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. However, the computational costs associated with existing reinforcement learning methods that can be utilized on edges are expensive. In this study, we developed an efficient reinforcement learning 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 reinforcement learning methods for edge devices. The experimental results show that AC-OSELM achieved the same or better compression performance and faster compression ratio estimation than the existing methods.
翻译:由于广泛采用Things互联网,大量传感器信息正在实时获得。因此,边缘设备数据的通信成本正在增加。压缩式遥感(CS)是可用于边缘设备的数据压缩方法,作为降低通信成本的一种方法,吸引人们的注意。在计算机系统,估计适当的压缩比例很重要。有一种方法,利用强化学习,对获得的数据的压缩比例进行适应性估算。然而,与现有强化学习方法相关的、可在边缘使用的成本是昂贵的。在本研究中,我们为边缘设备开发了一种高效强化学习方法,称为演员-批评在线连续极端学习机器(AC-OSELM),以及一种通过使用AC-OSELM估算边缘适当压缩比例来压缩数据的系统。对估算压缩比例的拟议方法的性能进行评估时,将之与其他边缘设备强化学习方法进行比较。实验结果表明,AC-OSELM取得了与现有方法相同或更好的压缩性能和压缩率的更快的压缩率估计。