Cognitive channel selection for Wireless Sensor communications

M. Chincoli, P. D. Boef, A. Liotta
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引用次数: 8

Abstract

Wireless sensor networks (WSNs) are dense networks affected by severe interference among many devices. They operate in the unlicensed 2.4 GHz band that is shared by different technologies, such as Bluetooth and WiFi, which add interference at higher transmission power. For this reason, interference is an important factor to avoid for reliable communications. Due to the unpredictable nature of the wireless medium, the 802.15.4e standard has introduced the possibility to schedule a channel in frequency using Time Division Multiple Access (TDMA), but the selection of the optimal channel is still an ongoing research. In this paper, a Multilayered Feedforward Neural Network (MFNN) is proposed as a possible solution to make predictions about which channel can offer low latency and high throughput at any given time slot. Controlled experiments were conducted in an anechoic chamber, considering the two scenarios of no interference and interference incurred by other sensors and WiFi. Results show that MFNN is a valid solution, obtaining performance comparable to the best case scenario.
无线传感器通信的认知信道选择
无线传感器网络是一个密集的网络,受众多设备之间严重干扰的影响。它们在未经许可的2.4 GHz频段上运行,该频段由蓝牙和WiFi等不同技术共享,这会在更高的传输功率下增加干扰。因此,为了实现可靠的通信,干扰是一个需要避免的重要因素。由于无线媒体的不可预测性,802.15.4e标准引入了使用时分多址(TDMA)在频率上调度信道的可能性,但最佳信道的选择仍是一项正在进行的研究。本文提出了一种多层前馈神经网络(MFNN)作为一种可能的解决方案来预测在任何给定的时隙哪个信道可以提供低延迟和高吞吐量。对照实验在消声室内进行,考虑无干扰和受其他传感器和WiFi干扰两种情况。结果表明,MFNN是一种有效的解决方案,获得了与最佳情况相当的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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