基于交互式多重模型估算器的多重自适应因子

IF 2.2 4区 计算机科学 Q2 AUTOMATION & CONTROL SYSTEMS
Minxing Sun, Qianwen Duan, Wanrun Xia, Qiliang Bao, Yao Mao
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引用次数: 0

摘要

在光电跟踪领域,精确建模被跟踪目标的运动方程往往具有挑战性,在某些情况下,这些方程甚至可能完全未知。这就需要使用稳健的状态估计器来进行精确的状态估计。此外,大气湍流、光照变化和错综复杂的观测背景可能会显著增加被跟踪目标的观测噪声。为应对这些挑战,一种方法是在稳健状态估计器中引入自适应因子,如 Mahalanobis 方法,以提高估计精度。然而,进一步的探索发现,采用不同方法设计的自适应因子在噪声放大程度不同的情况下具有独特的优势。本文采用交互多模型方法进一步组合不同的自适应因子,使设计的状态估计器对噪声放大表现出更强的适应性。通过程序模拟、双反射镜实验和无人机轨迹预测,验证了该算法的稳定性和有效性,证明了其在不同场景下的适用性和可靠性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Multiple adaptive factors based interacting multiple model estimator

Multiple adaptive factors based interacting multiple model estimator

In the field of optoelectronic tracking, precisely modeling the motion equations of the tracked target is often challenging, and in some cases, they may even be entirely unknown. This necessitates the use of a robust state estimator for accurate state estimation. Additionally, atmospheric turbulence, variations in illumination, and intricate observation backgrounds may introduce a significant increase in observation noise for the tracked target. To address these challenges, one approach is to introduce adaptive factors, such as the Mahalanobis method, into the robust state estimator to enhance estimation accuracy. However, further exploration has revealed that adaptive factors designed using different methods offer unique advantages in scenarios with varying levels of noise amplification. In this paper, different adaptive factors are further combined using an interacting multiple model approach, allowing the designed state estimator to exhibit stronger adaptability to noise amplification. The stability and effectiveness of this algorithm are validated through program simulations, double reflection mirror experiment, and drone trace prediction, demonstrating its applicability and reliability in diverse scenarios.

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来源期刊
IET Control Theory and Applications
IET Control Theory and Applications 工程技术-工程:电子与电气
CiteScore
5.70
自引率
7.70%
发文量
167
审稿时长
5.1 months
期刊介绍: IET Control Theory & Applications is devoted to control systems in the broadest sense, covering new theoretical results and the applications of new and established control methods. Among the topics of interest are system modelling, identification and simulation, the analysis and design of control systems (including computer-aided design), and practical implementation. The scope encompasses technological, economic, physiological (biomedical) and other systems, including man-machine interfaces. Most of the papers published deal with original work from industrial and government laboratories and universities, but subject reviews and tutorial expositions of current methods are welcomed. Correspondence discussing published papers is also welcomed. Applications papers need not necessarily involve new theory. Papers which describe new realisations of established methods, or control techniques applied in a novel situation, or practical studies which compare various designs, would be of interest. Of particular value are theoretical papers which discuss the applicability of new work or applications which engender new theoretical applications.
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