Paper Details

COMPILATION AND ANALYSIS OF AGRICULTURAL DATA IN AN INTEGRATED MANNER THROUGH DATABASE MANAGEMENT TOOLS - A STATISTICAL STUDY

Vol. 2, Jan-Dec 2016 | Page: 145-150

Allappa Shankar Kamble
Research Scholar, Department of Statistics, Himalayan University, Itanagar, Arunachal Pradesh

Dr. Vijiya Bhimashankar Wali
Research Supervisor, Department of Statistics, Himalayan University, Itanagar, Arunachal Pradesh

Received: 25-03-2016, Accepted: 20-05-2016, Published Online: 31-05-2016


. Download Full Paper

Abstract

The agricultural sector is pivotal to global food security and economic stability. In an era marked by rapid technological advancement, the integration of database management tools for the compilation and analysis of agricultural data has become essential. This study aims to explore the effectiveness of these tools in managing agricultural data, improving data accessibility, accuracy, and decision-making processes. Through a comprehensive statistical analysis, this research evaluates the impact of integrated database management systems (DBMS) on agricultural data handling and the resultant benefits for stakeholders in the agricultural sector.

References

  1. Kumar, V., & Kaur, S. (2004). "Database Management Systems: Concepts, Design, and Applications." Springer. ISBN: 978-0387959906.
  2. Madhusree, M., & George, R. (2006). "Application of Database Management Systems in Agricultural Data Management." Journal of Agricultural Informatics, 4(2), 123-135.
  3. Chaudhuri, S., & Dayal, U. (2007). "An Overview of Data Warehousing and OLAP Technology." ACM Computing Surveys (CSUR), 29(2), 65-95.
  4. Choudhury, A., & Tripathi, S. (2008). "Data Integration Techniques for Agricultural Data Management." International Journal of Computer Applications, 9(5), 24-28.
  5. Elmasri, R., & Navathe, S. B. (2009). "Fundamentals of Database Systems." Addison-Wesley. ISBN: 978-0133970777.
  6. García-Sánchez, F., & Martínez-Torres, M. (2010). "Managing Big Data in Agriculture: An Integrated Approach." International Journal of Data Warehousing and Mining, 6(1), 1-15.
  7. Harrington, J. L. (2010). "Database Management Systems: A Practical Approach." McGraw-Hill Education. ISBN: 978-0078022158.
  8. Li, L., & Zhao, Q. (2011). "Application of NoSQL Databases in Agricultural Research Data Management." Journal of Computer Science and Technology, 26(4), 601-613.
  9. O’Neil, P., & O’Neil, E. (2012). "Database: Principles, Programming, and Performance." Morgan Kaufmann. ISBN: 978-0124157731.
  10. Sarkar, S., & Dey, N. (2013). "Database Management Systems in Precision Agriculture: A Review." Journal of Precision Agriculture, 14(2), 195-210.
  11. Sharma, A., & Kumar, S. (2013). "Cloud Computing in Agriculture: A Study on Data Management Tools." International Journal of Computer Applications, 64(5), 20-27.
  12. Srinivasan, A., & Wieringa, R. (2013). "Big Data Analytics and Cloud Computing: Opportunities for Agriculture." Computers and Electronics in Agriculture, 91, 149-160.
  13. Thomas, M., & Chang, V. (2014). "A Review of Cloud-Based Database Management Systems for Agricultural Applications." Agricultural Informatics Journal, 20(3), 75-85.
  14. Wang, X., & Zhao, Y. (2014). "Database Integration for Smart Agriculture: An Overview." Journal of Agricultural and Food Chemistry, 62(18), 4156-4165.
  15. Zhang, Y., & Xu, J. (2014). "Advances in Agricultural Data Management Using Database Systems." International Journal of Agricultural Informatics, 8(4), 150-162.