异构物联网传感器网络基于雾的数据融合:真实实现

F. Valente, João Paulo Morijo, Kelen Cristiane Teixeira Vivaldini, L. Trevelin
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引用次数: 3

摘要

物联网(IoT)是一个可以分为三个大层的环境:传感器/执行器层,其中包含各种具有不同计算、传感器和通信能力的对象;通信层使用无线技术,如ZigBee、蓝牙和新兴的6LoWPAN(例如LoRa);智能层,其中发生计算分析/决策。物联网可用于监控、推断问题、在业务层面做出决策或通过物联网节点在边缘执行。随着物联网传感器网络的发展,来自多个来源的大量数据流向智能层。为了根据对这些数据的分析做出决策,测量需要精确和准确。数据融合是提高数据质量的有效方法,然而,物联网环境仍在不断发展,数据融合发生的最佳方式和位置是一个悬而未决的问题。本文提出了一种物联网传感器数据融合的潜在策略,通过使用基于雾计算基础设施的开源物联网中间件中的容器平台将多传感器数据融合实现为微服务,该平台可以随着来自物联网节点的数据流入的增长而自动扩展。使用特定的数据融合算法,对ZigBee和LoRa上不同数量的物联网节点和传感器读数进行了大量数据融合测试。结果表明,该策略可以有效地应用于物联网异构环境。
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Fog-based Data Fusion for Heterogeneous IoT Sensor Networks: A Real Implementation
The Internet of Things (IoT) is an environment that can be divided in three large layers: the sensor/actuator level where a wide variety of objects with different computing, sensors and communication capabilities resides, the communication layer with wireless technologies such as ZigBee, Bluetooth and emerging 6LoWPAN (e.g LoRa), and the intelligence layer, where computing analytics/decisions occur. IoT can be used for monitoring, inferring problems, decision making at a business level or actuating at the edge via IoT nodes. As the IoT sensor network grows, an enormous amount of data from multiple sources flows to the intelligence layer. In order to make decisions based on analytics over these data, the measurements need to be precise and accurate. Data fusion is an effective way to improve data quality, however, IoT environments are still evolving and the best way and location where data fusion should happen is an open problem. This paper presents one potential strategy for IoT sensor data fusion by implementing multi-sensor data fusion as microservices using a container platform built into an opensource IoT middleware based in a fog computing infrastructure which is can scale automatically as the influx of data from the IoT nodes grows. A number of data fusion tests were performed for different amounts of IoT nodes and sensor readings over ZigBee and LoRa using a specific data fusion algorithm. The results show that, the strategy can be effectively used in IoT heterogeneous environments.
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