ANFIS and RBFNN Efficacy and Timescale Dependence in SPEI-Based Drought Prediction using Meteorological Inputs

Main Article Content

Alisa Afendi
Muhamad Usman Tariq
Shuhaida Ismail
Azizul Azhar Ramli

Abstract

Drought is a slow-onset natural disaster that has far-reaching effects on agriculture, water security, and socio-economic systems, especially in climate-vulnerable countries such as Malaysia. It is imperative to predict droughts for prompt mitigation efforts. In this paper, the influence of temporal scale on drought modelling has been put into discussion by analyzing a comparison between two machine learning (ML) models: Adaptive Neuro-Fuzzy Inference System (ANFIS); Radial Basis Function Neural Network (RBFNN) based on Standardized Precipitation Evapotranspiration Index (SPEI) as depicting drought. The SPEI of four timescale categories (SPEI-3, SPEI-6, SPEI-9, and SPEI-12) were calculated weekly and monthly (two different temporal scales) from a 15-year (5,844 observations) set of meteorological records (including precipitation, minimum and maximum temperature, humidity, and mean sea level pressure). Model performance was assessed using the Mean Absolute Error (MAE), Pearson correlation coefficient ( ), and Nash-Sutcliffe efficiency (NSE). It is shown that RBFNN surpassed ANFIS at short-, medium-, and long-term timescales in terms of MAE values irrespective of temporal scale, with weekly having the highest accuracy for longer time intervals (especially SPEI-12). It was observed that, in terms of dealing with complex non-linear relationships as well as temporal granularity, RBFNN outperformed ANFIS where ANFIS showed poor performance because of its rule base expansion and input dimensionality. This research provides evidence that integrating RBFNN with weekly temporal scale data and long-term drought indices would be a more robust apparatus for predicting severe drought in Malaysia. These results also highlight the relevance of properly choosing the temporal granularity to develop data-driven forecasting systems for hydrometeorology applications.

Article Details

How to Cite
Afendi, A., Tariq, M. U., Ismail, S., & Azhar Ramli, A. (2026). ANFIS and RBFNN Efficacy and Timescale Dependence in SPEI-Based Drought Prediction using Meteorological Inputs. Journal of Informatics and Web Engineering, 5(1), 358–374. https://doi.org/10.33093/jiwe.2026.5.1.23
Section
(Thematic) NextWave

References

U. S. G. Survey, “The distribution of water on, in, and above the Earth,” Oct. 2019. [Online]. Available: https://www.usgs.gov/media/images/distribution-water-and-above-earth

S. Graham, C. Parkinson, and M. Chahine, “The Water Cycle,” NASA Earth Observatory, Oct. 2010. [Online]. Available: https://earthobservatory.nasa.gov/features/Water

O. National, and A. A. (NOAA), “What is drought?,” 2018. [Online]. Available: https://www.weather.gov/media/owlie/2018_Drought.pdf

H. H. Hasan, S. F. Mohd Razali, N. S. Muhammad, and A. Ahmad, “Hydrological drought across Peninsular Malaysia: implication of drought index,” 2021, doi: 10.5194/nhess-2021-249.

Z. bin Luhaim et al., “Drought variability and characteristics in the Muda River Basin of Malaysia from 1985 to 2019,” Atmosphere, vol. 12, no. 9, p. 1210, 2021, doi: 10.3390/atmos12091210.

B. G. World, “Malaysia Climate Risk Country Profile,” 2021. [Online]. Available: https://climateknowledgeportal.worldbank.org/sites/default/files/2021-08/15868-WB_Malaysia%20Country%20Profile-WEB.pdf

M. Van Ginkel, and C. Biradar, “Drought early warning in agri-food systems,” Climate, vol. 9, no. 9, p. 134, 2021, doi: 10.3390/cli9090134.

D. Cho, C. Yoo, J. Im, and D. Cha, “Comparative assessment of various machine learning-based bias correction methods for numerical weather prediction model forecasts of extreme air temperatures in urban areas,” Earth and Space Science, vol. 7, no. 4, 2020, doi: 10.1029/2019EA000740.

A. Dikshit, B. Pradhan, and A. M. Alamri, “Temporal hydrological drought index forecasting for New South Wales, Australia using machine learning approaches,” Atmosphere, vol. 11, no. 6, p. 585, 2020, doi: 10.3390/atmos11060585.

L. Fischer et al., “AI system engineering—key challenges and lessons learned,” Machine Learning and Knowledge Extraction, vol. 3, no. 1, pp. 56–83, 2020, doi: 10.3390/make3010004.

D. A. Wilhite, M. V. K. Sivakumar, and R. Pulwarty, “Managing drought risk in a changing climate: the role of national drought policy,” Weather and Climate Extremes, vol. 3, pp. 4–13, 2014, doi: 10.1016/j.wace.2014.01.002.

A. Subramanian, N. Palanichamy, K.-W. Ng, and S. Aneja, “Climate change analysis in Malaysia using machine learning,” Journal of Informatics and Web Engineering, vol. 4, no. 1, pp. 307–319, Feb. 2025, doi: 10.33093/jiwe.2025.4.1.22.

Y. W. Soh, C. H. Koo, Y. F. Huang, and K. F. Fung, “Application of artificial intelligence models for the prediction of standardized precipitation evapotranspiration index (SPEI) at Langat River Basin, Malaysia,” Computers and Electronics in Agriculture, vol. 144, pp. 164–173, 2018, doi: 10.1016/j.compag.2017.12.002.

M. Svoboda and B. A. Fuchs, “Towards a water secure world: Integrated Drought Management Programme—Handbook of Drought Indicators and Indices,” 2006. [Online]. Available: https://www.droughtmanagement.info/literature/GWP_Handbook_of_Drought_Indicators_and_Indices_2016.pdf

S. M. Vicente-Serrano, S. Beguería, and J. I. López-Moreno, “A multiscalar drought index sensitive to global warming: the standardized precipitation evapotranspiration index,” Journal of Climate, vol. 23, no. 7, pp. 1696–1718, 2010, doi: 10.1175/2009JCLI2909.1.

X. Wang, H. Liu, Z. Sun, and X. Han, “Soil moisture inversion based on multiple drought indices and RBFNN: a case study of northern Hebei Province,” Heliyon, vol. 10, no. 17, pp. e37426–e37426, 2024, doi: 10.1016/j.heliyon.2024.e37426.

I. M. Sofian, A. K. Affandi, I. Iskandar, and Y. Apriani, “Monthly rainfall prediction based on artificial neural networks with backpropagation and radial basis function,” International Journal of Advances in Intelligent Informatics, vol. 4, no. 2, p. 154, 2018, doi: 10.26555/ijain.v4i2.208.

S. M. Hosseini-Moghari, and S. Araghinejad, “Monthly and seasonal drought forecasting using statistical neural networks,” Environmental Earth Sciences, vol. 74, no. 1, pp. 397–412, 2015, doi: 10.1007/s12665-015-4047-x.

K. S. Gyamfi, J. Brusey, and E. Gaura, “Differential radial basis function network for sequence modelling,” arXiv, 2020, doi: 10.48550/arXiv.2010.06178.

J.-S. R. Jang, “ANFIS: adaptive-network-based fuzzy inference system,” IEEE Transactions on Systems, Man, and Cybernetics, vol. 23, no. 3, pp. 665–685, 1993, doi: 10.1109/21.256541.

M. Achite, E. Gul, N. Elshaboury, M. Jehanzaib, B. Mohammadi, and A. Danandeh Mehr, “An improved adaptive neuro-fuzzy inference system for hydrological drought prediction in Algeria,” Physics and Chemistry of the Earth, vol. 131, p. 103451, 2023, doi: 10.1016/j.pce.2023.103451.

S. Poornima, and M. Pushpalatha, “Drought prediction based on SPI and SPEI with varying timescales using LSTM recurrent neural network,” Soft Computing, vol. 23, no. 18, pp. 8399–8412, 2019, doi: 10.1007/s00500-019-04120-1.

H. Zhang, C. Di, X. Li, J. Li, and Y. Wang, “Spatio-temporal heterogeneity of the propagation from meteorological to hydrological drought: a case study of the Luanhe River Basin,” Journal of Hydrology: Regional Studies, vol. 62, p. 102890, 2025, doi: 10.1016/j.ejrh.2025.102890.

H. Abbas et al., “Prevailing influence of local and global climatic factors on the propagation of meteorological to agricultural droughts and associated time lags in Pakistan,” Journal of Hydrology: Regional Studies, vol. 62, p. 102875, 2025, doi: 10.1016/j.ejrh.2025.102875.

A. I. Ahmed Osmanr et al., “A review on machine learning models for drought monitoring and forecasting,” Climate Risk Management, p. 100758, 2025, doi: 10.1016/j.crm.2025.100758.