Quantum-Based Combinatorial Optimization for Optimal Sensor Placement in Civil Structures
Gabriel San Martin Silva, Enrique Lopez Droguett

TL;DR
This paper introduces a quantum-based optimization method for sensor placement in civil structures, aiming to improve scalability and efficiency over traditional meta-heuristics like genetic algorithms.
Contribution
It develops a novel QUBO model for the OSP problem in SHM, leveraging quantum optimization to handle larger and more complex structural systems.
Findings
QUBO model effectively approximates the OSP problem
Quantum approach shows promising scalability in simulations
Comparison with exhaustive search validates performance
Abstract
Over the last decade, concepts such as industry 4.0 and the Internet of Things (IoT) have contributed to the increase in the availability and affordability of sensing technology. In this context, Structural Health Monitoring (SHM) arises as an especially interesting field to integrate and develop these new sensing capabilities, given the criticality of structural application for human life and the elevated costs of manual monitoring. Due to the scale of structural systems, one of the main challenges when designing a modern monitoring system is the Optimal Sensor Placement (OSP) problem. The OSP problem is combinatorial in nature, making its exact solution infeasible in most practical cases, usually requiring the use of meta-heuristic optimization techniques. While approaches such as genetic algorithms (GA) have been able to produce significant results in many practical case studies,…
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Taxonomy
TopicsPhotovoltaic System Optimization Techniques · Advanced Fiber Optic Sensors · Advanced Multi-Objective Optimization Algorithms
