On the discrete adjoints of adaptive time stepping algorithms
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摘要
We investigate the behavior of adaptive time stepping numerical algorithms under the reverse mode of automatic differentiation (AD). By differentiating the time step controller and the error estimator of the original algorithm, reverse mode AD generates spurious adjoint derivatives of the time steps. The resulting discrete adjoint models become inconsistent with the adjoint ODE, and yield incorrect derivatives. To regain consistency, one has to cancel out the contributions of the non-physical derivatives in the discrete adjoint model. We demonstrate that the discrete adjoint models of one-step, explicit adaptive algorithms, such as the Runge–Kutta schemes, can be made consistent with their continuous counterparts using simple code modifications. Furthermore, we extend the analysis to cover second order adjoint models derived through an extra forward mode differentiation of the discrete adjoint code. Several numerical examples support the mathematical derivations.
论文关键词:Runge–Kutta methods,Discrete adjoints,Automatic differentiation,Adaptive time stepping,Ordinary differential equations (ODEs)
论文评审过程:Received 25 April 2008, Revised 24 August 2009, Available online 29 August 2009.
论文官网地址:https://doi.org/10.1016/j.cam.2009.08.109