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System Identification Using the Neural-extended Kalman Filter For state-estimation And Controller Modification

机译:使用神经扩展卡尔曼滤波器进行状态估计和控制器修改的系统辨识

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The neural extended Kalman filter (NEKF) is an adaptive state estimation technique that can be used in target tracking and directly in a feedback loop. It improves state estimates by learning the difference between the a priori model and the actual system dynamics. The neural network training occurs while the system is in operation. Often, however, due to stability concerns, such an adaptive component in the feedback loop is not considered desirable by the designer of a control system. Instead, the tuning of parameters is considered to be more acceptable. The ability of the NEKF to learn dynamics in an open-loop implementation, such as with target tracking and intercept prediction, can be used to identify mismodeled dynamics external to the closed-loop system. The improved system model can then be used at given intervals to adapt the state estimator and the state feedback gains in the control law, providing better performance based on the actual system dynamics. This new approach to neural extended Kalman filter control operations is introduced in this paper using applications to the nonlinear version of the standard cart-pendulum system.
机译:神经扩展卡尔曼滤波器(NEKF)是一种自适应状态估计技术,可用于目标跟踪以及直接在反馈回路中使用。它通过了解先验模型与实际系统动力学之间的差异来改善状态估计。在系统运行时进行神经网络训练。然而,通常由于稳定性的考虑,控制系统的设计者认为反馈回路中的这种自适应组件是不希望的。相反,参数的调整被认为是更可接受的。 NEKF在开环实现中学习动力学的能力(例如具有目标跟踪和拦截预测)可用于识别闭环系统外部错误建模的动力学。然后,可以在给定的时间间隔内使用改进的系统模型来调整状态定律和控制律中的状态反馈增益,从而基于实际的系统动力学提供更好的性能。本文介绍了这种用于神经扩展卡尔曼滤波器控制操作的新方法,并将其应用于标准卡特摆系统的非线性版本。

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