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Using a Genetic Algorithm to Select Parameters for a Neural Network That Predicts Aflatoxin Contmination in Peanuts

机译:使用遗传算法选择预测花生中黄曲霉毒素污染的神经网络的参数

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Aflatoxin contamination in crops is a problem of significant health and financial importance, so it would be useful to develop techniques to predict the levels prior to harvest. Backpropagation neural networks have been used in the past to model problems of this type, however development of networks poses the complex problem of setting values for architectural features and backpropagation parameters. Genetic algorithms have been used in prior efforts to locate parameters for backpropagation neural networks. This paper describes the development of a genetic algorithm/backpropagation neural network hybrid (GA/BPN) in which a genetic algorithm is used to find architectures and backpropagation parameter values simultaneously for a backpropagation neural network that predicts aflatoxin contamination levels in peanuts based on environmental data.
机译:作物中的黄曲霉毒素污染是重大健康和财务重要性的问题,因此开发技术可以预测收获前的水平是有用的。过去使用了BackPropagation神经网络以模拟这种类型的模型问题,但是网络的开发构成了架构特征和背部传播参数的设置值的复杂问题。遗传算法已在事先努力中用于定位反向译名神经网络的参数。本文介绍了遗传算法/反向衰减神经网络混合(GA / BPN)的发展,其中遗传算法用于寻找基于环境数据的花生毒素中的架构和背部agagation参数值,以便基于环境数据预测花生的黄曲霉毒素污染水平。

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