A New Benchmark on Machine Learning Methodologies for Hydrological Processes Modelling: A Comprehensive Review for Limitations and Future Research Directions
{"title":"A New Benchmark on Machine Learning Methodologies for Hydrological Processes Modelling: A Comprehensive Review for Limitations and Future Research Directions","authors":"Z. Yaseen","doi":"10.51526/kbes.2023.4.3.65-103","DOIUrl":null,"url":null,"abstract":"The best practice of watershed management is through the understanding of the hydrological processes. As a matter of fact, hydrological processes are highly associated with stochastic, non-linear, and non-stationary phenomena. Hydrological processes simulation and modeling are challenging issues in the domains of hydrology, climate and environment. Hence, the development of machine learning (ML) models for solving those complex hydrological problems took essential place over the past couple decades. It can be observed, hydrological data availability has increased remarkably, and thus computational resources has led to a resurgence in ML models’ development. It has been witnessed huge efforts on the hydrological processes modeling using the facility of ML models and several review researches have been conducted. Literature studies approved the capacity of ML models in the field of hydrology over the classical “traditional models” based on their forecastability, flexibility, precision, generalization, and modeling execution convergence speed. However, although several potential merits were observed in ML model’s development, several limitations are allied such as the interpretability of those black-box models, the practicality of the ML models in watershed management, and difficulty to explain the physical hydrological processes. In this survey, an exhibition for all the published review articles on the development of ML models for hydrological processes and recognize all the research gaps and potential research direction. The ultimate aim of the current survey is to establish a new milestone for the interested hydrology, environment and climate researchers on the applications of ML models.","PeriodicalId":254108,"journal":{"name":"Knowledge-Based Engineering and Sciences","volume":"83 21","pages":""},"PeriodicalIF":0.0000,"publicationDate":"2023-12-31","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"Knowledge-Based Engineering and Sciences","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.51526/kbes.2023.4.3.65-103","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"","JCRName":"","Score":null,"Total":0}
引用次数: 0
Abstract
The best practice of watershed management is through the understanding of the hydrological processes. As a matter of fact, hydrological processes are highly associated with stochastic, non-linear, and non-stationary phenomena. Hydrological processes simulation and modeling are challenging issues in the domains of hydrology, climate and environment. Hence, the development of machine learning (ML) models for solving those complex hydrological problems took essential place over the past couple decades. It can be observed, hydrological data availability has increased remarkably, and thus computational resources has led to a resurgence in ML models’ development. It has been witnessed huge efforts on the hydrological processes modeling using the facility of ML models and several review researches have been conducted. Literature studies approved the capacity of ML models in the field of hydrology over the classical “traditional models” based on their forecastability, flexibility, precision, generalization, and modeling execution convergence speed. However, although several potential merits were observed in ML model’s development, several limitations are allied such as the interpretability of those black-box models, the practicality of the ML models in watershed management, and difficulty to explain the physical hydrological processes. In this survey, an exhibition for all the published review articles on the development of ML models for hydrological processes and recognize all the research gaps and potential research direction. The ultimate aim of the current survey is to establish a new milestone for the interested hydrology, environment and climate researchers on the applications of ML models.
流域管理的最佳做法是了解水文过程。事实上,水文过程与随机、非线性和非稳态现象密切相关。水文过程模拟和建模是水文、气候和环境领域的挑战性问题。因此,在过去的几十年里,开发机器学习(ML)模型来解决这些复杂的水文问题变得至关重要。可以看到,水文数据的可用性已显著提高,因此计算资源也导致了 ML 模型开发的复苏。人们在利用 ML 模型进行水文过程建模方面做出了巨大努力,并开展了多项回顾性研究。文献研究证实,基于其可预测性、灵活性、精确性、概括性和建模执行收敛速度,ML 模型在水文领域的能力优于经典的 "传统模型"。然而,尽管在开发 ML 模型的过程中发现了一些潜在的优点,但也存在一些局限性,如黑箱模型的可解释性、ML 模型在流域管理中的实用性以及难以解释物理水文过程等。在本次调查中,将对所有已发表的有关水文过程 ML 模型开发的综述文章进行展览,并认识到所有研究空白和潜在的研究方向。本次调查的最终目的是为对 ML 模型应用感兴趣的水文、环境和气候研究人员树立一个新的里程碑。