Machine-learning technologies for learning dynamical systems from data play an important role in engineering design. This research focuses on learning continuous linear models from data. Stability, a key feature of dynamic systems, is especially important in design tasks such as prediction and control. Thus, there is a need to develop methodologies that provide stability guarantees. To that end, we leverage the parameterization of stable matrices proposed in [Gillis/Sharma, Automatica, 2017] to realize the desired models. Furthermore, to avoid the estimation of derivative information to learn continuous systems, we formulate the inference problem in an integral form. We also discuss a few extensions, including those related to control systems. Numerical experiments show that the combination of a stable matrix parameterization and an integral form of differential equations allows us to learn stable systems without requiring derivative information, which can be challenging to obtain in situations with noisy or limited data.
翻译:从数据中学习动态系统的机学技术在工程设计中发挥了重要作用。这项研究侧重于从数据中学习连续线性模型。稳定性是动态系统的一个关键特征,在预测和控制等设计任务中尤为重要。因此,有必要制定提供稳定性保障的方法。为此,我们利用[Gillis/Sharma,自动,2017年]中提议的稳定矩阵的参数化来实现理想模型。此外,为避免估算衍生信息以学习连续系统,我们以整体形式提出推论问题。我们还讨论一些扩展,包括与控制系统有关的扩展。数字实验表明,稳定的矩阵参数化和差异方程式的一体化组合使我们能够学习稳定的系统,而不需要衍生信息,在数据噪音或有限的情况下获取这些系统可能具有挑战性。