Relationships between Soil Moisture and Visible–NIR Soil Reflectance: A Review Presenting New Analyses and Data to Fill the Gaps

Savannah L. McGuirk, I. Cairns
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Abstract

The ability to precisely monitor soil moisture is highly valuable in industries including agriculture and civil engineering. As soil moisture is a spatially erratic and temporally dynamic variable, rapid, cost-effective, widely applicable, and practical techniques are required for monitoring soil moisture at all scales. If a consistent numerical relationship between soil moisture content and soil reflectance can be identified, then soil spectroscopic models may be used to efficiently predict soil moisture content from proximal soil reflectance and/or remotely sensed data. Previous studies have identified a general decrease in visible–NIR soil reflectance as soil moisture content increases, however, the strength, best wavelengths for modelling, and domain of the relationship remain unclear from the current literature. After reviewing the relevant literature and the molecular interactions between water and light in the visible–NIR (400–2500 nm) range, this review presents new analyses and interprets new 1 nm resolution soil reflectance data, collected at >20 moisture levels for ten soil samples. These data are compared to the results of other published studies, extending these as required for further interpretation. Analyses of this new high-resolution dataset demonstrate that linear models are sufficient to characterise the relationship between soil moisture and reflectance in many cases, but relationships are typically exponential. Equations generalising the relationship between soil MC and reflectance are presented for a number of wavelength ranges and combinations. Guidance for the adjustment of these equations to suit other soil types is also provided, to allow others to apply the solutions presented here and to predict soil moisture content in a much wider range of soils.
土壤水分与可见光-近红外土壤反射率之间的关系:提出新分析和数据以填补空白的综述
精确监测土壤湿度的能力在农业和土木工程等行业中具有极高的价值。由于土壤水分是一个空间上不稳定、时间上动态变化的变量,因此需要快速、经济、广泛适用和实用的技术来监测各种尺度的土壤水分。如果能够确定土壤水分含量与土壤反射率之间的一致数值关系,那么土壤光谱模型就可以用来根据近距离土壤反射率和/或遥感数据有效预测土壤水分含量。以往的研究发现,随着土壤含水量的增加,可见光-近红外土壤反射率会普遍下降,但这种关系的强度、建模的最佳波长和领域在目前的文献中仍不清楚。在回顾了相关文献以及可见-近红外(400-2500 nm)范围内水与光之间的分子相互作用之后,本综述介绍了新的分析方法,并解释了在大于 20 个湿度水平下采集的 10 个土壤样本的 1 nm 分辨率土壤反射率新数据。这些数据与其他已发表的研究结果进行了比较,并根据需要对这些数据作了进一步解释。对这一新的高分辨率数据集的分析表明,在许多情况下,线性模型足以描述土壤湿度与反射率之间的关系,但两者之间的关系通常是指数关系。针对一些波长范围和组合,提出了概括土壤 MC 与反射率之间关系的方程。此外,还提供了调整这些方程以适应其他土壤类型的指导,以便其他人能够应用此处提供的解决方案,并预测更广泛土壤中的土壤水分含量。
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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