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Self-Organizing Maps Neural Networks Applied to the Classification of Ethanol Samples According to the Region of Commercialization

机译:自组织映射神经网络在商品化地区乙醇样品分类中的应用

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Physical-chemical analysis data were collected, from 998 ethanol samples of automotive ethanol commercialized in the northern, midwestern and eastern regions of the state of Paraná. The data presented self-organizing maps (SOM) neural networks, which classified them according to those regions. The self-organizing maps best configuration had a 45 x 45 topology and 5000 training epochs, with a final learning rate of 6.7x10-4, a final neighborhood relationship of 3x10-2 and a mean quantization error of 2x10-2. This neural network provided a topological map depicting three separated groups, each one corresponding to samples of a same region of commercialization. Four maps of weights, one for each parameter, were presented. The network established the pH was the most important variable for classification and electrical conductivity the least one. The self-organizing maps application allowed the segmentation of alcohol samples, therefore identifying them according to the region of commercialization.?DOI: http://dx.doi.org/10.17807/orbital.v9i4.982
机译:收集了来自巴拉那州北部,中西部和东部地区的998份汽车乙醇的乙醇样品的理化分析数据。数据显示了自组织映射(SOM)神经网络,并根据这些区域对其进行了分类。自组织地图的最佳配置具有45 x 45的拓扑结构和5000个训练时期,最终学习率为6.7x10-4,最终邻域关系为3x10-2,平均量化误差为2x10-2。该神经网络提供了一个拓扑图,描绘了三个分离的组,每个组对应于相同商品化区域的样本。给出了四个权重图,每个参数一个。网络确定pH是分类的最重要变量,而电导率是至少一个变量。自组织地图应用程序可以对酒精样品进行细分,从而根据商品化区域对其进行识别。DOI:http://dx.doi.org/10.17807/orbital.v9i4.982

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