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Estimating suspended sediment load with multivariate adaptive regression spline, teaching-learning based optimization, and artificial bee colony models

机译:利用多元自适应回归样条,基于教学的优化和人工蜂群模型估算悬浮泥沙负荷

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The functional life of a dam is often determined by the rate of sediment delivery to its reservoir. Therefore, an accurate estimate of the sediment load in rivers with dams is essential for designing and predicting a dam's useful lifespan. The most credible method is direct measurements of sediment input, but this can be very costly and it cannot always be implemented at all gauging stations. In this study, we tested various regression models to estimate suspended sediment load (SSL) at two gauging stations on the Çoruh River in Turkey, including artificial bee colony (ABC), teaching-learning-based optimization algorithm (TLBO), and multivariate adaptive regression splines (MARS). These models were also compared with one another and with classical regression analyses (CRA). Streamflow values and previously collected data of SSL were used as model inputs with predicted SSL data as output. Two different training and testing dataset configurations were used to reinforce the model accuracy. For the MARS method, the root mean square error value was found to range between 35% and 39% for the test two gauging stations, which was lower than errors for other models. Error values were even lower (7% to 15%) using another dataset. Our results indicate that simultaneous measurements of streamflow with SSL provide the most effective parameter for obtaining accurate predictive models and that MARS is the most accurate model for predicting SSL.
机译:大坝的功能寿命通常取决于沉积物输送到水库的速率。因此,对于设计和预测大坝的使用寿命,准确估算有大坝的河流中的泥沙负荷至关重要。最可靠的方法是直接测量沉积物输入量,但这可能会非常昂贵,并且不能始终在所有测量站上实施。在这项研究中,我们测试了各种回归模型以估算土耳其Çoruh河上两个测量站的悬浮泥沙负荷(SSL),包括人工蜂群(ABC),基于教学学习的优化算法(TLBO)和多变量自适应回归样条(MARS)。这些模型也相互比较,并与经典回归分析(CRA)进行了比较。 SSL的流量值和先前收集的数据用作模型输入,而预测的SSL数据作为输出。两种不同的训练和测试数据集配置用于增强模型的准确性。对于MARS方法,发现两个测试站的均方根误差均值在35%至39%之间,低于其他模型的误差。使用另一个数据集,错误值甚至更低(7%到15%)。我们的结果表明,用SSL同时测量流量可为获取准确的预测模型提供最有效的参数,而MARS是预测SSL的最准确模型。

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