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A Three-Stage Neural Model for Attribute Based Classification And Indexing of Fly Ashes

机译:基于属性的分类和射击索引的三阶段神经模型

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The primary objective of this work is to categorize the available fly ashes in different parts of the world into distinct groups based on its compositional attributes. Kohonen's self-organizing feature map and radial basis function networks are utilized for the classification of fly ashes in terms of its chemical parameters. The basic procedure of the methodology consists of three stages: (1) apply self-organizing neural net and delineate distinct groups of fly ashes and identify the group sensitive attributes; (2) find mean values of sensitive attributes of the elicited groups and augment them as start-up prototypes for k-means algorithm and find the refined centroids of these groups; (3) incorporate the centroids in a two layer radial basis function network and refine the delineation of the groups and develop an indexing equation using the weights of the stabilized network. Further, to demonstrate the utility of this classification scheme, the so formed groups were correlated with their performance in High Volume Fly Ash Concrete System [HVFAC]. The categorization was found to be excellent and compares well with Canadian Standard Association's [CSA A 3000] classification scheme.
机译:这项工作的主要目标是根据其组成属性将世界各地的可用飞灰分类为不同的群体。 Kohonen的自组织特征地图和径向基函数网络用于其化学参数方面的苍蝇分类。方法的基本程序由三个阶段组成:(1)申请自组织神经网络和描绘不同的飞灰组,并确定组敏感属性; (2)找到引发组的敏感属性的平均值,并将其作为K-Means算法的启动原型增加,并找到这些群体的精制质心; (3)在两层径向基函数网络中包含质心并用稳定网络的权重优化组的描绘并开发索引方程。此外,为了证明该分类方案的效用,因此所形成的基团与它们在大量粉煤灰混凝土系统[HVFAC]中的性能相关。发现分类是优秀的,与加拿大标准协会的[CSA A 3000]分类方案相比很好。

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