Zhao Zhongyi, Wang Zidong, Zou Lei
IEEE Trans Neural Netw Learn Syst. 2024 Apr;35(4):5764-5777. doi: 10.1109/TNNLS.2022.3209135. Epub 2024 Apr 4.
In this article, the sequential fusion estimation problem is investigated for multirate complex networks (MRCNs) with uniformly quantized measurements. The process and measurement noises, which are unknown-yet-bounded (UYB), are restrained into a family of zonotopes, and the multiple sensors are allowed to have different sampling periods. To facilitate digital transmissions, the sensor measurements are uniformly quantized before being sent to the remote estimator. The purpose of this article is to design a sequential set-membership estimator such that, in the simultaneous presence of UYB noises, multirate samplings, and uniform quantization effects, the estimation error (after each measurement update) is confined to a zonotope with minimum F -radius at each time instant. By introducing certain virtual measurements, the MRCNs are first transformed into single-rate ones exhibiting a switching phenomenon. Then, by utilizing the properties of zonotopes, the desired zonotopes are derived, which contain the estimation error dynamics after each measurement update. Subsequently, the gain matrices of the sequential estimator are derived by minimizing the F -radii of these zonotopes, and the uniform boundedness is analyzed for the F -radius of the zonotope containing the estimation error after all measurement updates. Furthermore, sufficient conditions are derived to ensure the existence of the desired uniform upper/lower bounds. Finally, an illustrated example is proposed to show the effectiveness of the proposed sequential fusion estimation method.
本文研究了具有均匀量化测量的多速率复杂网络(MRCNs)的序贯融合估计问题。将未知但有界(UYB)的过程噪声和测量噪声限制在一族 zonotope 中,并允许多个传感器具有不同的采样周期。为便于数字传输,传感器测量值在发送到远程估计器之前进行均匀量化。本文的目的是设计一种序贯集员估计器,使得在同时存在 UYB 噪声、多速率采样和均匀量化效应的情况下,每次测量更新后的估计误差在每个时刻都被限制在具有最小 F -半径的 zonotope 内。通过引入某些虚拟测量,首先将 MRCNs 转换为表现出切换现象的单速率网络。然后,利用 zonotope 的性质,推导出所需的 zonotope,其包含每次测量更新后的估计误差动态。随后,通过最小化这些 zonotope 的 F -半径来推导序贯估计器的增益矩阵,并分析所有测量更新后包含估计误差的 zonotope 的 F -半径的一致有界性。此外,还推导出了确保所需一致上界/下界存在的充分条件。最后,给出一个示例来说明所提出的序贯融合估计方法的有效性。