应用机器学习算法预测通过天然气水合物脱盐处理采出水的去除率

IF 8.3 1区 工程技术 Q1 ENGINEERING, CHEMICAL
Sirisha Nallakukkala , Bennet Nii Tackie-Otoo , Ruwaida Aliyu , Bhajan Lal , Jagadish Ram Deepak Nallakukkala , Gayathri Devi
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引用次数: 0

摘要

机器学习(ML)与天然气水合物脱盐(GHBD)的集成在采出水处理方面取得了重大进展,特别是在有效预测去除效率方面。GHBD的工作原理是在受控的热力学条件下形成天然气水合物,选择性地将气体封装在水分子中,同时排除溶解的离子。然而,水合物形成的随机性,受气体成分、温度、压力和离子浓度的影响,使得很难准确预测水合物的去除效率。在这种情况下。本研究系统地评估了几种有监督的机器学习模型,包括随机森林(RF)支持向量机(SVM)、Ridge回归、Lasso回归、决策树、Extra树回归、梯度Boost和XGBoost,以预测GHBD系统的去除效率。其中,SVM模型的预测精度最高,R2为0.98,AIC(56.75)、RMSE(1.50)和MAE(1.22)值最低,突出了其在捕捉操作参数与去除性能之间复杂依赖关系方面的鲁棒性。此外,图形分析证实SVM模型的预测精度优于其他模型。此外,灵敏度分析验证了支持向量机在捕获控制离子去除效率的非线性关系方面的鲁棒性。这些发现表明,ML与GHBD的集成显著提高了预测能力,实现了实时应用,减少了实验工作量,并促进了智能、可持续和可扩展的水处理技术的发展。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Application of machine learning algorithms to predict removal efficiency in treating produced water via gas hydrate-based desalination

Application of machine learning algorithms to predict removal efficiency in treating produced water via gas hydrate-based desalination
The integration of machine learning (ML) with gas hydrate-based desalination (GHBD) presents a significant advancement in the produced water treatment with special focus on efficient prediction of removal efficiency. GHBD operates by forming gas hydrates under controlled thermodynamic conditions, selectively encapsulating gas within water molecules while excluding dissolved ions. However, the stochastic nature of hydrate formation, is influenced by gas composition, temperature, pressure, and ion concentration, makes it difficult to predict accurately removal efficiency. In this context. ML algorithms provide powerful data driven means to model complex relationship within experimental datasets to improve process optimisation This study systematically evaluated several supervised ML models, including Random Forest (RF) Support Vector Machines (SVM), Ridge Regression, Lasso Regression, Decision Tree, Extra Tree Regression, Gradient Boost, and XGBoost, to predict removal efficiency in GHBD system. Among these, the SVM model showed the best predictive accuracy, R2 of 0.98, with the lowest AIC (56.75), RMSE (1.50), and MAE (1.22) values, highlighting its robustness in capturing the intricate dependencies between operational parameters and removal performance. Additionally, graphical analysis confirmed that the predictive accuracy of SVM model is superior, compared to other models. Furthermore, sensitivity analyses validated SVM's robustness in capturing the nonlinear relationships governing ion removal efficiency. These findings demonstrate that integration of ML with GHBD significantly improved predictive capabilities, enabled real time application, reduce experimental effort, as well as improve the development of intelligent, sustainable, and scalable water treatment technology.
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来源期刊
Desalination
Desalination 工程技术-工程:化工
CiteScore
14.60
自引率
20.20%
发文量
619
审稿时长
41 days
期刊介绍: Desalination is a scholarly journal that focuses on the field of desalination materials, processes, and associated technologies. It encompasses a wide range of disciplines and aims to publish exceptional papers in this area. The journal invites submissions that explicitly revolve around water desalting and its applications to various sources such as seawater, groundwater, and wastewater. It particularly encourages research on diverse desalination methods including thermal, membrane, sorption, and hybrid processes. By providing a platform for innovative studies, Desalination aims to advance the understanding and development of desalination technologies, promoting sustainable solutions for water scarcity challenges.
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