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在土地表面建模框架中使用非传统和人类活动数据集评估灌溉物理学

Assessment of Irrigation Physics in a Land Surface Modeling Framework using Non-Traditional and Human-Practice Datasets.

作者信息

Lawston Patricia M, Santanello Joseph A, Franz Trenton E, Rodell Matthew

机构信息

Earth System Science Interdisciplinary Center, University of Maryland, College Park, MD 20740, USA.

Hydrological Sciences Laboratory, NASA Goddard Space Flight Center, Greenbelt, MD 20771, USA.

出版信息

Hydrol Earth Syst Sci. 2017;21(6):2953-2966. doi: 10.5194/hess-21-2953-2017. Epub 2017 Jun 16.

Abstract

Irrigation increases soil moisture, which in turn controls water and energy fluxes from the land surface to the planetary boundary layer and determines plant stress and productivity. Therefore, developing a realistic representation of irrigation is critical to understanding land-atmosphere interactions in agricultural areas. Irrigation parameterizations are becoming more common in land surface models and are growing in sophistication, but there is difficulty in assessing the realism of these schemes, due to limited observations (e.g., soil moisture, evapotranspiration) and scant reporting of irrigation timing and quantity. This study uses the Noah land surface model run at high resolution within NASA's Land Information System to assess the physics of a sprinkler irrigation simulation scheme and model sensitivity to choice of irrigation intensity and greenness fraction datasets over a small, high resolution domain in Nebraska. Differences between experiments are small at the interannual scale but become more apparent at seasonal and daily time scales. In addition, this study uses point and gridded soil moisture observations from fixed and roving Cosmic Ray Neutron Probes and co-located human practice data to evaluate the realism of irrigation amounts and soil moisture impacts simulated by the model. Results show that field-scale heterogeneity resulting from the individual actions of farmers is not captured by the model and the amount of irrigation applied by the model exceeds that applied at the two irrigated fields. However, the seasonal timing of irrigation and soil moisture contrasts between irrigated and non-irrigated areas are simulated well by the model. Overall, the results underscore the necessity of both high-quality meteorological forcing data and proper representation of irrigation for accurate simulation of water and energy states and fluxes over cropland.

摘要

灌溉增加土壤湿度,进而控制从陆地表面到行星边界层的水和能量通量,并决定植物胁迫和生产力。因此,建立一个现实的灌溉模型对于理解农业地区的陆气相互作用至关重要。灌溉参数化在陆面模型中越来越普遍,且日益复杂,但由于观测数据有限(如土壤湿度、蒸散量)以及灌溉时间和水量的报告较少,评估这些方案的现实性存在困难。本研究使用美国国家航空航天局陆地信息系统中以高分辨率运行的诺亚陆面模型,在内布拉斯加州一个小的高分辨率区域评估喷灌模拟方案的物理过程以及模型对灌溉强度和植被覆盖度数据集选择的敏感性。不同实验之间的差异在年际尺度上较小,但在季节和日时间尺度上变得更加明显。此外,本研究使用来自固定和移动宇宙射线中子探测器的点和网格化土壤湿度观测数据以及并置的人类实践数据,来评估模型模拟的灌溉量和土壤湿度影响的现实性。结果表明,模型没有捕捉到农民个体行为导致的田间尺度异质性,且模型施加的灌溉量超过了两个灌溉田的实际灌溉量。然而,模型较好地模拟了灌溉的季节时间以及灌溉区和非灌溉区之间的土壤湿度差异。总体而言,结果强调了高质量气象强迫数据以及对灌溉进行恰当表示对于准确模拟农田水和能量状态及通量的必要性。

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引用本文的文献

本文引用的文献

1
Empirical evidence for a recent slowdown in irrigation-induced cooling.近期灌溉引起的降温放缓的实证证据。
Proc Natl Acad Sci U S A. 2007 Aug 21;104(34):13582-7. doi: 10.1073/pnas.0700144104. Epub 2007 Aug 14.

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