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Applying artificial neural network theory to exploring diatom abundance at tropical Putrajaya Lake, Malaysia

机译:运用人工神经网络理论探索马来西亚热带布城湖硅藻的丰度

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摘要

This article explores the relationship between diatom abundance and water quality variables in tropical Putrajaya Lake based on limnological data collected from 2001 to 2006, using supervised and unsupervised artificial neural networks (ANNs). Recurrent artificial neural network (RANN) was used for the supervised ANNs and Kohonen Self Organizing Feature Maps (SOMs) for the unsupervised ANNs. The RANN was developed for the prediction of diatom abundance using variables selected by sensitivity analysis (water temperature, pH, dissolved oxygen, and turbidity). The RANN model performance was measured using root mean squared error (19.0 cell/mL) and the r-value (0.7). SOM was used in this study for classification and clustering of diatom abundance in relation to selected water quality variables and was validated using a sensitivity curve of diatom abundance over the selected variable range generated from RANN. SOM has been employed in this study for pattern discovery of diatom abundance at Putrajaya Lake. The extracted patterns of diatom abundance in terms of propositional IF. . .else rules were tested and yielded an accuracy rate of 87%.
机译:本文使用有监督和无监督的人工神经网络,根据2001年至2006年收集的湖泊学数据,探索热带布城湖硅藻丰度与水质变量之间的关系。递归人工神经网络(RANN)用于受监督的ANN,Kohonen自组织特征图(SOM)用于无​​监督的ANN。使用通过敏感性分析(水温,pH,溶解氧和浊度)选择的变量来开发RANN来预测硅藻的丰度。使用均方根误差(19.0 cell / mL)和r值(0.7)测量RANN模型的性能。 SOM在本研究中用于对所选水质变量进行硅藻丰度的分类和聚类,并使用在RANN生成的所选变量范围内的硅藻丰度灵敏度曲线进行了验证。 SOM已用于这项研究中,以发现布城湖硅藻丰度的模式。根据命题中频提取的硅藻丰度模式。 。测试了其他规则,得出的准确率为87%。

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