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148 lines
8.9 KiB
Plaintext
148 lines
8.9 KiB
Plaintext
[/============================================================================
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Boost.odeint
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Copyright 2011-2012 Karsten Ahnert
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Copyright 2011-2012 Mario Mulansky
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Use, modification and distribution is subject to the Boost Software License,
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Version 1.0. (See accompanying file LICENSE_1_0.txt or copy at
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http://www.boost.org/LICENSE_1_0.txt)
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=============================================================================/]
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[def _max_step_checker_ [classref boost::numeric::odeint::max_step_checker `max_step_checker`]]
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[section Integrate functions]
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Integrate functions perform the time evolution of a given ODE from some
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starting time ['t[sub 0]] to a given end time ['t[sub 1]] and starting at state ['x[sub 0]] by subsequent calls of a given stepper's `do_step` function.
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Additionally, the user can provide an __observer to analyze the state during time evolution, and
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a _max_step_checker_ to throw an exception if too many steps are taken between observer calls (i.e. too
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small step size).
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There are five different integrate functions which have different strategies on when to call the observer function during integration.
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All of the integrate functions except `integrate_n_steps` can be called with any stepper following one of the stepper concepts: __stepper , __error_stepper , __controlled_stepper , __dense_output_stepper.
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Depending on the abilities of the stepper, the integrate functions make use of step-size control or dense output.
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[heading Equidistant observer calls]
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If observer calls at equidistant time intervals /dt/ are needed, the
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`integrate_const` or `integrate_n_steps` function should be used.
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We start with explaining `integrate_const`:
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`integrate_const( stepper , system , x0 , t0 , t1 , dt )`
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`integrate_const( stepper , system , x0 , t0 , t1 , dt , observer )`
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`integrate_const( stepper , system , x0 , t0 , t1 , dt , observer , max_step_checker )`
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These integrate the ODE given by `system` with subsequent steps from `stepper`.
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Integration start at `t0` and `x0` and ends at some ['t' = t[sub 0] + n dt] with /n/ such that ['t[sub 1] - dt < t' <= t[sub 1]].
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`x0` is changed to the approximative solution ['x(t')] at the end of integration.
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If provided, the `observer` is invoked at times ['t[sub 0]], ['t[sub 0] + dt], ['t[sub 0] + 2dt], ... ,['t'].
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If provided, the `max_step_checker` counts the number of steps between observer calls and throws a
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`no_progress_error` this exceeds some limit (default: 500).
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`integrate_const` returns the number of steps performed during the integration.
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Note that if you are using a simple __stepper or __error_stepper and want to make exactly `n` steps you should prefer the `integrate_n_steps` function below.
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* If `stepper` is a __stepper or __error_stepper then `dt` is also the step size used for integration and the observer is called just after every step.
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* If `stepper` is a __controlled_stepper then `dt` is the initial step size.
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The actual step size will change due to error control during time evolution.
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However, if an observer is provided the step size will be adjusted such that the algorithm always calculates /x(t)/ at ['t = t[sub 0] + n dt] and calls the observer at that point.
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Note that the use of __controlled_stepper is reasonable here only if `dt` is considerably larger than typical step sizes used by the stepper.
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* If `stepper` is a __dense_output_stepper then `dt` is the initial step size.
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The actual step size will be adjusted during integration due to error control.
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If an observer is provided dense output is used to calculate /x(t)/ at ['t = t[sub 0] + n dt].
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[heading Integrate a given number of steps]
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This function is very similar to `integrate_const` above. The only difference
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is that it does not take the end time as parameter, but rather the number of
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steps. The integration is then performed until the time `t0+n*dt`.
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`integrate_n_steps( stepper , system , x0 , t0 , dt , n )`
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`integrate_n_steps( stepper , system , x0 , t0 , dt , n , observer )`
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`integrate_n_steps( stepper , system , x0 , t0 , dt , n , observer , max_step_checker )`
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Integrates the ODE given by `system` with subsequent steps from `stepper` starting at ['x[sub 0]] and ['t[sub 0]].
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If provided, `observer` is called after every step and at the beginning with
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`t0`, similar as above.
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Again, providing a `max_step_checker` will throw a `no_progress_error` if too many steps are performed
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between observer calls.
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The approximate result for ['x( t[sub 0] + n dt )] is stored in `x0`.
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This function returns the end time `t0 + n*dt`.
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[heading Observer calls at each step]
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If the observer should be called at each time step then the `integrate_adaptive` function should be used.
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Note that in the case of __controlled_stepper or __dense_output_stepper this leads to non-equidistant observer calls as the step size changes.
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`integrate_adaptive( stepper , system , x0 , t0 , t1 , dt )`
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`integrate_adaptive( stepper , system , x0 , t0 , t1 , dt , observer )`
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Integrates the ODE given by `system` with subsequent steps from `stepper`.
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Integration start at `t0` and `x0` and ends at ['t[sub 1]].
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`x0` is changed to the approximative solution ['x(t[sub 1])] at the end of integration.
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If provided, the `observer` is called after each step (and before the first step at `t0`).
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`integrate_adaptive` returns the number of steps performed during the integration.
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[note `integrate_adaptive` by design performs an observer call after each time step. Hence
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there is no need for a _max_step_checker_ as only exactly one step is ever performed between
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observer calls.
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]
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* If `stepper` is a __stepper or __error_stepper then `dt` is the step size used for integration and `integrate_adaptive` behaves like `integrate_const` except that for the last step the step size is reduced to ensure we end exactly at `t1`.
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If provided, the observer is called at each step.
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* If `stepper` is a __controlled_stepper then `dt` is the initial step size.
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The actual step size is changed according to error control of the stepper.
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For the last step, the step size will be reduced to ensure we end exactly at `t1`.
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If provided, the observer is called after each time step (and before the first step at `t0`).
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* If stepper is a __dense_output_stepper then `dt` is the initial step size and `integrate_adaptive` behaves just like for __controlled_stepper above. No dense output is used.
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[heading Observer calls at given time points]
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If the observer should be called at some user given time points the `integrate_times` function should be used.
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The times for observer calls are provided as a sequence of time values.
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The sequence is either defined via two iterators pointing to begin and end of the sequence or in terms of a __boost_range object.
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`integrate_times( stepper , system , x0 , times_start , times_end , dt , observer )`
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`integrate_times( stepper , system , x0 , time_range , dt , observer )`
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Integrates the ODE given by `system` with subsequent steps from `stepper`.
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Integration starts at `*times_start` and ends exactly at `*(times_end-1)`.
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`x0` contains the approximate solution at the end point of integration.
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This function requires an observer which is invoked at the subsequent times `*times_start++` until `times_start == times_end`.
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If called with a __boost_range `time_range` the function behaves the same with `times_start = boost::begin( time_range )` and `times_end = boost::end( time_range )`.
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Additionally, a _max_step_checker_ can be provided, e.g.:
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`integrate_times( stepper , system , x0 , times_start , times_end , dt , observer , max_step_checker)`
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As above, this will throw a `no_progress_error` if too many steps are performed between observer calls.
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`integrate_times` returns the number of steps performed during the integration.
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* If `stepper` is a __stepper or __error_stepper `dt` is the step size used for integration.
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However, whenever a time point from the sequence is approached the step size `dt` will be reduced to obtain the state /x(t)/ exactly at the time point.
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* If `stepper` is a __controlled_stepper then `dt` is the initial step size.
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The actual step size is adjusted during integration according to error control.
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However, if a time point from the sequence is approached the step size is reduced to obtain the state /x(t)/ exactly at the time point.
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* If `stepper` is a __dense_output_stepper then `dt` is the initial step size.
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The actual step size is adjusted during integration according to error control.
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Dense output is used to obtain the states /x(t)/ at the time points from the sequence.
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[heading Convenience integrate function]
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Additionally to the sophisticated integrate function above odeint also provides a simple `integrate` routine which uses a dense output stepper based on `runge_kutta_dopri5` with standard error bounds ['10[super -6]] for the steps.
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`integrate( system , x0 , t0 , t1 , dt )`
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`integrate( system , x0 , t0 , t1 , dt , observer )`
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This function behaves exactly like `integrate_adaptive` above but no stepper has to be provided.
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It also returns the number of steps performed during the integration.
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[endsect]
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