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Imbalanced data classification for defective product prediction based on industrial wireless sensor network

机译:基于工业无线传感器网络的有缺陷产品预测的不平衡数据分类

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In the Industry 4.0 era, manufacturers can establish smart factories based on the industry wireless sensor network (IWSN). And data analysis plays a vital role to realize smart manufacturing. However, data collected in the real production through IWSN generally represent features as incomplete and imbalanced resulting in incorrect or biased analysis results. Therefore, a solution is proposed to resolve this problem, in which K Nearest Neighbor (KNN) algorithm is applied to do missing value imputation and Adaptive Synthetic Sampling algorithm is utilized to generate a balanced dataset. Furthermore, a 2-layer feedforward neural network (FNN) is designed as a classifier to predict defective products. The classification performance in testing using the resolution proposed is far superior to that of 2-layer FNN using the original dataset directly or employing the KNN algorithm for preprocessing first whose recall value is 94%, the precision value is 87.9%, and the F1-measure value is 90.8%. To sum up, the solution proposed can improve the classification performance dramatically, especially for the minority class, when encountering the incomplete and imbalanced data.
机译:在行业4.0时代,制造商可以根据行业无线传感器网络(IWSN)建立智能工厂。和数据分析对实现智能制造起着至关重要的作用。然而,通过IWSN的实际生产中收集的数据通常表示不完整和不平衡的功能,从而产生不正确或偏置的分析结果。因此,提出了一种解决方案来解决这个问题,其中k最近邻居(knn)算法应用于缺少值归档,并且使用自适应合成采样算法来生成平衡数据集。此外,将2层前馈神经网络(FNN)设计为用于预测缺陷产品的分类器。使用原始数据集直接使用原始数据集的测试中的测试中的分类性能远远优于2层FNN,或者采用KNN算法首先预处理为94 %,精度值为87.9 %,以及F1测量值为90.8 %。为了总结,在遇到不完整和不平衡的数据时,提出的解决方案可以显着提高分类性能,特别是对于少数类别。

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