network Technique for Solving Non-linear Mixed Integer Programming Problems

机译:混合遗传算法与神经网络技术求解非线性混合整数规划问题

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In this paper, we discuss non-linear mixed integer programming (NMIP) models which should be simultaneously determined continuous and discrete decision variables. This problem is more difficult than the NIP problem while more actually representing the real world. Recently, several researchers have obtained acceptable and satisfactory results by using genetic algorithms for NMIP problems. For large size problems, however, genetic algorithm (GA) has a lot enumeration of feasible solutions due to broad continuous search space, i.e., it require too large computational time and computer memroy. To overcome this kind of difficulties. we propose a hybridized GA combined neural network (NN) technique suitable for approximating continuous optimal solutions. Numerical exper ments and comparison with the previous works demonstrate the efficiency of our proposed method.
机译:在本文中,我们讨论了非线性混合整数规划(NMIP)模型,该模型应同时确定连续和离散决策变量。这个问题比NIP问题更困难,同时更能代表现实世界。最近,一些研究人员通过使用遗传算法解决NMIP问题获得了令人满意的令人满意的结果。然而,对于较大的问题,由于宽泛的连续搜索空间,遗传算法(GA)列举了许多可行的解决方案,即,它需要太大的计算时间和计算机内存。要克服这种困难。我们提出了一种适用于近似连续最优解的混合GA组合神经网络(NN)技术。数值实验和与先前工作的比较证明了我们提出的方法的有效性。

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