利用复杂系统的能量特性,引入影响力概念,研究动态复杂网络的社团划分方法,以有效地发现股票网络的社团结构.利用股票收盘价,通过引入影响力和结点中心性定义,构建以影响力为权值的股票网络,并提出一种基于影响力计算模型的股票网络中...利用复杂系统的能量特性,引入影响力概念,研究动态复杂网络的社团划分方法,以有效地发现股票网络的社团结构.利用股票收盘价,通过引入影响力和结点中心性定义,构建以影响力为权值的股票网络,并提出一种基于影响力计算模型的股票网络中心结点层次聚类算法(based on the center node hierarchical clustering algorithm about the influence calculation model of stock network,BCNHC).BCNHC算法首先引入结点活跃性和影响力的定义,并给出网络中结点的影响力计算模型;然后,基于所引入的结点中心性的度量准则,选取结点中心性大的结点为中心结点,并利用结点间的亲密性和影响力模型确定相邻结点之间影响力关联度;进而,通过优先选择度值最小的结点向中心结点聚集,以降低因相邻结点所属社团不确定而导致的错误聚类;在此基础上,利用社团平均影响力关联度对相邻社团进行聚类,保证社团内所有结点的影响力关联度最大化,直至整个网络模块度最大.最后,在构建的股票网络上的实验比较和分析,验证BCNHC算法的可行性.展开更多
The visual inspection is an economical and effective method for welding. For measuring the feature sizes of grooves,a method based on line structured light is presented. Firstly,an adaptive algorithm to extract the su...The visual inspection is an economical and effective method for welding. For measuring the feature sizes of grooves,a method based on line structured light is presented. Firstly,an adaptive algorithm to extract the subpixel centerline of structured light stripes is introduced to deal with the uneven width and grayscale distributions of laser stripes,which is based on the quadratic weighted grayscale centroid. By means of region-of-interest(ROI)division and image difference,an image preprocessing algorithm is developed for filtering noise and improving image quality. Furthermore,to acquire geometrical dimensions of various grooves and groove types precisely,the subpixel feature point extraction algorithm of grooves is designed. Finally, experimental results of feature size measuring show that the absolute error of measurement is 0.031—0.176 mm,and the relative error of measurement is 0.2%—3.6%.展开更多
文摘利用复杂系统的能量特性,引入影响力概念,研究动态复杂网络的社团划分方法,以有效地发现股票网络的社团结构.利用股票收盘价,通过引入影响力和结点中心性定义,构建以影响力为权值的股票网络,并提出一种基于影响力计算模型的股票网络中心结点层次聚类算法(based on the center node hierarchical clustering algorithm about the influence calculation model of stock network,BCNHC).BCNHC算法首先引入结点活跃性和影响力的定义,并给出网络中结点的影响力计算模型;然后,基于所引入的结点中心性的度量准则,选取结点中心性大的结点为中心结点,并利用结点间的亲密性和影响力模型确定相邻结点之间影响力关联度;进而,通过优先选择度值最小的结点向中心结点聚集,以降低因相邻结点所属社团不确定而导致的错误聚类;在此基础上,利用社团平均影响力关联度对相邻社团进行聚类,保证社团内所有结点的影响力关联度最大化,直至整个网络模块度最大.最后,在构建的股票网络上的实验比较和分析,验证BCNHC算法的可行性.
基金supported by the National Natural Science Foundation of China(No. 51975293)the Aeronautical Science Foundation of China (No. 2019ZD052010)。
文摘The visual inspection is an economical and effective method for welding. For measuring the feature sizes of grooves,a method based on line structured light is presented. Firstly,an adaptive algorithm to extract the subpixel centerline of structured light stripes is introduced to deal with the uneven width and grayscale distributions of laser stripes,which is based on the quadratic weighted grayscale centroid. By means of region-of-interest(ROI)division and image difference,an image preprocessing algorithm is developed for filtering noise and improving image quality. Furthermore,to acquire geometrical dimensions of various grooves and groove types precisely,the subpixel feature point extraction algorithm of grooves is designed. Finally, experimental results of feature size measuring show that the absolute error of measurement is 0.031—0.176 mm,and the relative error of measurement is 0.2%—3.6%.