Intelligent data filtering in constrained IoT systems

Igor Burago, Davide Callegaro, M. Levorato, Sameer Singh
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Abstract

The expansion of complex autonomous sensing and control mechanisms in the Internet-of-Things systems clashes with constraints on computation and wireless communication resources. In this paper, we propose a framework to address this conflict for applications in which resolution using a centralized architecture with a general-purpose compression of observations is not appropriate. Three approaches for distributing observation detection workload between sensing and processing devices are considered for sensor systems within wireless islands. Each of the approaches is formulated for the shared configuration of a sensor-edge system, in which the network structure, observation monitoring problem, and machine learning-based detector implementing it are not modified. For every approach, a high-level strategy for realization of the detector for different assumptions on the relation between its complexity and the system's constraints is considered. In each case, the potential for the constraints' satisfaction is shown to exist and be exploitable via division, approximation, and delegation of the detector's workload to the sensing devices off the edge processor. We present examples of applications that benefit from the proposed approaches.
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受限物联网系统中的智能数据过滤
物联网系统中复杂的自主传感和控制机制的扩展与计算和无线通信资源的约束发生了冲突。在本文中,我们提出了一个框架来解决这种冲突,在这种应用中,使用具有通用压缩观测值的集中式架构来解决是不合适的。针对无线孤岛内的传感器系统,考虑了三种在传感和处理设备之间分配观测检测工作量的方法。每种方法都是为传感器边缘系统的共享配置而制定的,其中网络结构、观察监控问题和实现它的基于机器学习的检测器都没有修改。对于每一种方法,考虑了探测器的复杂程度与系统约束关系的不同假设,给出了探测器的高级实现策略。在每种情况下,满足约束的可能性都是存在的,并且可以通过将检测器的工作负载划分、近似和委托给边缘处理器以外的传感设备来利用。我们给出了从所提出的方法中受益的应用程序示例。
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