Hybrid quantum PINN for hydrology reports 3x faster convergence and 44% fewer parameters than classical PINN on Sri Lankan flood data while using physics constraints for uncertainty quantification.
Quantum circuit learning
3 Pith papers cite this work. Polarity classification is still indexing.
fields
quant-ph 3years
2026 3verdicts
UNVERDICTED 3representative citing papers
Physics-constrained variational quantum circuits maintain 25-47% higher fidelity than unconstrained ones at moderate noise, while zero-noise extrapolation cuts absolute error by 82-96% at low noise levels.
PDE-constrained loss functions in variational quantum circuits deliver polynomial gradient variance scaling and constraint-induced landscape narrowing to mitigate barren plateaus.
citing papers explorer
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Variational Quantum Physics-Informed Neural Networks for Hydrological PDE-Constrained Learning with Inherent Uncertainty Quantification
Hybrid quantum PINN for hydrology reports 3x faster convergence and 44% fewer parameters than classical PINN on Sri Lankan flood data while using physics constraints for uncertainty quantification.
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Quantum Error Mitigation Strategies for Variational PDE-Constrained Circuits on Noisy Hardware
Physics-constrained variational quantum circuits maintain 25-47% higher fidelity than unconstrained ones at moderate noise, while zero-noise extrapolation cuts absolute error by 82-96% at low noise levels.
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Mitigating Barren Plateaus in Variational Quantum Circuits through PDE-Constrained Loss Functions
PDE-constrained loss functions in variational quantum circuits deliver polynomial gradient variance scaling and constraint-induced landscape narrowing to mitigate barren plateaus.