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Training Algorithms for Artificial Neural Network in Predicting of the Content of Chemical Elements in the Upper Soil Layer

机译:人工神经网络预测上层土壤中化学元素含量的培训算法

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Models based on Artificial Neural Networks (ANN) in recent years are increasingly being used in environmental studies. Among the many types of ANN, the network type Multilayer Perceptron (MLP) has become most widespread. Such networks are universal, simple, and suitable for most tasks. The main problem when modelling using MLP is the choice of the learning algorithm. In this paper, we compared several learning algorithms: Levenberg-Marquart (LM), LM with Bayes regularization (BR), gradient descent (GD), and GD with the speed parameter setting (GDA). The data for modelling were taken from the results of the soil screening of an urbanized area. The spatial distribution of the chemical element Chromium (Cr) in the surface layer of the soil was simulated. The structure of the MLP network was chosen using computer simulations based on minimization of the root mean squared error (RMSE). The model using the LM training algorithm showed the best accuracy.
机译:基于人工神经网络(ANN)的模型越来越多地用于环境研究。在许多类型的ANN中,网络型多层erceptron(MLP)已变得最普遍。这些网络是通用的,简单,适用于大多数任务。使用MLP建模时的主要问题是学习算法的选择。在本文中,我们比较了几个学习算法:Levenberg-Marquart(LM),LM,LM,带贝叶斯正则化(BR),梯度下降(GD)和GD,具有速度参数设置(GDA)。建模数据取决于城市化区域的土壤筛选结果。模拟了土壤的表面层中化学元素铬(Cr)的空间分布。选择MLP网络的结构,使用计算机仿真基于最小化均方根(RMSE)。使用LM训练算法的模型显示了最佳精度。

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