THE EFFECT OF THE NUMBER OF INPUTS ON THE SPATIAL INTERPOLATION OF ELEVATION DATA USING IDW AND ANNS

Q4 Earth and Planetary Sciences
S. Respati, T. Sulistyo
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引用次数: 0

Abstract

Spatial interpolation is a required method to generate a continuous surface such as Digital Elevation Model (DEM) because field investigation for most of the surface’s part is time-consuming with a high demand in both human resources and monetory cost. One of the most used deterministic interpolation models is Inverse Distance Weighting (IDW) model. The model takes several neighbors’ information, and the weights are constructed based on the distance between the interpolated point and the neighbors’ points. From the machine learning model, Artificial Neural Networks (ANNs) model has also been used for spatial interpolation. The input of ANNs model is also one of the parameters that need to be defined when building the model. This paper evaluated the effect of the number of inputs (neighbors) on the elevation interpolation accuracy. We applied IDW and ANNs to interpolate the elevation of Balikpapan City, Indonesia. The results show that the accuracy increases significantly when the number of inputs is between one and three. However, after three inputs, additional input would not change the accuracy significantly. ANNs performed better than IDW. For three or more inputs, the MAE of ANNs and IDW interpolations are below 1.1 and around 2 meters, respectively.
输入数对使用idw和ann进行高程数据空间插值的影响
空间插值是生成数字高程模型(Digital Elevation Model, DEM)等连续曲面的必要方法,因为对大部分曲面进行实地调查耗时长,需要耗费大量人力和财力。最常用的确定性插值模型之一是逆距离加权(IDW)模型。该模型采用多个邻点信息,并根据插值点与邻点之间的距离来构建权重。在机器学习模型的基础上,人工神经网络(ANNs)模型也被用于空间插值。人工神经网络模型的输入也是构建模型时需要定义的参数之一。本文评价了输入(邻域)数量对高程插值精度的影响。我们使用IDW和ann对印度尼西亚巴里巴潘市的海拔进行插值。结果表明,当输入数在1 ~ 3个之间时,准确率显著提高。然而,在三次输入后,额外的输入不会显著改变精度。ann的性能优于IDW。对于3个或更多输入,ann和IDW插值的MAE分别在1.1以下和2米左右。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Geodeziya i Kartografiya
Geodeziya i Kartografiya Earth and Planetary Sciences-Earth-Surface Processes
CiteScore
0.60
自引率
0.00%
发文量
73
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