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Parameter conditioning with a noisy Monte Carlo genetic algorithm for estimating effective soil hydraulic properties from space

机译:用噪声蒙特卡洛遗传算法进行参数调节以从空间估算有效土壤水力特性

摘要

The estimation of effective soil hydraulic parameters and their uncertainties is a critical step in all large-scale hydrologic and climatic model applications. Here a scale-dependent (top-down) parameter estimation (inverse modeling) scheme called the noisy Monte Carlo genetic algorithm (NMCGA) was developed and tested for estimating these effective soil hydraulic parameters and their uncertainties. We tested our method using three case studies involving a synthetic pixel (pure and mixed) where all modeling conditions are known, and with actual airborne remote sensing (RS) footprints and a satellite RS footprint. In the synthetic case studies under pure (one soil texture) and mixed-pixel (multiple soil textures) conditions, NMCGA performed well in estimating the effective soil hydraulic parameters even with pixel complexities contributed by various soil types and land management practices (rain-fed/irrigated). With the airborne and satellite remote sensing cases, NMCGA also performed well for estimating effective soil hydraulic properties so that when applied in forward stochastic simulation modeling it can mimic large-scale soil moisture dynamics. The results also suggest a possible scaling down of the effective soil water retention curve (h) at the larger satellite remote sensing pixel compared with the airborne remote sensing pixel. However, it did not generally imply that all effective soil hydraulic parameters should scale down like the soil water retention curve. The reduction of the soil hydraulic parameters was most profound in the saturated soil moisture content ( sat) as we relaxed progressively the soil hydraulic parameter search spaces in our satellite remote sensing studies. Overall, the NMCGA framework was found to be very promising in the inverse modeling of remotely sensed near-surface soil moisture for estimating the effective soil hydraulic parameters and their uncertainties at the remote sensing footprint/climate model grid.
机译:在所有大规模水文和气候模型应用中,有效土壤水力参数及其不确定性的估算是至关重要的一步。这里开发了一种称为噪声的蒙特卡洛遗传算法(NMCGA)的比例相关(自上而下)的参数估计(逆建模)方案,并进行了测试,以估计这些有效的土壤水力参数及其不确定性。我们使用三个案例研究测试了我们的方法,这些案例研究包括已知所有建模条件的合成像素(纯像素和混合像素),以及实际的机载遥感(RS)足迹和卫星RS足迹。在纯(一种土壤质地)和混合像素(多种土壤质地)条件下的综合案例研究中,NMCGA在估算有效土壤水力参数方面表现出色,即使由于各种土壤类型和土地管理实践而造成的像素复杂性(雨养/灌溉)。在机载和卫星遥感的情况下,NMCGA在估计有效土壤水力特性方面也表现出色,因此,在进行前向随机模拟建模时,它可以模拟大规模土壤水分动力学。结果还表明,与机载遥感像素相比,较大的卫星遥感像素处的有效土壤水分保持曲线(h)可能会缩小。但是,这通常并不意味着所有有效的土壤水力参数都应像土壤保水曲线一样按比例缩小。随着我们在卫星遥感研究中逐步放宽土壤水力参数搜索空间,土壤水力参数的减少在饱和土壤水分含量(饱和度)方面最为明显。总体而言,NMCGA框架在遥感近地表土壤水分的反演模型中非常有用,可用于估算有效足迹的水力参数及其在遥感足迹/气候模型网格中的不确定性。

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