2014
DOI: 10.5194/hess-18-3095-2014
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Using similarity of soil texture and hydroclimate to enhance soil moisture estimation

Abstract: Abstract. Estimating soil moisture typically involves calibrating models to sparse networks of in situ sensors, which introduces considerable error in locations where sensors are not available. We address this issue by calibrating parameters of a parsimonious soil moisture model, which requires only antecedent precipitation information, at gauged locations and then extrapolating these values to ungauged locations via a hydroclimatic classification system. Fifteen sites within the Soil Climate Analysis Network … Show more

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Cited by 14 publications
(15 citation statements)
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“…[] and subsequently updated by Pan [], is the diagnostic soil moisture equation. As a simple, lumped‐bucket model, this equation convolutes the antecedent precipitation series and, via six parameters that can be calibrated via a genetic algorithm [ Coopersmith et al ., ], returns a soil moisture estimate as shown in equations and . θnormalenormalsnormalt=0.25emθnormalrnormale+()ϕeθnormalrnormale()1eprefix−c4β β=truetrue∑i=2i=n1[]Piηi()1eprefix−ηizeprefix−truetrue∑j=1j=i1()ηjz+P1η1()1eprefix−η1z. …”
Section: Methodsmentioning
confidence: 99%
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“…[] and subsequently updated by Pan [], is the diagnostic soil moisture equation. As a simple, lumped‐bucket model, this equation convolutes the antecedent precipitation series and, via six parameters that can be calibrated via a genetic algorithm [ Coopersmith et al ., ], returns a soil moisture estimate as shown in equations and . θnormalenormalsnormalt=0.25emθnormalrnormale+()ϕeθnormalrnormale()1eprefix−c4β β=truetrue∑i=2i=n1[]Piηi()1eprefix−ηizeprefix−truetrue∑j=1j=i1()ηjz+P1η1()1eprefix−η1z. …”
Section: Methodsmentioning
confidence: 99%
“…For further information regarding the calibration of these models and their implementation, please review the original literature [ Pan et al ., ; Pan, ] or the literature describing their more recent, machine learning‐based updates in Coopersmith et al . [].…”
Section: Methodsmentioning
confidence: 99%
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“…It is worth noting that precipitation and soil moisture are not independent variables in studying past conditions if the soil moisture data are derived from the precipitation data -this must be acknowledged if the extended soil moisture record is deployed for subsequent analysis. Though the original research calibrated the diagnostic soil moisture equation as a daily model, our approach outfits the model as an hourly estimator, using genetic algorithms for calibration [7] rather than the Monte Carlo approach favored by Pan [21]. By calibrating the diagnostic soil moisture equation and validating those algorithms during previous years, this work demonstrates the feasibility of such an approach at USCRN stations, thereby extending the soil moisture record.…”
Section: Introductionmentioning
confidence: 91%
“…[27]). This has been achieved by applying the parameters of soil moisture models calibrated by in situ instruments with co-located precipitation gauges to hydro-climatically and edaphically similar locations that lack such sensors [7] or by interpolating between the sensors of sparse networks maintained by the http://dx.doi.org/10.1016/j.advwatres.2015.02.006 0309-1708/Published by Elsevier Ltd.…”
Section: Introductionmentioning
confidence: 99%