Monitoring of Chemical Processes Using Modified Scale Space Filtering and Functional-Link-Associative Neural Network

개선된 스케일 스페이스 필터링과 함수연결연상 신경망을 이용한 화학공정 감시

  • Published : 2000.12.01

Abstract

To operate a process plant safely and economically, process monitoring is very important. Process monitoring is the task to identify the state of the system from sensor data. Process monitoring includes data acquisition, regulatory control, data reconciliation, fault detection, etc. This research focuses on the data recon-ciliation using scale-space filtering and fault detection using functional-link associative neural networks. Scale-space filtering is a multi-resolution signal analysis method. Scale-space filtering can extract highest frequency factors(noise) effectively. But scale-space filtering has too large calculation costs and end effect problems. This research reduces the calculation cost of scale-space filtering by applying the minimum limit to the gaussian kernel. And the end-effect that occurs at the end of the signal of the scale-space filtering is overcome by using extrapolation related with the clustering change detection method. Nonlinear principal component analysis methods using neural network have been reviewed and the separately expanded functional-link associative neural network is proposed for chemical process monitoring. The separately expanded functional-link associative neural network has better learning capabilities, generalization abilities and short learning time than the exiting-neural networks. Separately expanded functional-link associative neural network can express a statistical model similar to real process by expanding the input data separately. Combining the proposed methods-modified scale-space filtering and fault detection method using the separately expanded functional-link associative neural network-a process monitoring system is proposed in this research. the usefulness of the proposed method is proven by its application a boiler water supply unit.

Keywords

References

  1. J., Babaud A. P. Witkin, M. Baudin, and R. O. Duda, 'Uniqueness of the gaussian kernel for scale-space filtering', IEEE Trans. Pattern Analysis Machine Intel, vol. 8, pp. 26-33, 1986
  2. D. Dong, and T. J. McAvoy, 'Nonlinear principal component analysis-Based on principal curves and neural networks,' Computer Chem. Engng., vol. 20, no. 1, pp. 65-78, 1996 https://doi.org/10.1016/0098-1354(95)00003-K
  3. Kramer, M. A., 'Nonlinear principal component analysis using autoassociative neural networks,' AIChE Journal, vol. 37, no. 2, pp. 233-243, 1991 https://doi.org/10.1002/aic.690370209
  4. T., Lindeberg, 'Scale-space for discrete signals,' IEEE Trans. Pattern Analysis Machine Intel, vol. 12, no. 3, pp. 234-254, 1990 https://doi.org/10.1109/34.49051
  5. V. N. Reddy and M. L. Mavrovouniotis, 'An input-training neural network approach for gross error detection and sensor replacement', Trans IchemE., 76(A), pp. 478-489, 1998 https://doi.org/10.1205/026387698525108
  6. 모경주, '클러스터링 기법과 함수연결연상 신경망을 이용한 실시간 화학공정 감시에 관한 연구', 박사학위논문, 서울대학교 화학공정과, 1998
  7. 최용진, '실시간 공정데이터의 정성적 해석을 위한 Scale-space 필터링 기법의 응용과 구현에 관한 연구', 박사학위논문, 서울대학교 화학공정과, 1995