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Critical analysis of the thermal inertia approach to map soil water content under sparse vegetation and changeable sky conditions

机译:稀疏植被和多变天空条件下测绘土壤水分的热惯性方法的临界分析

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The paper reports a critical analysis of the thermal inertia approach to map surface soil water content on bare and sparsely vegetated soils by means of remotely sensed data. The study area is an experimental area located in Barrax (Spain). Field data were acquired within the Barrax 2011 research project. AHS airborne images including VIS/NIR and TIR bands were acquired both day and night time by the INTA (Instituto Nacional de Tecnica Aeroespacial) between the 11~(th) and 13~(rd) of June 2011. Images cover a corn pivot surrounded by bare soil, where a set of in situ data have been collected previously and simultaneously to overpasses. To validate remotely sensed estimations, a preliminary proximity sensing set up has been arranged, measuring spectra and surface temperatures on transects by means of ASD hand-held spectroradiometer and an Everest Interscience radiometric thermometer respectively. These data were collected on two transects: the first one on bare soil and the second from bare to sparsely vegetated soil; soil water content in both transects ranged approximately between field and saturation values. Furthermore thermal inertia was measured using a KD2Pro probe, and surface water content of soil was measured using FDR and TDR probes. This ground dataset was used: 1) to verify if the thermal inertia method can be applied to map water content also on soil covered by sparse vegetation, and 2) to quantify a correction factor of the downwelling shortwave radiation taking into account sky cloudiness effects on thermal inertia assessment. The experiment tests both Xue and Cracknell approximation to retrieve the thermal inertia from a dumped value of the phase difference and the three-temperature approach of Sobrino to estimate the phase difference spatial distribution. Both methods were then applied on the remotely sensed airborne images collected during the following days, in order to obtain the spatial distribution of the surface soil moisture on bare soils and sparse vegetation coverage. Results verify that the thermal inertia method can be applied on sparsely vegetated soil characterized by fractional cover up to ~0.25 (maximum value within this experiment); a lumped value of the phase difference allows a good estimate of the thermal inertia, whereas the comparison with the three-temperature approach did not give conclusive responses because ground radiometric temperatures were not acquired in optimal conditions. Results also show that clear sky only at the time of the remote sensing acquisitions is not a sufficient condition to apply the thermal inertia method. A corrective coefficient taking into account the actual sky cloudiness throughout the day allows accurate estimates of the spatial distribution of the thermal inertia (r~2 ~ 0.9) and soil water content (r~2 ~ 0.7).
机译:该论文报告了对热惯性方法的关键分析,该方法利用遥感数据绘制了裸露和稀疏植被土壤上的表层土壤水分图。研究区域是位于Barrax(西班牙)的实验区域。现场数据是在Barrax 2011研究项目中获得的。包括VIS / NIR和TIR波段在内的AHS机载图像是在2011年6月11日至13日之间由INTA(国家航空航天研究所)获取的。裸露的土壤,以前并同时收集了一组现场数据到立交桥。为了验证遥感估算,已安排了初步的接近感应装置,分别通过ASD手持式光谱仪和Everest Interscience辐射温度计测量样线上的光谱和表面温度。这些数据是通过两个样点收集的:第一个样点是在裸露的土壤上,第二个样例是从裸露的土壤到稀疏的植被;两个样带的土壤含水量大约在田间和饱和度之间。此外,使用KD2Pro探针测量热惯性,并使用FDR和TDR探针测量土壤的表面含水量。使用此地面数据集:1)验证是否可以将热惯性方法用于在稀疏植被覆盖的土壤上绘制水含量图,以及2)考虑到天空的阴天影响来量化下降流短波辐射的校正因子。热惯性评估。实验对Xue和Cracknell逼近进行了测试,以从相差的转储值中检索热惯性,并使用Sobrino的三温法估算相差的空间分布。然后将这两种方法应用于随后几天收集的遥感机载图像,以获取裸露土壤上表层土壤水分的空间分布和稀疏的植被覆盖率。结果证明,热惯性法可用于稀疏植被的土壤,其覆盖率可达0.25左右(本实验中的最大值);相位差的集总值可以很好地估算热惯性,而与三温方法进行比较则无法给出确定的响应,因为在最佳条件下无法获得地面辐射温度。结果还表明,仅在进行遥感采集时才有晴朗的天空并不是应用热惯性方法的充分条件。校正系数考虑了整天的实际天空多云状况,可以准确估算热惯性(r〜2〜0.9)和土壤含水量(r〜2〜0.7)的空间分布。

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