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Input Weighted Data Granulation Using Hybrid Correlation Measures With Application to Metal Properties

机译:使用混合相关措施对金属性能的混合相关措施进行输入加权数据造粒

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This paper introduces a new data granulation algorithm using significance weights on the input space of the data set. This data granulation algorithm aims to provide a more reliable way of grouping data together by directing the data granulation to favor the most significant variables of the process under investigation. Such a data granulation algorithm assists in the elicitation of the initial rule-base of a fuzzy or neural-fuzzy model. A hybrid correlation index, called Significance Index, is introduced to rank the process variables based on the linear correlation coefficient and the partial correlation measure. The new algorithm is used to classify the process variables and subsequently model and predict mechanical properties of heat treated steel. The property under investigation is the Tensile Strength and the case study data set consists of chemical composition and microstructure measurements coupled with Tensile Strength measurements.
机译:本文介绍了一种新的数据造粒算法,在数据集的输入空间上使用显着性权重。该数据造粒算法旨在通过指导数据造粒来提供更可靠的方式对数据进行分组,以支持正在调查的过程中最重要的变量。这种数据造粒算法有助于引发模糊或神经模糊模型的初始规则基础。引入了一种混合相关指数,称为显着性指数,以基于线性相关系数和部分相关性测量来对过程变量进行排序。新算法用于对过程变量和随后的模型进行分类,并预测热处理钢的机械性能。正在研究的性质是拉伸强度,案例研究数据集包括化学成分和微观结构测量,耦合着拉伸强度测量。

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