We show that a quantized large-scale system with unknown parameters and training signals can be analyzed by examining an equivalent system with known parameters by modifying the signal power and noise variance in a prescribed manner. Applications to training in wireless communications and signal processing are shown. In wireless communications, we show that the optimal number of training signals can be significantly smaller than the number of transmitting elements. Similar conclusions can be drawn when considering the symbol error rate in signal processing applications, as long as the number of receiving elements is large enough. We show that a linear analysis of training in a quantized system can be accurate when the thermal noise is high or the system is operating near its saturation rate.
翻译:我们表明,一个具有未知参数和培训信号的量化大型系统可以通过以规定的方式修改信号功率和噪音差异来检查一个具有已知参数的等效系统来分析,从而分析一个具有未知参数和培训信号的大规模系统。 显示无线通信和信号处理培训的应用情况。 在无线通信中,我们显示培训信号的最佳数量可以大大少于传输元素的数量。 在考虑信号处理应用程序中的符号错误率时,只要接收元素的数量足够大,也可以得出类似的结论。 我们显示,当热噪音高或系统运行接近饱和率时,对一个量化系统中的培训进行线性分析可以准确无误。