We present an analytical framework for the channel estimation and the data detection in massive multiple-input multiple-output uplink systems with 1-bit analog-to-digital converters (ADCs) and i.i.d. Rayleigh fading. First, we provide closed-form expressions of the mean squared error (MSE) of the channel estimation considering the state-of-the-art linear minimum MSE estimator and the class of scaled least-squares estimators. For the data detection, we provide closed-form expressions of the expected value and the variance of the estimated symbols when maximum ratio combining is adopted, which can be exploited to efficiently implement minimum distance detection and, potentially, to design the set of transmit symbols. Our analytical findings explicitly depend on key system parameters such as the signal-to-noise ratio (SNR), the number of user equipments, and the pilot length, thus enabling a precise characterization of the performance of the channel estimation and the data detection with 1-bit ADCs. The proposed analysis highlights a fundamental SNR trade-off, according to which operating at the right noise level significantly enhances the system performance.
翻译:我们用1位模拟数字转换器(ADCs)和i.d. Rayleigh fading 提供频道估计和数据探测分析框架。首先,我们提供频道估计平均值正方形错误的闭式表达方式,考虑到最先进的最低线性线性估计器和规模最小比例估计器的类别。关于数据检测,我们提供在采用最大比例组合时预期值和估计符号差异的闭式表达方式,可以利用这些表达方式有效地进行最低距离检测,并有可能设计传输符号集。我们的分析结论明确取决于关键系统参数,如信号对噪音比率、用户设备数量和试验长度,从而能够精确地描述频道估计的性能和与1位ADC的数据检测。拟议的分析突出了国家通信系统的基本交易,根据这种交易方式,在正确的噪音水平上运行将大大增强系统性能。