Optimization of Neural Network based on Genetic Algorithm and BP

Shiwei Zhang, Hanshi Wang, Lizhen Liu, Chao Du, Jingli Lu
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引用次数: 8

Abstract

In order to improve the intelligence, high efficiency, humanization of the type of the search and eliminate games, and also to improve the search performance and rule out the accuracy of the target during intelligent games running. This paper puts forward a comprehensive method that combines Genetic Algorithm, Neural Network and Back Propagation (BP) to solve the insufficiency of computing power and low efficiency by using a single algorithm in Intelligence games. In this method, Genetic Algorithm will be used in weight training of Neural Network first of all. It will not stop iterating until Genetic Algorithm evolves into a certain degree or network errors satisfies the requirements, and delivers the best chromosome we get to Neural Network. Then BP trains the data that runs through the Neural Network, which is Neural Network's second training. Finally, the paper applies the new way in the Mine Clearance experiment. By comparing this experiment with only using Genetic Algorithm or Neural Network, it finds out that the proposed method significantly improves the minesweepers accuracy.
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基于遗传算法和BP的神经网络优化
为了提高智能、高效率、人性化的搜索和消除游戏的类型,同时也为了提高智能游戏运行过程中搜索性能和排除目标的准确性。本文提出了一种遗传算法、神经网络和反向传播(BP)相结合的综合算法,解决智能博弈中单一算法计算能力不足、效率低的问题。该方法首先将遗传算法应用于神经网络的权值训练。它不会停止迭代,直到遗传算法进化到一定程度或网络误差满足要求,并将我们得到的最佳染色体传递给神经网络。然后BP对流经神经网络的数据进行训练,这是神经网络的第二次训练。最后,将该方法应用于扫雷实验。通过与仅使用遗传算法或神经网络的实验对比,发现该方法显著提高了扫雷准确率。
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