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| | style="color:#000;" | <div id="mp-tfa" style="padding:2px 5px"> | | | style="color:#000;" | <div id="mp-tfa" style="padding:2px 5px"> |
− | '''Presenter:''' [mailto:benjamin.noack@kit.edu Benjamin Noack] and [mailto:florian.pfaff@kit.edu Florian Pfaff]<br /> | + | '''Presenter:''' [mailto:florian.pfaff@kit.edu Florian Pfaff] and [mailto:benjamin.noack@kit.edu Benjamin Noack]<br /> |
| '''Length:''' 3 hours<br /> | | '''Length:''' 3 hours<br /> |
| '''Brief description:''' The tutorial covers various Kalman-filter-like estimators when the observed process has high uncertainties and therefore cannot be captured accurately with a linear models and perfectly selected noise distributions. The tutorial focusses on hybrid estimators relying on the combination of stochastic and set-membership approaches. Several solutions will be presented during this tutorial along with new challenges showing the versatility of hybrid estimation.<br /> | | '''Brief description:''' The tutorial covers various Kalman-filter-like estimators when the observed process has high uncertainties and therefore cannot be captured accurately with a linear models and perfectly selected noise distributions. The tutorial focusses on hybrid estimators relying on the combination of stochastic and set-membership approaches. Several solutions will be presented during this tutorial along with new challenges showing the versatility of hybrid estimation.<br /> |