CANAMATH-PHMPNAApr 6, 2019

Spectral parameter power series representation for solutions of linear system of two first order differential equations

arXiv:1904.0336110 citations
Originality Synthesis-oriented
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This work provides a new analytical representation for a class of linear differential systems, which may be useful for solving spectral problems in mathematical physics, but the results are theoretical and incremental.

The paper presents a spectral parameter power series (SPPS) representation for solutions of a linear system of two first-order differential equations, including a Dirac system with arbitrary matrix coefficient at the spectral parameter. The method is demonstrated through numerical examples for initial value and spectral problems.

A representation in the form of spectral parameter power series (SPPS) is given for a general solution of a one dimension Dirac system containing arbitrary matrix coefficient at the spectral parameter, \[ B \frac{dY}{dx} + P(x)Y = λR(x)Y,\] where $Y=(y_1,y_2)^T$ is the unknown vector-function, $λ$ is the spectral parameter, $B = \begin{pmatrix}0 & 1 \\ -1 & 0\end{pmatrix}$, and $P$ is a symmetric $2\times 2$ matrix, $R$ is an arbitrary $2\times 2$ matrix whose entries are integrable complex-valued functions. The coefficient functions in these series are obtained by recursively iterating a simple integration process, beginning with a non-vanishing solution for one particular $λ= λ_0$. The existence of such solution is shown. For a general linear system of two first order differential equations \[ P(x)\frac{dY}{dx}+Q(x)Y = λR(x)Y,\ x\in [a,b], \] where $P$, $Q$, $R$ are $2\times 2$ matrices whose entries are integrable complex-valued functions, $P$ being invertible for every $x$, a transformation reducing it to a type considered above is shown. The general scheme of application of the SPPS representation to the solution of initial value and spectral problems as well as numerical illustrations are provided.

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