反推
观察员(物理)
趋同(经济学)
计算机科学
控制理论(社会学)
水准点(测量)
收敛速度
数学优化
国家观察员
数学
人工智能
自适应控制
非线性系统
控制(管理)
地理
经济
经济增长
计算机网络
频道(广播)
物理
大地测量学
量子力学
作者
Yuanyuan Shi,Zongyi Li,Huan Yu,Drew Steeves,Anima Anandkumar,Miroslav Krstić
标识
DOI:10.1109/cdc51059.2022.9992759
摘要
State estimation is important for a variety of tasks, from forecasting to substituting for unmeasured states in feedback controllers. Performing real-time state estimation for PDEs using provably and rapidly converging observers, such as those based on PDE backstepping, is computationally expensive and in many cases prohibitive. We propose a framework for accelerating PDE observer computations using learning-based approaches that are much faster while maintaining accuracy. In particular, we employ the recently-developed Fourier Neural Operator (FNO) to learn the functional mapping from the initial observer state and boundary measurements to the state estimate. By employing backstepping observer gains for previously-designed observers with particular convergence rate guarantees, we provide numerical experiments that evaluate the increased computational efficiency gained with FNO. We consider the state estimation for three benchmark PDE examples motivated by applications: first, for a reaction-diffusion (parabolic) PDE whose state is estimated with an exponential rate of convergence; second, for a parabolic PDE with exact prescribed-time estimation;and, third, for a pair of coupled first-order hyperbolic PDEs that modeling traffic flow density and velocity. The ML-accelerated observers trained on simulation data sets for these PDEs achieves up to three orders of magnitude improvement in computational speed compared to classical methods. This demonstrates the attractiveness of the ML-accelerated observers for real-time state estimation and control.
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