Redirecting to original paper in 30 seconds...
Click below to go immediately or wait for automatic redirect
📄 Abstract
Abstract: We introduce Prob-GParareal, a probabilistic extension of the GParareal
algorithm designed to provide uncertainty quantification for the
Parallel-in-Time (PinT) solution of (ordinary and partial) differential
equations (ODEs, PDEs). The method employs Gaussian processes (GPs) to model
the Parareal correction function, as GParareal does, further enabling the
propagation of numerical uncertainty across time and yielding probabilistic
forecasts of system's evolution. Furthermore, Prob-GParareal accommodates
probabilistic initial conditions and maintains compatibility with classical
numerical solvers, ensuring its straightforward integration into existing
Parareal frameworks. Here, we first conduct a theoretical analysis of the
computational complexity and derive error bounds of Prob-GParareal. Then, we
numerically demonstrate the accuracy and robustness of the proposed algorithm
on five benchmark ODE systems, including chaotic, stiff, and bifurcation
problems. To showcase the flexibility and potential scalability of the proposed
algorithm, we also consider Prob-nnGParareal, a variant obtained by replacing
the GPs in Parareal with the nearest-neighbors GPs, illustrating its increased
performance on an additional PDE example. This work bridges a critical gap in
the development of probabilistic counterparts to established PinT methods.