Samenvatting
In this work we focus on the design of reduced-complexity sensor compensation modules based on learning-from-examples techniques. A multi-objective optimization design framework is proposed, where system complexity and compensation uncertainty are considered as two conflicting costs to be jointly minimized. In addition, suitable statistical techniques are applied to cope with the variability in the uncertainty estimation arising from the limited availability of data at design time. Experimental results on a synthetic benchmark are provided to show the validity of the proposed methodology.
Originele taal-2 | English |
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Titel | AMUEM 2007 – IEEE International Workshop on Advanced Methods for Uncertainty Estimation in Measurement, July 16-18, 2007, Trento, Italy |
Pagina's | 127-132 |
Aantal pagina's | 6 |
Status | Published - 16 jul. 2007 |
Evenement | Unknown - Duur: 16 jul. 2007 → … |
Conference
Conference | Unknown |
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Periode | 16/07/07 → … |