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Neural networks for web-process inspection

机译:用于Web流程检查的神经网络

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Abstract: This paper examines two issues upon any industrial inspection system using a neural network: the feature set which the sensory system must provide and the accuracy of neural based-inspection. The context is web-process inspection which requires rapid examination of vast amounts of data for on-line detection of faults in the sheet material. Feature vectors with nine or 17 dimensions, created by a simulated segmented photodetector using measurement of the angular distribution over a 25$DGR cone angle of the scattering were evaluated for inspection of CrO$-2$/ coated sheet steel samples. The scattered coherent light from the surface of the material being processed could be directly conditioned by a photodetector so as to produce this small set of features which are then examined by a neural network trained to find and categorize unsatisfactory surface conditions. details are presented to show how a modified feature set was developed and tested after an examination of feature space. This new, smaller set proved to be more accurate than the larger set. Classification by fault or no fault categorized 133 samples correctly out of 135, while there were seven errors in one attempt at classification into the various common surface faults out of the same number of test samples and nine in another. It is shown that a bit of insight in feature selection can improve the capability of the network to recognize faults.!9
机译:摘要:本文使用神经网络研究了任何工业检测系统上的两个问题:传感系统必须提供的功能集和基于神经的检测的准确性。上下文是网络过程检查,需要快速检查大量数据以在线检测板材中的故障。评估了模拟分段光电探测器使用25°DGR散射锥角上的角分布测量所创建的九维或17维特征向量,以检查CrO $ -2 $ /涂层钢板样品。来自被加工材料表面的散射相干光可以由光电探测器直接调节,以产生这小部分特征,然后由经过训练以发现并分类不令人满意的表面条件的神经网络对其进行检查。提供了详细信息以显示在检查特征空间后如何开发和测试修改的特征集。事实证明,此新的较小的集合比较大的集合更准确。按故障分类或无故障分类可将135个样品正确分类,而一次尝试有7个错误,是从相同数量的测试样品中分类为各种常见的表面缺陷,而另一次则有9个。结果表明,对功能选择的一些了解可以提高网络识别故障的能力。!9

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