Suspended sediment load prediction using sparrow search algorithm-based support vector machine model

Machine Learning


  • Samadianfard, S. et al. Hybrid models for suspended sediment prediction: optimized random forest and multi-layer perceptron through genetic algorithm and stochastic gradient descent methods. Neural Comput. Appl. https://doi.org/10.1007/s00521-021-06550-1 (2022).

    Article 

    Google Scholar 

  • Shadkani, S. et al. Comparative study of multilayer perceptron-stochastic gradient descent and gradient boosted trees for predicting daily suspended sediment load: The case study of the Mississippi River, US. Int. J. Sediment Res. (2020).

  • Shojaeezadeh, S. A., Al-Wardy, M. & Nikoo, M. R. Suspended sediment load modeling using Hydro-Climate variables and Machine learning. J. Hydrol. 633, 130948 (2024).

    Article 

    Google Scholar 

  • Boye, C. B., Boye, P. & Ziggah, Y. Y. Comparative study of suspended sediment load prediction models based on artificial intelligence methods. Artif. Intell. Appl. 2, 155–168 (2024).

    Google Scholar 

  • Somura, H. et al. Impact of suspended sediment and nutrient loading from land uses against water quality in the Hii River basin, Japan. J. Hydrol. 450, 25–35 (2012).

    Article 
    ADS 

    Google Scholar 

  • Bayram, A., Kankal, M., Tayfur, G. & Önsoy, H. Prediction of suspended sediment concentration from water quality variables. Neural Comput. Appl. 24, 1079–1087 (2014).

    Article 

    Google Scholar 

  • Kakaei Lafdani, E., Moghaddam Nia, A. & Ahmadi, A. Daily suspended sediment load prediction using artificial neural networks and support vector machines. J. Hydrol. 478, 50–62 (2013).

    Article 
    ADS 

    Google Scholar 

  • Nu-Fang, F., Zhi-Hua, S., Lu, L. & Cheng, J. Rainfall, runoff, and suspended sediment delivery relationships in a small agricultural watershed of the Three Gorges area, China. Geomorphology 135, 158–166 (2011).

    Article 
    ADS 

    Google Scholar 

  • Sadeghi, S. H. R. & Mostafazadeh, R. Triple diagram models for changeability evaluation of precipitation and flow discharge for suspended sediment load in different time scales. Environ. Earth Sci. https://doi.org/10.1007/s12665-016-5621-6 (2016).

    Article 

    Google Scholar 

  • Bathrellos, G. D., Skilodimou, H. D., Chousianitis, K., Youssef, A. M. & Pradhan, B. Suitability estimation for urban development using multi-hazard assessment map. Sci. Total Environ. https://doi.org/10.1016/j.scitotenv.2016.10.025 (2017).

    Article 
    PubMed 

    Google Scholar 

  • Ali, G. & Abbas, S. Exploring CO2 sources and sinks nexus through integrated approach: Insight from Pakistan. J. Environ. Inform. https://doi.org/10.3808/jei.201300250 (2013).

    Article 

    Google Scholar 

  • Cigizoglu, H. K. Estimation and forecasting of daily suspended sediment data by multi-layer perceptrons. Adv. Water Resour. 27, 185–195 (2004).

    Article 
    ADS 

    Google Scholar 

  • Nourani, V. Using artificial neural networks (ANNs) for sediment load forecasting of Talkherood river mouth. J. Urban Environ. Eng. https://doi.org/10.4090/juee.2009.v3n1.001006 (2009).

    Article 

    Google Scholar 

  • Sahoo, A., Behera, S. & Sharma, N. Performance comparison of LS-SVM and ELM-based models for precipitation prediction in Barak valley: A case study. In International conference on advances in communication technology and computer engineering.https://doi.org/10.1063/5.0132387

  • Samantaray, S., Sahoo, P., Sahoo, A. & Satapathy, D. P. Flood discharge prediction using improved ANFIS model combined with hybrid particle swarm optimisation and slime mould algorithm. Environ. Sci. Pollut. Res. 30, 83845–83872 (2023).

    Article 

    Google Scholar 

  • Samantaray, S. & Sahoo, A. Prediction of flow discharge in Mahanadi River Basin, India, based on novel hybrid SVM approaches. Environ. Dev. Sustain. https://doi.org/10.1007/s10668-023-03412-9 (2023).

    Article 

    Google Scholar 

  • Samantaray, S., Das, S. S., Sahoo, A. & Satapathy, D. P. Evaluating the application of metaheuristic approaches for flood simulation using GIS: A case study of Baitarani river Basin, India. Mater. Today Proc. 61, 452–465 (2022).

    Article 
    CAS 

    Google Scholar 

  • Achite, M., Yaseen, Z. M., Heddam, S., Malik, A. & Kisi, O. Advanced machine learning models development for suspended sediment prediction: Comparative analysis study. Geocarto Int. 37, 6116–6140 (2022).

    Article 
    ADS 

    Google Scholar 

  • Adnan, R. M. et al. Predictability performance enhancement for suspended sediment in rivers: Inspection of newly developed hybrid adaptive neuro-fuzzy system model. Int. J. Sediment Res. https://doi.org/10.1016/j.ijsrc.2021.10.001 (2021).

    Article 

    Google Scholar 

  • Kisi, O. & Yaseen, Z. M. The potential of hybrid evolutionary fuzzy intelligence model for suspended sediment concentration prediction. Catena 174, 11–23 (2019).

    Article 

    Google Scholar 

  • Nourani, V., Alizadeh, F. & Roushangar, K. Evaluation of a two-stage SVM and spatial statistics methods for modeling monthly river suspended sediment load. Water Resour. Manag. 30, 393–407 (2016).

    Article 

    Google Scholar 

  • Yaseen, Z. M. A new benchmark on machine learning methodologies for hydrological processes modelling: A comprehensive review for limitations and future research directions. Knowl.-Based Eng. Sci. 4, 65–103 (2023).

    Article 

    Google Scholar 

  • Tayfur, G. Artificial neural networks for sheet sediment transport. Hydrol. Sci. J. 47, 879–892 (2002).

    Article 

    Google Scholar 

  • Afan, H. A., El-shafie, A., Mohtar, W. H. M. W. & Yaseen, Z. M. Past, present and prospect of an Artificial Intelligence (AI) based model for sediment transport prediction. J. Hydrol. 541, 902–913. https://doi.org/10.1016/j.jhydrol.2016.07.048 (2016).

    Article 
    ADS 

    Google Scholar 

  • Boukhrissa, Z. A., Khanchoul, K., Le Bissonnais, Y. & Tourki, M. Prediction of sediment load by sediment rating curve and neural network (ANN) in El Kebir catchment, Algeria. J. Earth Syst. Sci. 122, 1303–1312 (2013).

    Article 
    ADS 

    Google Scholar 

  • Azamathulla, H. M., Ghani, A. A., Chang, C. K., Hasan, Z. A. & Zakaria, N. A. Machine learning approach to predict sediment load – A case study. Clean Soil Air Water 38, 969–976 (2010).

    Article 
    CAS 

    Google Scholar 

  • Azamathulla, H. M., Cuan, Y. C., Ghani, A. A. & Chang, C. K. Suspended sediment load prediction of river systems: GEP approach. Arab. J. Geosci. 6, 3469–3480 (2012).

    Article 

    Google Scholar 

  • Olyaie, E., Banejad, H., Chau, K.-W. & Melesse, A. M. A comparison of various artificial intelligence approaches performance for estimating suspended sediment load of river systems: a case study in United States. Environ. Monit. Assess. 187, 189 (2015).

    Article 
    PubMed 

    Google Scholar 

  • Kaveh, K., Kaveh, H., Bui, M. D. & Rutschmann, P. Long short-term memory for predicting daily suspended sediment concentration. Eng. Comput. 37, 2013–2027 (2020).

    Article 

    Google Scholar 

  • AlDahoul, N. et al. Suspended sediment load prediction using long short-term memory neural network. Sci. Rep. 11, 7826 (2021).

    Article 
    ADS 
    CAS 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Rezaei, K., Pradhan, B., Vadiati, M. & Nadiri, A. A. Suspended sediment load prediction using artificial intelligence techniques: Comparison between four state-of-the-art artificial neural network techniques. Arab. J. Geosci. 14, 1–13 (2021).

    Article 

    Google Scholar 

  • Kumar, A. & Tripathi, V. K. Capability assessment of conventional and data-driven models for prediction of suspended sediment load. Environ. Sci. Pollut. Res. 29, 50040–50058 (2022).

    Article 

    Google Scholar 

  • Tao, H. et al. Artificial intelligence models for suspended river sediment prediction: state-of-the art, modeling framework appraisal, and proposed future research directions. Eng. Appl. Comput. Fluid Mech. 15, 1585–1612 (2021).

    Google Scholar 

  • Bandini, F. et al. Unmanned Aerial System (UAS) observations of water surface elevation in a small stream: Comparison of radar altimetry, LIDAR and photogrammetry techniques. Remote Sens. Environ. https://doi.org/10.1016/j.rse.2019.111487 (2020).

    Article 

    Google Scholar 

  • Asadi, M., Fathzadeh, A., Kerry, R., Ebrahimi-Khusfi, Z. & Taghizadeh-Mehrjardi, R. Prediction of river suspended sediment load using machine learning models and geo-morphometric parameters. Arab. J. Geosci. https://doi.org/10.1007/s12517-021-07922-6 (2021).

    Article 

    Google Scholar 

  • Ebtehaj, I., Bonakdari, H. & Sharifi, A. Design criteria for sediment transport in sewers based on self-cleansing concept. J. Zhejiang Univ. Sci. A 15, 914–924 (2014).

    Article 

    Google Scholar 

  • Goldstein, E. B., Coco, G. & Plant, N. G. A review of machine learning applications to coastal sediment transport and morphodynamics. Earth-Sci. Rev. 194, 97–108 (2019).

    Article 
    ADS 

    Google Scholar 

  • Tikhamarine, Y., Souag-Gamane, D., Ahmed, A. N., Kisi, O. & El-Shafie, A. Improving artificial intelligence models accuracy for monthly streamflow forecasting using grey Wolf optimization (GWO) algorithm. J. Hydrol. 582, 124435 (2020).

    Article 

    Google Scholar 

  • Valikhan-Anaraki, M. et al. Development of a novel hybrid optimization Algorithm for minimizing irrigation deficiencies. Sustainability 11, 2337 (2019).

    Article 

    Google Scholar 

  • Sahoo, B. B., Sankalp, S. & Kisi, O. A novel smoothing-based deep learning time-series approach for daily suspended sediment load prediction. Water Resour. Manag. 37, 4271–4292 (2023).

    Article 

    Google Scholar 

  • Sahoo, B. B., Jha, R., Singh, A. & Kumar, D. Application of support vector regression for modeling low flow time series. KSCE J. Civ. Eng. https://doi.org/10.1007/s12205-018-0128-1 (2019).

    Article 

    Google Scholar 

  • Banadkooki, F. B. et al. Enhancement of groundwater-level prediction using an integrated machine learning model optimized by whale algorithm. Nat. Resour. Res. 29, 3233–3252 (2020).

    Article 

    Google Scholar 

  • Abba, S. I. et al. Implementation of data intelligence models coupled with ensemble machine learning for prediction of water quality index. Environ. Sci. Pollut. Res. https://doi.org/10.1007/s11356-020-09689-x (2020).

    Article 

    Google Scholar 

  • Afan, H. A. et al. Input attributes optimization using the feasibility of genetic nature inspired algorithm: Application of river flow forecasting. Sci. Rep. 10, 1–15 (2020).

    Article 

    Google Scholar 

  • Ehteram, M. et al. Investigation on the potential to integrate different artificial intelligence models with Metaheuristic algorithms for improving river suspended sediment predictions. Appl. Sci. 9, 4149 (2019).

    Article 

    Google Scholar 

  • Yousif, A. A. et al. Open channel sluice gate scouring parameters prediction: Different scenarios of dimensional and non-dimensional input parameters. Water https://doi.org/10.3390/w11020353 (2019).

    Article 

    Google Scholar 

  • Ehteram, M. et al. Reservoir operation by a new evolutionary algorithm: Kidney algorithm. Water Resour. Manag. 32, 4681–4706 (2018).

    Article 

    Google Scholar 

  • Farzin, S. et al. Flood routing in river reaches using a three-parameter Muskingum model coupled with an improved bat algorithm. Water 10, 1130 (2018).

    Article 

    Google Scholar 

  • Allawi, M. F., Jaafar, O., Ehteram, M., Mohamad Hamzah, F. & El-Shafie, A. Synchronizing Artificial Intelligence models for operating the dam and reservoir system. Water Resour. Manag. 32, 3373–3389. https://doi.org/10.1007/s11269-018-1996-3 (2018).

    Article 

    Google Scholar 

  • Ahmed, M. M., Houssein, E. H., Hassanien, A. E., Taha, A. & Hassanien, E. Maximizing lifetime of large-scale wireless sensor networks using multi-objective whale optimization algorithm. Telecommun. Syst. 72, 243–259 (2019).

    Article 

    Google Scholar 

  • Yahya, N. A., Samsudin, R., Shabri, A. & Saeed, F. Combined group method of data handling models using artificial bee colony algorithm in time series forecasting. Proc. Comput. Sci. https://doi.org/10.1016/j.procs.2019.12.114 (2019).

    Article 

    Google Scholar 

  • Rajaee, T. Wavelet and ANN combination model for prediction of daily suspended sediment load in rivers. Sci. Total Environ. 409, 2917–2928 (2011).

    Article 
    ADS 
    CAS 
    PubMed 

    Google Scholar 

  • Kisi, O., Docheshmeh Gorgij, A., Zounemat-Kermani, M., Mahdavi-Meymand, A. & Kim, S. Drought forecasting using novel heuristic methods in a semi-arid environment. J. Hydrol. 578, 124053 (2019).

    Article 

    Google Scholar 

  • Adnan, R. M., Liang, Z., El-Shafie, A., Zounemat-Kermani, M. & Kisi, O. Prediction of suspended sediment load using data-driven models. Water 11, 2060 (2019).

    Article 

    Google Scholar 

  • Hassanpour, F., Sharifazari, S., Ahmadaali, K., Mohammadi, S. & Sheikhalipour, Z. Development of the FCM-SVR hybrid model for estimating the suspended sediment load. KSCE J. Civ. Eng. 23, 2514–2523 (2019).

    Article 

    Google Scholar 

  • Ehteram, M. et al. Design of a hybrid ANN multi-objective whale algorithm for suspended sediment load prediction. Environ. Sci. Pollut. Res. 28, 1596–1611 (2020).

    Article 

    Google Scholar 

  • Nhu, V.-H. et al. Monthly suspended sediment load prediction using artificial intelligence: Testing of a new random subspace method. Hydrol. Sci. J. 65, 2116–2127 (2020).

    Article 

    Google Scholar 

  • Zounemat-Kermani, M., Mahdavi-Meymand, A., Alizamir, M., Adarsh, S. & MundherYaseen, Z. On the complexities of sediment load modeling using integrative machine learning: An application to the great river of Loíza in Puerto Rico. J. Hydrol. 585, 124759 (2020).

    Article 

    Google Scholar 

  • Farzin, S. & Valikhan Anaraki, M. Modeling and predicting suspended sediment load under climate change conditions: A new hybridization strategy. J. Water Clim. Chang. 12, 2422–2443 (2021).

    Article 

    Google Scholar 

  • Vapnik, V., Guyon, I. & Hastie, T. Support vector machines. Mach. Learn 20, 273–297 (1995).

    Article 

    Google Scholar 

  • Jamei, M. et al. Designing a multi-stage expert system for daily ocean wave energy forecasting: A multivariate data decomposition-based approach. Appl. Energy 326, 119925 (2022).

    Article 

    Google Scholar 

  • Doroudi, S., Sharafati, A. & Mohajeri, S. H. Estimation of daily suspended sediment load using a novel hybrid support vector regression model incorporated with observer-teacher-learner-based optimization method. Complexity https://doi.org/10.1155/2021/5540284 (2021).

    Article 

    Google Scholar 

  • Yang, X. A new metaheuristic bat-inspired algorithm. Coop. Strateg. Optim. (NICSO 2010) (2010).

  • Essa, K. S. & Diab, Z. E. Magnetic data interpretation for 2D dikes by the metaheuristic bat algorithm: Sustainable development cases. Sci. Rep. 12, 14206 (2022).

    Article 
    ADS 
    CAS 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Saremi, S., Mirjalili, S. & Lewis, A. Grasshopper optimisation algorithm: Theory and application. Adv. Eng. Softw. 105, 30–47 (2017).

    Article 

    Google Scholar 

  • Qin, P., Hu, H. & Yang, Z. The improved grasshopper optimization algorithm and its applications. Sci. Rep. https://doi.org/10.1038/s41598-021-03049-6 (2021).

    Article 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Ewees, A. A., Abd Elaziz, M. & Houssein, E. H. Improved grasshopper optimization algorithm using opposition-based learning. Expert Syst. Appl. 112, 156–172 (2018).

    Article 

    Google Scholar 

  • Barman, M., Dev Choudhury, N. B. & Sutradhar, S. A regional hybrid GOA-SVM model based on similar day approach for short-term load forecasting in Assam, India. Energy 145, 710–720 (2018).

    Article 

    Google Scholar 

  • Arora, S. & Singh, S. Butterfly optimization algorithm: A novel approach for global optimization. Soft Comput. 23, 715–734 (2018).

    Article 

    Google Scholar 

  • Zhang, X., Liu, F., Yin, Q., Qi, Y. & Sun, S. A runoff prediction method based on hyperparameter optimisation of a kernel extreme learning machine with multi-step decomposition. Sci. Rep. https://doi.org/10.1038/s41598-023-46682-z (2023).

    Article 
    PubMed 
    PubMed Central 

    Google Scholar 

  • Xue, J. & Shen, B. A novel swarm intelligence optimization approach: Sparrow search algorithm. Syst. Sci. Control Eng. 8, 22–34 (2020).

    Article 

    Google Scholar 

  • Liu, R. et al. Spatial prediction of groundwater potentiality using machine learning methods with Grey Wolf and Sparrow Search Algorithms. J. Hydrol. https://doi.org/10.1016/j.jhydrol.2022.127977 (2022).

    Article 

    Google Scholar 

  • Bhattarai, A., Qadir, D., Sunusi, A. M., Getachew, B. & Mallah, A. R. Dynamic sliding window-based long short-term memory model development for pan evaporation forecasting. Knowl.-Based Eng. Sci. 4, 37–54 (2023).

    Google Scholar 

  • Elsayed, S. et al. Interpretation the influence of hydrometeorological variables on soil temperature prediction using the potential of deep learning model. Knowl.-Based Eng. Sci. 4, 55–77 (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. Atmosphere 12, 1654 (2021).

    Article 
    ADS 

    Google Scholar 

  • Granata, F. & Di Nunno, F. Forecasting evapotranspiration in different climates using ensembles of recurrent neural networks. Agric. Water Manag. https://doi.org/10.1016/j.agwat.2021.107040 (2021).

    Article 

    Google Scholar 

  • Asnake Metekia, W., Garba Usman, A., Hatice Ulusoy, B., Isah Abba, S. & Chirkena Bali, K. Artificial intelligence-based approaches for modeling the effects of spirulina growth mediums on total phenolic compounds. Saudi J. Biol. Sci. 29, 1111–1117 (2022).

    Article 
    CAS 
    PubMed 

    Google Scholar 

  • Khosravi, K., Golkarian, A., Melesse, A. M. & Deo, R. C. Suspended sediment load modeling using advanced hybrid rotation forest based elastic network approach. J. Hydrol. 610, 127963 (2022).

    Article 

    Google Scholar 



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