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Proportional–Integral Observer Design for Multidelayed Sensor-Saturated Recurrent Neural Networks: A Dynamic Event-Triggered Protocol

机译:多电流传感器饱和复发性神经网络的比例整体观测器设计:动态事件触发协议

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摘要

In this article, the design problem of the proportional-integral observer (PIO) is investigated for a class of discrete-time multidelayed recurrent neural networks (RNNs). In the addressed RNN model, the delays occurring in the information interconnections are allowed to be different, and the phenomenon of sensor saturation is taken into consideration in the measurement model. A novel dynamic event-triggered protocol is employed in the data transmission from sensors to the observer with hope to improve the efficiency of resource utilization, where the threshold parameters are adaptive to the dynamical environment. By virtue of the Lyapunov-like approach, a general framework is established for examining the boundedness of the estimation errors in mean-square sense, and the ultimate bound of the error dynamics is also acquired. Subsequently, the explicit expression of the desired PIO is parameterized by using the matrix inequality techniques. Finally, a simulation example is utilized to verify the effectiveness and superiority of the proposed PIO design scheme.
机译:在本文中,研究了一类离散时间多电位复发性神经网络(RNN)的一类离散 - 积分观察者(PIO)的设计问题。在寻址的RNN模型中,允许在信息互连中发生的延迟不同,并且在测量模型中考虑传感器饱和度的现象。在从传感器到观察者的数据传输中采用了一种新颖的动态事件触发协议,希望能够提高资源利用率的效率,其中阈值参数适应动态环境。借助于Lyapunov样方法,建立了一般框架来检查卑鄙的误差中估计误差的界限,并且还获取了错误动态的最终范围。随后,通过使用矩阵不等式技术参数化所需PIO的显式表达式。最后,利用模拟例子来验证所提出的PIO设计方案的有效性和优越性。

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