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General linear boundary value problem for the second-order integro-differential loaded equation with boundary conditions containing both nonlocal and global terms. (English) Zbl 1204.45011

Summary: The paper is devoted to obtaining the sufficient conditions for Fredholm property for the general boundary value problem of the second-order linear integro-differential equation. Here, the boundary conditions corresponding with the boundary value problem contain both nonlocal and global terms.

MSC:

45J05 Integro-ordinary differential equations
45A05 Linear integral equations
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References:

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