IEEE Trans Neural Netw Learn Syst. 2017 Jun;28(6):1473-1480. doi: 10.1109/TNNLS.2016.2532351. Epub 2016 Mar 3.
This brief investigates the quantized iterative learning problem for digital networks with time-varying topologies. The information is first encoded as symbolic data and then transmitted. After the data are received, a decoder is used by the receiver to get an estimate of the sender's state. Iterative learning quantized communication is considered in the process of encoding and decoding. A sufficient condition is then presented to achieve the consensus tracking problem in a finite interval using the quantized iterative learning controllers. Finally, simulation results are given to illustrate the usefulness of the developed criterion.
本文研究了具有时变拓扑结构的数字网络的量化迭代学习问题。信息首先被编码为符号数据,然后进行传输。在数据被接收后,接收方使用解码器来获取发送方状态的估计值。在编码和解码过程中考虑了迭代学习量化通信。然后,提出了一个充分条件,使用量化迭代学习控制器在有限时间内实现一致性跟踪问题。最后,给出了仿真结果,以说明所提出的准则的有效性。