NoiseSenseDNN:对传感器数据进行深度神经网络建模,以减轻边缘设备中噪声的影响

Tanmoy Sen, Haiying Shen, Matthew Normansell
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引用次数: 0

摘要

如今,边缘计算在许多应用程序(如交通和医疗保健)中的使用已经变得越来越流行。这些应用通常使用深度学习(DL)预测,这高度依赖于边缘设备中传感器收集的时间序列数据。然而,设备上传感器中噪声的存在会对DL模型的传感输出产生负面影响。最近提出的基于时间序列的深度学习方法(例如,SADeepSense)解决了这个问题,该方法假设在存在噪声的情况下,边缘设备中传感器输入的相关性会发生变化。在本文中,通过实际的实验,我们注意到这个假设在弹粒噪声存在的情况下可能不成立。为了解决这一问题,为了进一步提高预测精度,我们提出了一种深度学习模型,即NoiseSenseDNN,由于其独特的结构,该模型可以更准确地提取不同传感器输入之间随时间的相关性,同时存在灰度噪声和白噪声。我们进一步提出了一种压缩版本的NoiseSenseDNN,在满足精度要求的同时最大限度地减少了边缘设备的推理时间和消耗的能量。我们在工作站、真实边缘设备和三条真实轨迹上的实验表明,NoiseSenseDNN在精度上优于SADeepSense,压缩后的NoiseSenseDNN在满足精度要求的同时显著减少了推理时间和能耗。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
NoiseSenseDNN: Modeling DNN for Sensor Data to Mitigate the Effect of Noise in Edge Devices
Edge computing usage in many applications, such as transportation and healthcare, has been becoming popular nowadays. These applications often use deep learning (DL) prediction, which are highly dependent on time-series data collected by the sensors in the edge devices. However, the presence of noise in the on-device sensors negatively affects the sensing output of the DL models. Recently proposed time-series based DL approaches (e.g., SADeepSense) address this issue with the assumption that in the presence of noise, the correlation of sensor inputs in an edge device changes. In this paper, through real experiments, we notice that this assumption may not hold true in the presence of shot noise. To handle this problem, in order to further improve the prediction accuracy, we propose a DL model, namely NoiseSenseDNN, which more accurately extracts the correlation between different sensor inputs over time in the presence of both shot and white noise due to its unique architecture. We further propose a compressed version of NoiseSenseDNN that minimizes the inference time and consumed energy of the edge device while meeting the accuracy requirement. Our experiments on a workstation and a real edge device and three real traces show that NoiseSenseDNN outperforms SADeepSense in accuracy, and the compressed NoiseSenseDNN significantly reduces inference time and energy consumption while meeting the required accuracy.
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