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陶亮, 孙同景, 段彬, 张光先. 基于粗集的焊接质量级别智能决策[J]. 焊接学报, 2013, (7): 29-32.
引用本文: 陶亮, 孙同景, 段彬, 张光先. 基于粗集的焊接质量级别智能决策[J]. 焊接学报, 2013, (7): 29-32.
TAO Liang, SUN Tongjing, DUAN Bin, ZHANG Guangxian. Intelligent decision of welding quality classification based on rough set[J]. TRANSACTIONS OF THE CHINA WELDING INSTITUTION, 2013, (7): 29-32.
Citation: TAO Liang, SUN Tongjing, DUAN Bin, ZHANG Guangxian. Intelligent decision of welding quality classification based on rough set[J]. TRANSACTIONS OF THE CHINA WELDING INSTITUTION, 2013, (7): 29-32.

基于粗集的焊接质量级别智能决策

Intelligent decision of welding quality classification based on rough set

  • 摘要: 提出了一种焊接质量级别的粗集决策新算法.分析了焊接缺陷智能识别算法的粗糙特征;将分级依据作为条件属性,质量级别作为决策属性,建立了焊接质量智能分级的粗集模型;从焊接缺陷库中选取了多组有代表性的复合焊接缺陷样本,构建知识库,形成决策表;对决策表中的信息进行了计算和约简,得到了最小决策规则.结果表明,相比普通分级算法74%的分级正确率,提出的新算法正确率高达94%,并对智能识别过程中的迁移错误具有很强的鲁棒性,应用前景广阔.

     

    Abstract: The efficiency of welding defect intelligent recognition algorithms is restricted by many conditions such as image quality and its own adaptability,which results in a low accuracy of welding quality classification.A novel rough set based algorithm of welding quality decision was proposed to improve the accuracy of welding quality classification.Firstly,the rough characteristic of the welding defect intelligent recognition was analyzed.Secondly,the rough set model of intelligent classification was founded by taking classification basis as condition attributes and quality levels as decision attributes.And then, several groups of typical samples were chosen from the defect library.The knowledge base was founded to form the decision table.Lastly,the minimum decision rules were obtained after calculating and reducing the redundant information.The experimental result indicates that the accuracy increase from less than 80% to 94% of that of the ordinary algorithms.Furthermore,it is robust to the migration errors during the recognition process.

     

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