基于非线性制造数据的先进LLE降维方法

Sitong Xu, W. Lu, Xiang Li, Kee Jin Lee
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引用次数: 2

摘要

现代制造过程往往具有高维和非线性的特点;通常需要减小尺寸来识别关键特征并帮助提高工艺良率。高非线性数据的降维和分析一直是一项具有挑战性的任务。许多方法提出了基于流形学习,旨在学习原始高维空间的低维流形。然而,由于映射通常是隐式的,因此很难在分类结果和原始特征之间建立联系。除了预测结果,行业数据分析也关注特征本身。因此,经常需要将特征选择与降维相结合的方法。提出了一种基于局部线性嵌入(LLE)的非线性降维和特征选择混合方法。LLE和许多滤波器特征选择都有一个共同的邻域搜索过程。该方法结合LLE和ReliefF的最近邻搜索,并根据特征选择结果调整监督LLE中的距离度量,将特征选择过程与非线性模型连接起来,提取关键特征进行进一步分析,提高了过程建模的性能。来自实际工业过程的两个数据集也作为案例进行了说明。
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Advanced LLE Method for Dimension Reduction using Nonlinear Manufacturing Data
Modern manufacturing processes are often characterized by high dimensionality and nonlinearity; dimension reduction is usually required to identify the critical features and help improve the process yield. Dimension reduction and analysis of data with high nonlinearity has been a challenging task. Many methods have been proposed based on manifold learning, which aims to learn a lower-dimensional manifold from the original high-dimensional space. However, since the mappings are usually implicit, it is difficult to build a connection between the classification results and the original features. Apart from the prediction results, industry data analysis also focus on the features themselves. Therefore, methods that are able to combine feature selection with dimension reduction is often needed. This paper proposed a hybrid method for nonlinear dimension reduction and feature selection based on Locally Linear Embedding (LLE). LLE and many filter feature selection shares a common procedure of neighbor search. By integrating nearest neighbor search for both LLE and ReliefF, and adjusting the distance measure in supervised LLE with results from feature selection, the proposed method could connect the feature selection process with the nonlinear model, extract the critical features for further analysis, and improve the performance of process modelling. Two dataset from real industry processes are also illustrated as case studies.
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