Tank Level Prediction Using Kalman and Lainiotis Filters | Chapter 01 | Advances in Mathematics and Computer Science Vol. 4
Tank level knowledge is very important
in many applications, as in oil tank. The liquid in the tank can be static,
filling or emptying, or sloshing, resulting to uncertain knowledge of tank
level. In this work the tank level is predicted using prediction algorithms
based on Kalman and Lainiotis filters. Time invariant and steady state
prediction algorithms for static model and filling/emptying model are
implemented. Time varying prediction algorithms for sloshing and
filling/emptying and sloshing models are also implemented. The prediction
algorithms’ behavior is examined concluding that the obtained predictions are
very close to the real tank level. The calculation burdens of the prediction
algorithms are derived, determining the faster prediction algorithm for each
model.
Author(s) Details
Professor N. Assimakis
General Department, National
and Kapodistrian University of Athens, Greece.
Professor G. Tziallas
General Department,
University of Thessaly, Greece.
Professor I.
Anagnostopoulos
School of Mechanical
Engineering, National Technical University of Athens, Greece.
MSc A. Polyzos
Cross Software Solutions
IKE, Greece.
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