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Browsing by Author "A. Ohri"

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    PublicationConference Paper
    Crop variables estimation by adaptive neuro-fuzzy inference system using bistatic scatterometer data
    (Institute of Electrical and Electronics Engineers Inc., 2016) D.K. Gupta; R. Prasad; P. Kumar; V.N. Mishra; P.K.S. Dikshit; S.B. Dwivedi; A. Ohri; R.S. Singh; V. Srivastav; Prashant Kumar Srivastava
    The aim of present study is to estimate the crop variables by means of high performing technique like adaptive neuro-fuzzy inference system (ANFIS) using the bistatic scatterometer data. An outdoor 4×4 m2 crop bed of rice crop was prepared for performing all the experiments. The bistatic measurements were carried out over the entire growing stages of the rice crop from transplanting to ripening stage at the angular range of 200 to 700 with the steps 50 at both HH- and VV-polarizations in X-band. The ANFIS algorithm was used for the estimation of rice crop variables. The observed bistatic scattering coefficients and crop variables (biomass, leaf area index, plant height and chlorophyll content) were interpolated with the phenological stages of the rice crop. The 80% data sets were used for training while the remaining 20% were kept separately for the testing purposes. The bistatic scattering coefficients were used as the input data sets and the rice crop variables as the target data sets of fuzzy inference system for both the polarizations. The estimated values were found closer to the observed values of rice crop variables that indicate a satisfactory performance of ANFIS algorithm for estimating rice crop variables. © 2015 IEEE.
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