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Identification, prediction and detection of the process fault in a cement rotary kiln by locally linear neuro-fuzzy technique

Sadeghian, M ; Sharif University of Technology

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  1. Type of Document: Article
  2. DOI: 10.1109/ICCEE.2009.208
  3. Abstract:
  4. In this paper, we use nonlinear system identification method to predict and detect process fault of a cement rotary kiln. After selecting proper inputs and output, an input-output model is identified for the plant. To identify the various operation points in the kiln, Locally Linear Neuro-Fuzzy (LLNF) model is used. This model is trained by LOLIMOT algorithm which is an incremental tree-structure algorithm. Then, by using this method, we obtained 3 distinct models for the normal and faulty situations in the kiln. One of the models is for normal condition of the kiln with 15 minutes prediction horizon. The other two models are for the two faulty situations in the kiln with 7 minutes prediction horizon are presented. At the end, we detect these faults in validation data. The data collected from White Saveh Cement Company is used for in this study. © 2009 IEEE
  5. Keywords:
  6. Cement rotary kiln, fault detectio ; Delay estimation method ; Locally linear neuro fuzzy model ; LOLIMOT ; Cement rotary kiln ; Delay estimation ; Input output model ; LOLIMOT algorithms ; Neuro-Fuzzy ; Neuro-Fuzzy model ; Neuro-fuzzy techniques ; Non-linear system identification ; Normal condition ; Operation point ; Prediction horizon ; Process faults ; Tree-structure ; Validation data ; Cements ; Electrical engineering ; Fault detection ; Forecasting ; Nonlinear systems ; Rotary kilns ; Time delay ; Trees (mathematics) ; Furnaces
  7. Source: 2009 International Conference on Computer and Electrical Engineering, ICCEE 2009, 28 December 2009 through 30 December 2009 ; Volume 1 , 2009 , Pages 174-178 ; 9780769539256 (ISBN)
  8. URL: http://ieeexplore.ieee.org/document/5380643