Subspace Identification for Industrial Processes

Authors

  • S. D. M. Borjas
  • C. Garcia

DOI:

https://doi.org/10.5540/tema.2011.012.03.0183

Abstract

Subspace identification has been a topic of research along the last years. Methods as MOESP and N4SID are well known and they use the LQ decomposition of certain matrices of input and output data. Based on these methods, it is introduced the MON4SID method, which uses the techniques MOESP and N4SID.

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Published

2011-01-08

How to Cite

Borjas, S. D. M., & Garcia, C. (2011). Subspace Identification for Industrial Processes. Trends in Computational and Applied Mathematics, 12(3), 183–194. https://doi.org/10.5540/tema.2011.012.03.0183

Issue

Section

Original Article