Data-driven bifurcation analysis using parameter-dependent trajectories

IF 2.8 3区 工程技术 Q2 MECHANICS International Journal of Non-Linear Mechanics Pub Date : 2024-11-01 DOI:10.1016/j.ijnonlinmec.2024.104937
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Abstract

Identification of bifurcation diagrams in nonlinear systems is of great importance for resilient design and stability analysis of dynamical systems. Data-driven identification of bifurcation diagrams has a significant advantage for large dimensional systems where analysis of the equations is not possible, and for experimental systems where accurate system equations are not available. In this work, a novel forecasting approach to predict bifurcation diagrams in nonlinear systems is presented using system trajectories before instabilities occur. Unlike previous techniques, the proposed method considers a varying bifurcation parameter during the system response to perturbations. Combined with an asymptotic analysis provided by the method of multiple scales eliminates the requirement of using multiple measurements and allows the novel technique to predict the bifurcation diagram using a single system recovery. The proposed approach allows stability analyses of nonlinear systems with limited access to experimental or surrogate data. The novel technique is demonstrated through its application to a Hopf bifurcation, highlighting its inherent advantages. Subsequently, the method is employed in the analysis of an aeroelastic system that shows both supercritical and subcritical Hopf bifurcations. The findings reveal great accuracy, achieved with a reduced number of measurements, while enhancing versatility.
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利用参数轨迹进行数据驱动的分岔分析
识别非线性系统中的分岔图对于动态系统的弹性设计和稳定性分析非常重要。对于无法分析方程的大维度系统和无法获得精确系统方程的实验系统,数据驱动的分岔图识别具有显著优势。本研究提出了一种新颖的预测方法,利用不稳定性发生前的系统轨迹预测非线性系统的分岔图。与以往的技术不同,所提出的方法考虑了系统对扰动响应过程中分岔参数的变化。结合多尺度方法提供的渐近分析,消除了使用多次测量的要求,使新技术能够使用单一系统恢复来预测分岔图。利用所提出的方法,可以对实验数据或替代数据有限的非线性系统进行稳定性分析。新技术通过应用于霍普夫分岔进行了演示,突出了其固有优势。随后,该方法被用于分析一个同时出现超临界和亚临界霍普夫分岔的气动弹性系统。研究结果表明,该方法在提高通用性的同时,通过减少测量次数实现了极高的精确度。
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来源期刊
CiteScore
5.50
自引率
9.40%
发文量
192
审稿时长
67 days
期刊介绍: The International Journal of Non-Linear Mechanics provides a specific medium for dissemination of high-quality research results in the various areas of theoretical, applied, and experimental mechanics of solids, fluids, structures, and systems where the phenomena are inherently non-linear. The journal brings together original results in non-linear problems in elasticity, plasticity, dynamics, vibrations, wave-propagation, rheology, fluid-structure interaction systems, stability, biomechanics, micro- and nano-structures, materials, metamaterials, and in other diverse areas. Papers may be analytical, computational or experimental in nature. Treatments of non-linear differential equations wherein solutions and properties of solutions are emphasized but physical aspects are not adequately relevant, will not be considered for possible publication. Both deterministic and stochastic approaches are fostered. Contributions pertaining to both established and emerging fields are encouraged.
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