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首页> 外文期刊>Journal of Geology & Geophysics >Testing Artificial Neural Network (ANN) for Spatial Interpolation
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Testing Artificial Neural Network (ANN) for Spatial Interpolation

机译:测试用于空间插值的人工神经网络(ANN)

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The aim of this research is to test Artificial Neural Network (ANN) package in GRASS 6.4 software for spatial interpolation and to compare it with common interpolation techniques IDW and ordinary kriging. This package was also compared with neural networks packages nnet and neuralnet available in software R Project. The entire packages uses multi-layer perceptron (MLP) model trained with the back propagation algorithm. Evaluation methods were based mainly on RMSE. All the tests were done on artificial data created in R Project software; which simulated three surfaces with different characteristics. In order to find the best configuration for the multilayer perceptron many different settings of network were tested (test-and-trial method). The number of neurons in hidden layers was the main tested parameter. Results indicate that MLP model in the ANN module implemented in GRASS can be used for spatial interpolation purposes. However the resulting RMSE was higher than RMSE from IDW and ordinary kriging method and time consuming. When compared neural network packages in GRASS GIS and R Project; it is better to use the packages in R Project. Training of MLP was faster in this case and results were the same or slightly better.
机译:这项研究的目的是在GRASS 6.4软件中测试用于空间插值的人工神经网络(ANN)软件包,并将其与常用插值技术IDW和普通克里格法进行比较。还将该软件包与软件R Project中可用的神经网络软件包nnet和Neuronet进行了比较。整个程序包使用经过反向传播算法训练的多层感知器(MLP)模型。评估方法主要基于RMSE。所有测试都是在R Project软件中创建的人工数据上完成的;模拟了三个具有不同特征的表面。为了找到多层感知器的最佳配置,对网络的许多不同设置进行了测试(试验方法)。隐藏层中神经元的数量是主要测试参数。结果表明,GRASS中实现的ANN模块中的MLP模型可用于空间插值。但是,由此产生的RMSE高于IDW和常规克里金法的RMSE,并且比较耗时。在GRASS GIS和R Project中比较神经网络软件包时;最好在R Project中使用这些软件包。在这种情况下,MLP的训练更快,结果相同或稍好。

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