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Featured researches published by Sudhanshu Panda.


Computers and Electronics in Agriculture | 2016

Site-specific management of common olive

Omid Noori; Sudhanshu Panda

The goal of this paper was to determine the correlation between image digital information and healthy olive trees management.Many data were gathered from tree and soil. Such as: fruit set, canopy volume (CV), shoot length (SL), trunk diameter (TD), trunk height (TH), SPAD, LAI, leaf dry matter percent, leaf N and K in leaves.Numerous multivariate regression models running showed pixel value combinations have highly correlation with olive growth parameters.Multicollinearity analyses were completed on the input parameters to reduce redundancy of data usage. Site-specific crop management (SSCM) is a part of precision agriculture which is helping increase production with minimal input. It has enhanced the cost-benefit scenario in crop production. The main goal of this paper was to use advanced geospatial techniques in data acquisition, remote sensing (RS), image processing, geographic information systems (GIS), global positioning systems (GPS) and statistical modeling to determine the correlation between image digital information and healthy olive trees growth and production management characteristics. It is to be noted that assumptions were based on the overall canopy greenness of the olive trees as healthy trees. This research was carried out during 2012-2014 in an irrigated olive orchards located in the Tarom region, Zanjan province of Iran. The following data were gathered: fruit set percent in shoot, canopy volume (CV), shoot length (SL), trunk diameter (TD), trunk height (TH), soil plant analysis development (SPAD), leaf area index (LAI), leaf dry matter percent (LDMP), leaf properties like nitrogen (N) and potassium (K) content in leaves, soil properties/characteristics like amount of Clay, Silt, Sand, Sodium adsorption rate (SAR), organic matter (OM), available phosphorous (Pav), available potassium (Kav), boron (B), total neutralizing value (TNV), electrical conductivity (EC), chloride (Cl), available iron (Feav). Advanced land observing satellite-Advanced visible and near infrared radiometer type 2 (ALOS-AVNIR-2) image was used in this experiment. A set of six clusters of olive trees existing in a compacted parcel of olive orchards were chosen. The image indices developed for this study were the normalized digital vegetation index (NDVI), newly developed vegetative vigor index (VVI) and the soil adjusted vegetation index (SAVI). Multivariate regression models were developed using remotely sensed image digital values in relation to the site specific crop growth parameters as mentioned above. As is stated above, individual band DN value statistics as input parameters and plant growth characteristics such as CV, SL, TD, TH, SPAD, LAI, and LDMP as output parameters were used in the multivariate regression models development. Multicollinearity analyses were completed on the input parameters to reduce redundancy of data usage. Multicollinearity analysis of the image related variables shows that VVI and b1 are highly correlated with other variables. It was also observed that NDVI - b3 and b2-b4 are highly correlated and hence omitted from the input parameter list. The multivariate regression models developed with NDVI and SAVI along with individual band (Green, Red and Infrared bands) as input parameters for olive crop growth parameters like TD, TH and SPAD provided excellent coefficient of determination (R2) values of 0.98, 0.99 and 0.99, respectively. SAVI, Red-, Green-, and Blue-band image information together best estimated the olive tree canopy volume with R2 value of 0.84. Similarly, SAVI, Red-, Green-, and Blue-band image information together also best estimated the olive tree SL and LA with R2 value of 0.88 and 0.96, respectively. SAVI, NDVI, Red-, Green-, and Blue-band image information as input parameters estimated the olive tree trunk diameter with R2 value of 0.98. The same SAVI, NDVI, Red-, Green-, and Blue-band image information together best predicted the olive tree trunk height with maximum correlation (R2=0.99). Similarly SPAD and LDMP were estimated with excellent correlations (R2=0.99 and 0.79, respectively) using image related input parameters of SAVI, NDVI, Red-, Green-, and Blue-band. Algorithms developed with this study could be used by farmers or orhard managers for estimating the olive tree physical characteristics in similar environmental conditions that prevailed in our study area using remotely sensed imagery in a non-invasive, economic, and efficient manner.


Journal of Geographic Information System | 2013

Application of LiDAR Data for Hydrologic Assessments of Low-Gradient Coastal Watershed Drainage Characteristics

Devendra M. Amatya; Carl C. Trettin; Sudhanshu Panda; Herbert Ssegane


CRC Press | 2015

Forests, land use change, and water

Devendra M. Amatya; Ge Sun; Cole Green Rossi; Herbert Ssegane; Jamie E. Nettles; Sudhanshu Panda


Transactions of the ASABE | 2016

Remote estimation of a managed pine forest evapotranspiration with geospatial technology

Sudhanshu Panda; Devendra M. Amatya; Ge Sun; Adam Bowman


Archive | 2018

Optimization of Southeastern Forest Biomass Crop Production: A Watershed Scale Evaluation of the Sustainability and Productivity of Dedicated Energy Crop and Woody Biomass Operations

George M. Chescheir; Jami E. Nettles; Mohamed A. Youssef; François Birgand; Devendra M. Amatya; Darren A. Miller; Eric B. Sucre; Erik Schilling; Shiying Tian; Julian Cacho; Erin M. Bennett; Taylor Carter; Nicole Dobbs Bowen; Augustine Muwamba; Sudhanshu Panda; Sheila F. Christopher; Brian David Phillips; T. W. Appelboom; R. W. Skaggs; Ethan J. Greene; Craig Marshall; Elizabeth Allen; Stephen H. Schoenholtz; Catchlight Energy Llc; Stream Improvement


In: R. A. Efroymson, M. H. Langholtz, K.E. Johnson, and B. J. Stokes (Eds.), 2016 Billion-Ton Report: Advancing Domestic Resources for a Thriving Bioeconomy, Volume 2: Environmental Sustainability Effects of Select Scenarios from Volume 1. ORNL/TM-2016/727. Oak Ridge National Laboratory, Oak Ridge, TN | 2017

Water Quality Response to Forest Biomass Utilization

Benjamin Rau; Augustine Muwamba; Carl C. Trettin; Sudhanshu Panda; Devendra M. Amatya; Ernest Tollner


In: Stringer, Christina E.; Krauss, Ken W.; Latimer, James S., eds. 2016. Headwaters to estuaries: advances in watershed science and management -Proceedings of the Fifth Interagency Conference on Research in the Watersheds. March 2-5, 2015, North Charleston, South Carolina. e-General Technical Report SRS-211. Asheville, NC: U.S. Department of Agriculture Forest Service, Southern Research Station. 302 p. | 2016

Conditional vulnerability of plant diversity to atmospheric nitrogen deposition across the United States

Sudhanshu Panda; Devendra M. Amatya; Young Kim; Ge Sun


In: Stringer, Christina E.; Krauss, Ken W.; Latimer, James S., eds. 2016. Headwaters to estuaries: advances in watershed science and management -Proceedings of the Fifth Interagency Conference on Research in the Watersheds. March 2-5, 2015, North Charleston, South Carolina. e-General Technical Report SRS-211. Asheville, NC: U.S. Department of Agriculture Forest Service, Southern Research Station. 302 p. | 2016

Estimating watershed evapotranspiration across the United States using multiple methods

Ge Sun; Shanlei Sun; Jingfeng Xiao; Peter Caldwell; Devendra M. Amatya; Suat Irmak; Prasanna H. Gowda; Sudhanshu Panda; Steve McNulty; Yang Zhang


In: Stringer, Christina E.; Krauss, Ken W.; Latimer, James S., eds. 2016. Headwaters to estuaries: advances in watershed science and management -Proceedings of the Fifth Interagency Conference on Research in the Watersheds. March 2-5, 2015, North Charleston, South Carolina. e-General Technical Report SRS-211. Asheville, NC: U.S. Department of Agriculture Forest Service, Southern Research Station. 302 p. | 2016

Advanced image processing approach for ET estimation with remote sensing data of varying spectral, spatial and temporal resolutions

Sudhanshu Panda; Devendra M. Amatya; Young Kim; Ge Sun


In: Amatya et al. (eds.), Forest Hydrology: Processes, Management and Assessment. CABI Publishers, U.K. | 2016

Geospatial technology applications in forest hydrology

Sudhanshu Panda; E. Masson; S. Sen; H.W. Kim; Devendra Amatya

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Devendra M. Amatya

North Carolina State University

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Ge Sun

United States Forest Service

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Carl C. Trettin

United States Forest Service

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Herbert Ssegane

Argonne National Laboratory

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Brian David Phillips

North Carolina State University

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Craig Marshall

Mississippi State University

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Elizabeth Allen

North Carolina State University

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