Literature DB >> 32050566

Multi-Model- and Soft-Transition-Based Height Soft Sensor for an Air Cushion Furnace.

Shuai Hou1, Xinyuan Zhang1, Wei Dai2, Xiaolin Han1, Fuan Hua3.   

Abstract

The floating height of the strip in an air cushion furnace is a key parameter for the quality and efficiency of production. However, the high temperature and high pressure of the working environment prevents the floating height from being directly measured. Furthermore, the strip has multiple floating states in the whole operation process. It is thus difficult to employ a single model to accurately describe the floating height in different states. This paper presents a multi-model soft sensor to estimate the height based on state identification and the soft transition. First, floating states were divided using a partition method that combined adaptive k-nearest neighbors and principal component analysis theories. Based on the identified results, a hybrid model for the stable state, involving a double-random forest model for the vibration state and a soft-transition model, was created to predict the strip floating height. In the hybrid model for the stable state, a mechanistic model combined thick jet theory and the equilibrium equation of force to cope with the lower floating height. In addition, a novel soft-transition model based on data gravitation that further reflects the intrinsic process characteristic was developed for the transition state. The effectiveness of the proposed approach was validated using a self-developed air cushion furnace experimental platform. This study has important value for the process prediction and control of air cushion furnaces.

Entities:  

Keywords:  air cushion furnace; data-driven; height prediction; soft sensor; transition

Year:  2020        PMID: 32050566     DOI: 10.3390/s20030926

Source DB:  PubMed          Journal:  Sensors (Basel)        ISSN: 1424-8220            Impact factor:   3.576


  1 in total

1.  Phase Prediction of High-Entropy Alloys by Integrating Criterion and Machine Learning Recommendation Method.

Authors:  Shuai Hou; Yujiao Li; Meijuan Bai; Mengyue Sun; Weiwei Liu; Chao Wang; Halil Tetik; Dong Lin
Journal:  Materials (Basel)       Date:  2022-05-05       Impact factor: 3.748

  1 in total

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