论文标题

有效的在线分类和对资源约束的物联网设备的跟踪

Efficient Online Classification and Tracking on Resource-constrained IoT Devices

论文作者

Aftab, Muhammad, Chau, Sid Chi-Kin, Shenoy, Prashant

论文摘要

越来越多的智能物联网设备需要及时处理,这导致在物联网设备上直接实施信息处理任务,以节省带宽和隐私保证。特别是,以连续形式监视和跟踪观察到的信号是各种近实时处理IoT设备的常见任务,例如在智能家居,身体区域和环境感应应用中。但是,这些系统可能是配备紧凑的内存空间的低成本资源约束嵌入式系统,因此可以存储连续信号的完整信息状态的能力受到限制。因此,在本文中,我们开发了有效的及时处理嵌入式系统的解决方案,用于在线分类和跟踪具有紧凑的内存空间的连续信号。特别是,我们专注于能够以独立方式及时分类设备类型的智能插头。我们使用具有少量存储空间的低成本Arduino平台实现了智能插头原型,以演示以下及时处理操作:(1)学习和分类与连续功耗信号相关的模式,以及(2)跟踪使用少量本地存储空间的信号模式的发生。此外,我们的系统设计也足够通用,可以及时监视和跟踪其他资源约束的物联网设备中的应用程序。

Timely processing has been increasingly required on smart IoT devices, which leads to directly implementing information processing tasks on an IoT device for bandwidth savings and privacy assurance. Particularly, monitoring and tracking the observed signals in continuous form are common tasks for a variety of near real-time processing IoT devices, such as in smart homes, body-area and environmental sensing applications. However, these systems are likely low-cost resource-constrained embedded systems, equipped with compact memory space, whereby the ability to store the full information state of continuous signals is limited. Hence, in this paper, we develop solutions of efficient timely processing embedded systems for online classification and tracking of continuous signals with compact memory space. Particularly, we focus on the application of smart plugs that are capable of timely classification of appliance types and tracking of appliance behavior in a standalone manner. We implemented a smart plug prototype using low-cost Arduino platform with small amount of memory space to demonstrate the following timely processing operations: (1) learning and classifying the patterns associated with the continuous power consumption signals, and (2) tracking the occurrences of signal patterns using small local memory space. Furthermore, our system designs are also sufficiently generic for timely monitoring and tracking applications in other resource-constrained IoT devices.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源