New era and development in civil engineering research group, Scientific Research Center, Al-Ayen University, Thi-Qar, 64001, Iraq.
Chemosphere. 2021 Aug;277:130126. doi: 10.1016/j.chemosphere.2021.130126. Epub 2021 Mar 18.
The development of computer aid models for heavy metals (HMs) simulation has been remarkably advanced over the past two decades. Several machine learning (ML) models have been developed for modeling HMs over the past two decades with outstanding progress. Although there have been a noticeable number of diverse ML models investigations, it is essential to have an informative vision on the progression of those computer aid models. In the current short review covering the simulation of heavy metals in contaminated soil, water bodies and removal from aqueous solution, numerous aspects on the methodological and conceptual HMs modeling are reviewed and discussed in detail. For instance, the limitation of the classical analytical methods, types of heavy metal dataset, necessity for new versions of ML models exploration, HM input parameters selection, ML models internal parameters tuning, performance metrics selection and the types of the modelled HM. The current review provides few outlooks in understanding the underlying od the ML models application for HM simulation. Tackling these modeling aspects is significantly essential for ML developers and environmental scientists to obtain creditability and scientific consistency in the domain of environmental science. Based on the discussed modeling aspects, it was concluded several future research directions, which will promote environmental scientists for better understanding of the underlying HMs simulation.
在过去的二十年中,用于重金属 (HM) 模拟的计算机辅助模型得到了显著的发展。在过去的二十年中,已经开发了几种机器学习 (ML) 模型来对 HM 进行建模,并取得了突出的进展。尽管已经有了许多不同的 ML 模型研究,但对于这些计算机辅助模型的发展有一个有见地的看法是至关重要的。在目前涵盖污染土壤、水体中重金属模拟和从水溶液中去除的简短综述中,详细回顾和讨论了重金属建模方法和概念的诸多方面。例如,经典分析方法的局限性、重金属数据集的类型、探索新版本 ML 模型的必要性、HM 输入参数选择、ML 模型内部参数调整、性能指标选择以及建模的 HM 类型。本综述为理解 ML 模型在 HM 模拟中的应用提供了一些见解。解决这些建模方面的问题对于 ML 开发人员和环境科学家在环境科学领域获得可信度和科学一致性是非常重要的。基于讨论的建模方面,得出了几个未来的研究方向,这将促进环境科学家更好地理解重金属模拟的基础。