ISSN:
0008-4034
Content:
The development and implementation of better control strategies to improve the overall performance of a plant is often hampered by the lack of available measurements of key quality variables. One way to resolve this problem is to develop a soft sensor that is capable of providing process information as often as necessary for control. One potential area for implementation is in a hot steel rolling mill, where the final strip thickness is the most important variable to consider. Difficulties with this approach include the fact that the data may not be available when needed or that different conditions (operating points) will produce different process conditions. In this paper, a soft sensor is developed for the hot steel rolling mill process using least-squares support vector machines and a properly designed bias update term. It is shown that the system can handle multiple different operating conditions (different strip thickness setpoints, and input conditions).
In:
The Canadian journal of chemical engineering, Ottawa, Ontario : Soc., 1957, 96(2018), 1, Seite 171-178, 0008-4034
In:
volume:96
In:
year:2018
In:
number:1
In:
pages:171-178
Language:
English
Author information:
Shardt, Yuri A. W.
Author information:
Ding, Steven X.
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