遥感反演蒸散发的日尺度扩展方法研究进展
Temporal upscaling methods for daily evapotranspiration estimation from remotely sensed instantaneous observations
- 2019年23卷第5期 页码:813-830
纸质出版日期: 2019-9 ,
录用日期: 2018-1-29
DOI: 10.11834/jrs.20197434
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纸质出版日期: 2019-9 ,
录用日期: 2018-1-29
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王桐, 唐荣林, 李召良, 姜亚珍, 刘萌, 唐伯惠, 吴骅. 2019. 遥感反演蒸散发的日尺度扩展方法研究进展. 遥感学报, 23(5): 813–830
Wang T, Tang R L, Li Z L, Jiang Y Z, Liu M, Tang B H and Wu H. 2019. Temporal upscaling methods for daily evapotranspiration estimation from remotely sensed instantaneous observations. Journal of Remote Sensing, 23(5): 813–830
遥感技术能够提供卫星过境时刻地表参量的瞬时值,进而通过模型构建可反演得到瞬时蒸散发。相对于瞬时蒸散发,日尺度蒸散发在实际生产生活中具有更重要的应用价值。本文系统地总结分析了遥感反演瞬时蒸散发的代表性日尺度扩展方法,包括蒸发比不变法、解耦因子不变法、辐射能量比不变法、参考蒸发比不变法、地表阻抗不变法和数据同化法,并对各方法的基本原理、估算精度、适用性等进行了对比分析。在此基础上,进一步综述了日尺度扩展方法存在的不确定性和主要问题,包括扩展方法本身误差、云覆盖、气象数据获取、夜间蒸散发估算、遥感反演同扩展误差累积及真实性检验等,并指出今后应从加强有云天及夜间蒸散发扩展机理和方法等方面的研究来提升瞬时蒸散发日尺度扩展精度。
Evapotranspiration (ET)
including evaporation from soil surface and vegetation transpiration
is an important component for water and energy balances on the Earth’s surface. The quantification of ET at daily or long time scales is significant in modeling the global hydrological cycle
studying climate change
and managing water resources. However
current remote sensing-based ET models can generally only provide snapshots of ET at the time of a satellite overpass and do not satisfy the expectations of hydrologists
irrigation engineers
and water resources managers concerned with practical applications. In this paper
a comprehensive overview of the methods for estimating daily ET from remotely sensed instantaneous observations is presented. These methods include the constant upscaling factor methods (constant evaporative fraction
constant decoupling factor
radiation-energy derived
constant reference evaporative fraction
and constant surface resistance) and data assimilation method. The commonly used approaches are compared with a discussion regarding the main merits
limitations
and accuracies. The problems and uncertainties of the temporal upscaling of ET
including the evaluation of model applicability
the daily variation of cloud
the spatial interpolation accuracy of meteorological parameters
nighttime ET
the uncertainties from the temporal upscaling methods and ET models
and the approaches of accuracy assessment
are discussed. To improve the accuracy of daily ET estimation from remotely sensed instantaneous observations
several suggestions for future research are proposed as follows: First
research on the continuous surface meteorological data at remote sensing image pixel scale should be enhanced because large-area applications of the temporal upscaling methods are hampered by the lack of appropriate ground-based observations and the spatial heterogeneity causes low accuracy of the spatial interpolation methods of meteorological parameters. Second
the accuracy of ET estimation using remotely sensed data can significantly affect the accuracy of the temporal upscaling of ET. As ET estimation models have not been perfected yet
the methods for the temporal upscaling of ET can be combined with those for ET estimation to reduce the influence of accumulated errors. Third
to weaken the influence of unstable upscaling factor during cloudy days
research on the relation between the constant upscaling factor and cloud (e.g.
the appearing time
thickness
and duration of cloud) should be enhanced. Therefore
developing a robust method for the temporal upscaling of ET during cloudy days is vital. Fourth
research on the physical mechanisms of each commonly used method and development of an improved upscaling factor that can be independent of the variation in atmospheric variables and can incorporate the horizontal advection are essential. Fifth
numerous methods for the temporal upscaling of ET can only accurately provide daytime ET
whereas the daily ET is closely concerned with practical applications. Thus
research regarding the temporal upscaling methods should be enhanced in consideration of nighttime ET and its physical mechanisms. Finally
enhancing the research on the new technology and methods of accuracy assessment for ET can weaken the uncertainty of verification.
遥感蒸散发时间尺度扩展方法不确定性分析
remote sensingevapotranspirationtemporal scaleupscaling methodsuncertainty analysis
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