General linear methods

General linear methods (GLMs) are a large class of numerical methods used to obtain numerical solutions to ordinary differential equations. They include multistage Runge–Kutta methods that use intermediate collocation points, as well as linear multistep methods that save a finite time history of the solution. John C. Butcher originally coined this term for these methods and has written a series of review papers,[1][2][3] a book chapter,[4] and a textbook[5] on the topic. His collaborator, Zdzislaw Jackiewicz also has an extensive textbook[6] on the topic. The original class of methods were originally proposed by Butcher (1965), Gear (1965) and Gragg and Stetter (1964).

Some definitions

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Numerical methods for first-order ordinary differential equations approximate solutions to initial value problems of the form

 

The result is approximations for the value of   at discrete times  :

 

where h is the time step (sometimes referred to as  ).

A description of the method

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We follow Butcher (2006), pp. 189–190 for our description, although we note that this method can be found elsewhere.

General linear methods make use of two integers:   – the number of time points in history, and   – the number of collocation points. In the case of  , these methods reduce to classical Runge–Kutta methods, and in the case of  , these methods reduce to linear multistep methods.

Stage values   and stage derivatives   are computed from approximations   at time step  :

 

The stage values are defined by two matrices   and  :

 

and the update to time   is defined by two matrices   and  :

 

Given the four matrices   and  , one can compactly write the analogue of a Butcher tableau as

 

where   stands for the tensor product.

Examples

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We present an example described in (Butcher, 1996).[7] This method consists of a single "predicted" step and "corrected" step, which uses extra information about the time history, as well as a single intermediate stage value.

An intermediate stage value is defined as something that looks like it came from a linear multistep method:

 

An initial "predictor"   uses the stage value   together with two pieces of time history:

 

and the final update is given by

 

The concise table representation for this method is given by

 

See also

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Notes

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  1. ^ Butcher, John C. (February–March 1996). "General linear methods". Computers & Mathematics with Applications. 31 (4–5): 105–112. doi:10.1016/0898-1221(95)00222-7.
  2. ^ Butcher, John (May 2006). "General linear methods". Acta Numerica. 15: 157–256. Bibcode:2006AcNum..15..157B. doi:10.1017/S0962492906220014. S2CID 125962375.
  3. ^ Butcher, John (February 2009). "General linear methods for ordinary differential equations". Mathematics and Computers in Simulation. 79 (6): 1834–1845. doi:10.1016/j.matcom.2007.02.006.
  4. ^ Butcher, John (2005). "General Linear Methods". Numerical Methods for Ordinary Differential Equations. John Wiley & Sons, Ltd. pp. 357–413. doi:10.1002/0470868279.ch5. ISBN 9780470868270. S2CID 2334002.
  5. ^ Butcher, John (1987). The numerical analysis of ordinary differential equations: Runge–Kutta and general linear methods. Wiley-Interscience. ISBN 978-0-471-91046-6.
  6. ^ Jackiewicz, Zdzislaw (2009). General Linear Methods for Ordinary Differential Equations. Wiley. ISBN 978-0-470-40855-1.
  7. ^ Butcher 1996, p. 107.

References

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