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首页> 外文期刊>Journal of geophysical research. Planets >Identification of volcanic rootless cones, ice mounds, and impact craters on Earth and Mars: Using spatial distribution as a remote sensing tool
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Identification of volcanic rootless cones, ice mounds, and impact craters on Earth and Mars: Using spatial distribution as a remote sensing tool

机译:识别地球和火星上的火山无根锥体,冰丘和撞击坑:使用空间分布作为遥感工具

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摘要

This study aims to quantify the spatial distribution of terrestrial volcanic rootless cones and ice mounds for the purpose of identifying analogous Martian features. Using a nearest neighbor (NN) methodology, we use the statistics R (ratio of the mean NN distance to that expected from a random distribution) and c (a measure of departure from randomness). We interpret R as a measure of clustering and as a diagnostic for discriminating feature types. All terrestrial groups of rootless cones and ice mounds are clustered (R: 0.51–0.94) relative to a random distribution. Applying this same methodology to Martian feature fields of unknown origin similarly yields R of 0.57–0.93, indicating that their spatial distributions are consistent with both ice mound or rootless cone origins, but not impact craters. Each Martian impact crater group has R ≥ 1.00 (i.e., the craters are spaced at least as far apart as expected at random). Similar degrees of clustering preclude discrimination between rootless cones and ice mounds based solely on R values. However, the distribution of pairwise NN distances in each feature field shows marked differences between these two feature types in skewness and kurtosis. Terrestrial ice mounds (skewness: 1.17–1.99, kurtosis: 0.80–4.91) tend to have more skewed and leptokurtic distributions than those of rootless cones (skewness: 0.54–1.35, kurtosis: ?0.53–1.13). Thus NN analysis can be a powerful tool for distinguishing geological features such as rootless cones, ice mounds, and impact craters, particularly when degradation or modification precludes identification based on morphology alone.
机译:这项研究旨在量化陆上火山无根锥体和冰丘的空间分布,以识别类似的火星特征。使用最近邻居(NN)方法,我们使用统计量R(平均NN距离与预期的随机分布之比)和c(衡量随机性的度量)。我们将R解释为聚类的量度,并作为区分特征类型的诊断。相对于随机分布,所有无根锥体和冰丘的所有陆地群都聚集在一起(R:0.51-0.94)。对未知来源的火星特征场采用相同的方法,其R值类似地为0.57–0.93,这表明它们的空间分布与冰丘或无根圆锥体的起源都一致,但对撞击坑没有影响。每个火星撞击坑组的R≥1.00(即,陨石坑的间距至少应与随机预期的间距至少相等)。相似程度的聚类可避免仅基于R值来区分无根圆锥和冰丘。但是,每个特征字段中成对NN距离的分布显示出这两种特征类型之间在偏度和峰度上的明显差异。陆地冰丘(偏度:1.17-1.99,峰度:0.80-4.91)倾向于比无根圆锥体偏斜(偏度:0.54-1.35,峰度:?0.53-1.13)分布更多。因此,NN分析可以成为区分地质特征(如无根圆锥,冰丘和撞击坑)的强大工具,尤其是当降解或修饰无法单独根据形态进行鉴定时。

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