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Learn to Sense: A Meta-Learning-Based Sensing and Fusion Framework for Wireless Sensor Networks

机译:学会感知:基于元学习的无线传感器网络感知和融合框架

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Wireless sensor networks (WSNs) act as the backbone of Internet of Things (IoT) technology. In WSN, field sensing and fusion are the most commonly seen problems, which involve collecting and processing of a huge volume of spatial samples in an unknown field to reconstruct the field or extract its features. One of the major concerns is how to reduce the communication overhead and data redundancy with prescribed fusion accuracy. In this paper, an integrated communication and computation framework based on meta-learning is proposed to enable adaptive field sensing and reconstruction. It consists of a stochastic-gradient-descent (SGD)-based base-learner used for the field model prediction aiming to minimize the average prediction error, and a reinforcement meta-learner aiming to optimize the sensing decision by simultaneously rewarding the error reduction with samples obtained so far and penalizing the corresponding communication cost. An adaptive sensing algorithm based on the above two-layer meta-learning framework is presented. It actively determines the next most informative sensing location, and thus considerably reduces the spatial samples and yields superior performance and robustness compared with conventional schemes. The convergence behavior of the proposed algorithm is also comprehensively analyzed and simulated. The results reveal that the proposed field sensing algorithm significantly improves the convergence rate.
机译:无线传感器网络(WSN)充当物联网(IoT)技术的骨干。在WSN中,最常出现的问题是场感测和融合,涉及在未知场中收集和处理大量空间样本,以重建场或提取其特征。主要关注的问题之一是如何以规定的融合精度减少通信开销和数据冗余。本文提出了一种基于元学习的集成通信和计算框架,以实现自适应的场传感和重构。它包括一个基于随机梯度下降(SGD)的基础学习器,用于最小化平均预测误差的现场模型预测;以及一个增强元学习器,其目的是通过同时奖励误差减少来优化感测决策。到目前为止获得的样本,并惩罚了相应的通信成本。提出了一种基于上述两层元学习框架的自适应感知算法。它主动确定下一个信息量最大的传感位置,因此与传统方案相比,可大大减少空间样本并产生卓越的性能和鲁棒性。还对该算法的收敛性进行了综合分析和仿真。结果表明,提出的场检测算法大大提高了收敛速度。

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