Adaptive Estimation and Detection Techniques with Applications

Hybrid systems have been identified as one of the main directions in control theory and attracted increasing attention in recent years due to their huge diversity of engineering applications. Multiplemodel (MM) estimation is the state-of-the-art approach to many hybrid estimation problems. Exist...

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Main Author: Ru, Jifeng
Format: Others
Published: ScholarWorks@UNO 2005
Subjects:
Online Access:http://scholarworks.uno.edu/td/311
http://scholarworks.uno.edu/cgi/viewcontent.cgi?article=1344&context=td
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spelling ndltd-uno.edu-oai-scholarworks.uno.edu-td-13442016-10-21T17:04:10Z Adaptive Estimation and Detection Techniques with Applications Ru, Jifeng Hybrid systems have been identified as one of the main directions in control theory and attracted increasing attention in recent years due to their huge diversity of engineering applications. Multiplemodel (MM) estimation is the state-of-the-art approach to many hybrid estimation problems. Existing MM methods with fixed structure usually perform well for problems that can be handled by a small set of models. However, their performance is limited when the required number of models to achieve a satisfactory accuracy is large due to time evolution of the true mode over a large continuous space. In this research, variable-structure multiple model (VSMM) estimation was investigated, further developed and evaluated. A fundamental solution for on-line adaptation of model sets was developed as well as several VSMM algorithms. These algorithms have been successfully applied to the fields of fault detection and identification as well as target tracking in this thesis. In particular, an integrated framework to detect, identify and estimate failures is developed based on the VSMM. It can handle sequential failures and multiple failures by sensors or actuators. Fault detection and target maneuver detection can be formulated as change-point detection problems in statistics. It is of great importance to have the quickest detection of such mode changes in a hybrid system. Traditional maneuver detectors based on simplistic models are not optimal and are computationally demanding due to the requirement of batch processing. In this presentation, a general sequential testing procedure is proposed for maneuver detection based on advanced sequential tests. It uses a likelihood marginalization technique to cope with the difficulty that the target accelerations are unknown. The approach essentially utilizes a priori information about the accelerations in typical tracking engagements and thus allows improved detection performance. The proposed approach is applicable to change-point detection problems under similar formulation, such as fault detection. 2005-08-10T07:00:00Z text application/pdf http://scholarworks.uno.edu/td/311 http://scholarworks.uno.edu/cgi/viewcontent.cgi?article=1344&context=td University of New Orleans Theses and Dissertations ScholarWorks@UNO Variable structure multiple model estimation Fault detection and identification Maneuvering target tracking Sequential probability ratio test Multiple model estimation Hybrid estimation
collection NDLTD
format Others
sources NDLTD
topic Variable structure multiple model estimation
Fault detection and identification
Maneuvering target tracking
Sequential probability ratio test
Multiple model estimation
Hybrid estimation
spellingShingle Variable structure multiple model estimation
Fault detection and identification
Maneuvering target tracking
Sequential probability ratio test
Multiple model estimation
Hybrid estimation
Ru, Jifeng
Adaptive Estimation and Detection Techniques with Applications
description Hybrid systems have been identified as one of the main directions in control theory and attracted increasing attention in recent years due to their huge diversity of engineering applications. Multiplemodel (MM) estimation is the state-of-the-art approach to many hybrid estimation problems. Existing MM methods with fixed structure usually perform well for problems that can be handled by a small set of models. However, their performance is limited when the required number of models to achieve a satisfactory accuracy is large due to time evolution of the true mode over a large continuous space. In this research, variable-structure multiple model (VSMM) estimation was investigated, further developed and evaluated. A fundamental solution for on-line adaptation of model sets was developed as well as several VSMM algorithms. These algorithms have been successfully applied to the fields of fault detection and identification as well as target tracking in this thesis. In particular, an integrated framework to detect, identify and estimate failures is developed based on the VSMM. It can handle sequential failures and multiple failures by sensors or actuators. Fault detection and target maneuver detection can be formulated as change-point detection problems in statistics. It is of great importance to have the quickest detection of such mode changes in a hybrid system. Traditional maneuver detectors based on simplistic models are not optimal and are computationally demanding due to the requirement of batch processing. In this presentation, a general sequential testing procedure is proposed for maneuver detection based on advanced sequential tests. It uses a likelihood marginalization technique to cope with the difficulty that the target accelerations are unknown. The approach essentially utilizes a priori information about the accelerations in typical tracking engagements and thus allows improved detection performance. The proposed approach is applicable to change-point detection problems under similar formulation, such as fault detection.
author Ru, Jifeng
author_facet Ru, Jifeng
author_sort Ru, Jifeng
title Adaptive Estimation and Detection Techniques with Applications
title_short Adaptive Estimation and Detection Techniques with Applications
title_full Adaptive Estimation and Detection Techniques with Applications
title_fullStr Adaptive Estimation and Detection Techniques with Applications
title_full_unstemmed Adaptive Estimation and Detection Techniques with Applications
title_sort adaptive estimation and detection techniques with applications
publisher ScholarWorks@UNO
publishDate 2005
url http://scholarworks.uno.edu/td/311
http://scholarworks.uno.edu/cgi/viewcontent.cgi?article=1344&context=td
work_keys_str_mv AT rujifeng adaptiveestimationanddetectiontechniqueswithapplications
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