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首页> 外文期刊>Journal of geophysical research. Planets >A probabilistic approach to remote compositional analysis of planetary surfaces
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A probabilistic approach to remote compositional analysis of planetary surfaces

机译:行星表面的远程组成分析的概率方法

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摘要

Reflected light from planetary surfaces provides information, including mineral/ice compositions and grain sizes, by study of albedo and absorption features as a function of wavelength. However, deconvolving the compositional signal in spectra is complicated by the nonuniqueness of the inverse problem. Trade-offs between mineral abundances and grain sizes in setting reflectance, instrument noise, and systematic errors in the forward model are potential sources of uncertainty, which are often unquantified. Here we adopt a Bayesian implementation of the Hapke model to determine sets of acceptable-fit mineral assemblages, as opposed to single best fit solutions. We quantify errors and uncertainties in mineral abundances and grain sizes that arise from instrument noise, compositional end members, optical constants, and systematic forward model errors for two suites of ternary mixtures (olivine-enstatite-anorthite and olivine-nontronite-basaltic glass) in a series of six experiments in the visible-shortwave infrared (VSWIR) wavelength range. We show that grain sizes are generally poorly constrained from VSWIR spectroscopy. Abundance and grain size trade-offs lead to typical abundance errors of ≤1 wt % (occasionally up to ~5 wt %), while ~3% noise in the data increases errors by up to ~2 wt %. Systematic errors further increase inaccuracies by a factor of 4. Finally, phases with low spectral contrast or inaccurate optical constants can further increase errors. Overall, typical errors in abundance are <10%, but sometimes significantly increase for specific mixtures, prone to abundance/grain-size trade-offs that lead to high unmixing uncertainties. These results highlight the need for probabilistic approaches to remote determination of planetary surface composition.
机译:通过研究反照率和吸收特征,来自行星表面的反射光提供了信息,包括矿物/冰成分和晶粒尺寸。然而,光谱中的组成信号的反向问题是复杂的。矿物丰度和谷物大小之间的权衡在设定反射率,仪器噪声和系统错误中是不确定性的潜在来源,这些来源通常是没有量化的。在这里,我们采用了HAPKE模型的贝叶斯实施,以确定可接受的合适矿产组合集,而不是单个最佳拟合解决方案。我们量化了由仪器噪声,组成端构件,光学常数以及两种三元混合物套件(橄榄石 - 源自史蒂特 - 替代矿物矿石和橄榄石 - 非硝酸盐 - 盐酸盐液玻璃)中产生的矿物丰度和谷物尺寸的错误和不确定性。在可见的转换红外(VSWIR)波长范围内进行了一系列六个实验。我们表明,从VSWIR光谱法受到的谷物尺寸通常受到限制。丰度和晶粒尺寸的权衡导致典型的丰度误差≤1wt%(偶尔〜5 wt%),而数据中〜3%的噪声会增加误差高达〜2 wt%。系统误差将不准确性进一步增加4倍。最后,具有低光谱对比度或不准确的光学常数的阶段可以进一步增加误差。总体而言,典型的丰度错误<10%,但特定混合物有时会显着增加,容易出现丰度/晶粒尺寸的权衡,从而导致高度混合不确定性。这些结果突出了对行星表面组成远程确定概率方法的需求。

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