首页> 外文期刊>Journal of geophysical research. Planets >Partial least squares methods for spectrally estimating lunar soil FeO abundance: A stratified approach to revealing nonlinear effect and qualitative interpretation
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Partial least squares methods for spectrally estimating lunar soil FeO abundance: A stratified approach to revealing nonlinear effect and qualitative interpretation

机译:光谱估计月土壤FeO丰度的偏最小二乘方法:揭示非线性效应和定性解释的分层方法

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Partial least squares (PLS) regressions were applied to lunar highland and mare soil data characterized by the Lunar Soil Characterization Consortium (LSCC) for spectral estimation of the abundance of lunar soil chemical constituents FeO and Al2O3. The LSCC data set was split into a number of subsets including the total highland, Apollo 16, Apollo 14, and total mare soils, and then PLS was applied to each to investigate the effect of nonlinearity on the performance of the PLS method. The weight-loading vectors resulting from PLS were analyzed to identify mineral species responsible for spectral estimation of the soil chemicals. The results from PLS modeling indicate that the PLS performance depends on the correlation of constituents of interest to their major mineral carriers, and the Apollo 16 soils are responsible for the large errors of FeO and Al2O3 estimates when the soils were modeled along with other types of soils. These large errors are primarily attributed to the degraded correlation FeO to pyroxene for the relatively mature Apollo 16 soils as a result of space weathering and secondary to the interference of olivine. PLS consistently yields very accurate fits to the two soil chemicals when applied to mare soils. Although Al2O3 has no spectrally diagnostic characteristics, this chemical can be predicted for all subset data by PLS modeling at high accuracies because of its correlation to FeO. This correlation is reflected in the symmetry of the PLS weight-loading vectors for FeO and Al2O3, which prove to be very useful for qualitative interpretation of the PLS results. However, this qualitative interpretation of PLS modeling cannot be achieved using principal component regression loading vectors.
机译:将偏最小二乘(PLS)回归应用于以月球土壤表征协会(LSCC)为特征的月球高地和母马土壤数据,以光谱估计月球土壤化学成分FeO和Al2O3的含量。将LSCC数据集分为多个子集,包括总高地,阿波罗16,阿波罗14和总母马土壤,然后将PLS应用于每个子集以研究非线性对PLS方法性能的影响。分析了由PLS产生的重载向量,以识别负责土壤化学物质光谱估计的矿物质。 PLS建模的结果表明,PLS的性能取决于目标成分与其主要矿物载体的相关性,当与其他类型的土壤一起建模时,Apollo 16土壤是FeO和Al2O3估算值的较大误差的原因。土壤。这些较大的误差主要归因于空间风化的结果,以及相对于橄榄石的干扰,相对成熟的Apollo 16土壤的FeO与辉石的相关性降低。当应用于母马土壤时,PLS始终能对两种土壤化学物质产生非常精确的拟合。尽管Al2O3没有光谱诊断特征,但是由于其与FeO的相关性,可以通过PLS建模以所有子集数据预测该化学物质。这种相关性反映在FeO和Al2O3的PLS重量加载矢量的对称性上,这对于定性解释PLS结果非常有用。但是,使用主成分回归加载向量无法实现对PLS建模的定性解释。

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