%0 Journal Article %T Modifications of Steepest Descent Method and Conjugate Gradient Method Against Noise for Ill-posed Linear Systems %A Chein-Shan Liu %J Communications in Numerical Analysis %D 2012 %I International scientific publication and consulting services (ISPACS) %R 10.5899/2012/cna-00115 %X It is well known that the numerical algorithms of the steepest descent method (SDM), and the conjugate gradient method (CGM) are effective for solving well-posed linear systems. However, they are vulnerable to noisy disturbance for solving ill-posed linear systems. We propose the modifications of SDM and CGM, namely the modified steepest descent method (MSDM), and the modified conjugate gradient method (MCGM). The starting point is an invariant manifold defined in terms of a minimum functional and a fictitious time-like variable; however, in the final stage we can derive a purely iterative algorithm including an acceleration parameter. Through the Hopf bifurcation, this parameter indeed plays a major role to switch the situation of slow convergence to a new situation that the functional is stepwisely decreased very fast. Several numerical examples are examined and compared with exact solutions, revealing that the new algorithms of MSDM and MCGM have good computational efficiency and accuracy, even for the highly ill-conditioned linear equations system with a large noise being imposed on the given data. %K Ill-posed linear equations %K Invariant manifold %K Modified steepest descent method (MSDM) %K Modified conjugate gradient method (MCGM %U http://www.ispacs.com/journals/cna/2012/cna-00115/article.pdf