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Indoor positioning by distributed machine-learning based data analytics on smart gateway network

机译:在智能网关网络上通过基于分布式机器学习的数据分析进行室内定位

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Real-time data analysis on sensor nodes is challenging due to limited computing resources. A changing environment where received signal strength (RSSI) varies with time makes it more complex to update position predictors for real-time indoor positioning. Based on the distributed collection and analytics of RSSI values in a gateway network, a time-efficient workload-based (WL) distributed support vector machine (WL-DSVM) algorithm is introduced in this paper to perform the indoor positioning. Experimental results show that with 5 distributed sensor nodes running in parallel, the proposed WL-DSVM can achieve a performance improvement in run time up to 3.2?? with a stable positioning accuracy.
机译:由于计算资源有限,因此在传感器节点上进行实时数据分析具有挑战性。不断变化的环境中,接收信号强度(RSSI)随时间变化,这使得更新位置预测值以进行实时室内定位变得更加复杂。基于网关网络中RSSI值的分布式收集和分析,本文介绍了一种基于时间高效的基于工作负载的(WL)分布式支持向量机(WL-DSVM)算法,以进行室内定位。实验结果表明,在并行运行5个分布式传感器节点的情况下,所提出的WL-DSVM可以在高达3.2?的运行时间内实现性能提升。具有稳定的定位精度。

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