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An Optimal Multi-Vector Iterative Algorithm in a Krylov Subspace for Solving the Ill-Posed Linear Inverse Problems

机译:求解不适定线性逆问题的Krylov子空间中的最优多矢量迭代算法

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摘要

An optimal m-vector descent iterative algorithm in a Krylov subspace is developed, of which the m weighting parameters are optimized from a properly defined objective function to accelerate the convergence rate in solving an ill-posed linear problem. The optimal multi-vector iterative algorithm (OMVIA) is convergent fast and accurate, which is verified by numerical tests of several linear inverse problems, including the backward heat conduction problem, the heat source identification problem, the inverse Cauchy problem, and the external force recovery problem. Because the OMVIA has a good filtering effect, the numerical results recovered are quite smooth with small error, even under a large noise up to 10%.
机译:提出了Krylov子空间中的最优m向量下降迭代算法,通过适当定义的目标函数对m个加权参数进行优化,以加快求解不适定线性问题的收敛速度。最优的多矢量迭代算法(OMVIA)收敛速度快,精度高,并通过对数个线性逆问题的数值测试进行了验证,这些线性逆问题包括反向导热问题,热源识别问题,柯西逆问题和外力恢复问题。由于OMVIA具有良好的滤波效果,即使在噪声高达10%的情况下,恢复的数值结果也相当平滑且误差很小。

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