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Combined genetic K-means and radial basis function neural network technique for classifying and predicting soil moisture

机译:遗传K-均值和径向基函数神经网络相结合的土壤水分分类与预测

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Abstract: A combined technique of genetic k-means and radial basis function neural network (RBFNN) is used in this study to process remote sensing data and classify soil basing on its moisture content. Radial basis function neural network is used for its advantages of rapid training, generality and simplicity over feed-forward backpropagation neural network. The genetic k-means clustering is used to choose the initial radial basis centers and widths for the RBFNN. An attempt is also made to study the performance of the RBFNN with the centers and widths chosen using the classical k-means clustering. The results showed that genetic algorithms give global optimal centers and widths for the RBFNN. The results also indicated that this hybrid technique can be used in soil moisture classification and prediction. !11
机译:摘要:本研究采用遗传k均值和径向基函数神经网络(RBFNN)相结合的技术来处理遥感数据并根据其含水量对土壤进行分类。与前馈反向传播神经网络相比,径向基函数神经网络具有快速训练,通用性和简单性的优点。遗传k均值聚类用于为RBFNN选择初始径向基础中心和宽度。还尝试使用经典k均值聚类选择中心和宽度来研究RBFNN的性能。结果表明,遗传算法为RBFNN提供了全局最优中心和宽度。结果还表明该混合技术可用于土壤水分的分类和预测。 !11

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