Cholesky-KalmanNet: Model-Based Deep Learning With Positive Definite Error Covariance Structure

IF 3.2 2区 工程技术 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC IEEE Signal Processing Letters Pub Date : 2024-12-17 DOI:10.1109/LSP.2024.3519265
Minhyeok Ko;Abdollah Shafieezadeh
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引用次数: 0

Abstract

State estimation from noisy observations is crucial across various fields. Traditional methods such as Kalman, Extended Kalman, and Unscented Kalman Filter often struggle with nonlinearities, model inaccuracies, and high observation noise. This letter introduces Cholesky-KalmanNet (CKN), a model-based deep learning approach that considerably enhances state estimation by providing and enforcing transiently precise error covariance estimation. Specifically, the CKN embeds mathematical constraints associated with the positive definiteness of error covariance in a recurrent DNN architecture through the Cholesky decomposition. This architecture enhances statistical reliability and mitigates numerical instabilities. Furthermore, introducing a novel loss function that minimizes discrepancies between the estimated and empirical error covariance ensures a comprehensive minimization of estimation errors, accounting for interdependencies among state variables. Extensive evaluations on both synthetic and real-world datasets affirm CKN's superior performance vis-a-vis state estimation accuracy, robustness against system inaccuracies and observation noise, as well as stability across varying training data partitions, an essential feature for practical scenarios with suboptimal data conditions.
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Cholesky-KalmanNet:基于模型的深度学习正定误差协方差结构
从噪声观测中估计状态在各个领域都是至关重要的。传统的卡尔曼滤波、扩展卡尔曼滤波和无气味卡尔曼滤波等方法往往存在非线性、模型不准确和观测噪声大等问题。这封信介绍了Cholesky-KalmanNet (CKN),这是一种基于模型的深度学习方法,通过提供和强制瞬态精确误差协方差估计,大大增强了状态估计。具体来说,CKN通过Cholesky分解在循环DNN架构中嵌入与误差协方差正确定性相关的数学约束。这种结构提高了统计可靠性,减轻了数值不稳定性。此外,引入一种新的损失函数,最小化估计误差和经验误差协方差之间的差异,确保估计误差的全面最小化,考虑到状态变量之间的相互依赖性。对合成数据集和真实数据集的广泛评估证实了CKN在状态估计准确性方面的卓越性能,对系统不准确性和观察噪声的鲁棒性,以及不同训练数据分区的稳定性,这是具有次优数据条件的实际场景的基本特征。
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来源期刊
IEEE Signal Processing Letters
IEEE Signal Processing Letters 工程技术-工程:电子与电气
CiteScore
7.40
自引率
12.80%
发文量
339
审稿时长
2.8 months
期刊介绍: The IEEE Signal Processing Letters is a monthly, archival publication designed to provide rapid dissemination of original, cutting-edge ideas and timely, significant contributions in signal, image, speech, language and audio processing. Papers published in the Letters can be presented within one year of their appearance in signal processing conferences such as ICASSP, GlobalSIP and ICIP, and also in several workshop organized by the Signal Processing Society.
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