Soft-sensor development with adaptive variable selection using nonnegative garrote |
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Authors: | Jian-Guo Wang Shi-Shang Jang David Shan-Hill Wong Shyan-Shu Shieh Chan-Wei Wu |
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Affiliation: | 1. School of Mechatronical Engineering and Automation, Shanghai University, Shanghai Key Lab of Power Station Automation Technology, Shanghai 200072, China;2. Department of Chemical Engineering, National Tsing-Hua University, Hsin-Chu 30013, Taiwan;3. Department of Occupational Safety and Hygiene, Chang Jung University, Tainan 71101, Taiwan;4. Energy & Air Pollution Control Section, New Materials R&D Department, China Steel Corporation, Kaohsiung 81233, Taiwan |
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Abstract: | In this study, a soft-sensor modeling algorithm with adaptive partial least squares nonnegative garrote is developed by incorporating nonstationary disturbance. The approach is capable of monitoring the stationary and nonstationary behaviors of the process dynamics. The procedure of adaptive variable selection ensures that a compact and robust input–output relation is obtained online. Hence, in addition to simply tracking prediction, the model can be used for the detection of structural model change and the emergence of disturbance. The advantages of the proposed method are demonstrated with a simulation example and two industrial applications to predict the temperature of a blast furnace hearth wall and to estimate impurity composition of a distillation column. |
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Keywords: | Nonnegative garrote Partial least squares Variable selection Soft sensor Fault detection Structural model change |
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