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Determining quality of water in reservoir using machine learning

机译:使用机器学习确定水库水中的水质

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摘要

Water quality is one of the most critical issues in reservoir management owing to its strong effects on the natural environment and human life. This study establishes a machine learning approach for predicting Carlson's Trophic State Index, which is a frequently used metric of water quality in reservoirs. Data collected over ten years (1995-2016) from the stations at 20 reservoirs in Taiwan were preprocessed as the input for the modeling system. Four well-known artificial intelligence techniques, artificial neural networks (ANNs), support vector machines, classification and regression trees, and linear regression, were used to analyze in baseline and ensemble scenarios. A user-friendly interface that integrates a metaheuristic regression model was developed to evaluate the predictive performance, and to compare it with those in the two constituent scenarios. The comprehensive comparison demonstrated that the ensemble ANNs model, based on a tiering method, is more accurate than the other single, ensemble models and hybrid metaheuristic regression model. Both the accuracy of prediction and the efficacy of application are considered to support practitioners in planning water management works. Accordingly, this study provides a novel approach for potential use in water quality assessment.
机译:由于其对自然环境和人类生活的强烈影响,水质是水库管理中最关键的问题之一。本研究建立了一种预测卡尔森营养态指数的机器学习方法,这是水库中水质的常用度量。从台湾20个水库的电台收集的数据超过了20年(1995-2016)被预处理为建模系统的输入。四种知名人工智能技术,人工神经网络(ANNS),支持向量机,分类和回归树以及线性回归,用于分析基线和集合情景。开发了一个集成了成逐回归模型的用户友好界面,以评估预测性能,并将其与两个组成方案中的那些进行比较。全面的比较表明,基于分层方法的集合ANNS模型比其他单一,集合模型和混合地图造型回归模型更准确。预测的准确性和申请的功效都被认为是在规划水管理工作中支持从业者。因此,本研究提供了一种用于水质评估潜在使用的新方法。

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