Air temperature estimation and modeling using data driven techniques based on best subset regression model in Egypt

Machine Learning


  • Azari, B., Hassan, K., Pierce, J. & Ebrahimi, S. Evaluation of machine learning methods application in temperature prediction. Comput. Res. Prog Appl. Sci. Eng. CRPASE Trans. Civ. Environ. Eng. 8, 1–12 (2022).

    Google Scholar 

  • Ishaque, W., Tanvir, R. & Mukhtar, M. Climate Change and Water Crises in Pakistan: Implications on Water Quality and Health Risks. J. Environ. Public Health (2022). (2022).

  • Thober, S. et al. Multi-model ensemble projections of European river floods and high flows at 1.5, 2, and 3 degrees global warming. Environ. Res. Lett. 13, 014003 (2018).

    Article 
    ADS 

    Google Scholar 

  • Király, A. & Jánosi, I. M. Stochastic modeling of daily temperature fluctuations. Phys. Rev. E. 65, 051102 (2002).

    Article 
    ADS 

    Google Scholar 

  • Bartos, I. & Jánosi, I. M. Nonlinear correlations of daily temperature records over land. Nonlinear Process. Geophys. 13, 571–576 (2006).

    Article 
    ADS 

    Google Scholar 

  • Holden, Z. A., Crimmins, M. A., Cushman, S. A. & Littell, J. S. Empirical modeling of Spatial and Temporal variation in warm season nocturnal air temperatures in two North Idaho mountain ranges, USA. Agric. Meteorol. 151, 261–269 (2011).

    Article 

    Google Scholar 

  • Evrendilek, F., Karakaya, N., Gungor, K. & Aslan, G. Satellite-based and mesoscale regression modeling of monthly air and soil temperatures over complex terrain in Turkey. Expert Syst. Appl. 39, 2059–2066 (2012).

    Article 

    Google Scholar 

  • Kisi, O. & Shiri, J. Prediction of long-term monthly air temperature using geographical inputs. Int. J. Climatol. 34, 179–186 (2014).

    Article 

    Google Scholar 

  • Goodale, C., Aber, J. & Ollinger, S. Mapping monthly precipitation, temperature, and solar radiation for Ireland with polynomial regression and a digital elevation model. Clim. Res. 10, 35–49 (1998).

    Article 

    Google Scholar 

  • Ninyerola, M., Pons, X. & Roure, J. M. A methodological approach of Climatological modelling of air temperature and precipitation through GIS techniques. Int. J. Climatol. 20, 1823–1841 (2000).

    Article 

    Google Scholar 

  • Reicosky, D., Winkelman, L., ., Baker, J. & Baker, D. Accuracy of hourly air temperatures calculated from daily minima and maxima. Agric. Meteorol. 46, 193–209 (1989).

    Article 

    Google Scholar 

  • Sadler, E. J. & Schroll, R. W. An empirical model of diurnal temperature patterns. Agron. J. 89, 542–548 (1997).

    Article 

    Google Scholar 

  • Yang, L., Qian, F., Song, D. X. & Zheng, K. J. Research on urban Heat-Island effect. Procedia Eng. 169, 11–18 (2016).

    Article 

    Google Scholar 

  • Deilami, K., Kamruzzaman, M. & Liu, Y. Urban heat Island effect: A systematic review of spatio-temporal factors, data, methods, and mitigation measures. Int. J. Appl. Earth Obs Geoinf. 67, 30–42 (2018).

    Google Scholar 

  • Shenglan, Z., Haoyuan, S., Xingtao, S. & Langchang, J. Impact of urban heat Island effect on Ozone pollution in different Chinese regions. Urban Clim. 56, 102037 (2024).

    Article 

    Google Scholar 

  • Cichowicz, R. & Bochenek, A. D. Assessing the effects of urban heat Islands and air pollution on human quality of life. Anthropocene 46, 100433 (2024).

    Article 

    Google Scholar 

  • Han, L., Zhang, R., Wang, J. & Cao, S. J. Spatial synergistic effect of urban green space ecosystem on air pollution and heat Island effect. Urban Clim. 55, 101940 (2024).

    Article 

    Google Scholar 

  • Nunez, Y. et al. An environmental justice analysis of air pollution emissions in the united States from 1970 to 2010. Nat. Commun. 15, 268 (2024).

    Article 
    ADS 
    CAS 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Park, C. Y. et al. Attributing human mortality from fire PM2.5 to climate change. Nat. Clim. Chang. 14, 1193–1200 (2024).

    Article 

    Google Scholar 

  • Yuan, Y. et al. Unraveling the global economic and mortality effects of rising urban heat Island intensity. Sustain. Cities Soc. 116, 105902 (2024).

    Article 

    Google Scholar 

  • Aboulnaga, M., Trombadore, A., Mostafa, M. & Abouaiana, A. Understanding urban heat Island effect: causes, impacts, factors, and strategies for better livability and climate change mitigation and adaptation. In Livable Cities (eds Aboulnaga, M. et al.) 283–366 (Springer International Publishing, 2024). https://doi.org/10.1007/978-3-031-51220-9_2.

    Chapter 

    Google Scholar 

  • Kumar, P. et al. Impact of Climatic factors on air pollution and human health in the Lucknow City of Uttar pradesh, India. Ecocycles 10, 51–69 (2024).

    Article 

    Google Scholar 

  • dos Santos, L. O. F., Machado, N. G., Querino, C. A. S. & Biudes, M. S. Trends of climate extremes and their relationships with tropical ocean temperatures in South America. Earth 5, 844–872 (2024).

    Article 

    Google Scholar 

  • Gautam, R., Borgohain, A., Pathak, B., Kundu, S. S. & Aggarwal, S. P. Investigation of meteorological variables and associated extreme events over North-East India and its adjoining areas using high-resolution IMDAA reanalysis. Nat. Hazards. https://doi.org/10.1007/s11069-024-06979-2 (2024).

    Article 

    Google Scholar 

  • van Oorschot, J., Slootweg, M., Remme, R. P., Sprecher, B. & van der Voet, E. Optimizing green and Gray infrastructure planning for sustainable urban development. Npj Urban Sustain. 4, 41 (2024).

    Article 

    Google Scholar 

  • Wang, Y., He, Z., Zhai, W., Wang, S. & Zhao, C. How do the 3D urban morphological characteristics Spatiotemporally affect the urban thermal environment? A case study of San Antonio. Build. Environ. 261, 111738 (2024).

    Article 

    Google Scholar 

  • Ilčev, S. D. Satellite remote sensing in meteorology. In Global Satellite Meteorological Observation (GSMO) Applications (ed. Ilčev, S. D.) 129–182 (Springer International Publishing, 2019). https://doi.org/10.1007/978-3-319-67047-8_3.

    Chapter 

    Google Scholar 

  • Gong, Z., Ge, W., Guo, J. & Liu, J. Satellite remote sensing of vegetation phenology: progress, challenges, and opportunities. ISPRS J. Photogramm Remote Sens. 217, 149–164 (2024).

    Article 

    Google Scholar 

  • Zhang, W., Huang, Y., Yu, Y. & Sun, W. Empirical models for estimating daily maximum, minimum and mean air temperatures with MODIS land surface temperatures. Int. J. Remote Sens. 32, 9415–9440 (2011).

    Article 
    CAS 

    Google Scholar 

  • Yu, Y. et al. Solar zenith angle-based calibration of Himawari-8 land surface temperature for correcting diurnal retrieval error characteristics. Remote Sens. Environ. 308, 114176 (2024).

    Article 

    Google Scholar 

  • Benali, A., Carvalho, A. C., Nunes, J. P., Carvalhais, N. & Santos, A. Estimating air surface temperature in Portugal using MODIS LST data. Remote Sens. Environ. 124, 108–121 (2012).

    Article 
    ADS 

    Google Scholar 

  • Zhu, W., Lű, A. & Jia, S. Estimation of daily maximum and minimum air temperature using MODIS land surface temperature products. Remote Sens. Environ. 130, 62–73 (2013).

    Article 
    ADS 

    Google Scholar 

  • Aslam, B., Maqsoom, A., Khalid, N., Ullah, F. & Sepasgozar, S. Urban overheating assessment through prediction of surface temperatures: A case study of karachi, Pakistan. ISPRS Int. J. Geo-Information. 10, 539 (2021).

    Article 
    ADS 

    Google Scholar 

  • Tariq, A. et al. Land surface temperature relation with normalized satellite indices for the Estimation of spatio-temporal trends in temperature among various land use land cover classes of an arid Potohar region using Landsat data. Environ. Earth Sci. 79, 40 (2020).

    Article 
    ADS 

    Google Scholar 

  • Riddering, J. P. & Queen Ll. P. Estimating near-surface air temperature with NOAA AVHRR. Can. J. Remote Sens. 32, 33–43 (2006).

    Article 
    ADS 

    Google Scholar 

  • Cristóbal, J., Ninyerola, M. & Pons, X. Modeling air temperature through a combination of remote sensing and GIS data. J. Geophys. Res. Atmos. 113, D13106. https://doi.org/10.1029/2007JD009318 (2008).

  • Awais, M. et al. Comparative evaluation of land surface temperature images from unmanned aerial vehicle and satellite observation for agricultural areas using in situ data. Agriculture 12, 184 (2022).

    Article 

    Google Scholar 

  • Nse, O. U., Okolie, C. J. & Nse, V. O. Dynamics of land cover, land surface temperature and NDVI in Uyo city, Nigeria. Sci. Afr. 10, e00599 (2020).

    Google Scholar 

  • Farid, N., Moazzam, M. F. U., Ahmad, S. R., Coluzzi, R. & Lanfredi, M. Monitoring the impact of rapid urbanization on land surface temperature and assessment of surface urban heat Island using landsat in megacity (Lahore) of Pakistan. Front Remote Sens. 3, 897397. https://doi.org/10.3389/frsen.2022.897397 (2022).

  • Guha, S. & Govil, H. An assessment on the relationship between land surface temperature and normalized difference vegetation index. Environ. Dev. Sustain. 23, 1944–1963 (2021).

    Article 

    Google Scholar 

  • Taheri-Shahraiyni, H. & Sodoudi, S. High-resolution air temperature mapping in urban areas: A review on different modelling techniques. Therm. Sci. 21, 2267–2286 (2017).

    Article 

    Google Scholar 

  • Mashao, F. M. et al. An appraisal of the progress in utilizing radiosondes and satellites for monitoring upper air temperature profiles. Atmos. (Basel). 15, 387 (2024).

    ADS 

    Google Scholar 

  • Wu, P. et al. Spatially continuous and High-Resolution land surface temperature product generation: A review of reconstruction and Spatiotemporal fusion techniques. IEEE Geosci. Remote Sens. Mag. 9, 112–137 (2021).

    Article 

    Google Scholar 

  • He, Q., Cao, J., Saide, P. E., Ye, T. & Wang, W. Unraveling the influence of Satellite-Observed land surface temperature on High-Resolution mapping of Ground-Level Ozone using interpretable machine learning. Environ. Sci. Technol. 58, 15938–15948 (2024).

    Article 
    CAS 
    PubMed 

    Google Scholar 

  • Tănăselia, C. et al. Using inverse distance weighting to determine Spatial distributions of airborne chemical elements. South-east Eur. For. 15, 175–186 (2024).

    Article 

    Google Scholar 

  • Ryu, S., Song, J. J. & Lee, G. Interpolation of temperature in a mountainous region using heterogeneous observation networks. Atmos. (Basel). 15, 1018 (2024).

    Google Scholar 

  • Rodrigues, A. A., Siqueira, T. M., Beskow, T. L. C. & Timm, L. C. Ordinary Cokriging applied to generate intensity-duration-frequency equations for Rio Grande do Sul state, Brazil. Theor. Appl. Climatol. 155, 2365–2378 (2024).

    Article 
    ADS 

    Google Scholar 

  • Hassani, A., Santos, G. S., Schneider, P., Castell, N. & Interpolation Satellite-Based machine learning, or meteorological simulation?? A comparison analysis for Spatio-temporal mapping of mesoscale urban air temperature. Environ. Model. Assess. 29, 291–306 (2024).

    Article 

    Google Scholar 

  • Mikhaylov, A. et al. Accelerating regional weather forecasting by super-resolution and data-driven methods. J. Inverse Ill-posed Probl. 32, 1175–1192 (2024).

    Article 
    MathSciNet 

    Google Scholar 

  • Lin, P. & Wang, N. A data-driven approach for regional-scale fine-resolution disaster impact prediction under tropical cyclones. Nat. Hazards. 120, 7461–7479 (2024).

    Article 

    Google Scholar 

  • Achite, M. et al. Performance of machine learning techniques for meteorological drought forecasting in the Wadi Mina basin, Algeria. Water 15, 765 (2023).

    Article 

    Google Scholar 

  • Kushwaha, N. L. et al. Data intelligence model and Meta-Heuristic Algorithms-Based Pan evaporation modelling in two different Agro-Climatic zones: A case study from Northern India. Atmos. (Basel). 12, 1654 (2021).

    ADS 

    Google Scholar 

  • Heddam, S. et al. Hybrid river stage forecasting based on machine learning with empirical mode decomposition. Appl. Water Sci. 14, 46 (2024).

    Article 

    Google Scholar 

  • Kushwaha, N. L. et al. Stacked hybridization to enhance the performance of artificial neural networks (ANN) for prediction of water quality index in the Bagh river basin, India. Heliyon 10, e31085 (2024).

    Article 
    CAS 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Elbeltagi, A. et al. Data intelligence and hybrid metaheuristic algorithms-based Estimation of reference evapotranspiration. Appl. Water Sci. 12, 152 (2022).

    Article 
    ADS 

    Google Scholar 

  • Vishwakarma, D. K. et al. Evaluation and development of empirical models for wetted soil fronts under drip irrigation in high-density Apple crop from a point source. Irrig. Sci. https://doi.org/10.1007/s00271-022-00826-7 (2022).

    Article 

    Google Scholar 

  • Satpathi, A. et al. Evaluating statistical and machine learning techniques for sugarcane yield forecasting in the Tarai region of North India. Comput. Electron. Agric. 229, 109667 (2025).

    Article 

    Google Scholar 

  • Acharki, S. et al. Comparative assessment of empirical and hybrid machine learning models for estimating daily reference evapotranspiration in sub-humid and semi-arid climates. Sci. Rep. 15, 2542 (2025).

    Article 
    CAS 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Pandit, P. et al. Hybrid modeling approaches for agricultural commodity prices using CEEMDAN and time delay neural networks. Sci. Rep. 14, 26639 (2024).

    Article 
    CAS 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Raza, A. et al. Use of gene expression programming to predict reference evapotranspiration in different Climatic conditions. Appl. Water Sci. 14, 152 (2024).

    Article 
    ADS 

    Google Scholar 

  • Joshi, B. et al. A comparative survey between cascade correlation neural network (CCNN) and feedforward neural network (FFNN) machine learning models for forecasting suspended sediment concentration. Sci. Rep. 14, 10638 (2024).

    Article 
    ADS 
    CAS 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Khan, M. et al. Ensemble and optimization algorithm in support vector machines for classification of wheat genotypes. Sci. Rep. 14, 22728 (2024).

    Article 
    CAS 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Mohsenzadeh Karimi, S., Kisi, O., Porrajabali, M., Rouhani-Nia, F. & Shiri, J. Evaluation of the support vector machine, random forest and geo-statistical methodologies for predicting long-term air temperature. ISH J. Hydraul Eng. 26, 376–386 (2020).

    Article 

    Google Scholar 

  • Landeras, G., López, J. J., Kisi, O. & Shiri, J. Comparison of gene expression programming with neuro-fuzzy and neural network computing techniques in estimating daily incoming solar radiation in the Basque country (Northern Spain). Energy Convers. Manag. 62, 1–13 (2012).

    Article 
    ADS 

    Google Scholar 

  • Hong, H. et al. A novel hybrid integration model using support vector machines and random subspace for weather-triggered landslide susceptibility assessment in the Wuning area (China). Environ. Earth Sci. 76, 652 (2017).

    Article 
    ADS 

    Google Scholar 

  • Markuna, S. et al. Application of innovative machine learning techniques for Long-Term rainfall prediction. Pure Appl. Geophys. 180, 335–363 (2023).

    Article 
    ADS 

    Google Scholar 

  • Prasad, R., Deo, R. C., Li, Y. & Maraseni, T. Input selection and performance optimization of ANN-based streamflow forecasts in the drought-prone Murray Darling basin region using IIS and MODWT algorithm. Atmos. Res. 197, 42–63 (2017).

    Article 

    Google Scholar 

  • Salem, S. et al. Applying multivariate analysis and machine learning approaches to evaluating groundwater quality on the Kairouan plain. Tunisia Water. 15, 3495 (2023).

    Article 
    CAS 

    Google Scholar 

  • Hilbert, D. The utility of artificial neural networks for modelling the distribution of vegetation in past, present and future climates. Ecol. Modell. 146, 311–327 (2001).

    Article 

    Google Scholar 

  • Meshram, S. G. et al. New approach for sediment yield forecasting with a Two-Phase feedforward neuron Network-Particle swarm optimization model integrated with the gravitational search algorithm. Water Resour. Manag. 33, 2335–2356 (2019).

    Article 

    Google Scholar 

  • Setiya, P., Satpathi, A. & Nain, A. S. Predicting rice yield based on weather variables using multiple linear, neural networks, and penalized regression models. Theor. Appl. Climatol. 154, 365–375 (2023).

    Article 
    ADS 

    Google Scholar 

  • Zounemat-kermani, M., Kisi, O. & Rajaee, T. Performance of radial basis and LM-feed forward artificial neural networks for predicting daily watershed runoff. Appl. Soft Comput. 13, 4633–4644 (2013).

    Article 

    Google Scholar 

  • Mohammed, S. et al. A comparative analysis of data mining techniques for agricultural and hydrological drought prediction in the Eastern mediterranean. Comput. Electron. Agric. 197, 106925 (2022).

    Article 

    Google Scholar 

  • Rajput, J. et al. Development of machine learning models for Estimation of daily evaporation and mean temperature: a case study in new delhi, India. Water Pract. Technol. 19, 2655–2672 (2024).

    Article 

    Google Scholar 

  • Anaraki, M. V., Farzin, S., Mousavi, S. F. & Karami, H. Uncertainty analysis of climate change impacts on flood frequency by using hybrid machine learning methods. Water Resour. Manag. 35, 199–223 (2021).

    Article 

    Google Scholar 

  • Kadkhodazadeh, M., Valikhan Anaraki, M., Morshed-Bozorgdel, A. & Farzin, S. A new methodology for reference evapotranspiration prediction and uncertainty analysis under climate change conditions based on machine learning, multi criteria decision making and Monte Carlo methods. Sustainability 14, 2601 (2022).

    Article 

    Google Scholar 

  • Yang, X., Wang, Y., Byrne, R., Schneider, G. & Yang, S. Concepts of artificial intelligence for Computer-Assisted drug discovery. Chem. Rev. 119, 10520–10594 (2019).

    Article 
    CAS 
    PubMed 

    Google Scholar 

  • Yadav, S. S. & Jadhav, S. M. Deep convolutional neural network based medical image classification for disease diagnosis. J. Big Data. 6, 113 (2019).

    Article 

    Google Scholar 

  • Khosravi, K. et al. A comparative assessment of decision trees algorithms for flash flood susceptibility modeling at Haraz watershed, Northern Iran. Sci. Total Environ. 627, 744–755 (2018).

    Article 
    ADS 
    CAS 
    PubMed 

    Google Scholar 

  • Kim, S., Jeong, M. & Ko, B. C. Lightweight surrogate random forest support for model simplification and feature relevance. Appl. Intell. 52, 471–481 (2022).

    Article 

    Google Scholar 

  • Zhao, X., Chen, F., Feng, Z., Li, X. & Zhou, X. H. Characterizing the effect of temperature fluctuation on the incidence of malaria: an epidemiological study in south-west China using the varying coefficient distributed lag non-linear model. Malar. J. 13, 192 (2014).

    Article 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Cho, D., Yoo, C., Im, J., Lee, Y. & Lee, J. Improvement of Spatial interpolation accuracy of daily maximum air temperature in urban areas using a stacking ensemble technique. GIScience Remote Sens. 57, 633–649 (2020).

    Article 

    Google Scholar 

  • Chronopoulos, K. I., Tsiros, I. X., Dimopoulos, I. F. & Alvertos, N. An application of artificial neural network models to estimate air temperature data in areas with sparse network of meteorological stations. J. Environ. Sci. Heal Part. A. 43, 1752–1757 (2008).

    Article 
    CAS 

    Google Scholar 

  • Chevalier, R. F., Hoogenboom, G., McClendon, R. W. & Paz, J. A. Support vector regression with reduced training sets for air temperature prediction: a comparison with artificial neural networks. Neural Comput. Appl. 20, 151–159 (2011).

    Article 

    Google Scholar 

  • Haj Khalil, R. A. E. H. & Enjadat, S. M. Predictive modeling of hourly air temperature based on atmospheric conditions of Karak in Jordan. Int. J. Sustain. Dev. Plan 19, 3679. https://doi.org/10.18280/ijsdp.190936 (2024).

  • Alomar, M. K. et al. Data-driven models for atmospheric air temperature forecasting at a continental climate region. PLoS One. 17, e0277079 (2022).

    Article 
    CAS 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Salcedo-Sanz, S., Deo, R. C., Carro-Calvo, L. & Saavedra-Moreno, B. Monthly prediction of air temperature in Australia and new Zealand with machine learning algorithms. Theor. Appl. Climatol. 125, 13–25 (2016).

    Article 
    ADS 

    Google Scholar 

  • Elbeltagi, A. et al. Forecasting actual evapotranspiration without climate data based on stacked integration of DNN and meta-heuristic models across China from 1958 to 2021. J. Environ. Manage. 345, 118697 (2023).

    Article 
    PubMed 

    Google Scholar 

  • Vishwakarma, D. K. et al. Pre- and post-dam river water temperature alteration prediction using advanced machine learning models. Environ. Sci. Pollut Res. https://doi.org/10.1007/s11356-022-21596-x (2022).

    Article 

    Google Scholar 

  • Elbeltagi, A. et al. Prediction of meteorological drought and standardized precipitation index based on the random forest (RF), random tree (RT), and Gaussian process regression (GPR) models. Environ. Sci. Pollut Res. 30, 43183–43202 (2023).

    Article 

    Google Scholar 

  • Elbeltagi, A. et al. Drought indicator analysis and forecasting using data driven models: case study in jaisalmer, India. Stoch. Environ. Res. Risk Assess. https://doi.org/10.1007/s00477-022-02277-0 (2022).

    Article 

    Google Scholar 

  • Setiya, P., Satpathi, A., Nain, A. S. & Das, B. Comparison of weather-based wheat yield forecasting models for different districts of Uttarakhand using statistical and machine learning techniques. J. Agrometeorol. 24, 255–261. https://doi.org/10.54386/jam.v24i3.1571 (2022).

  • Satpathi, A. et al. Estimation of crop evapotranspiration using statistical and machine learning techniques with limited meteorological data: a case study in Udham Singh nagar, India. Theor. Appl. Climatol. https://doi.org/10.1007/s00704-024-04953-3 (2024).

    Article 

    Google Scholar 

  • Quinlan, J. R. Learning with continuous classes. in 5th Australian joint conference on artificial intelligence vol. 92 343–348World Scientific, (1992).

  • Elbeltagi, A., Al-Mukhtar, M., Kushwaha, N. L., Al-Ansari, N. & Vishwakarma, D. K. Forecasting monthly pan evaporation using hybrid additive regression and data-driven models in a semi-arid environment. Appl. Water Sci. 13, 42 (2023).

    Article 
    ADS 

    Google Scholar 

  • Elbeltagi, A., Di Nunno, F., Kushwaha, N. L., de Marinis, G. & Granata, F. River flow rate prediction in the des Moines watershed (Iowa, USA): a machine learning approach. Stoch. Environ. Res. Risk Assess. 36, 3835–3855 (2022).

    Article 

    Google Scholar 

  • Vapnik, V. N. The Nature of Statistical Learning Theory. Springer science & business media. https://doi.org/10.1007/978-1-4757-3264-1 (1995).

  • Wang, L. Support Vector Machines: Theory and Applicationsvol. 177 (Springer Science & Business Media, 2005).

  • Kushwaha, N. L. et al. Evaluation of Data-driven hybrid machine learning algorithms for modelling daily reference evapotranspiration. Atmos. Ocean. 60, 519–540 (2022).

    Article 
    ADS 

    Google Scholar 

  • Abd-Elaty, I., Kushwaha, N. L. & Patel, A. Novel hybrid machine learning algorithms for lakes evaporation and power production using floating semitransparent polymer solar cells. Water Resour. Manag. 37, 4639–4661 (2023).

    Article 

    Google Scholar 

  • Kushwaha, N. L. et al. Beach nourishment for coastal aquifers impacted by climate change and population growth using machine learning approaches. J. Environ. Manage. 370, 122535 (2024).

    Article 
    CAS 
    PubMed 

    Google Scholar 

  • Samantaray, S. & Sahoo, A. Groundwater level prediction using an improved ELM model integrated with hybrid particle swarm optimisation and grey Wolf optimisation. Groundw. Sustain. Dev. 26, 101178 (2024).

    Article 

    Google Scholar 

  • Asadi, S., Tartibian, B. & Moni, M. A. Determination of optimum intensity and duration of exercise based on the immune system response using a machine-learning model. Sci. Rep. 13, 8207 (2023).

    Article 
    ADS 
    CAS 
    PubMed 
    PubMed Central 

    Google Scholar 

  • McCuen, R. H., Knight, Z. & Cutter, A. G. Evaluation of the Nash–Sutcliffe efficiency index. J. Hydrol. Eng. 11, 597–602 (2006).

    Article 

    Google Scholar 

  • Vishwakarma, D. K. et al. Assessing the performance of various infiltration models to improve water management practices. Paddy Water Environ. https://doi.org/10.1007/s10333-024-01000-9 (2024).

    Article 

    Google Scholar 

  • Moharana, L., Sahoo, A. & Ghose, D. K. Prediction of rainfall using hybrid SVM-HHO model. IOP Conf. Ser. Earth Environ. Sci. 1084, 012054 (2022).

    Article 

    Google Scholar 

  • Mosavi, A., Ozturk, P. & Chau, K. Flood Prediction Using Machine Learning Models: Literature Review. Water vol. 10 1536 at (2018). https://doi.org/10.3390/w10111536

  • Ghose, D. K., Tanaya, K., Sahoo, A. & Kumar, U. Performance Evaluation of hybrid ANFIS model for Flood Prediction. in 8th International Conference on Advanced Computing and Communication Systems (ICACCS) 772–777 (IEEE, 2022). 772–777 (IEEE, 2022). (2022). https://doi.org/10.1109/ICACCS54159.2022.9785002

  • Pham, Q. B. et al. Groundwater level prediction using machine learning algorithms in a drought-prone area. Neural Comput. Appl. 34, 10751–10773 (2022).

    Article 

    Google Scholar 

  • Sahoo, A., Parida, S. S., Samantaray, S. & Satapathy, D. P. Daily flow discharge prediction using integrated methodology based on LSTM models: case study in Brahmani-Baitarani basin. HydroResearch 7, 272–284 (2024).

    Article 

    Google Scholar 

  • Achite, M. et al. Modeling the optimal dosage of coagulants in water treatment plants using various machine learning models. Environ. Dev. Sustain. 26, 3395–3421 (2022).

    Article 

    Google Scholar 

  • Mohaghegh, A., Farzin, S. & Anaraki, M. V. A new framework for missing data Estimation and reconstruction based on the geographical input information, data mining, and multi-criteria decision-making; theory and application in missing groundwater data of Damghan plain, Iran. Groundw. Sustain. Dev. 17, 100767 (2022).

    Article 

    Google Scholar 

  • Anaraki, M. V., Kadkhodazadeh, M., Morshed-Bozorgdel, A. & Farzin, S. Predicting rainfall response to climate change and uncertainty analysis: introducing a novel downscaling CMIP6 models technique based on the stacking ensemble machine learning. J. Water Clim. Chang. 14, 3671–3691 (2023).

    Article 

    Google Scholar 

  • Toharudin, T. et al. Employing long short-term memory and Facebook prophet model in air temperature forecasting. Commun. Stat. – Simul. Comput. 52, 279–290 (2023).

    Article 
    MathSciNet 

    Google Scholar 

  • Gouvas, M. A., Sakellariou, N. K. & Kambezidis, H. D. Estimation of the monthly and annual mean maximum and mean minimum air temperature values in Greece. Meteorol. Atmos. Phys. 110, 143–149 (2011).

    Article 
    ADS 

    Google Scholar 

  • Sekertekin, A. et al. Short-term air temperature prediction by adaptive neuro-fuzzy inference system (ANFIS) and long short-term memory (LSTM) network. Meteorol. Atmos. Phys. 133, 943–959 (2021).

    Article 
    ADS 

    Google Scholar 

  • Rezaeian-Zadeh, M., Zand-Parsa, S., Abghari, H., Zolghadr, M. & Singh, V. P. Hourly air temperature driven using multi-layer perceptron and radial basis function networks in arid and semi-arid regions. Theor. Appl. Climatol. 109, 519–528 (2012).

    Article 
    ADS 

    Google Scholar 

  • Chithra, N. R. et al. Prediction of the likely impact of climate change on monthly mean maximum and minimum temperature in the Chaliyar river basin, india, using ANN-based models. Theor. Appl. Climatol. 121, 581–590 (2015).

    Article 
    ADS 

    Google Scholar 

  • Oloyede, A., Ozuomba, S., Asuquo, P., Olatomiwa, L. & Longe, O. M. Data-driven techniques for temperature data prediction: big data analytics approach. Environ. Monit. Assess. 195, 343 (2023).

    Article 
    PubMed 

    Google Scholar 

  • Ramesh, K. & Anitha, R. MARSpline model for lead seven-day maximum and minimum air temperature prediction in chennai, India. J. Earth Syst. Sci. 123, 665–672 (2014).

    Article 
    ADS 

    Google Scholar 

  • Mollick, T., Hashmi, G. & Sabuj, S. R. A perceptible stacking ensemble model for air temperature prediction in a tropical climate zone. Discov Environ. 1, 15 (2023).

    Article 

    Google Scholar 

  • Pereira, D. G., Afonso, A. & Medeiros, F. M. Overview of friedman’s test and Post-hoc analysis. Commun. Stat. – Simul. Comput. 44, 2636–2653 (2015).

    Article 
    MathSciNet 

    Google Scholar 

  • MacFarland, T. W. & Yates, J. M. Friedman twoway analysis of variance (ANOVA) by ranks. In Introduction To Nonparametric Statistics for the Biological Sciences Using R (eds MacFarland, T. W. & Yates, J. M.) 213–247 (Springer International Publishing, 2016). https://doi.org/10.1007/978-3-319-30634-6_7.

    Chapter 

    Google Scholar 



  • Source link

    Leave a Reply

    Your email address will not be published. Required fields are marked *