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2014 | 23 | 2 |

Tytuł artykułu

Study on clustering multi-model modeling method for activated sludge process

Warianty tytułu

Języki publikacji

EN

Abstrakty

EN
For a complex process like wastewater treatment, a single model suffers from heavy burden calculation and poor accuracy. A multi-model modeling method based on an improved supervised k-means clustering algorithm is proposed. The method introduced the cluster center initialization idea of CCIA algorithm into classical k-means clustering algorithm applied to group the data into clusters, and the least squares method is used to construct ARX sub-models. The system model is constructed by weighing all ARX sub-models. The proposed method is used to identify the ammonia concentration model for Benchmark wastewater treatment system and the actual plant process data. Simulation results show that the proposed method can be used to fit nonlinear characteristics of the system with high precision.

Słowa kluczowe

Wydawca

-

Rocznik

Tom

23

Numer

2

Opis fizyczny

p.563-567,fig.,ref.

Twórcy

autor
  • College of Electrical and Information Engineering, Lanzhou University of Technology, Lanzhou 730050, China
autor
  • College of Electrical and Information Engineering, Lanzhou University of Technology, Lanzhou 730050, China
autor
  • College of Electrical and Information Engineering, Lanzhou University of Technology, Lanzhou 730050, China
autor
  • College of Electrical and Information Engineering, Lanzhou University of Technology, Lanzhou 730050, China

Bibliografia

  • 1. LI Q., LEI H., SHAO L., CHEN Z. Multiple-model modeling method based on differential evolution algorithm. Control and Decision, 25, (12), 1866, 2010.
  • 2. HUANG Y., ZHANG S. A multi-model LSSVM inverse control system based on nearest neighbor clustering algorithm. Automation & Instrumentation, 2, 10, 2012.
  • 3. CONG Q.M., ZHAO L.J., CHAI T.Y. A Multi-model Softsensing Method of Water Quality in Wastewater Treatment Process. Journal of Northeastern University (Natural Science), 31, (9), 1221, 2010.
  • 4. XU HAIXIA, LIU GUOHAI, ZHOU DAWEI, MEI CONGLI. Soft sensor modeling based on modified kernel fuzzy clustering algorithm. Chinese Journal of Scientific Instrument, 30, (10), 2226, 2009.
  • 5. LI W., YANG Y.P., WANG N. Multi-model LSSVM regression modeling based on kernel fuzzy clustering. Control and Decision, 23, (5), 560, 2008.
  • 6. ZHANG Y., LIU G., WEI H., ZHAO W. Multi-model LSSVM modeling for nonlinear systems based on twice affinity propagation clustering. Control and Decision, 27, (7), 1117, 2012.
  • 7. FREY B. J., DUECK D. Clustering by passing message between data points. Science, 315, (5814), 972, 2007.
  • 8. LIKAS A., VLASSIS N., VERBEEK J.J. The global k-means clustering algorithm. Pattern Recogn., 36, (2), 451, 2003.
  • 9. KHAN S.S., AHMAD A. Cluster center initialization algorithm for k-means clustering. Pattern Recogn. Lett., 25, (11), 1293, 2004.
  • 10. MITRA P., MURTHY C.A., PAL S.K. Density-Based Multiscale Data Condensation. IEEE T. Pattern Anal., 24, (6), 734, 2002.
  • 11. ALEX J., BENEDETTI L., COPP J., GERNAEY K.V., JEPPSSON U., NOPENS I., PONS M.-N., RIEGER L., ROSEN C., STEYER J.P., VANROLLEGHEM P., WINKLER S. Benchmark Simulation Model No. 1 (BSM1). Prepared by the IWA Taskgroup on Benchmarking of Control Strategies for WWTPs, 2008.
  • 12. DU X. J., HAO X. H., LI H. J., MA Y. W. Study on Modeling and Simulation of Wastewater Biochemical Treatment Activated Sludge Process. Asian J. Chem., 23, (10), 4457, 2011.

Typ dokumentu

Bibliografia

Identyfikatory

Identyfikator YADDA

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