Corpus ID: 624241

THE CONTINUOUS-TIME SMOOTH VARIABLE STRUCTURE FILTER

@inproceedings{Gadsden2011THECS,
  title={THE CONTINUOUS-TIME SMOOTH VARIABLE STRUCTURE FILTER},
  author={S. Gadsden and M. E. Sayed and S. Habibi},
  year={2011}
}
State and parameter estimation techniques are important tools which provide accurate estimates of system states. This is important for the reliable and safe control of mechanical and electrical systems. Most estimation techniques are derived in discrete-time, due to the wide use of digital computers. However, continuous-time derivations do exist, and are particularly useful for studying estimation problems with small sampling intervals. The smooth variable structure filter (SVSF) is a… Expand

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