Modelling of Jassids (Amrasca biguttula) in Cotton: A Count Time Series Approach

B. Venkataviswateja *

Department of Statistics and Computer Applications, Agricultural College, Bapatla, India.

V. Srinivasa Rao

Department of Statistics and Computer Applications, Agricultural College, Bapatla, India.

A. Dhandapani

Department of Statistics, ICAR-NAARM, Hyderabad, India.

G. Raghunadha Reddy

Department of Economics, AMIC, Regional Agricultural Research Station, Lam, Guntur, India.

D. Ramesh

Department of Statistics and Computer Applications, Agricultural College, Bapatla, India.

A.D.V.S.L.P. Anand Kumar

Department of Entomology, Regional Agricultural Research Station, Maruteru, India.

M. Sivarama Krishna

Department of Entomology, Regional Agricultural Research Station, Nandyal, India.

*Author to whom correspondence should be addressed.


Abstract

This study was aimed to model Jassids population in cotton at Regional Agricultural Research Station (RARS), Nandyal. The secondary standard meteorological weekwise(SMW) data between 2008-2021 was considered based on data availability in the research station. Count time series models and machine learning models are used for modelling the Jassids population dataset Among the models evaluated in the study, the INGARCH-ANN model performed better than the INGARCH, ZIPAR, ZINBAR, and ANN models, according to error comparison metrics (MSE and RMSE). The statistical significance between the models was assessed using the Diebold-Mariano (DM) test. The order of prediction accuracy of the models under consideration is INGARCH-ANN>ANN> ZIPAR >ZINBAR>INGARCH. Overall, the study suggests that employing the Hybrid model could effectively model the jassids population in cotton at RARS, Nandyal.

Keywords: Modelling, ANN, ZIPAR, ZINBAR, INGARCH, MSE, RMSE


How to Cite

Venkataviswateja, B., V. Srinivasa Rao, A. Dhandapani, G. Raghunadha Reddy, D. Ramesh, A.D.V.S.L.P. Anand Kumar, and M. Sivarama Krishna. 2024. “Modelling of Jassids (Amrasca Biguttula) in Cotton: A Count Time Series Approach”. Journal of Scientific Research and Reports 30 (9):608-15. https://doi.org/10.9734/jsrr/2024/v30i92388.

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