An Artificial Neural Network Approach for the Determination of Infiltration Model Parameters
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Abstract
Prediction of soil infiltration rate is of prime importance in irrigation and drainage studies.
newlineInfiltration seems to be very simple, but determination of soil infiltration in field is very tedious
newlineand time consuming job. The present study attempts to predict the soil infiltration rate and to
newlineevaluate the soil infiltration model parameters using two infiltration models namely, Kostiakov
newlineand modified Kostiakov into clay soil (Vertisols-FAO Classification) in Kopargaon region of
newlineMaharashtra State. Subsequently, the Artificial Neural Network (ANN) was employed to
newlineevaluate the constants of Kostiakov infiltration model. In this study the feedforward
newlinebackpropagation type ANN was used. The data from the study area were generated through field
newlinemeasurements of the infiltration of soils using double ring infiltrometer for two seasons namely
newlinewinter and summer with existing land covers. The soil infiltration measurements were made at
newline106 points over the study area of clay soil.
newlineBefore conducting the field infiltration tests, the data regarding different soil properties like bulk
newlinedensity, moisture content, % sand, % silt, % clay, electrical conductivity, field capacity and
newlinewilting point were determined as these serves inputs for ANN models. Soil samples were taken
newlinefrom the surface layer 150 -300mm thick by excavation and auger technique, from each study
newlinepoint of clay soil. For determination of bulk density, undisturbed soil samples were collected,
newlinewhereas for remaining soil properties disturbed soil samples were used.
newlineThe infiltration model parameters were determined graphically and analytically using the Davis
newlinemethod. The results of the investigation show that the cumulative infiltrations predicted by
newlineKostiakov and modified Kostiakov models were very close to the field measured cumulative
newlineinfiltration values of clay soil locally called as black cotton soil. The physical properties like
newlinemoisture content, textural analysis and electrical conductivity affect soil infiltration rate as well
newlineas the values of infiltration model par