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Applications of artificial neural networks for patterning and predicting aquatic insect species richness in running waters

机译:人工神经网络在流水中模式化和预测水生昆虫物种丰富度中的应用

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Two artificial neural networks (ANNs), unsupervised and supervised learning algorithms, were applied to suggest practical approaches for the analysis of ecological data. Four major aquatic insect orders (Ephemeroptera, Plecoptera, Trichoptera, and Coleoptera, i.e. EPTC), and four environmental variables (elevation, stream order, distance from the source, and water temperature) were used to implement the models. The data were collected and measured at 155 sampling sites on streams of the Adour-Garonne drainage basin (South-western France). The modelling procedure was carried out following two steps. First, a self-organizing map (SOM), an unsupervised ANN, was applied to classify sampling sites using EPTC richness. Second, a backpropagation algorithm (BP),. a supervised ANN, was applied to predict EPTC richness using a set of four environmental variables. The trained SOM classified sampling sites according to a gradient of EPTC richness, and the groups obtained corresponded,to geographic regions of the drainage basin and characteristics of their environmental variables. The SOM showed its convenience to analyze relationships among sampling sites, biological attributes, and environmental variables. After accounting for the relationships in data sets, the BP used to predict the EPTC richness with a, set of four environmental variables, showed a high accuracy (r = 0.91 and r = 0.61 for training and test data sets respectively). The prediction of EPTC richness is thus a valuable tool to. assess disturbances in given areas: by knowing what the EPTC richness should be, we can determine the degree to which disturbances have altered it. The results suggested that methodologies successively using two different neural networks are helpful to understand ecological data through ordination first, and then to predict target variables: (C) 2002 Elsevier Science B.V. All rights reserved. [References: 76]
机译:两种人工神经网络(ANN),无监督和有监督的学习算法,被应用于为生态数据分析提供实用的方法。使用四个主要的水生昆虫纲(E翅目,鞘翅目,毛鳞翅目和鞘翅目,即EPTC)和四个环境变量(海拔,流序,距源的距离和水温)来实现模型。在Adour-Garonne流域(法国西南部)的155个采样点收集并测量了数据。建模过程遵循以下两个步骤。首先,应用自组织图(SOM)(一种无监督的ANN)使用EPTC丰富度对采样点进行分类。第二,反向传播算法(BP)。一个有监督的人工神经网络,使用一组四个环境变量来预测EPTC浓度。训练有素的SOM根据EPTC丰富度的梯度对采样点进行分类,获得的组对应于流域的地理区域及其环境变量的特征。 SOM展示了分析采样点,生物学属性和环境变量之间关系的便利性。在考虑了数据集之间的关系之后,用于预测EPTC丰富度的BP具有4个环境变量集,显示出很高的准确性(分别对于训练和测试数据集r = 0.91和r = 0.61)。因此,预测EPTC丰富度是一个有价值的工具。评估给定区域中的干扰:通过了解EPTC的丰富程度,我们可以确定干扰对其变化的程度。结果表明,先后使用两个不同的神经网络的方法有助于先通过排序了解生态数据,然后再预测目标变量:(C)2002 Elsevier Science B.V.保留所有权利。 [参考:76]

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