混沌洁净数值模拟(CNS)的自适应算法

IF 1.5 4区 工程技术 Q2 MATHEMATICS, APPLIED Advances in Applied Mathematics and Mechanics Pub Date : 2022-11-01 DOI:10.4208/aamm.OA-2022-0340
Shijie Qin, S. Liao
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引用次数: 0

摘要

背景数值噪声$\varepsilon_{0} $由截断误差和舍入误差的最大值决定。对于一个混沌系统,数值误差$\varepsilon(t)$呈指数增长,比如$\varepsilon(t) = \varepsilon_{0} \exp(\kappa\,t)$,其中$\kappa>0$是所谓的噪声增长指数。这就是传统的双精度算法不能在足够长的时间间隔内得到混沌系统的收敛模拟的原因,因为使用双精度可能会使背景数值噪声$\varepsilon_{0}$停止下降。这一限制可以通过洁净数值模拟(CNS)的手段来克服,它可以将背景数值噪声$\varepsilon_{0}$降低到任何所需的微小水平。大量成功的应用表明了该系统的新颖性和有效性。在本文中,我们进一步提出了一些策略,以大大提高混沌动力系统的CNS算法的计算效率。强烈建议在截断误差和舍入误差之间保持平衡,并逐步扩大背景数值噪声$\varepsilon_{0}$,因为指数增长的数值噪声$\varepsilon(t)$比它大得多。举例说明了我们的策略对中枢神经系统的有效性。
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A Self-Adaptive Algorithm of the Clean Numerical Simulation (CNS) for Chaos
The background numerical noise $\varepsilon_{0} $ is determined by the maximum of truncation error and round-off error. For a chaotic system, the numerical error $\varepsilon(t)$ grows exponentially, say, $\varepsilon(t) = \varepsilon_{0} \exp(\kappa\,t)$, where $\kappa>0$ is the so-called noise-growing exponent. This is the reason why one can not gain a convergent simulation of chaotic systems in a long enough interval of time by means of traditional algorithms in double precision, since the background numerical noise $\varepsilon_{0}$ might stop decreasing because of the use of double precision. This restriction can be overcome by means of the clean numerical simulation (CNS), which can decrease the background numerical noise $\varepsilon_{0}$ to any required tiny level. A lot of successful applications show the novelty and validity of the CNS. In this paper, we further propose some strategies to greatly increase the computational efficiency of the CNS algorithms for chaotic dynamical systems. It is highly suggested to keep a balance between truncation error and round-off error and besides to progressively enlarge the background numerical noise $\varepsilon_{0}$, since the exponentially increasing numerical noise $\varepsilon(t)$ is much larger than it. Some examples are given to illustrate the validity of our strategies for the CNS.
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来源期刊
Advances in Applied Mathematics and Mechanics
Advances in Applied Mathematics and Mechanics MATHEMATICS, APPLIED-MECHANICS
CiteScore
2.60
自引率
7.10%
发文量
65
审稿时长
6 months
期刊介绍: Advances in Applied Mathematics and Mechanics (AAMM) provides a fast communication platform among researchers using mathematics as a tool for solving problems in mechanics and engineering, with particular emphasis in the integration of theory and applications. To cover as wide audiences as possible, abstract or axiomatic mathematics is not encouraged. Innovative numerical analysis, numerical methods, and interdisciplinary applications are particularly welcome.
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