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The Use of an Artificial Neural Network to Process Hydrographic Big Data during Surface Modeling ?

机译:在曲面建模过程中使用人工神经网络处理水文大数据?

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摘要

At the present time, spatial data are often acquired using varied remote sensing sensors and systems, which produce big data sets. One significant product from these data is a digital model of geographical surfaces, including the surface of the sea floor. To improve data processing, presentation, and management, it is often indispensable to reduce the number of data points. This paper presents research regarding the application of artificial neural networks to bathymetric data reductions. This research considers results from radial networks and self-organizing Kohonen networks. During reconstructions of the seabed model, the results show that neural networks with fewer hidden neurons than the number of data points can replicate the original data set, while the Kohonen network can be used for clustering during big geodata reduction. Practical implementations of neural networks capable of creating surface models and reducing bathymetric data are presented.
机译:目前,经常使用各种遥感传感器和系统来获取空间数据,从而产生大数据集。这些数据的一项重要产品是地理表面(包括海床表面)的数字模型。为了改善数据处理,表示和管理,减少数据点的数量通常是必不可少的。本文介绍了有关将人工神经网络应用于测深数据约简的研究。本研究考虑了径向网络和自组织Kohonen网络的结果。在重建海床模型的过程中,结果表明,隐藏神经元少于数据点数量的神经网络可以复制原始数据集,而Kohonen网络可以在大地理数据缩减期间用于聚类。提出了能够创建表面模型并减少测深数据的神经网络的实际实现。

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