Statistical Modelling of Vertical Soil Moisture Profile: Coupling of Memory and Forcing
Manali Pal,
Rajib Maity () and
Sayan Dey
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Manali Pal: Indian Institute of Technology Kharagpur
Rajib Maity: Indian Institute of Technology Kharagpur
Sayan Dey: Indian Institute of Technology Kharagpur
Water Resources Management: An International Journal, Published for the European Water Resources Association (EWRA), 2016, vol. 30, issue 6, No 7, 1973-1986
Abstract:
Abstract Information of Soil Moisture Content (SMC) at different depths i.e. vertical Soil Moisture (SM) profile is important as it influences several hydrological processes. In the era of microwave remote sensing, spatial distribution of soil moisture information can be retrieved from satellite data for large basins. However, satellite data can provide only the surface (~0–10 cm) soil moisture information. In this study, a methodological framework is proposed to estimate the vertical SM profile knowing the information of SMC at surface layer. The approach is developed by coupling the memory component of SMC within a layer and the forcing component from soil layer lying above by an Auto-Regressive model with an exogenous input (ARX) where forcing component is the exogenous input. The study highlights the mutual reliance between SMC at different depths at a given location assuming the ground water table is much below the study domain. The methodology is demonstrated for three depths: 25, 50 and 80 cm using SMC values of 10 cm depth. Model performance is promising for all three depths. It is further observed that forcing is predominant than memory for near surface layers than deeper layers. With increase in depth, contribution of SM memory increases and forcing dissipates. Potential of the proposed methodology shows some promise to integrate satellite estimated surface soil moisture maps to prepare a fine resolution, 3-dimensional soil moisture profile for large areas, which is kept as future scope of this study.
Keywords: Soil moisture (SM); Vertical Soil Moisture Profile; Memory; Forcing; Auto-Regressive Model with Exogenous Input (ARX) (search for similar items in EconPapers)
Date: 2016
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DOI: 10.1007/s11269-016-1263-4
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