Author:
ALAM WASI,SINHA KANCHAN,KUMAR RAJEEV RANJAN,RAY MRINMOY,RATHOD SANTOSHA,SINGH K N,ARYA PRAWIN
Abstract
Long term forecasting of crop production is required to establish long term vision, say by 2025, to meet growing demand of population at that point of time. Existing univariate linear time series ARIMA approach is valid for short term forecast only. In this paper, a technique for long term yield forecast has been proposed. Initially, we have tried to improve short term forecast of yield by using hybrid ARIMA through ANN approach. The forecast values of yield through hybrid approach was considered as baseline data for long term forecast of yield. Time series data on rice yield was considered for Aligarh district of Uttar Pradesh for the study. Through ARIMA (2,1,0), we got short term forecast of yield by 2020 and the residuals obtained by 2013 were used to model and forecast through ANN approach. For the residuals, 05:04s:1l (05 time delay and 04 hidden nodes) model was identified as suitable one as it has minimum values of mean absolute percentage error (MAPE) for training and testing sets. Using 05:04s:1l model, residuals were forecasted by 2020, forecast values of yield obtained through ARIMA (2,1,0) were corrected by forecasted residuals and eventually get forecast of yield through hybrid approach. The estimated MAPE for ARIMA (2,1,0) and hybrid approach were 17.677% and 4.65%, respectively. Significant reduction in MAPE through hybrid approach indicates it’s much better performance as compared to ARIMA alone. Using hybrid approach, we got forecast of yield by 2020 and considering this forecasted yield as baseline data, we got forecast by 2025 through the proposed approach.
Publisher
Indian Council of Agricultural Research, Directorate of Knowledge Management in Agriculture
Subject
Agronomy and Crop Science
Reference14 articles.
1. Adhya T K, Kar P and Sinha S K. 2011.Vision 2030. ICAR-Central Rice Research Institute. [http://www.crri.nic.in/ crri_vision2030_2011.pdf]
2. Alam W, Chaturvedi A, Kumar A, Sinha K and Singh K N. 2016. Sequential testing for decision making in the management of mustard aphid using size-biased negative binomial distribution. International Journal of Agricultural and Statistical Sciences, 12(2): 531-5.
3. Chaturvedi A and Alam W. 2010. UMVUE and MLE in a family of lifetime distributions. Journal of Indian Statistical Association 48(2): 189-213.
4. Box G E P, Jenkins G M and Reinsel G C. 2007. Time-Series Analysis: Forecasting and Control, 3rd edition. Pearson Education, India.
5. Clements M P. 2003. Editorial: Some possible directions for future research. International Journal of Forecasting 19:1–3.
Cited by
4 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献