Linear Modelling of The State-Wise Yield of Principal Crops in India

  • P Gayathri PG and Research Department of Mathematics, A.V.C.College (Autonomous), Mannampandal, Mayiladuthurai, 609 305, Tamilnadu, India
  • K R Subramanian Department of Computer Applications, Shrimati Indira Gandhi college, Trichy, 620 002, Tamilnadu, India
Keywords: Crop Modelling, Time Series Analysis, Average Yield of Crops in India

Abstract

Modelling techniques are applied in agriculture field. Yield of rice is modelled using the method of least squares in Time Series Analysis and linear equations are fitted for the state-wise average yield of crops in kg per hectare in India and also for the average yield of various principal crops in Tamil Nadu.

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References

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Published
2019-03-06
How to Cite
P Gayathri, & K R Subramanian. (2019). Linear Modelling of The State-Wise Yield of Principal Crops in India. Mathematical Journal of Interdisciplinary Sciences, 7(2), 69-76. Retrieved from https://mjis.chitkara.edu.in/index.php/mjis/article/view/174
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Articles