A Single-Fidelity Surrogate Modeling Method Based on Nonlinearity Integrated Multi-Fidelity Surrogate

替代模型 忠诚 计算机科学 非线性系统 还原(数学) 理论(学习稳定性) 替代数据 算法 缩放比例 期限(时间) 数学优化 数学 机器学习 电信 物理 几何学 量子力学
作者
Kunpeng Li,Xiwang He,Liye Lv,Jiaxiang Zhu,Guangbo Hao,Haiyang Li,Xueguan Song
出处
期刊:Journal of Mechanical Design [American Society of Mechanical Engineers]
卷期号:145 (9) 被引量:2
标识
DOI:10.1115/1.4062665
摘要

Abstract Surrogate model provides a promising way to reasonably approximate complex underlying relationships between system parameters. However, the expensive modeling cost, especially in large problem sizes, hinders its applications in practical problems. To overcome this issue, with the advantages of the multi-fidelity surrogate (MFS) model, this paper proposes a single-fidelity surrogate model with a hierarchical structure, named nonlinearity integrated correlation mapping surrogate (NI-CMS) model. The NI-CMS model first establishes the low-fidelity model to capture the underlying landscape of the true function, and then, based on the idea of MFS model, the established low-fidelity model is corrected by minimizing the mean square error to ensure prediction accuracy. Especially, a novel MFS model (named NI-MFS), is constructed to enhance the stability of the proposed NI-CMS model. More specifically, a nonlinear scaling term, which assumes the linear combination of the projected low-fidelity predictions in a high-dimensional space can reach the high-fidelity level, is introduced to assist the traditional scaling term. The performances of the proposed model are evaluated through a series of numerical test functions. In addition, a surrogate-based digital twin of an XY compliant parallel manipulator is used to validate the practical performance of the proposed model. The results show that compared with the existing models, the NI-CMS model provides a higher performance under the condition of a small sample set, illustrating the promising potential of this surrogate modeling technique.

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