scholarly journals Maximum Expected Information Approach for Improving Efficiency of Categorical Loudness Scaling

2020 ◽  
Vol 11 ◽  
Author(s):  
Sara E. Fultz ◽  
Stephen T. Neely ◽  
Judy G. Kopun ◽  
Daniel M. Rasetshwane
2000 ◽  
Vol 32 (11) ◽  
pp. 58-64
Author(s):  
Mikhail Z. Zgurowsky ◽  
Igor I. Kovalenko ◽  
Kuteiba Kondrak ◽  
Elias Kondrak

Author(s):  
Helena Bordini de Lucas ◽  
Steven L. Bressler ◽  
Fernanda Selingardi Matias ◽  
Osvaldo Anibal Rosso

Sensors ◽  
2021 ◽  
Vol 21 (10) ◽  
pp. 3400
Author(s):  
Tulay Ercan ◽  
Costas Papadimitriou

A framework for optimal sensor placement (OSP) for virtual sensing using the modal expansion technique and taking into account uncertainties is presented based on information and utility theory. The framework is developed to handle virtual sensing under output-only vibration measurements. The OSP maximizes a utility function that quantifies the expected information gained from the data for reducing the uncertainty of quantities of interest (QoI) predicted at the virtual sensing locations. The utility function is extended to make the OSP design robust to uncertainties in structural model and modeling error parameters, resulting in a multidimensional integral of the expected information gain over all possible values of the uncertain parameters and weighted by their assigned probability distributions. Approximate methods are used to compute the multidimensional integral and solve the optimization problem that arises. The Gaussian nature of the response QoI is exploited to derive useful and informative analytical expressions for the utility function. A thorough study of the effect of model, prediction and measurement errors and their uncertainties, as well as the prior uncertainties in the modal coordinates on the selection of the optimal sensor configuration is presented, highlighting the importance of accounting for robustness to errors and other uncertainties.


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