Quantum Reservoir Computing for Corrosion Prediction in Aerospace: A Hybrid Approach for Enhanced Material Degradation Forecasting
Akshat Tandon, James Brown, Kenny Heitritter, Tarini Hardikar, Kanav Setia, Rene Boettcher, Klaus Schertler, Jasper Simon Krauser

TL;DR
This paper introduces an innovative hybrid quantum-classical reservoir computing model inspired by onion ESN architecture to improve corrosion prediction in aerospace materials, effectively capturing multiple time scales with limited quantum circuit depth.
Contribution
The study adapts the onion ESN concept to quantum reservoir computing, enhancing time-scale representation while maintaining circuit simplicity for material degradation forecasting.
Findings
Onion QRC outperforms single quantum and classical reservoirs in corrosion prediction.
Combining onion QRC with classical reservoirs further improves accuracy.
Modified rotation angles and measurements effectively tune the model's memory capabilities.
Abstract
The prediction of material degradation is an important problem to solve in many industries. Environmental conditions, such as humidity and temperature, are important drivers of degradation processes, with corrosion being one of the most prominent ones. Quantum machine learning is a promising research field but suffers from well known deficits such as barren plateaus and measurement overheads. To address this problem, recent research has examined quantum reservoir computing to address time-series prediction tasks. Although a promising idea, developing circuits that are expressive enough while respecting the limited depths available on current devices is challenging. In classical reservoir computing, the onion echo state network model (ESN) [https://doi.org/10.1007/978-3-031-72359-9_9] was introduced to increase the interpretability of the representation structure of the embeddings. This…
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Taxonomy
TopicsNeural Networks and Reservoir Computing · Model Reduction and Neural Networks · Machine Learning in Materials Science
