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Energy-efficient self-adapting online linear forecasting for wireless sensor network applications

机译:无线传感器网络应用的节能自适应在线线性预测

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New energy-efficient linear forecasting methods are proposed for various sensor network applications, including in-network data aggregation and mining. The proposed methods are designed to minimize the number of trend changes for a given application-specified forecast quality metric. They also self-adjust the model parameters, the slope and the intercept, based on the forecast errors observed via measurements. As a result, they incur O(1) space and time overheads, a critical advantage for resource-limited wireless sensors. An extensive simulation study based on real-world and synthetic time-series data shows that the proposed methods reduce the number of trend changes by 20%/spl sim/50% over the existing well-known methods for a given forecast quality metric. That is, they are more predictive than the others with the same forecast quality metric.
机译:为各种传感器网络应用提出了新的节能线性预测方法,包括网络内数据聚合和挖掘。所提出的方法旨在最大限度地减少给定应用程序指定的预测质量度量的趋势变化的数量。基于通过测量观察到的预测误差,它们还可以自我调整模型参数,斜率和截距。结果,它们会产生O(1)空间和时间开销,这是资源有限的无线传感器的关键优势。基于现实世界和合成时间序列数据的广泛仿真研究表明,所提出的方法将趋势的数量减少20%/ SPL SIM / 50%,以满足给定的预测质量指标的现有众所周知的方法。也就是说,它们比具有相同预测质量指标的人更预测。

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