验证遥测:用于物联网传感器的通用,易于使用,可扩展和强大的故障检测SDK

Tanmaey Gupta, Shubhankar Handa, A. Nambi
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引用次数: 0

摘要

随着物联网传感器的普及,对传感器遥测的依赖从未如此强烈。如今,从智能农业到智能建筑和城市的许多应用都依赖物联网遥测来提供见解并做出决策。然而,由于这些物联网部署的特点(在野外,恶劣的条件下),传感器容易发生故障,导致产生坏/脏数据。到目前为止,以数据为中心的算法被用来确定感测数据的质量,这有一些局限性,并且依赖于额外的上下文信息或传感器冗余。最近,基于传感器指纹识别的以系统为中心的方法已经证明可以在不需要任何额外信息的情况下可靠地检测传感器故障。然而,传感器指纹识别方法仅针对特定传感器进行验证,对现实条件不具有鲁棒性,并且无法扩展到大规模部署。为此,我们提出了一种通用的、易于使用的、可扩展的、健壮的故障检测SDK,称为验证遥测(VT) SDK。VT SDK建立在传感器指纹识别方法的基础上,可以与各种传感器(模拟和数字)和物联网设备一起工作,变化很小。我们提出了改进的传感器指纹识别算法,该算法对信号变化,传感器电路和现实世界条件具有鲁棒性。VT SDK在许多设备上实现,我们展示了它在几个实际应用中的用法。最后,VT SDK可供社区使用,以解决物联网部署中的传感器故障检测(https://aka.ms/verifiedtelemetry)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Verified Telemetry: A General, Easy to use, Scalable and Robust Fault Detection SDK for IoT Sensors
With the proliferation of IoT sensors, the reliance on sensor telemetry has never been greater. Today numerous applications from smart agriculture to smart buildings and cities, rely on IoT telemetry to provide insights and to take decisions. However, due to the characteristics of these IoT deployments (in the wild, harsh conditions), sensors are prone to failures, leading to the generation of bad/dirty data. Hitherto, data-centric algorithms were used to determine the quality of the sensed data, which has several limitations and relies on additional contextual information or sensor redundancy. Recently, system-centric approaches based on sensor fingerprinting has shown to detect sensor faults reliably without any additional information. However, the sensor fingerprinting approach is validated only for specific sensors, is not robust to real-world conditions, and cannot scale to large-scale deployments. To this end, we propose a general, easy-to-use, scalable, and robust fault detection SDK called Verified Telemetry (VT) SDK. VT SDK builds on the sensor fingerprinting approach and can work with a wide variety of sensors (both analog and digital) and IoT devices with very minimal changes. We propose improved sensor fingerprinting algorithms that are robust to signal variations, sensor circuitry, and real-world conditions. VT SDK is implemented across numerous devices and we show its usage on several practical applications. Finally, VT SDK is made available for the community to address sensor fault detection in IoT deployments (https://aka.ms/verifiedtelemetry).
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