反向半径加权及其 python 软件包 "IRWPy":增强地质解释的新地形信息插值法

IF 3.2 2区 地球科学 Q1 GEOLOGY
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引用次数: 0

摘要

地球化学取样的范围和数量本身就受到许多因素的制约,包括预算限制、分析成本和出入限制。这些制约因素导致取样网络的密度和规律性各不相同,将区域划分为取样区和未取样区。绘制连续的地球化学地图对地球化学勘探至关重要,其目的是识别地球化学异常,区分背景水平和异常,并确定成矿模式。因此,有必要对取样区域的数据进行内插,以估算未取样区域的数值。虽然存在多种插值模型,包括反距离加权法和各种克里金法,但反距离加权法通常用于二维地面建模,因为与克里金法不同,反距离加权法对边缘没有平滑效果。反距离加权法仅依赖于样本之间的水平欧几里得距离,忽略了地形等关键因素以及随之而来的稀释、运输和元素流动性等影响,因此在不同海拔高度的情况下效果较差。本研究引入了反半径加权法,这是一种新的插值技术,它结合了欧氏距离和海拔高度波动,因此也是毕达哥拉斯距离,有助于更好地进行地质解释。我们评估了反比半径加权法与反比距离加权法相比在三种不同流动性元素(砷--高流动性、铜--中等流动性、钡--几乎无流动性)中的功效,使用了不同的邻域数,并比较了三种不同的评估指标,即 R2、平均绝对误差和平均绝对百分比误差。通过评估生成地图的空间不确定性,并选择不确定性最小的配置作为最终地图,我们的分析表明,使用逆半径加权法,插值与实际值之间的相关性得到了改善。有了这一进步,逆哈弗辛半径加权法通过考虑海拔及其相关影响,克服了传统逆距离加权法的局限性,从而为在地球化学远景制图中进行更精确、更有意义的地球化学插值铺平了道路。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Inverse radius weighting and its python package “IRWPy”: A new topography-informed interpolation to enhance geological interpretations

Inverse radius weighting and its python package “IRWPy”: A new topography-informed interpolation to enhance geological interpretations

The extent and volume of geochemical sampling are inherently constrained by numerous factors, including budgetary limitations, analytical costs, and access restrictions. These constraints result in sampling networks that vary in density and regularity, dividing regions into sampled and unsampled areas. The creation of continuous geochemical maps is essential for geochemical prospectivity, which aims to identify geochemical anomalies, distinguish between background levels and anomalies, and define mineralization patterns. Therefore, it is necessary to interpolate data from sampled areas to estimate values in unsampled regions. Although several interpolation models exist, including Inverse Distance Weighting and various kriging methods, Inverse Distance Weighting is often used in two-dimensional ground modeling because, unlike kriging methods, Inverse Distance Weighting has no smoothing effect on edges. Inverse Distance Weighting’s reliance solely on horizontal Euclidean distances between samples overlooks critical factors such as topography and the ensuing effects on dilution, transportation, and element mobility, rendering it less effective over varied elevations. This study introduces Inverse Radius Weighting, a new interpolation technique that incorporates both Euclidean and elevation fluctuations, therefore Pythagorean distance, to help with better geological interpretations. We assessed the efficacy of Inverse Radius Weighting compared to Inverse Distance Weighting across three elements with varying mobility (Arsenic − highly mobile, Copper − moderately mobile, and Barium − nearly immobile), using different numbers of neighbors and by comparing three different evaluation measures, namely R2, Mean Absolute Error and Mean Absolute Percentage Error. By evaluating the spatial uncertainty of the generated maps and selecting the configurations with the least uncertainty as the final maps, our analysis reveals an improvement in correlation between interpolated and actual values with Inverse Haversine Radius Weighting. With this advancement, Inverse Haversine Radius Weighting overcomes the limitations of traditional Inverse Distance Weighting by accounting for elevation and its associated effects, thereby paving the way for more accurate and geochemically meaningful interpolation in geochemical prospectivity mapping.

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来源期刊
Ore Geology Reviews
Ore Geology Reviews 地学-地质学
CiteScore
6.50
自引率
27.30%
发文量
546
审稿时长
22.9 weeks
期刊介绍: Ore Geology Reviews aims to familiarize all earth scientists with recent advances in a number of interconnected disciplines related to the study of, and search for, ore deposits. The reviews range from brief to longer contributions, but the journal preferentially publishes manuscripts that fill the niche between the commonly shorter journal articles and the comprehensive book coverages, and thus has a special appeal to many authors and readers.
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