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Application of experimental design for the optimization of artificial neural network-based water quality model: a case study of dissolved oxygen prediction

机译:实验设计在人工神经网络水质水质模型优化中的应用 - 一种溶解氧预测的案例研究

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This paper presents an application of experimental design for the optimization of artificial neural network (ANN) for the prediction of dissolved oxygen (DO) content in the Danube River. The aim of this research was to obtain a more reliable ANN model that uses fewer monitoring records, by simultaneous optimization of the following model parameters: number of monitoring sites, number of historical monitoring data (expressed in years), and number of input water quality parameters used. Box–Behnken three-factor at three levels experimental design was applied for simultaneous spatial, temporal, and input variables optimization of the ANN model. The prediction of DO was performed using a feed-forward back-propagation neural network (BPNN), while the selection of most important inputs was done off-model using multi-filter approach that combines a chi-square ranking in the first step with a correlation-based elimination in the second step. The contour plots of absolute and relative error response surfaces were utilized to determine the optimal values of design factors. From the contour plots, two BPNN models that cover entire Danube flow through Serbia are proposed: an upstream model (BPNN-UP) that covers 8 monitoring sites prior to Belgrade and uses 12 inputs measured in the 7-year period and a downstream model (BPNN-DOWN) which covers 9 monitoring sites and uses 11 input parameters measured in the 6-year period. The main difference between the two models is that BPNN-UP utilizes inputs such as BOD, P, and PO~(4)_(3?), which is in accordance with the fact that this model covers northern part of Serbia (Vojvodina Autonomous Province) which is well-known for agricultural production and extensive use of fertilizers. Both models have shown very good agreement between measured and predicted DO (with R _(2)?≥?0.86) and demonstrated that they can effectively forecast DO content in the Danube River.
机译:本文介绍了实验设计的应用,用于优化人工神经网络(ANN),用于在多瑙河中预测溶解氧(DO)含量的预测。本研究的目的是获得更可靠的ANN模型,通过同时优化以下模型参数:监测站点的数量,历史监测数据数量(多年表示)以及输入水质数量的数量使用的参数。 Box-Behnken三个级别的三个因素试验设计应用于ANN模型的同时空间,时间和输入变量优化。使用前馈回传播神经网络(BPNN)执行DO的预测,而使用多滤波器方法选择最重要的输入的选择,该方法是在第一步中结合了Chi-Square排名的多滤波方法。基于相关基于第二步的消除。绝对和相对误差响应表面的轮廓图用于确定设计因素的最佳值。从轮廓图中,提出了两个通过塞尔维亚覆盖整个多瑙河流量的BPNN模型:覆盖贝尔德之前的8个监测网站的上游模型(BPNN-UP),并使用在7年期间和下游模型中测量的12个输入( BPNN-DOWN)涵盖9个监测站点,并在6年期间使用11个输入参数。这两种模型之间的主要区别在于,BPNN-UP利用BOD,P和PO〜(4)_(3?),这是根据这一模型涵盖塞尔维亚北部的事实(Vojvodina自主的事实省份)众所周知,众所周知的农业生产和广泛使用肥料。两种型号在测量和预测的DO之间表现出非常好的协议(使用R _(2)?≥?0.86)并证明他们可以有效预测多瑙河中的内容。

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