Sensor Selection and Reconciliation Methodologies for Fault-Tolerant Estimation
Date
2025-01-30
Journal Title
Journal ISSN
Volume Title
Publisher
Università della Calabria
Abstract
This dissertation delves into the development of novel state estimation architectures
and sensor selection methodologies to enhance fault tolerance in state
estimation schemes. The research addresses a twofold objective: designing faulthiding
architectures, and determining the optimal number/placement of sensors
to efficiently support these architectures.
The 昀椀rst objective advances the state-of-the-art in fault-tolerant estimation
schemes by introducing novel architectures based on the Sensor Reconciliation
methodology. Both centralized and distributed approaches are explored. A
centralized method is proposed that combines a Luenberger observer and a reconciliator
unit into a merged component that is used to identify and mitigate
faults. Recognizing the limitations of centralized solutions for large-scale systems,
a distributed sensor reconciliation architecture is also proposed, based on
the decomposition of a centralized steady-state Kalman 昀椀lter. This latter approach
allows for distributed state estimation by fusing local measurements and
estimates from neighboring agents. Both methods leverage sensor redundancy
to enhance robustness against sensor faults.
Secondly, the dissertation explores the optimization of sensor selection. A
Mixed-Integer Semide昀椀nite Programming (MISDP) framework is de昀椀ned and
presented to systematically optimize sensor selection and design the corresponding
L1 optimal observer. This approach minimizes the number of sensors required
for full state reconstruction while optimizing speci昀椀c state reconstruction
metrics to enhance efficiency, reliability, and robustness. Theoretical validation
of the sensor placement’s optimality is also provided.
The e昀昀ectiveness of all proposed methodologies is rigorously assessed through
extensive simulations. In particular, a generic road network traffic 昀氀ow monitoring
scenario serves as a practical testbed to demonstrate the potential applications
of this research.
Description
Università della Calabria. Dipartimento di Ingegneria Informatica, Modellistica, Elettronica e Sistemistica- DIMES.
Dottorato di ricerca in: Information and Communication Technologies
Ciclo XXXVII
Keywords
Distributed Observer, Sensor Networks, Kalman Filter, Observer Design, Fault-Tolerant Estimation, Sensor Selection