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首页> 外文期刊>ScientificWorldJournal >Comparison of Artificial Neural Network (ANN) Model Development Methods for Prediction of Macroinvertebrate Communities in the Zwalm River Basin in Flanders, Belgium
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Comparison of Artificial Neural Network (ANN) Model Development Methods for Prediction of Macroinvertebrate Communities in the Zwalm River Basin in Flanders, Belgium

机译:比较人工神经网络(ANN)模型开发方法,以便在比利时ZWALM河流域预测大型脊椎动物群落

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Modelling has become an interesting tool to support decision making in water management. River ecosystem modelling methods have improved substantially during recent years. New concepts, such as artificial neural networks, fuzzy logic, evolutionary algorithms, chaos and fractals, cellular automata, etc., are being more commonly used to analyse ecosystem databases and to make predictions for river management purposes. In this context, artificial neural networks were applied to predict macroinvertebrate communities in the Zwalm River basin (Flanders, Belgium). Structural characteristics (meandering, substrate type, flow velocity) and physical and chemical variables (dissolved oxygen, pH) were used as predictive variables to predict the presence or absence of macroinvertebrate taxa in the headwaters and brooks of the Zwalm River basin. Special interest was paid to the frequency of occurrence of the taxa as well as the selection of the predictors and variables to be predicted on the prediction reliability of the developed models. Sensitivity analyses allowed us to study the impact of the predictive variables on the prediction of presence or absence of macroinvertebrate taxa and to define which variables are the most influential in determining the neural network outputs.
机译:建模已成为支持水管理决策的有趣工具。河流生态系统建模方法近年来大幅提升。人工神经网络,模糊逻辑,进化算法,混沌和分形,蜂窝自动机等的新概念正在更常用于分析生态系统数据库并对河流管理目的进行预测。在这种情况下,人工神经网络被应用于预测Zwalm河流域(比利时法兰兰)的大型脊椎动物群落。使用结构特征(蜿蜒,衬底类型,流速)和物理和化学变量(溶解氧,pH)作为预测变量,以预测Zwalm河流域的河口和布鲁克斯中的大型脊椎动物分类群的存在或不存在。特殊兴趣被支付给分类群的发生频率,以及选择预测和变量的选择,以预测开发模型的预测可靠性。敏感性分析使我们能够研究预测变量对预测的预测或缺乏大型门静脉分类群,并定义哪些变量是确定神经网络输出中最有影响力的影响。

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