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Sujithkumar Surendran Nair

Researcher at Oak Ridge National Laboratory

Publications -  18
Citations -  563

Sujithkumar Surendran Nair is an academic researcher from Oak Ridge National Laboratory. The author has contributed to research in topics: Watershed & Bioenergy. The author has an hindex of 10, co-authored 16 publications receiving 461 citations. Previous affiliations of Sujithkumar Surendran Nair include Ohio State University & University of Tennessee.

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A roadmap for research on crassulacean acid metabolism (CAM) to enhance sustainable food and bioenergy production in a hotter, drier world.

TL;DR: To exploit the potential of CAM crops and CAM bioengineering, it will be necessary to elucidate the evolution, genomic features, and regulatory mechanisms of CAM, which has potential for high returns on research investment.
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Bioenergy crop models: descriptions, data requirements, and future challenges

TL;DR: A literature survey revealed that 14 models have been used for simulating bio-energy crops including herbaceous and woody bioenergy crops, and for crassulacean acid metabolism (CAM) crops as discussed by the authors.
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Importance of Crop Yield in Calibrating Watershed Water Quality Simulation Tools1

TL;DR: Nair et al. as mentioned in this paper proposed a four-stage iterative and rigorous calibration procedure for Soil Water Analysis Tool (SWAT) using data from Upper Big Walnut Creek (UBWC) watershed in central Ohio, USA.
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Climate risk management for the U.S. cellulosic biofuels supply chain

TL;DR: In this paper, the authors review evidence from the 2012 U.S. drought, highlighting the risk of extreme weather events to the agricultural sector in general, and the bioenergy supply chain in particular, including reductions in feedstock production and higher prices for agricultural commodities and biofuels.
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City energysheds and renewable energy in the United States

TL;DR: In this article, the authors present a spatial framework for matching the supply of energy to demand across the electricity grid that allows for allocation of city energysheds, which comprises the network of power plants that supply a given city and the amount of energy drawn from each plant.