论文标题
使用在线顺序学习进行边缘计算的有效压缩比估计
Efficient Compressed Ratio Estimation Using Online Sequential Learning for Edge Computing
论文作者
论文摘要
由于广泛采用了物联网,因此将实时获取大量的传感器信息。因此,来自Edge设备的数据的通信成本正在增加。压缩传感(CS)是一种可以在边缘设备上使用的数据压缩方法,它吸引了注意作为降低通信成本的一种方法。在CS中,估计适当的压缩比很重要。有一种使用加强学习(RL)自适应估计获得数据的压缩比的方法。但是,与现有的RL方法相关的计算成本通常很高。在这项研究中,我们为边缘设备开发了一种有效的RL方法,该方法称为Actient-Online顺序学习机器(AC-Oselm),并通过使用AC-Oselm估算边缘上的适当压缩比来压缩数据。通过将其与边缘设备的其他RL方法进行比较来评估所提出方法估计压缩比的性能。实验结果表明,与现有方法相比,Ac-Oselm表现出相同或更好的压缩性能和更快的压缩率估计。
Owing to the widespread adoption of the Internet of Things, a vast amount of sensor information is being acquired in real time. Accordingly, the communication cost of data from edge devices is increasing. Compressed sensing (CS), a data compression method that can be used on edge devices, has been attracting attention as a method to reduce communication costs. In CS, estimating the appropriate compression ratio is important. There is a method to adaptively estimate the compression ratio for the acquired data using reinforcement learning (RL). However, the computational costs associated with existing RL methods that can be utilized on edges are often high. In this study, we developed an efficient RL method for edge devices, referred to as the actor--critic online sequential extreme learning machine (AC-OSELM), and a system to compress data by estimating an appropriate compression ratio on the edge using AC-OSELM. The performance of the proposed method in estimating the compression ratio is evaluated by comparing it with other RL methods for edge devices. The experimental results indicate that AC-OSELM demonstrated the same or better compression performance and faster compression ratio estimation than the existing methods.