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Method for Optimal Arrangement of Soil Sampling Based on Neural Networks and Genetic Algorithms

机译:基于神经网络和遗传算法的土壤采样最优布置的方法

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In order to explore a new way of optimization for soil sampling layout, in this paper, spatial distribution of heavy metal concentrations which is based on RBF neural network fitting was studied by genetic algorithm, corresponding network structure and algorithm flow were constructed, in addition the network and algorithm parameters settings were analyzed and a sampling experiment using this method was conducted in an abandoned mine located in a county of Guangxi. The results of optimizing the layout point prove that the number of the sampling points can be reduced by about a half under the premise of meeting the fitting accuracy, this will greatly reduce the cost of sampling and analysis and the redundancy of the data, and is expected to promote the relevant application in soil composition analysis and other related fields.
机译:为了探讨土壤采样布局的新优化方式,本文通过遗传算法研究了基于RBF神经网络拟合的重金属浓度的空间分布,构建了相应的网络结构和算法流量,添加了分析了网络和算法参数设置,并在位于广西县的废弃矿区进行了采样实验。优化布局点的结果证明,在满足拟合精度的前提下,采样点的数量可以减少大约一半,这将大大降低采样和分析的成本以及数据的冗余,并且是预计促进土壤成分分析和其他相关领域的相关应用。

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