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首页> 外文期刊>Marine Georesources & Geotechnology >Using advanced soft computing techniques for regional shoreline geoid model estimation and evaluation
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Using advanced soft computing techniques for regional shoreline geoid model estimation and evaluation

机译:利用高级软计算技术进行区域海岸线大地区模型估算和评估

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摘要

This study aims at evaluating the global geoid model for a regional shoreline fitting using advanced soft computing techniques and global navigation satellite system/leveling measurements. Artificial neural networks, fuzzy logic, and least square support vector machine models are developed and used to fit the global geoid model for the north coastal Egyptian line. In addition, a novel estimation geoid model is designed and evaluated based on the latest global geoid models. The results of the three estimation models show that they can be used to correct the shoreline geoid model, in terms of root mean square error that ranges from 1.7 to 8.5 cm. Moreover, it is found that the least square vector machine model is a competitive approach with certain advantage in solving complex problems represented by missing data.
机译:本研究旨在使用先进的软计算技术和全球导航卫星系统/调平测量来评估区域海岸线拟合的全球性地平模型。 开发了人工神经网络,模糊逻辑和最小二乘支持向量机模型,并用于符合北部沿海埃及线的全球性大溪地模型。 此外,基于最新的全球性大地区模型设计和评估了新颖的估计大地形模型。 三种估计模型的结果表明,它们可用于纠正海岸线大线程模型,从1.7到8.5厘米的根均方误差。 此外,发现最小二乘矢量机模型是一种竞争方法,具有某些优势在解决缺失数据所代表的复杂问题方面。

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