Inverse Reconstruction of Shock Time Series from Shock Response Spectrum Curves using Machine Learning
AI 摘要
提出了一种基于条件变分自编码器(CVAE)的SRS反演方法,高效重建冲击时间序列。
主要贡献
- 提出基于CVAE的SRS反演模型
- 无需迭代优化,大幅提升运算速度
- 在谱保真度和泛化性上优于传统方法
方法论
使用CVAE学习从SRS到加速度时间序列的数据驱动逆映射,通过训练模型直接生成符合目标谱的信号。
原文摘要
The shock response spectrum (SRS) is widely used to characterize the response of single-degree-of-freedom (SDOF) systems to transient accelerations. Because the mapping from acceleration time history to SRS is nonlinear and many-to-one, reconstructing time-domain signals from a target spectrum is inherently ill-posed. Conventional approaches address this problem through iterative optimization, typically representing signals as sums of exponentially decayed sinusoids, but these methods are computationally expensive and constrained by predefined basis functions. We propose a conditional variational autoencoder (CVAE) that learns a data-driven inverse mapping from SRS to acceleration time series. Once trained, the model generates signals consistent with prescribed target spectra without requiring iterative optimization. Experiments demonstrate improved spectral fidelity relative to classical techniques, strong generalization to unseen spectra, and inference speeds three to six orders of magnitude faster. These results establish deep generative modeling as a scalable and efficient approach for inverse SRS reconstruction.