用机器学习预测随机分数阶动力系统的解

IF 3.2 3区 工程技术 Q2 MECHANICS
Zi-Fei Lin , Jia-Li Zhao , Yan-Ming Liang , Jiao-Rui Li
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引用次数: 0

摘要

分数阶系统的解一直是我们研究的一个复杂问题。传统的方法如预测校正法等求解步骤复杂繁琐,使得求解效率难以提高。机器学习和非线性动力学的发展为我们解决一些复杂问题提供了新的思路。因此,本研究考虑如何在传统方法的基础上提高求解的精度和效率。最后,提出了一种高效、准确的非线性自回归神经网络用于分数阶动态系统预测模型(FODS-NAR)。首先,我们通过实例证明了FODS-NAR算法可以预测随机分数阶系统的解。其次,将FODS-NAR算法与著名的、较好的储层计算(RC)算法进行了比较。研究发现,在相同的系统参数下,FODS-NAR算法的预测精度高于传统RC算法,残差更接近于0。结果表明,FODS-NAR算法是一种精度较高、预测结果更接近分数阶随机系统状态的方法。此外,我们还分析了FODS-NAR算法中神经元数量和延迟顺序对预测结果的影响,并推导了它们的最优值范围。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting solutions of the stochastic fractional order dynamical system using machine learning

The solution of fractional-order systems has been a complex problem for our research. Traditional methods like the predictor-corrector method and other solution steps are complicated and cumbersome to derive, which makes it more difficult for our solution efficiency. The development of machine learning and nonlinear dynamics has provided us with new ideas to solve some complex problems. Therefore, this study considers how to improve the accuracy and efficiency of the solution based on traditional methods. Finally, we propose an efficient and accurate nonlinear auto-regressive neural network for the fractional order dynamic system prediction model (FODS-NAR). First, we demonstrate by example that the FODS-NAR algorithm can predict the solution of a stochastic fractional order system. Second, we compare the FODS-NAR algorithm with the famous and good reservoir computing (RC) algorithms. We find that FODS-NAR gives more accurate predictions than the traditional RC algorithm with the same system parameters, and the residuals of the FODS-NAR algorithm are closer to 0. Consequently, we conclude that the FODS-NAR algorithm is a method with higher accuracy and prediction results closer to the state of fractional-order stochastic systems. In addition, we analyze the effects of the number of neurons and the order of delays in the FODS-NAR algorithm on the prediction results and derive a range of their optimal values.

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来源期刊
CiteScore
6.20
自引率
2.90%
发文量
545
审稿时长
12 weeks
期刊介绍: An international journal devoted to rapid communications on novel and original research in the field of mechanics. TAML aims at publishing novel, cutting edge researches in theoretical, computational, and experimental mechanics. The journal provides fast publication of letter-sized articles and invited reviews within 3 months. We emphasize highlighting advances in science, engineering, and technology with originality and rapidity. Contributions include, but are not limited to, a variety of topics such as: • Aerospace and Aeronautical Engineering • Coastal and Ocean Engineering • Environment and Energy Engineering • Material and Structure Engineering • Biomedical Engineering • Mechanical and Transportation Engineering • Civil and Hydraulic Engineering Theoretical and Applied Mechanics Letters (TAML) was launched in 2011 and sponsored by Institute of Mechanics, Chinese Academy of Sciences (IMCAS) and The Chinese Society of Theoretical and Applied Mechanics (CSTAM). It is the official publication the Beijing International Center for Theoretical and Applied Mechanics (BICTAM).
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