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Performance of adaptive equalization techniques in wireless underground sensor networks

机译:无线地下传感器网络中自适应均衡技术的性能

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This paper investigates different adaptive equalization techniques in three different communication scenarios viz; Underground-to-Underground (UG-UG), Underground-to-Aboveground (UG-AG) and Aboveground-to-Underground (AG-UG), using Mineralogy Based Spectroscopic Dielectric Model (MBSDM) which is preferred over the Peplinski Soil Dielectric model because of its ability to generate Complex Dielectric Constant (CDC) spectra of moist soils with considerably better accuracy and lesser prediction error. BPSK QPSK and 32 QAM modulated signals at 1 GHz are sent through the MBSDM channel. The received signals are equalized using RLS, LMS, and NLMS algorithms. Amongst these algorithms, RLS provides better performance in mitigating the Inter Symbol Interference (ISI) induced by the underground channel in a stationary channel environment as it converges much faster than LMS and NLMS. NLMS performs better than LMS as evidenced by plotting BER vs SNR. This study infers that adaptive equalization techniques help not only in recovering the original signal but also provides a deeper insight about underground channel models for efficient WUSNs.
机译:本文研究了三种不同通信场景下的不同自适应均衡技术。地下到地下(UG-UG),地下到地下(UG-AG)和地上到地下(AG-UG),使用基于矿物学的分光电介质模型(MBSDM),比Peplinski土壤电介质更可取该模型能够产生潮湿土壤的复介电常数(CDC)光谱,且准确度更高,预测误差更小。通过MBSDM通道发送1 GHz的BPSK QPSK和32个QAM调制信号。使用RLS,LMS和NLMS算法对接收到的信号进行均衡。在这些算法中,RLS的收敛速度比LMS和NLMS快得多,因此在缓解地下信道在固定信道环境中引起的符号间干扰(ISI)方面提供了更好的性能。通过绘制BER与SNR的关系图可以看出,NLMS的性能优于LMS。这项研究推断,自适应均衡技术不仅有助于恢复原始信号,还可以为有效的WUSN提供更深入的地下通道模型见解。

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