A Nearest Neighbors based Data Filter for Fog Computing in IoT Smart Agriculture

F. M. Ribeiro, R. Prati, Reinaldo A. C. Bianchi, C. Kamienski
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引用次数: 14

Abstract

In smart agriculture, the Internet of Things (IoT) makes it possible to analyze and manage agricultural yield to increase productivity, reduce wasted resources, and decrease irrigation costs. In IoT systems, if data management is entirely performed in the cloud, the system may not work correctly due to connectivity problems, which is common in some remote regions where the agribusiness thrives. A fog computing solution enables the IoT system to process data faster and deal with intermittent connectivity. However, a high number of packets sent from the fog to the cloud can cause link congestion with mostly useless data traffic. Dealing with fog data filtering is a challenge because it requires knowing which data is essential to send to the cloud. This paper proposes an approach to collect and store data in a smart agriculture environment and two different methods filtering data in the fog. We designed an experiment for each filtering method, using a real dataset containing temperature and humidity values. In both experiments, the fog filters the data using the k-Nearest-Neighbors (kNN) algorithm, which classifies data into categories according to their value ranges. In the first experiment, the fog classifies the data and generates an output of the number of data categories. In the second experiment, data is classified and also compressed based on the previously obtained categories using the runlength encoding (RLE) technique to preserve the data time series nature. Our results show that data filtering reduces the amount of data sent by the fog to the cloud.
基于最近邻的物联网智能农业雾计算数据过滤器
在智慧农业中,物联网(IoT)使分析和管理农业产量成为可能,从而提高生产力,减少资源浪费,降低灌溉成本。在物联网系统中,如果数据管理完全在云中执行,则由于连接问题,系统可能无法正常工作,这在农业综合企业蓬勃发展的一些偏远地区很常见。雾计算解决方案使物联网系统能够更快地处理数据并处理间歇性连接。但是,从雾发送到云的大量数据包可能会导致链路拥塞,其中大部分是无用的数据流量。处理雾数据过滤是一个挑战,因为它需要知道哪些数据是必须发送到云的。本文提出了一种在智能农业环境中收集和存储数据的方法,以及两种不同的雾中数据过滤方法。我们使用包含温度和湿度值的真实数据集为每种过滤方法设计了一个实验。在这两个实验中,fog使用k-Nearest-Neighbors (kNN)算法过滤数据,该算法根据数据的值范围将数据分类。在第一个实验中,fog对数据进行分类并输出数据类别的数量。在第二个实验中,使用运行长度编码(RLE)技术对数据进行分类和压缩,以保持数据的时间序列性质。我们的结果表明,数据过滤减少了雾发送到云的数据量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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