Higher order quantum reservoir computing for non-intrusive reduced-order models
Vinamr Jain, Romit Maulik

TL;DR
This paper introduces a quantum reservoir computing approach inspired by quantum mechanics to efficiently forecast complex nonlinear dynamical systems, reducing training time and memory compared to neural network methods.
Contribution
The paper presents a novel hybrid quantum-classical ML framework, QRC, for data-driven forecasting of nonlinear systems, emphasizing reduced computational costs and stability.
Findings
QRC accurately forecasts sea surface temperature data
QRC demonstrates lower training time than neural networks
QRC maintains stability in complex system predictions
Abstract
Forecasting dynamical systems is of importance to numerous real-world applications. When possible, dynamical systems forecasts are constructed based on first-principles-based models such as through the use of differential equations. When these equations are unknown, non-intrusive techniques must be utilized to build predictive models from data alone. Machine learning (ML) methods have recently been used for such tasks. Moreover, ML methods provide the added advantage of significant reductions in time-to-solution for predictions in contrast with first-principle based models. However, many state-of-the-art ML-based methods for forecasting rely on neural networks, which may be expensive to train and necessitate requirements for large amounts of memory. In this work, we propose a quantum mechanics inspired ML modeling strategy for learning nonlinear dynamical systems that provides…
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Taxonomy
TopicsNeural Networks and Reservoir Computing · Neural Networks and Applications · Photonic and Optical Devices
