Data-driven surrogate models of dynamical systems based on the extended dynamic mode decomposition are nowadays well-established and widespread in applications. Further, for non-holonomic systems exhibiting a multiplicative coupling between states and controls, the usage of bi-linear surrogate models has proven beneficial. However, an in-depth analysis of the approximation quality and its dependence on different hyperparameters based on both simulation and experimental data is still missing. We investigate a differential-drive mobile robot to close this gap and provide first guidelines on the systematic design of data-efficient surrogate models.
翻译:摘要:在当今应用中,基于扩展动态模态分解的数据驱动动力学系统代替模型得到广泛使用。此外,对于展现出状态和控制之间乘法耦合的非完整系统,使用双线性代替模型已被证明是有益的。但是,对近似质量及其对不同超参数的依赖的深入分析仍然缺失,并且这是基于模拟和实验数据的。我们研究了一台差分驱动移动机器人,以填补此空白并提供首个针对数据有效的代替模型的系统设计指南。