Wireless sensor networks (WSNs) are employed across a wide range of industrial applications where ultra-low power consumption is a critical prerequisite. At the same time, these systems must maintain a certain level of determinism to ensure reliable and predictable operation. In this view, time slotted channel hopping (TSCH) is a communication technology that meets both conditions, making it an attractive option for its usage in industrial WSNs. This work proposes the use of machine learning to learn the traffic pattern generated in networks based on the TSCH protocol, in order to turn nodes into a deep sleep state when no transmission is planned and thus to improve the energy efficiency of the WSN. The ability of machine learning models to make good predictions at different network levels in a typical tree network topology was analyzed in depth, showing how their capabilities degrade while approaching the root of the tree. The application of these models on simulated data based on an accurate modeling of wireless sensor nodes indicates that the investigated algorithms can be suitably used to further and substantially reduce the power consumption of a TSCH network.
翻译:无线传感器网络(WSNs)广泛应用于工业领域,其中超低功耗是关键前提。同时,这些系统必须保持一定的确定性,以确保可靠且可预测的运行。在此背景下,时隙信道跳频(TSCH)作为一种通信技术,能够同时满足这两项条件,使其成为工业无线传感器网络中极具吸引力的选择。本研究提出利用机器学习学习基于TSCH协议的网络中产生的流量模式,以便在无传输计划时将节点切换至深度休眠状态,从而提高无线传感器网络的能效。研究深入分析了机器学习模型在典型树状网络拓扑中不同网络层级进行准确预测的能力,揭示了其预测能力在接近树根时逐渐下降的趋势。基于对无线传感器节点的精确建模,在仿真数据上应用这些模型的结果表明,所研究的算法能够有效且显著地进一步降低TSCH网络的功耗。