Learning Latent Correlation of Heterogeneous Sensors Using Attention based Temporal Convolutional Network

Xin Wang, Yunji Liang, Zhiwen Yu, Bin Guo
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Abstract

Internet of Things devices have various sensors. These sensors are responsible for sensing the environmental information around the device in many ways, and more sensors will be deployed as the device develops. However, as a result of multiple sensor devices performing sensing work together, the sensing cost increases. In order to prevent the increase in sensing costs caused by more and more sensors on mobile devices, we began to study how to reduce the sensor number and also complete the corresponding sensing functions. A latent correlation between sensor data is our first task in sensor replacement. Therefore, we propose the attention-based temporal convolutional network (ATT-TCN) to learn the latent correlation. The experimental verification is performed on the collected sensor data set, and the experimental results prove that our proposed model can learn the latent correlation between heterogeneous sensor well. Our proposed ATT-TCN has better performance on the data set than the basic TCN model.
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基于注意的时间卷积网络学习异构传感器的潜在相关性
物联网设备有各种传感器。这些传感器负责以多种方式感知设备周围的环境信息,随着设备的发展,将部署更多的传感器。然而,由于多个传感器设备一起执行传感工作,传感成本增加。为了防止移动设备上越来越多的传感器带来的传感成本的增加,我们开始研究如何减少传感器的数量,同时完成相应的传感功能。传感器数据之间的潜在相关性是我们在传感器替换中的首要任务。因此,我们提出了基于注意的时间卷积网络(at - tcn)来学习潜在相关性。在采集到的传感器数据集上进行了实验验证,实验结果证明该模型能够很好地学习异构传感器之间的潜在相关性。我们提出的ATT-TCN在数据集上的性能优于基本的TCN模型。
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