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Functionalization of remote sensing and on-site data for simulating surface water dissolved oxygen: Development of hybrid tree-based artificial intelligence models

机译:遥感和现场数据模拟表面水溶解氧的功能化:基于混合树的人工智能模型的发展

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摘要

Dissolved oxygen (DO) is an important indicator of river health for environmental engineers and ecological scientists to understand the state of river health. This study aims to evaluate the reliability of four feature selector algorithms i.e., Boruta, genetic algorithm (GA), multivariate adaptive regression splines (MARS), and extreme gradient boosting (XGBoost) to select the best suited predictor of the applied water quality (WQ) parameters; and compare four tree-based predictive models, namely, random forest (RF), conditional random forests (cForest), RANdom forest GEneRator (Ranger), and XGBoost to predict the changes of dissolved oxygen (DO) in the Klang River, Malaysia. The total features including 15 WQ parameters from monitoring site data and 7 hydrological components from remote sensing data. All predictive models performed well as per the features selected by the algorithms XGBoost and MARS in terms applied statistical evaluators. Besides, the best performance noted in case of XGBoost predictive model among all applied predictive models when the feature selected by MARS and XGBoost algorithms, with the coefficient of determination (R2) values of 0.84 and 0.85, respectively, nonetheless the marginal performance came up by Boruta-XGBoost model on in this scenario.
机译:溶解氧(DO)是环境工程师和生态科学家河流健康的重要指标,以了解河流健康状况。本研究旨在评估四个特征选择器算法的可靠性,即Boruta,遗传算法(GA),多变量自适应回归花键(MARS)和极端梯度升压(XGBoost),以选择应用水质最适合的预测因子(WQ ) 参数;并比较四种基于树的预测模型,即随机森林(RF),条件随机森林(C勒门斯特),随机林业发生器(Ranger)和XGBoost,以预测马来西亚Klang河溶解的氧气(DO)的变化。包括15 WQ参数的总特征,从监视站点数据和来自遥感数据的7个水文组件。所有预测模型都表现良好,根据算法XGBoost和MARS所选择的特征,应用统计评估人员。此外,在MARS和XGBoost算法选择的特征时,所有应用预测模型的XGBoost预测模型的最佳性能分别分别为0.84和0.85的确定系数(R2)值分别为0.84和0.85。 Boruta-XGBoost模型在这种情况下。

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