Deep Learning Approach Using Long Short Term Memory Technique for Monthly Rainfall Prediction in Chhattisgarh, India

Authors

  • Nisha Thakur Computer Science & Engineering, Bhilai Institute of Technology, Chhattisgarh Swami Vivekananda Technical University, Bhilai Nagar, India
  • Sanjeev Karmakar Computer Science & Engineering, Bhilai Institute of Technology, Chhattisgarh Swami Vivekananda Technical University, Bhilai Nagar, India

Keywords:

Forecasting, Long short-term memory, Recurrent neural networks, Time series, Artificial Neural Network (ANN)

Abstract

Rainfall is an essential factor in Chhattisgarh state as the economy is dependent on agriculture here. Time Series forecasting approach for monthly rainfall prediction is done using Long Short Term Memory [LSTM] Model applying on 1404 months data of Chhattisgarh state. The factors taken for the evaluation of the performance and the efficiency of the proposed rainfall prediction model are Mean Absolute Deviation (MAD), Mean Square Error (MSE), Root Mean Square Error (RMSE), Cosine Similarity (CS) and Correlation Coefficient (r). Various learning rate like (? = 0.01, 0.05, 0.001, 0.005) for various epoch(s) such as 200, 400, 600, 800 and 1000 respectively are done for LSTM approach. The experimental results show that Long Short Term Memory gave significant results than ANN for 200 epochs.

 

References

https://en.wikipedia.org/wiki/Rice_production_in_India(accessed on 25.09.20)

Chakraborty, S., Pandey, R.P., Chaube, U.C., and Mishra, S.K., (2013).Trend and variability analysis of rainfall series at Seonath River Basin, Chhattisgarh (India). Intl. J. Appl. Sci. Engg. Res, 2(4), 425-434, 2013.

Bhuarya, S., K., Chaudhary, J.,L., Khalkho, M., and Khalkho, D., (2015). Comparison of Drought Indices at Different Stations of Chhattisgarh .Journal of Agricultural Physics, 15(2), 140-149, 2015.

Maier, H.R., (2006). Application of natural computing methods to water resources and environmental modeling , Mathematical and Computer Modeling , 44 (5-6), 413-414, 2006.

Maier, H.R., and Dandy, G.C., (2000). Application of neural networks to forecasting of surface water quality variables, issues, applications and challenges, Environmental Modeling and Software 15, 348, 2000.

T. A. Duong, M.D.Bui, and P.Rutschmann, Long short term memory for monthly rainfall prediction in Camau, Vietnam, https://www.researchgate.net/publication/322896962_LONG_SHORT_TERM_MEMORY_FOR_MONTHLY_RAINFALL_PREDICTION_IN_CAMAU_VIETNAM

J.Qiu, B.Wang, C. Zhou, https://doi.org/10.1371/journal.pone.0227222, January 3. 2020.

F. Kratzert, D. Klotz, C.Brenner, K.Schulz, and M. Herrnegger, (2018) Hydrology Earth System Science, 22, 6005-6022, 2018.

López, E., Carlos Valle, C., Allende, H., Gil, E., and Madsen, H., (2018). Wind Power Forecasting Based on Echo State Networks and Long Short-Term Memory, Energies, 11, 526, 2018. doi:10.3390/en11030526

Salman, A. G., Heryadi, Y., Abdurahman, E., and Suparta, W., (2018) .Weather Forecasting, 2018.

Using Merged Long Short-term Memory Model, Bulletin of Electrical Engineering and Informatics, 7(3), 377-385

Crivellari, A., and Beinat, E., (2020). Sustainability. 12, 349, 2020. doi:10.3390/su12010349

https://chhattisgarh.pscnotes.com/chhatttisgarh-geography/chhattisgarh-geographic-location(accessed on27.10.20)

Swapnaa & Sudhakar., (2018) A hybrid model for rainfall prediction using both parametrized and time series models, International Journal of Pure and Applied Mathematics, Volume -119, No. 14 , pp -1549-1556, 2018.

Choi, Y, J., & Lee, B., Combining LSTM Network Ensemble via Adaptive Weighting for Improved Time Series Forecasting, Volume – 2018.

Poornima, S., & Pushpalatha, M., (2019) Prediction of Rainfall Using Intensified LSTM Based Recurrent Neural Network with Weighted Linear Units, Atmosphere, Volume - 10, pp – 668, 2019.

Chimmula & Zhang., (2020), Time series forecasting of COVID 19 transmission in Canada using LSTM networks Chaos, Solitons & Fractals Volume - 135, 2020.

Z. C. Lipton, J. Berkowitz, and C. Elkan,,.A critical review of recurrent neural networks for sequence learning,” https:// arxiv.org/abs/1506.00019.

S. Hochreiter and J. Schmidhuber., (1997). Long short-term memory,” Neural Computation, 9(8), 1735–1780,

Jae Young Choi and Bumshik Lee, Combining LSTM Network Ensemble via Adaptive Weighting for Improved Time Series Forecasting, Volume 2018, Article ID 2470171.

Downloads

Published

2021-02-28

How to Cite

[1]
N. Thakur and S. Karmakar, “Deep Learning Approach Using Long Short Term Memory Technique for Monthly Rainfall Prediction in Chhattisgarh, India”, Int. J. Sci. Res. Comp. Sci. Eng., vol. 9, no. 1, pp. 8–13, Feb. 2021.

Issue

Section

Research Article

Similar Articles

<< < 2 3 4 5 6 7 8 9 10 11 > >> 

You may also start an advanced similarity search for this article.