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Dynamic Analysis of Least Squares Estimation on Equalization Using a Systemic Approach

机译:利用系统方法对最小二乘估计的动态分析

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The observed growth trend of the wireless communications market will drive the development of new wireless systems, including equalizers. Linear equalization is still a relatively low computational demand and easy-to- implement solution that may increase reliability in low data rate devices such as the ones required for IoT systems and wireless sensor networks. However, the relationship between the mean squared error (MSE) and the matrix correlation of the Least Squares (LS) estimation procedure, with the bit error rate (BER) of the system, has not been fully investigated. This paper presents a description of the simulated BER behavior, caused by the influence of the matrix correlation and MSE, through a causal analysis derived from a systems thinking approach. Then, it is proposed a descriptive hypothesis of the main cause and effect relationships involved in the generation of the BER behavior, using different training sequences in the LS optimization procedure.
机译:观察到的无线通信市场的增长趋势将推动新的无线系统的开发,包括均衡器。线性均衡仍然是一种相对较低的计算需求和易于实现的解决方案,可以提高低数据速率设备的可靠性,例如IOT系统和无线传感器网络所需的设备。然而,均由系统的比特错误率(BER)的平均平方误差(MSE)与最小二乘(LS)估计过程之间的关系尚未得到完全研究。本文介绍了由矩阵相关和MSE的影响引起的模拟BER行为的描述,通过从系统思维方法的因果分析。然后,在LS优化过程中使用不同的训练序列,提出了在生成BER行为中涉及的主要原因和效果关系的描述性假设。

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