Discretized boundary-oriented progressive learning method for predicting global basins of attraction with few data

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS ACS Applied Bio Materials Pub Date : 2024-08-30 DOI:10.1016/j.physd.2024.134350
Zigang Li , Shumeng Ma , Jun Jiang , Wenjie Cheng , Xuhui Cui
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Abstract

Basins of attraction (BoAs) are crucial for evaluating quality of a response and unraveling reliability of complex systems and mechanism of nonlinear phenomena. As a global strategy, however, it will pose a significant challenge to quantify a high-dimensional BoAs due to the curse of dimensionality and the insufficiency of data. This paper proposes a boundary-oriented progressive learning method based on the state space discretization, which aims to perform the classification of dynamics using few samples needed for learning while still achieving high efficiency and accuracy. Using pattern recognition network, training samples are purposefully extracted from the discretized and limited region that covers cells of boundary, disregarding the region outside of it. The region is then refined and identified iteratively to enhance discriminability of data model. This method does not seek to approximate the structure of boundary by refine cells, but rather regards cells as a framework of training neural network. The three typical examples are illustrated to show the power of the proposed method. The results demonstrate that the higher the dimensions, the better cost-effectiveness when compared to state-of-the-art approaches. The performance is even improved by more than 4 orders of magnitude on the computing loads when coping with a formidable six-dimensional BoA with satisfactory accuracy. Also, we discuss how the boundary-oriented progressive learning can improve the overall accuracy and robustness of the data model. Furthermore, this idea has the potential to efficiently handle other tasks of classification of dynamics beyond BoA, from a perspective of engineering.

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用少量数据预测全球吸引力盆地的离散化边界导向渐进学习法
吸引盆地(BoAs)对于评估响应质量、揭示复杂系统的可靠性和非线性现象的机理至关重要。然而,作为一种全局策略,由于维度诅咒和数据不足,量化高维 BoAs 将是一个巨大的挑战。本文提出了一种基于状态空间离散化的面向边界的渐进式学习方法,旨在利用较少的学习样本进行动力学分类,同时实现高效率和高精度。利用模式识别网络,有目的地从离散化的有限区域中提取训练样本,该区域覆盖边界单元,不考虑边界以外的区域。然后对该区域进行反复细化和识别,以提高数据模型的可辨别性。这种方法并不寻求通过细化单元来逼近边界结构,而是将单元视为训练神经网络的框架。通过三个典型的例子,展示了所提方法的威力。结果表明,与最先进的方法相比,维度越高,性价比越高。在应对难度极大的六维 BoA 时,其性能甚至在计算负荷上提高了 4 个数量级以上,而且精度令人满意。此外,我们还讨论了面向边界的渐进学习如何提高数据模型的整体准确性和鲁棒性。此外,从工程学的角度来看,这一想法有可能有效地处理 BoA 以外的其他动力学分类任务。
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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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