location: Current position: Prof. Tao Liu >> Scientific Research >> Paper Publications

Novel common and special features extraction for monitoring multi-grade processes

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Indexed by:期刊论文

Date of Publication:2018-06-01

Journal:JOURNAL OF PROCESS CONTROL

Included Journals:SCIE

Volume:66

Page Number:98-107

ISSN No.:0959-1524

Key Words:Multi-grade processes; Process monitoring; Limited samples; Common feature extraction; Subspace division

Abstract:Since industrial plants manufacture different specifications of products in the same production line by simply changing the recipes or operations to meet with diversified market demands, it often happens that very limited samples could be measured for each grade of products, thus inadequate to establish a model for monitoring the corresponding process. To cope with the difficulty for monitoring such multi-grade processes, a novel feature extraction method is proposed in this paper to establish process models based on the available data for each grade, respectively. Firstly, a common feature extraction algorithm is proposed to determine the common directions shared by different grades of these processes. Based on the extracted common features, the principal component analysis is then used to extract the special directions for each grade, respectively. Consequently, each grade of these processes is divided into three parts, namely common part, special part, and residual part. Three indices are correspondingly introduced for on-line monitoring of each part, respectively. A numerical case and an industrial polyethylene process are used to demonstrate the effectiveness of the proposed method. (C) 2018 Elsevier Ltd. All rights reserved.

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