A Bayesian and smart gateway based communication for noisy IoT scenario

Cristanel Razafimandimby, V. Loscrí, A. Vegni, A. Neri
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引用次数: 17

Abstract

Nowadays, Internet of Things (IoT) coupled with cloud computing begins to take an important place in economic systems and in society daily life. It has got a large success in several application areas, ranging from smart city applications to smart grids. One major challenge that should be addressed is the huge amount of data generated by the sensing devices, which make the control of sending useless data very important. To face this challenge, we present a Bayesian Inference Approach (BIA), which allows avoiding the transmission of high spatio-temporal correlated data. In this paper, BIA is based on a hierarchical architecture with simple nodes, smart gateways and data centers. Belief Propagation algorithm has been chosen for performing an approximate inference on our model in order to reconstruct the missing sensing data. BIA is evaluated based on the data collected from real sensors and according to different scenarios. The results show that our proposed approach reduces drastically the number of transmitted data and the energy consumption, while maintaining an acceptable level of data prediction accuracy.
基于贝叶斯和智能网关的嘈杂物联网场景通信
如今,物联网(IoT)与云计算的结合开始在经济系统和社会日常生活中占据重要地位。它在多个应用领域取得了巨大成功,从智慧城市应用到智能电网。应该解决的一个主要挑战是传感设备产生的大量数据,这使得控制发送无用数据非常重要。为了应对这一挑战,我们提出了一种贝叶斯推理方法(BIA),该方法可以避免高时空相关数据的传输。在本文中,BIA基于简单节点、智能网关和数据中心的分层架构。为了重建缺失的感知数据,我们选择了信念传播算法对模型进行近似推理。BIA是基于从真实传感器收集的数据并根据不同的场景进行评估的。结果表明,我们提出的方法在保持可接受的数据预测精度的同时,大大减少了传输数据的数量和能耗。
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