Ahsan Muhammad, Mashuri Muhammad, Khusna Hidayatul
Department of Statistics, Institut Teknologi Sepuluh Nopember, Surabaya, Indonesia.
Heliyon. 2022 Jun 6;8(6):e09590. doi: 10.1016/j.heliyon.2022.e09590. eCollection 2022 Jun.
The products are commonly measured by two types of quality characteristics. The variable characteristics measure the numerical scale. Meanwhile, the attribute characteristics measure the categorical data. Furthermore, in monitoring processes, the multivariate variable quality characteristics may have a nonlinear relationship. In this paper, the Kernel PCA control chart is applied to monitor the mixed (attribute and variable) characteristics with the nonlinear relationship. First, the Average Run Length (ARL) is utilized to evaluate the performance of the proposed chart. The simulation studies show that the proposed chart can detect the shift in process. For this case, the Radial Basis Function (RBF) kernel demonstrates the consistent performance for several cases studied. Second, the performance comparison between the proposed chart and the conventional PCA Mix chart is performed. Based on the results, it is known that the proposed chart performs better in detecting the small shift in process. Finally, the proposed chart is applied to monitor the well-known NSL KDD dataset. The proposed chart shows good accuracy in detecting intrusion in the network. However, it still produces more False Negatives (FN).
产品通常由两种类型的质量特性来衡量。变量特性测量数值尺度。同时,属性特性测量分类数据。此外,在监控过程中,多变量变量质量特性可能具有非线性关系。本文应用核主成分分析(Kernel PCA)控制图来监控具有非线性关系的混合(属性和变量)特性。首先,利用平均运行长度(ARL)来评估所提出的控制图的性能。模拟研究表明,所提出的控制图能够检测过程中的偏移。对于这种情况,径向基函数(RBF)核在几个研究案例中表现出一致的性能。其次,对所提出的控制图与传统主成分分析混合控制图进行性能比较。基于结果可知,所提出的控制图在检测过程中的小偏移方面表现更好。最后,将所提出的控制图应用于监控著名的NSL KDD数据集。所提出的控制图在检测网络入侵方面显示出良好的准确性。然而,它仍然会产生更多的误报(FN)。