Research Article
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Forecasting Coal Production in India: A Time Series Approach

Year 2024, Issue: 3, 17 - 32, 22.01.2025
https://doi.org/10.26650/JODA.1557949

Abstract

This article is intended to produce the forecasts for coal production in India through some time series models. This study describes the component-based and correlation-based time series models for its purpose. The separate analyses were performed by applying Naïve, Holt’s and ARIMA models on a real data set based on the coal production in India between 1980 and 2022. On the basis of the retrospective predictions and accuracy measure results, an ARIMA (2,2,2) model was selected as a good choice for the data in hand. A particular ARIMA (2,2,2) model was selected by using the AIC and BIC of model selection. For the validity of the finally selected ARIMA (2,2,2) model, a residual diagnostics check has been performed; and the future predictions have been made for the next 5 years. Such an analysis is expected to add some new approaches in the literature of forecasting the energy sources, especially with reference to India.

References

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Year 2024, Issue: 3, 17 - 32, 22.01.2025
https://doi.org/10.26650/JODA.1557949

Abstract

References

  • Agarwal, M., Tripathi, P. K., & Pareek, S. (2021). Forecasting infant mortality rate of India using ARIMA model: a comparison of Bayesian and classical approaches. Statistics & Applications, 19(2), 101-114. google scholar
  • Box, G. & Jenkins, G. (1970). Time series analysis: forecasting and control. Holden-Day, San Francisco. google scholar
  • Box, G. E., Jenkins, G. M., Reinsel, G. C., & Ljung, G. M. (2015). Time series analysis: forecasting and control. John Wiley & Sons. google scholar
  • Chen, Y., Xu, J., Tan, K., & Gou, Y. (2021). Statistical analysis and regular research on Chongqing coal mine accidents. In 2021 International Conference on Intelligent Computing, Automation and Applications (ICAA), pages 64-70. IEEE. google scholar
  • Holt, C. C. (1957). Forecasting trends and seasonals by exponentially weighted averages. ONR Memorandum, 52, 1957. google scholar
  • Hyndman, R. J. & Athanasopoulos, G. (2018). Forecasting: principles and practice. OTexts. google scholar
  • Jai Sankar, T., Angel Agnes Mary, I., & Nalini, K. (2023). Stochastic time series modeling for coking coal production in India. International Journal of Scientific Development and Research, 7(10), 443-449. google scholar
  • Li, S., Yang, X., & Li, R. (2019). Forecasting coal consumption in India by 2030: using linear modified linear (MGM-ARIMA) and linear modified nonlinear (BP-ARIMA) combined models. Sustainability, 11(3), 695. google scholar
  • Makkhan, S. J. S., Parmar, K. S., Kaushal, S., & Soni, K. (2020). Correlation and time-series analysis of black carbon in the coal mine regions of India: a case study. Modeling Earth Systems and Environment, 6, 659-669. google scholar
  • Mohanty, A. & Nimaje, D. S. (2023). Time series forecasting of Indian coal mines fatal accidents. Journal of Mining Science, 59(6), 1076-1082. google scholar
  • Montrone, L., Ohlendorf, N., & Chandra, R. (2021). The political economy of coal in India evidence from expert interviews. Energy for Sustainable Development, 61, 230-240. google scholar
  • Parren'o, S. J. E. (2022). Application of time series analysis in forecasting coal production and consumption in the Philippines. ICTACT Journal on Soft Computing, 13(1). google scholar
  • Tripathi, P. K. & Agarwal, M. (2023). A bayes analysis of random walk model under different error assumptions. Annals of Data Science, pages 1-18. google scholar
  • Tripathi, P. K., Mishra, R. K., & Upadhyay, S. (2018). Bayes and classical prediction of total fertility rate of India using autoregressive integrated moving average model. Journal of Statistics Applications & Probability, 7(2), 233-244. google scholar
  • Tripathi, P. K., Ranjan, R., Pant, R., & Upadhyay, S. (2017). An approximate Bayes analysis of ARMA model for Indian GDP growth rate data. Journal of Statistics and Management Systems, 20(3), 399-419. google scholar
  • Tripathi, P. K., Sen, R., & Upadhyay, S. (2021). A Bayes algorithm for model compatibility and comparison of ARMA (p, q) models. Statistics in Transition new series, 22(2), 95-123. google scholar
  • Tripathi, P. K., Tripathi, A., Harshika, & Meenakshi (2022). Statistical insights on the health of Indian economy: a multivariate analysis. Journal ofData, Information and Management, 4(3), 305-327. google scholar
  • MOSPI (2024). Energy Statistics India 2024. https://mospi.gov.in/sites/default/files/publication_reports/Energy_ google scholar
  • Statistics_2024/Energy_Statistics_India2024.pdf google scholar
  • India (2024). Statistical Appendix. Economic Survey 2023-24. https://www.indiabudget.gov.in/economicsurvey/doc/ Statistical-Appendix-in-English.pdf google scholar
There are 20 citations in total.

Details

Primary Language English
Subjects Econometric and Statistical Methods, Time-Series Analysis
Journal Section Research Articles
Authors

Avni Gangwar 0009-0001-5376-1925

Diksha Rathore 0009-0009-5078-365X

Praveen Kumar Tripathi 0000-0002-5652-8301

Publication Date January 22, 2025
Submission Date October 5, 2024
Acceptance Date December 9, 2024
Published in Issue Year 2024 Issue: 3

Cite

APA Gangwar, A., Rathore, D., & Tripathi, P. K. (2025). Forecasting Coal Production in India: A Time Series Approach. Journal of Data Applications(3), 17-32. https://doi.org/10.26650/JODA.1557949