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Prediction of heat waves over Pakistan using support vector machine algorithm in the context of climate change

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Abstract

Many efficient forecasting models have been found to fail or show low skill due to the changes in the predictor–predictand relationship with the changes in global climate. An attempt has been taken to develop a climate change resilient heatwave prediction model using machine learning (ML) algorithms known as Support Vector Machines (SVM), random forest and artificial neural network. The National Centres for Environmental Prediction/National Centre for Atmospheric Research reanalysis data of ocean-atmospheric variables were used as the predictors of ML models for forecasting the number of heatwave days (HWDs) in the summer of Pakistan. An SVM based recursive feature elimination method was used to select the skilful predictors. The ML models were developed by considering a moving window of 29 years with a time step of 5 years to incorporate the changes in the relation of HWDs with its predictors due to climate change. The result showed changes in the relationship of HWDs with all the ocean-atmospheric variables considered in this study as probable predictors, which indicates the necessity of forward-rolling approach proposed in this study for the development of climate change resilient forecasting model. The relative performance of ML showed the higher capability of SVM to predict HWDs with an %NRMSE of 36, R2 of 0.87, md score of 0.76 and an rSD of 0.88 during the validation period. The result revealed the potential of SVM model to be used for reliable forecasting of heatwaves in the context of climate change.

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References

  • Aadhar S, Mishra V (2017) High-resolution near real-time drought monitoring in South Asia. Sci Data 4:170145

    Google Scholar 

  • Ahmed K, Shahid S, Chung E-S, Wang X-j, Harun SB (2019) Climate change uncertainties in seasonal drought severity–area–frequency curves: case of arid region of Pakistan. J Hydrol 570:473–485. https://doi.org/10.1016/j.jhydrol.2019.01.019

    Article  Google Scholar 

  • Ahmed K, Shahid S, Chung E-S, Nawaz N, Khan N, Rasheed B (2020) Divergence of potential evapotranspiration trends over Pakistan during 1967–2016. Theor Appl Climatol 141:215–227. https://doi.org/10.1007/s00704-020-03195-3

    Article  Google Scholar 

  • Ali M, Prasad R (2019) Significant wave height forecasting via an extreme learning machine model integrated with improved complete ensemble empirical mode decomposition. Renew Sustain Energy Rev 104:281–295. https://doi.org/10.1016/j.rser.2019.01.014

    Article  Google Scholar 

  • Ali M, Deo RC, Downs NJ, Maraseni T (2018) An ensemble-ANFIS based uncertainty assessment model for forecasting multi-scalar standardized precipitation index. Atmos Res 207:155–180. https://doi.org/10.1016/j.atmosres.2018.02.024

    Article  Google Scholar 

  • Ali M, Prasad R, Xiang Y, Yaseen ZM (2020) Complete ensemble empirical mode decomposition hybridized with random forest and kernel ridge regression model for monthly rainfall forecasts. J Hydrol 584:124647. https://doi.org/10.1016/j.jhydrol.2020.124647

    Article  Google Scholar 

  • Al-Mukhtar M, Qasim M (2019) Future predictions of precipitation and temperature in Iraq using the statistical downscaling model. Arab J Geosci 12:25

    Google Scholar 

  • Breiman L (2001) Random forests. Mach Learn 45:5–32

    Google Scholar 

  • Cheema AR (2015) Pakistan: high-rise buildings worsened heatwave. Nature 524:35

    CAS  Google Scholar 

  • Cortes C, Vapnik V (1995) Support-vector networks. Mach Learn 20:273–297

    Google Scholar 

  • Cutler DR, Edwards TC Jr, Beard KH, Cutler A, Hess KT, Gibson J, Lawler JJ (2007) Random forests for classification in ecology. Ecology 88:2783–2792

    Google Scholar 

  • Fienup JR (1997) Invariant error metrics for image reconstruction. Appl Opt 36:8352–8357

    CAS  Google Scholar 

  • Folberth C, Baklanov A, Balkovič J, Skalský R, Khabarov N, Obersteiner M (2019) Spatio-temporal downscaling of gridded crop model yield estimates based on machine learning. Agric For Meteorol 264:1–15

    Google Scholar 

  • Galelli S, Castelletti A (2013) Tree-based iterative input variable selection for hydrological modeling. Water Resour Res 49:4295–4310. https://doi.org/10.1002/wrcr.20339

    Article  Google Scholar 

  • Ganguli P, Reddy MJ (2014) Ensemble prediction of regional droughts using climate inputs and the SVM–copula approach. Hydrol Process 28:4989–5009

    Google Scholar 

  • Gao M, Wang B, Yang J, Dong W (2018) Are peak summer sultry heat wave days over the Yangtze-Huaihe river basin predictable? J Clim 31:2185–2196

    Google Scholar 

  • Gong Z, Dogar MMA, Qiao S, Hu P, Feng G (2017) Limitations of BCC_CSM’s ability to predict summer precipitation over East Asia and the Northwestern Pacific. Atmos Res 193:184–191

    Google Scholar 

  • Iqbal Z, Shahid S, Ahmed K, Ismail T, Nawaz N (2019) Spatial distribution of the trends in precipitation and precipitation extremes in the sub-Himalayan region of Pakistan. Theor Appl Climatol 137:2755–2769

    Google Scholar 

  • Kalnay E et al (1996) The NCEP/NCAR 40-year reanalysis project. Bull Am Meteorol Soc 77:437–472

    Google Scholar 

  • Khan N, Shahid S, Ahmed K, Ismail T, Nawaz N, Son M (2018) Performance assessment of general circulation model in simulating daily precipitation and temperature using multiple gridded datasets. Water 10:1793

    Google Scholar 

  • Khan N et al (2019a) Spatial distribution of secular trends in rainfall indices of Peninsular Malaysia in the presence of long-term persistence. Meteorol Appl. https://doi.org/10.1002/met.1792

    Article  Google Scholar 

  • Khan N, Shahid S, Bin Ismail T, Wang X-J (2019b) Spatial distribution of unidirectional trends in temperature and temperature extremes in Pakistan. Theor Appl Climatol 136:899–913

    Google Scholar 

  • Khan N, Shahid S, Ismail T, Ahmed K, Nawaz N (2019c) Trends in heat wave related indices in Pakistan. Stoch Environ Res Risk Assess 33:287–302

    Google Scholar 

  • Khan N, Shahid S, Juneng L, Ahmed K, Ismail T, Nawaz N (2019d) Prediction of heat waves in Pakistan using quantile regression forests. Atmos Res 221:1–11. https://doi.org/10.1016/j.atmosres.2019.01.024

    Article  Google Scholar 

  • Khan N, Sachindra DA, Shahid S, Ahmed K, Shiru MS, Nawaz N (2020a) Prediction of droughts over Pakistan using machine learning algorithms. Adv Water Resour 139:103562. https://doi.org/10.1016/j.advwatres.2020.103562

    Article  Google Scholar 

  • Khan N, Shahid S, Ahmed K, Wang X, Ali R, Ismail T, Nawaz N (2020b) Selection of GCMs for the projection of spatial distribution of heat waves in Pakistan. Atmos Res 233:104688. https://doi.org/10.1016/j.atmosres.2019.104688

    Article  Google Scholar 

  • Khan N, Shahid S, Chung E-S, Behlil F, Darwish MSJ (2020c) Spatiotemporal changes in precipitation extremes in the arid province of Pakistan with removal of the influence of natural climate variability. Theor Appl Climatol 142:1447–1462. https://doi.org/10.1007/s00704-020-03389-9

    Article  Google Scholar 

  • Krishna Kumar K, Rajagopalan B, Hoerling M, Bates G, Cane M (2006) Unraveling the mystery of Indian monsoon failure during El Nino. Science. https://doi.org/10.1126/science.1131152

    Article  Google Scholar 

  • Kuhn M (2008) Building predictive models in R using the caret package. J Stat Softw 28:1–26

    Google Scholar 

  • Kumar M, Raghuwanshi N, Singh R, Wallender W, Pruitt W (2002) Estimating evapotranspiration using artificial neural network. J Irrig Drain Eng 128:224–233

    Google Scholar 

  • MacLeod D (2018) Seasonal predictability of onset and cessation of the east African rains. Weather Clim Extremes 21:27–35

    Google Scholar 

  • Maini P, Kumar A, Rathore L, Singh S (2003) Forecasting maximum and minimum temperatures by statistical interpretation of numerical weather prediction model output. Weather Forecast 18:938–952

    Google Scholar 

  • Meyer L, Brinkman S, van Kesteren L, Leprince-Ringuet N, van Boxmeer F (2014) IPCC, 2014: climate change 2014: synthesis report. Contribution of working groups i, ii and iii to the fifth assessment report of theintergovernmental panel on climate change. Geneva, Switzerland. Article ID:13983489

  • Modaresi F, Araghinejad S, Ebrahimi K (2018) A comparative assessment of artificial neural network, generalized regression neural network, least-square support vector regression, and K-nearest neighbor regression for monthly streamflow forecasting in linear and nonlinear conditions. Water Resour Manag 32:243–258

    Google Scholar 

  • Mora C et al (2017) Global risk of deadly heat. Nat Clim Change 7:501. https://doi.org/10.1038/nclimate3322

    Article  Google Scholar 

  • Nagelkerke NJ (1991) A note on a general definition of the coefficient of determination. Biometrika 78:691–692

    Google Scholar 

  • Nasim W et al (2018) Future risk assessment by estimating historical heat wave trends with projected heat accumulation using SimCLIM climate model in Pakistan. Atmos Res 205:118–133

    Google Scholar 

  • Nissan H, Burkart K, Coughlan de Perez E, Van Aalst M, Mason S (2017) Defining and predicting heat waves in Bangladesh. J Appl Meteorol Climatol 56:2653–2670

    Google Scholar 

  • Prasad R, Ali M, Kwan P, Khan H (2019) Designing a multi-stage multivariate empirical mode decomposition coupled with ant colony optimization and random forest model to forecast monthly solar radiation. Appl Energy 236:778–792. https://doi.org/10.1016/j.apenergy.2018.12.034

    Article  Google Scholar 

  • Rajeevan M, Pai DS, Anil Kumar R, Lal B (2007) New statistical models for long-range forecasting of southwest monsoon rainfall over India. Clim Dyn 28:813–828. https://doi.org/10.1007/s00382-006-0197-6

    Article  Google Scholar 

  • Robinson PJ (2001) On the definition of a heat wave. J Appl Meteorol 40:762–775

    Google Scholar 

  • Russo S et al (2014) Magnitude of extreme heat waves in present climate and their projection in a warming world. J Geophys Res Atmos 119:12,500-512,512

    Google Scholar 

  • Sachindra D, Kanae S (2019) Machine learning for downscaling: the use of parallel multiple populations in genetic programming. Stoch Environ Res Risk Assess 33:1497–1533

    Google Scholar 

  • Sachindra D, Ahmed K, Rashid MM, Shahid S, Perera B (2018a) Statistical downscaling of precipitation using machine learning techniques. Atmos Res 212:240–258

    Google Scholar 

  • Sachindra DA, Ahmed K, Shahid S, Perera BJC (2018b) Cautionary note on the use of genetic programming in statistical downscaling. Int J Climatol 38:3449–3465. https://doi.org/10.1002/joc.5508

    Article  Google Scholar 

  • Shahid S (2010) Rainfall variability and the trends of wet and dry periods in Bangladesh. Int J Climatol 30:2299–2313

    Google Scholar 

  • Sheffield J, Goteti G, Wood EF (2006) Development of a 50-year high-resolution global dataset of meteorological forcings for land surface modeling. J Clim 19:3088–3111

    Google Scholar 

  • Sheffield J, Wood EF, Roderick ML (2012) Little change in global drought over the past 60 years. Nature 491:435

    CAS  Google Scholar 

  • Singh K, Bonthu S, Purvaja R, Robin R, Kannan B, Ramesh R (2018) Prediction of heavy rainfall over Chennai Metropolitan City, Tamil Nadu, India: impact of microphysical parameterization schemes. Atmos Res 202:219–234

    Google Scholar 

  • Stedman JR (2004) The predicted number of air pollution related deaths in the UK during the August 2003 heatwave. Atmos Environ 38:1087–1090

    CAS  Google Scholar 

  • Tripathi S, Srinivas VV, Nanjundiah RS (2006) Downscaling of precipitation for climate change scenarios: a support vector machine approach. J Hydrol 330:621–640. https://doi.org/10.1016/j.jhydrol.2006.04.030

    Article  Google Scholar 

  • Vapnik V (2013) The nature of statistical learning theory. Springer, Berlin

    Google Scholar 

  • Vapnik V, Vapnik V (1998) Statistical learning theory. Wiley, New York, pp 156–160

    Google Scholar 

  • Vitart F, Robertson AW (2018) The sub-seasonal to seasonal prediction project (S2S) and the prediction of extreme events. npj Clim Atmos Sci 1:3. https://doi.org/10.1038/s41612-018-0013-0

    Article  Google Scholar 

  • Wang B, Xiang B, Li J, Webster PJ, Rajeevan MN, Liu J, Ha K-J (2015) Rethinking Indian monsoon rainfall prediction in the context of recent global warming. Nat Commun 6:7154

    CAS  Google Scholar 

  • Wang P, Tang J, Sun X, Wang S, Wu J, Dong X, Fang J (2017) Heat waves in China: definitions, leading patterns, and connections to large-scale atmospheric circulation and SSTs. J Geophys Res Atmos 122:10,679-10,699

    Google Scholar 

  • Willmott CJ (1981) On the validation of models. Phys Geogr 2:184–194

    Google Scholar 

  • Yapo PO, Gupta HV, Sorooshian S (1996) Automatic calibration of conceptual rainfall-runoff models: sensitivity to calibration data. J Hydrol 181:23–48

    CAS  Google Scholar 

  • Yaseen ZM, Allawi MF, Yousif AA, Jaafar O, Hamzah FM, El-Shafie A (2018) Non-tuned machine learning approach for hydrological time series forecasting. Neural Comput Appl 30:1479–1491. https://doi.org/10.1007/s00521-016-2763-0

    Article  Google Scholar 

  • You Q, Jiang Z, Kong L, Wu Z, Bao Y, Kang S, Pepin N (2017) A comparison of heat wave climatologies and trends in China based on multiple definitions. Clim Dyn 48:3975–3989

    Google Scholar 

  • Zhu L, Jin J, Liu X, Tian L, Zhang Q (2017) Simulations of the impact of lakes on local and regional climate over the Tibetan plateau. Atmos Ocean 56:230–239

    Google Scholar 

Download references

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Khan, N., Shahid, S., Ismail, T.B. et al. Prediction of heat waves over Pakistan using support vector machine algorithm in the context of climate change. Stoch Environ Res Risk Assess 35, 1335–1353 (2021). https://doi.org/10.1007/s00477-020-01963-1

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