Zhu Kaiqun, Wang Zidong, Wei Guoliang, Liu Xiaohui
IEEE Trans Neural Netw Learn Syst. 2023 Nov;34(11):8337-8348. doi: 10.1109/TNNLS.2022.3149540. Epub 2023 Oct 27.
In this article, the adaptive neural-network-based (NN-based) set-membership state estimation problem is studied for a class of nonlinear systems subject to bit rate constraints and unknown-but-bounded noises. The measurement output signals are transmitted from sensors to a remote estimator via a bit rate constrained communication channel. To relieve the communication burden and ameliorate the state estimation accuracy, a bit rate allocation mechanism is put forward for the sensor nodes by solving a constrained optimization problem. Subsequently, through the NN learning method, an NN-based set-membership estimator is designed to determine an ellipsoidal set that contains the system state, where the proposed estimator relies upon a prediction-correction structure. With the help of the mathematical induction technique and the set theory, sufficient conditions are obtained to ensure the existence of both the adaptive tuning parameters and the set-membership estimators, and then, the corresponding parameters and estimator gains are calculated by solving a set of optimization problems. In addition, the monotonicity of the upper bound on the squared estimation error with respect to the bit rate and the convergence of the NN weight are analyzed, respectively. Finally, an illustrative example is given to demonstrate the effectiveness of the proposed state estimation algorithm.
本文研究了一类受比特率约束和未知有界噪声影响的非线性系统基于自适应神经网络的集员状态估计问题。测量输出信号通过比特率受限的通信信道从传感器传输到远程估计器。为减轻通信负担并提高状态估计精度,通过求解一个约束优化问题为传感器节点提出了一种比特率分配机制。随后,通过神经网络学习方法,设计了一种基于神经网络的集员估计器来确定包含系统状态的椭球集,所提出的估计器依赖于预测-校正结构。借助数学归纳技术和集合论,获得了确保自适应调整参数和集员估计器存在的充分条件,然后通过求解一组优化问题来计算相应的参数和估计器增益。此外,分别分析了估计误差平方的上界关于比特率的单调性和神经网络权重的收敛性。最后,给出一个示例来说明所提出的状态估计算法的有效性。