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our context: we want first and (at least) second order derivatives wrt. initial condition, initial / final time, parameters of (a priori Hamiltonian) flows; low dimension (< 1e2)
"5. ForwardDiffSensitivity", p. 34: "discretize-then-optimize", so I guess the (variable step size) ODE solver is passed through AD; not desirable, although 1 states (p. 36)
Previous research has shown that the discrete adjoint approach is more stable than continuous adjoints in some cases [53, 47, 94, 95, 96, 97] while continuous adjoints have been demonstrated to be more stable in others [98, 95] and can reduce spurious oscillations [99, 100, 101]. This trade-off between discrete and continuous adjoint approaches has been demonstrated on some equations as a trade-off between stability and computational efficiency
@joseph-gergaud @ocots A brief survey:
SciMLSensitivity.ForwardSensitivity
, see https://docs.sciml.ai/SciMLSensitivity/stable/manual/differential_equation_sensitivities/#Sensitivity-AlgorithmsFootnotes
https://arxiv.org/pdf/2001.04385 ↩ ↩2
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