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Niu, Yan: Online force reconstruction for Structural Health Monitoring. 2018
Inhalt
Titelblatt
Acknowledgements
Contents
Nomenclature
Abbreviations
Fixed symbols
Operators
Sets
Abstract
Kurzfassung
1 Introduction
1.1 Introduction to Structural Health Monitoring (SHM)
1.2 Motivation
1.3 Basic idea of online force reconstruction
1.4 State of the art
1.5 Original contributions
1.6 Organization of the thesis
2 Theoretical foundations
2.1 Structural model construction
2.1.1 Second-order structural model
2.1.2 Continuous-time state-space structural model
2.1.3 Discrete-time state-space structural model
2.1.4 Experimental Modal Analysis (EMA)
2.1.5 Operational Modal Analysis (OMA)
2.1.6 Model updating
2.2 Observer
2.3 Unknown Input Observer (UIO)
2.4 Kalman filter
2.5 Kalman-Bucy filter
2.6 Real-time executable state and input estimation algorithms
2.6.1 Proportional-Integral observer (PI observer)
2.6.2 Simultaneous State and Input Estimator (SS&IE)
2.6.3 Kalman Filter and a Recursive Least-Squares Estimator (KF+RLSE)
2.6.4 Recursive Three-Step Filter (RTSF)
2.6.5 Kalman Filter with Unknown Inputs (KF-UI)
2.6.6 Augmented Kalman Filter (AKF)
2.6.7 Steady-State Kalman Filter and a Least-Squares Estimator
2.7 Correlation of the process noise and the measurement noise
3 Problem formulation and methodology
3.1 Force reconstruction is a kind of inverse problem
3.2 Ill-posed nature in force reconstruction
3.3 From ill-posedness to well-posedness in online force reconstruction
3.3.1 Observability
3.3.2 Stability and convergence
3.4 Methodology for online force reconstruction with structural modal parameters identified by experimental modal analysis
3.5 Methodology for online force reconstruction with structural modal parameters identified by operational modal analysis
3.6 Methodology for the reconstruction of a distributed force with unknown spatial distribution
4 Proposed algorithm modifications
4.1 Simultaneous State and Input Estimator for Linear systems (SS&IE_L)
4.2 Steady-state of KF+RLSE
4.3 Generalized Kalman filter with unknown inputs (G-KF-UI)
4.3.1 Difference and relationship between the KF-UI and the RTSF
4.3.2 Proposed modifications to the KF-UI
4.3.3 Generalized form of the KF-UI
4.3.4 Steady-state of G-KF-UI
4.4 Modified Steady-State Kalman Filter and a Least-Squares Estimator
5 Study on application-oriented algorithm selection
5.1 From mathematics to practical requirements
5.1.1 Assumption on inputs
5.1.2 Assumption on initial state estimate
5.1.3 Assumption on direct feed-through
5.1.4 Mathematical conditions on system matrices
5.2 Benchmark study
5.2.1 Introduction to the benchmark structure
5.2.2 Structural model construction for the benchmark structure
5.2.3 Considered forces
5.2.4 Test using PI observer
5.2.5 Test using KF+RLSE
5.2.6 Test using SSIE_L
5.2.7 Test using AKF
5.2.8 Test using KF-UI and G-KF-UI
5.2.9 Test using SSKF+LSE and MSSKF+LSE
5.2.10 Summary
5.3 Proposed guidance for algorithm selection
6 Practical application to the Canton Tower
6.1 Introduction
6.1.1 Canton Tower
6.1.2 SHM system for the Canton Tower
6.1.3 SHM benchmark study for the Canton Tower
6.1.4 Organization of this chapter
6.2 Methodology for wind load reconstruction for the Canton Tower
6.3 Operational modal analysis for the Canton Tower
6.3.1 Sensor deployment and field measurements
6.3.2 Stationarity test
6.3.3 OMA results
6.3.4 Discussion
6.4 Model updating for the Canton Tower
6.4.1 Modified reduced-order FE model of the Canton Tower
6.4.2 Model updating method
6.4.3 Model updating results
6.5 Algorithm selection
6.6 Wind load reconstruction for the Canton Tower
6.6.1 Reconstruction of the wind load
6.6.1.1 Reconstruction of mean wind load
6.6.1.2 Reconstruction of the fluctuating wind load
6.6.2 Validation of the reconstructed fluctuating wind load
6.7 Summary
7 Summary and outlook
7.1 Summary
7.2 Outlook
Bibliography
A Derivation of the SS&IE_L
B Proof of the equivalence of filter equations of the KF-UI and the RTSF