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首页> 外文期刊>Bulletin of the Korean Chemical Society >Optimization of Neural Networks Architecture for Impact Sensitivity of Energetic Molecules
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Optimization of Neural Networks Architecture for Impact Sensitivity of Energetic Molecules

机译:高能分子碰撞敏感性的神经网络架构优化

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We have utilized neural network (NN) studies to predict impact sensitivities of various types of explosive molecules. Two hundreds and thirty four explosive molecules have been taken from a single database, and thirty nine molecular descriptors were computed for each explosive molecule. Optimization of NN architecture has been carried out by examining seven different sets of molecular descriptors and varying the number of hidden neurons. For the optimized NN architecture, we have utilized 17 molecular descriptors which were composed of compositional and topological descriptors in an input layer, and 2 hidden neurons in a hidden layer.
机译:我们已经利用神经网络(NN)研究来预测各种爆炸性分子的撞击敏感性。已从一个数据库中提取了234个爆炸性分子,并为每个爆炸性分子计算了39个分子描述符。通过检查七组不同的分子描述符并改变隐藏神经元的数量,可以实现NN结构的优化。对于优化的NN体系结构,我们在输入层中利用了17个分子描述符,这些分子描述符由组成和拓扑描述符组成,而在隐藏层中则使用了2个隐藏神经元。

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