Shen Dong, Zhang Chao
IEEE Trans Cybern. 2022 Apr;52(4):1979-1991. doi: 10.1109/TCYB.2020.3004187. Epub 2022 Apr 5.
This article considers the zero-error tracking problem of quantized iterative learning control for a general networked structure where the data are quantized and transmitted through limited communication channels at both measurement and actuator sides. An encoding and decoding mechanism is introduced into a simple uniform quantizer. The system output is first encoded and quantized and then transmitted to the controller. When the data are received, they are decoded and applied to generate the input for the next iteration. After that, the generated input is transmitted following the same procedure as the output transmission, that is, encoding, quantizing, transmitting, and decoding. For this learning tracking framework, the asymptotic zero-error tracking performance is strictly proved for both infinite- and finite-level uniform quantizers. For practical implementation, a promising selection of the scaling sequences and the associated quantization level for the finite-level case is explicitly defined. Simulations are provided to demonstrate the effectiveness of the proposed schemes.
本文考虑了一般网络结构的量化迭代学习控制的零误差跟踪问题,其中数据在测量和执行器端均通过有限通信通道进行量化和传输。在一个简单的均匀量化器中引入了编码和解码机制。系统输出首先进行编码和量化,然后传输到控制器。当接收到数据时,对其进行解码并用于生成下一次迭代的输入。之后,按照与输出传输相同的过程传输生成的输入,即编码、量化、传输和解码。对于这种学习跟踪框架,严格证明了无限级和有限级均匀量化器的渐近零误差跟踪性能。对于实际实现,明确定义了有限级情况下缩放序列和相关量化级的一种有前景的选择。提供了仿真以证明所提方案的有效性。