KalmanFormer: using transformer to model the Kalman Gain in Kalman Filters

卡尔曼滤波器 计算机科学 快速卡尔曼滤波 扩展卡尔曼滤波器 变压器 不变扩展卡尔曼滤波器 α-β滤光片 控制理论(社会学) 移动视界估计 人工智能 电压 电气工程 工程类 控制(管理)
作者
Siyuan Shen,Jichen Chen,Guanfeng Yu,Zhengjun Zhai,Pujie Han
出处
期刊:Frontiers in Neurorobotics [Frontiers Media]
卷期号:18
标识
DOI:10.3389/fnbot.2024.1460255
摘要

Tracking the hidden states of dynamic systems is a fundamental task in signal processing. Recursive Kalman Filters (KF) are widely regarded as an efficient solution for linear and Gaussian systems, offering low computational complexity. However, real-world applications often involve non-linear dynamics, making it challenging for traditional Kalman Filters to achieve accurate state estimation. Additionally, the accurate modeling of system dynamics and noise in practical scenarios is often difficult. To address these limitations, we propose the KalmanFormer, a hybrid model-driven and data-driven state estimator. By leveraging data, the KalmanFormer promotes the performance of state estimation under non-linear conditions and partial information scenarios. The proposed KalmanFormer integrates classical Kalman Filter with a Transformer framework. Specifically, it utilizes the Transformer to learn the Kalman Gain directly from data without requiring prior knowledge of noise parameters. The learned Kalman Gain is then incorporated into the standard Kalman Filter workflow, enabling the system to better handle non-linearities and model mismatches. The hybrid approach combines the strengths of data-driven learning and model-driven methodologies to achieve robust state estimation. To evaluate the effectiveness of KalmanFormer, we conducted numerical experiments in both synthetic and real-world dataset. The results demonstrate that KalmanFormer outperforms the classical Extended Kalman Filter (EKF) in the same settings. It achieves superior accuracy in tracking hidden states, demonstrating resilience to non-linearities and imprecise system models.

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