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The Tamed Euler Method for Random Periodic Solution of Semilinear SDEs with One-sided Lipschitz Coefficient
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作者 GUO Yujia NIU Yuanling 《数学理论与应用》 2025年第2期22-39,共18页
This paper aims to investigate the tamed Euler method for the random periodic solution of semilinear SDEs with one-sided Lipschitz coefficient.We introduce a novel approach to analyze mean-square error bounds of the n... This paper aims to investigate the tamed Euler method for the random periodic solution of semilinear SDEs with one-sided Lipschitz coefficient.We introduce a novel approach to analyze mean-square error bounds of the novel schemes,without relying on a priori high-order moment bound of the numerical approximation.The expected order-one mean square convergence is attained for the proposed scheme.Moreover,a numerical example is presented to verify our theoretical analysis. 展开更多
关键词 Tamed Euler method Random periodic solution One-sided Lipschitz coefficient Order-one mean square convergence
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TAMED STOCHASTIC RUNGE-KUTTA-CHEBYSHEV METHODS FOR STOCHASTIC DIFFERENTIAL EQUATIONS WITH NON-GLOBALLY LIPSCHITZ COEFFICIENTS
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作者 Yanyan Yu Aiguo Xiao Xiao Tang 《Journal of Computational Mathematics》 2025年第4期840-865,共26页
In this paper,we introduce a new class of explicit numerical methods called the tamed stochastic Runge-Kutta-Chebyshev(t-SRKC)methods,which apply the idea of taming to the stochastic Runge-Kutta-Chebyshev(SRKC)methods... In this paper,we introduce a new class of explicit numerical methods called the tamed stochastic Runge-Kutta-Chebyshev(t-SRKC)methods,which apply the idea of taming to the stochastic Runge-Kutta-Chebyshev(SRKC)methods.The key advantage of our explicit methods is that they can be suitable for stochastic differential equations with non-globally Lipschitz coefficients and stiffness.Under certain non-globally Lipschitz conditions,we study the strong convergence of our methods and prove that the order of strong convergence is 1/2.To show the advantages of our methods,we compare them with some existing explicit methods(including the Euler-Maruyama method,balanced Euler-Maruyama method and two types of SRKC methods)through several numerical examples.The numerical results show that our t-SRKC methods are efficient,especially for stiff stochastic differential equations. 展开更多
关键词 Stochastic differential equation Non-globally Lipschitz coefficient Stiffness Explicit tamed stochastic Runge-Kutta-Chebyshev method Strong convergence
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