bibtype A - Abstract
ARLID 0352232
utime 20240103194414.8
mtime 20110104235959.9
title (primary) (eng) Bayesian Soft Sensing in Cold Sheet Rolling
specification
page_count 1 s.
media_type WWW
serial
ARLID cav_un_epca*0352231
title Abstracts of Contributions to 6th International Workshop on Data-Algorthms-Decision Making
page_num 45-45
publisher
place Praha
name ÚTIA AV ČR, v.v.i
year 2010
keyword soft sensor
keyword bayesian statistics
keyword bayesian model averaging
author (primary)
ARLID cav_un_auth*0242543
name1 Dedecius
name2 Kamil
full_dept (cz) Adaptivní systémy
full_dept (eng) Department of Adaptive Systems
department (cz) AS
department (eng) AS
institution UTIA-B
full_dept Department of Adaptive Systems
fullinstit Ústav teorie informace a automatizace AV ČR, v. v. i.
author
ARLID cav_un_auth*0101119
name1 Jirsa
name2 Ladislav
full_dept (cz) Adaptivní systémy
full_dept Department of Adaptive Systems
department (cz) AS
department AS
institution UTIA-B
full_dept Department of Adaptive Systems
fullinstit Ústav teorie informace a automatizace AV ČR, v. v. i.
source
url http://library.utia.cas.cz/separaty/2010/AS/dedecius-bayesian soft sensing in cold sheet rolling.pdf
cas_special
project
project_id 7D09008
agency GA MŠk
country CZ
ARLID cav_un_auth*0261683
research CEZ:AV0Z10750506
abstract (eng) We are concerned with the theory of soft sensing in industrial applications, namely the cold sheet rolling. In comparison to the classical sensing, the generally cheaper soft sensors provide the ability to process large amounts of measured data, used for building predictive models. To achieve robustness of these sensors, their main purpose - prediction of variables which are not directly measurable - is often accompanied by other important tasks, e.g., the fault detection and diagnosis, control, graceful degradation mechanisms etc. We present a Bayesian approach to the statistical soft sensing in the data-driven paradigm. Our goal is to predict a physical variable, which is crucial for the rolling process, but which can be measured only with a high traffic delay. Fortunately there exists a set of other variables measured during the process, which are more or less correlated with the quality of interest. Using a class of several different Bayesian regressive models, determining the predicted value with a reliability generally unknown at the particular time instant, the high predictive performance of the sensor is achieved by their combination in a way inspired by Bayesian model averaging. The approach allows fast adaptivity of the sensor and its graceful degradation if measurements dropouts or hardware failures occur.
action
ARLID cav_un_auth*0267155
name 6th International Workshop on Data–Algorithms–Decision Making
place Jindřichův Hradec
dates 2.12.2010-4.12.2010
country CZ
reportyear 2011
RIV BB
mrcbC52 4 O 4o 20231122134330.9
permalink http://hdl.handle.net/11104/0191791
arlyear 2010
mrcbTft \nSoubory v repozitáři: 0352232.pdf
mrcbU63 cav_un_epca*0352231 Abstracts of Contributions to 6th International Workshop on Data-Algorthms-Decision Making 45 45 Praha ÚTIA AV ČR, v.v.i 2010