N.Ch.S.N. Iyengar

Work place: School of Computing Science and Engineering, VIT University, Vellore, India

E-mail: nchsniyengar48@gmail.com

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Biography

Dr. N.Ch.S.N.Iyengar (1961) is currently Senior Professor at the School of Computing Science and Engineering at VIT University, Vellore-632014, Tamil Nadu, India. His research interests include Agent-Based Distributed Secure Computing, Intelligent Computing, Network Security, Secured Cloud Computing and Fluid Dynamics. He authored several textbooks and had nearly 167 research publications in reputed peer reviewed international journals. He served as PCM/reviewer for many international conferences. He is Editor in Chief of International Journal of Software Engineering and Applications( IJSEA) of AIRCC,  Guest Editor for Special Issue on Cloud Computing and Services of International Journal of Communications, Network and System Sciences and  Editorial Board member for International Journals  like IJConvC (Inderscience -China)etc

Author Articles
Rough Set Model for Nutrition Management in Site Specific Rice Growing Areas

By K. Lavanya N.Ch.S.N. Iyengar M.A. Saleem Durai T. Raguchander

DOI: https://doi.org/10.5815/ijisa.2014.10.10, Pub. Date: 8 Sep. 2014

The optimized fertilizer usage for better yield of rice cultivation is influenced by key factors like soil fertility, crop variety, duration, season, nutrient content of the fertilizer, time of application etc., It is observed that 60 percent of yield gap in tamilnadu is due to farmers lack of knowledge on key factors and informal sources of information by pesticide dealers. In this study the major contributing factors for fertilizer requirement and optimum crop yield were analyzed based on rough set theory. In data analytics perspective the nutrient plan is sort of multiple attribute decision-making processes. To reduce the complexity of decision making, key factors that are indiscernible to conclusion are eliminated. Our rough set based approach improved the quality of agricultural data through removal of missing and redundant attributes. After pretreatment the data formed as target information, then attribute reduction algorithm was used to derive rules. The generated rules were used to structure the nutrition management decision-making. The precision was above 88% and experiments proved the feasibility of the developed decision support system for nutrient management.

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