Comparisons of Machine Learning Methods of Statistical Downscaling Method: Case Studies of Daily Climate Anomalies in Thailand

Authors

  • Kanawut Chattrairat Technology of Information System Management, Faculty of Engineering, Mahidol University, Thailand https://orcid.org/0000-0002-6429-9369
  • Waranyu Wongseree Department of Electrical and Computer Engineering, King Mongkut’s University of Technology North Bangkok, Thailand
  • Adisorn Leelasantitham Technology of Information System Management, Faculty of Engineering, Mahidol University, Thailand

DOI:

https://doi.org/10.13052/jwe1540-9589.2057

Keywords:

Global Climate Model (GCM). Statistical downscaling method, Linear Regression (LR), Gaussian Process (GP), Support Vector Machine (SVM) and Deep Learning (DL)

Abstract

The climate change which is essential for daily life and especially agriculture has been forecasted by global climate models (GCMs) in the past few years. Statistical downscaling method (SD) has been used to improve the GCMs and enables the projection of local climate. Many pieces of research have studied climate change in case of individually seasonal temperature and precipitation for simulation; however, regional difference has not been included in the calculation. In this research, four fundamental SDs, linear regression (LR), Gaussian process (GP), support vector machine (SVM) and deep learning (DL), are studied for daily maximum temperature (TMAX), daily minimum temperature (TMIN), and precipitation (PRCP) based on the statistical relationship between the larger-scale climate predictors and predictands in Thailand. Additionally, the data sets of climate variables from over 45 weather stations overall in Thailand are used to calculate in this calculation. The statistical analysis of two performance criteria (correlation and root mean square error (RMSE)) shows that the DL provides the best performance for simulation. The TMAX and TMIN were calculated and gave a similar trend for all models. PRCP results found that in the North and South are adequate and poor performance due to high and low precipitation, respectively. We illustrate that DL is one of the suitable models for the climate change problem.

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Author Biographies

Kanawut Chattrairat, Technology of Information System Management, Faculty of Engineering, Mahidol University, Thailand

Kanawut Chattrairat is a Ph.D. student at IT Management Division, Faculty of Engineering, Mahidol University, Bangkok, Thailand. He received a B.Eng in Computer Engineering and a M.Sci. in Technology of Information Management. His research interests in Machine learning and Data processing. He is a software engineer with extensive experience and management skills and works for Financial Services Technology company. The company provides payment and banking solutions for the Bank around the glove.

Waranyu Wongseree, Department of Electrical and Computer Engineering, King Mongkut’s University of Technology North Bangkok, Thailand

Waranyu Wongseree received the B.E., M.E., and Ph.D. degrees in electrical engineering from the King Mongkut’s University of Technology North Bangkok, Bangkok, Thailand. His research interests include applied machine learning, climate model, bioinformatics, and home energy monitoring.

Adisorn Leelasantitham, Technology of Information System Management, Faculty of Engineering, Mahidol University, Thailand

Adisorn Leelasantitham received the B.Eng. in Electronics and Telecommunications and M. Eng. in Electrical Engineering from King Mongkut’s University of Technology Thonburi (KMUTT), Thailand, in 1997 and 1999, respectively. He received his PhD degree in Electrical Engineering from Sirindhorn International Institute of Technology (SIIT), Thammasat University, Thailand, in 2005. He is currently the Associate Professor in Technology of Information System Management Program, Faculty of Engineering, Mahidol University, Thailand. His research interests include Applications of Blockchain Technology and Cryptocurrency, e.g. electricity trading platform, etc.,conceptual models for IT managements, image processing, AI, neural networks, machine learning, IoT platforms, data analytics, chaos systems and healthcare IT. He is a member of the IEEE.

References

Lidskog, R. and D. Sjödin, Extreme events and climate change: the post-disaster dynamics of forest fires and forest storms in Sweden. Scandinavian Journal of Forest Research, 2016. 31(2): p. 148–155.

IPCC, AR5: Climate Change, Synthesis Report. 2014.

Pachauri, R.K. and L.A.M. (eds.), Climate Change 2014: Synthesis Report. Contribution of Working Groups I, II and III to the Fifth Assessment Report of the Intergovernmental Panel on Climate Change. IPCC, Geneva, Switzerland, 2014: p. 151.

Trzaska, S. and E. Schnarr, A Review of Downscaling Methods for Climate Change Projections. 2014.

Piao, S., P. Ciais, Y. Huang, Z. Shen, S. Peng, J. Li, L. Zhou, H. Liu, Y. Ma, Y. Ding, P. Friedlingstein, C. Liu, K. Tan, Y. Yu, T. Zhang, and J. Fang, The impacts of climate change on water resources and agriculture in China. Nature, 2010. 467(7311): p. 43–51.

Sa, J.C., R. Lal, C.C. Cerri, K. Lorenz, M. Hungria, and P.C. de Faccio Carvalho, Low-carbon agriculture in South America to mitigate global climate change and advance food security. Environ Int, 2017. 98: p. 102–112.

Van Passel, S., E. Massetti, and R. Mendelsohn, A Ricardian Analysis of the Impact of Climate Change on European Agriculture. Environmental and Resource Economics, 2016. 67(4): p. 725–760.

Barrett, B., J.W. Charles, and J.L. Temte, Climate change, human health, and epidemiological transition. Preventive Medicine, 2015. 70: p. 69–75.

McMichael, A.J., R.E. Woodruff, and S. Hales, Climate change and human health: present and future risks. The Lancet, 2006. 367(9513): p. 859–869.

Mourato, S., M. Moreira, and J. Corte-Real, Water Resources Impact Assessment Under Climate Change Scenarios in Mediterranean Watersheds. Water Resources Management, 2015. 29(7): p. 2377–2391.

Sowers, J., A. Vengosh, and E. Weinthal, Climate change, water resources, and the politics of adaptation in the Middle East and North Africa. Climatic Change, 2011. 104(3): p. 599–627.

Maraun, D., F. Wetterhall, A.M. Ireson, R.E. Chandler, E.J. Kendon, M. Widmann, S. Brienen, H.W. Rust, T. Sauter, M. Themeßl, V.K.C. Venema, K.P. Chun, C.M. Goodess, R.G. Jones, C. Onof, M. Vrac, and I. Thiele-Eich, Precipitation downscaling under climate change: Recent developments to bridge the gap between dynamical models and the end user. Reviews of Geophysics, 2010. 48(3).

Delworth, T.L., A.J. Broccoli, A. Rosati, R.J. Stouffer, V. Balaji, J.A. Beesley, W.F. Cooke, K.W. Dixon, J. Dunne, K.A. Dunne, J.W. Durachta, K.L. Findell, P. Ginoux, A. Gnanadesikan, C.T. Gordon, S.M. Griffies, R. Gudgel, M.J. Harrison, I.M. Held, R.S. Hemler, L.W. Horowitz, S.A. Klein, T.R. Knutson, P.J. Kushner, A.R. Langenhorst, H.-C. Lee, S.-J. Lin, J. Lu, S.L. Malyshev, P.C.D. Milly, V. Ramaswamy, J. Russell, M.D. Schwarzkopf, E. Shevliakova, J.J. Sirutis, M.J. Spelman, W.F. Stern, M. Winton, A.T. Wittenberg, B. Wyman, F. Zeng, and R. Zhang, GFDL’s CM2 Global Coupled Climate Models. Part I: Formulation and Simulation Characteristics. Journal of Climate, 2006. 19(5): p. 643–674.

Delworth, T.L., A. Rosati, W. Anderson, A.J. Adcroft, V. Balaji, R. Benson, K. Dixon, S.M. Griffies, H.-C. Lee, R.C. Pacanowski, G.A. Vecchi, A.T. Wittenberg, F. Zeng, and R. Zhang, Simulated Climate and Climate Change in the GFDL CM2.5 High-Resolution Coupled Climate Model. Journal of Climate, 2012. 25(8): p. 2755–2781.

Chou, S.C., J.A. Marengo, A.A. Lyra, G. Sueiro, J.F. Pesquero, L.M. Alves, G. Kay, R. Betts, D.J. Chagas, J.L. Gomes, J.F. Bustamante, and P. Tavares, Downscaling of South America present climate driven by 4-member HadCM3 runs. Climate Dynamics, 2012. 38(3): p. 635–653.

Roeckner, E., K. Arpe, L. Bengtsson, S. Brinkop, L. Duemenil, M. Esch, E. Kirk, F. Lunkeit, M. Ponater, B. Rockel, R. Sausen, U. Schleese, S.D. Schubert, and M. Windelband. Simulation of the present-day climate with the ECHAM model: Impact of model physics and resolution. 1992.

Molteni, F., R. Buizza, T.N. Palmer, and T. Petroliagis, The ECMWF Ensemble Prediction System: Methodology and validation. Quarterly Journal of the Royal Meteorological Society, 1996. 122(529): p. 73–119.

Sylwia Trzaska, E., A Review of Downscaling Methods for Climate Change Projections. 2014.

Haines, A., R.S. Kovats, D. Campbell-Lendrum, and C. Corvalan, Climate change and human health: impacts, vulnerability and public health. Public Health, 2006. 120(7): p. 585–96.

Jakob Themeßl, M., A. Gobiet, and A. Leuprecht, Empirical-statistical downscaling and error correction of daily precipitation from regional climate models. International Journal of Climatology, 2011. 31(10): p. 1530–1544.

Dixon, K.W., J.R. Lanzante, M.J. Nath, K. Hayhoe, A. Stoner, A. Radhakrishnan, V. Balaji, and C.F. Gaitán, Evaluating the stationarity assumption in statistically downscaled climate projections: is past performance an indicator of future results? Climatic Change, 2016. 135(3-4): p. 395–408.

Kalogirou, S.A., S. Pashiardis, and A. Pashiardi, Statistical analysis and inter-comparison of the global solar radiation at two sites in Cyprus. Renewable Energy, 2017. 101: p. 1102–1123.

Boé, J., L. Terray, F. Habets, and E. Martin, Statistical and dynamical downscaling of the Seine basin climate for hydro-meteorological studies. International Journal of Climatology, 2007. 27(12): p. 1643–1655.

Manzanas, R., S. Brands, D. San-Martín, A. Lucero, C. Limbo, and J.M. Gutiérrez, Statistical Downscaling in the Tropics Can Be Sensitive to Reanalysis Choice: A Case Study for Precipitation in the Philippines. Journal of Climate, 2015. 28(10): p. 4171–4184.

Tatli, H., H. Nüzhet Dalfes, and M. Sibel, A statistical downscaling method for monthly total precipitation over Turkey. International Journal of Climatology, 2004. 24(2): p. 161–180.

Tajbakhsh, N. and K. Suzuki, Comparing two classes of end-to-end machine-learning models in lung nodule detection and classification: MTANNs vs. CNNs. Pattern Recognition, 2017. 63: p. 476–486.

Sunyer, M.A., H. Madsen, and P.H. Ang, A comparison of different regional climate models and statistical downscaling methods for extreme rainfall estimation under climate change. Atmospheric Research, 2012. 103: p. 119–128.

Campozano, L., D. Tenelanda, E. Sanchez, E. Samaniego, and J. Feyen, Comparison of Statistical Downscaling Methods for Monthly Total Precipitation: Case Study for the Paute River Basin in Southern Ecuador. Advances in Meteorology, 2016. 2016: p. 1–13.

Abatzoglou, J.T. and T.J. Brown, A comparison of statistical downscaling methods suited for wildfire applications. International Journal of Climatology, 2012. 32(5): p. 772–780.

Liu, J., D. Yuan, L. Zhang, X. Zou, and X. Song, Comparison of Three Statistical Downscaling Methods and Ensemble Downscaling Method Based on Bayesian Model Averaging in Upper Hanjiang River Basin, China. Advances in Meteorology, 2016. 2016: p. 1–12.

Jeong, D.I., A. St-Hilaire, T.B.M.J. Ouarda, and P. Gachon, Comparison of transfer functions in statistical downscaling models for daily temperature and precipitation over Canada. Stochastic Environmental Research and Risk Assessment, 2011. 26(5): p. 633–653.

Hewitson, B.C. and R.G. Crane, Consensus between GCM climate change projections with empirical downscaling: precipitation downscaling over South Africa. International Journal of Climatology, 2006. 26(10): p. 1315–1337.

Chu, J.T., J. Xia, C.Y. Xu, and V.P. Singh, Statistical downscaling of daily mean temperature, pan evaporation and precipitation for climate change scenarios in Haihe River, China. Theoretical and Applied Climatology, 2009. 99(1–2): p. 149–161.

Chen, S.-T., P.-S. Yu, and Y.-H. Tang, Statistical downscaling of daily precipitation using support vector machines and multivariate analysis. Journal of Hydrology, 2010. 385(1–4): p. 13–22.

Fealy, R. and J. Sweeney, Statistical downscaling of precipitation for a selection of sites in Ireland employing a generalised linear modelling approach. International Journal of Climatology, 2007. 27(15): p. 2083–2094.

Vu, M.T., T. Aribarg, S. Supratid, S.V. Raghavan, and S.-Y. Liong, Statistical downscaling rainfall using artificial neural network: significantly wetter Bangkok? Theoretical and Applied Climatology, 2015. 126(3–4): p. 453–467.

Mendoza, P.A., B. Rajagopalan, M.P. Clark, K. Ikeda, and R.M. Rasmussen, Statistical Postprocessing of High-Resolution Regional Climate Model Output. Monthly Weather Review, 2015. 143(5): p. 1533–1553.

Hadipour, S., S. Harun, A. Arefnia, and M. Alamgir, Transfer Function Models for Statistical Downscaling of Monthly Precipitation. Jurnal Teknologi, 2016. 78(9–4).

Smid, M. and A.C. Costa, Climate projections and downscaling techniques: a discussion for impact studies in urban systems. International Journal of Urban Sciences, 2017. 22(3): p. 277–307.

Gutiérrez, J.M., D. San-Martín, S. Brands, R. Manzanas, and S. Herrera, Reassessing Statistical Downscaling Techniques for Their Robust Application under Climate Change Conditions. Journal of Climate, 2013. 26(1): p. 171–188.

Schneider, A., G. Hommel, and M. Blettner, Linear regression analysis: part 14 of a series on evaluation of scientific publications. Deutsches Arzteblatt international, 2010. 107(44): p. 776–782.

Rasmussen, C.E., Gaussian Processes in Machine Learning, in Advanced Lectures on Machine Learning: ML Summer Schools 2003, Canberra, Australia, February 2 – 14, 2003, Tübingen, Germany, August 4 – 16, 2003, Revised Lectures, O. Bousquet, U. von Luxburg, and G. Rätsch, Editors. 2004, Springer Berlin Heidelberg: Berlin, Heidelberg. p. 63–71.

LeCun, Y., Y. Bengio, and G. Hinton, Deep learning. Nature, 2015. 521(7553): p. 436–44.

Schmidhuber, J., Deep learning in neural networks: an overview. Neural Netw, 2015. 61: p. 85–117.

Girolami, M., Mercer kernel-based clustering in feature space. IEEE Transactions on Neural Networks, 2002. 13(3): p. 780–784.

Tu, J.V., Advantages and disadvantages of using artificial neural networks versus logistic regression for predicting medical outcomes. Journal of Clinical Epidemiology, 1996. 49(11): p. 1225–1231.

Sun, Y., X. Wang, and X. Tang, Deep Learning Face Representation by Joint Identification-Verification. Proc. NIPS, 2014. 27.

Dibike, Y.B. and P. Coulibaly, Temporal neural networks for downscaling climate variability and extremes. Neural Networks, 2006. 19(2): p. 135–144.

Gent, P.R., G. Danabasoglu, L.J. Donner, M.M. Holland, E.C. Hunke, S.R. Jayne, D.M. Lawrence, R.B. Neale, P.J. Rasch, M. Vertenstein, P.H. Worley, Z.-L. Yang, and M. Zhang, The Community Climate System Model Version 4. Journal of Climate, 2011. 24(19): p. 4973–4991.

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Published

2021-07-19

How to Cite

Chattrairat, K., Wongseree, W., & Leelasantitham, A. (2021). Comparisons of Machine Learning Methods of Statistical Downscaling Method: Case Studies of Daily Climate Anomalies in Thailand. Journal of Web Engineering, 20(5), 1397–1424. https://doi.org/10.13052/jwe1540-9589.2057

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Communication, Multimedia and Learning Technology through Future Web Engineering