Agriculture data analysis using parallel k-nearest neighbour classification algorithm

Vimala Muninarayanappa, Rajeev Ranjan
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引用次数: 0

Abstract

A cost-effective and effective agriculture management system is created by utilizing data analytics (DA), internet of things (IoT), and cloud computing (CC). Geographic information system (GIS) technology and remote sensing predictions give users and stakeholders access to a variety of sensory data, including rainfall patterns and weather-related information (such as pressure, humidity, and temperatures). They have unstructured format for sensory data. The current systems do a poor job of analysing such data since they cannot effectively balance speed and memory usage. An effective categorization model (ECM) on agriculture management system is proposed to address this research difficulty. First, a classification technique called priority-based k-nearest neighbour (KNN) is provided to categorize unstructured multi-dimensional data into a structured form. Additionally, the Hadoop MapReduce (HMR) framework is used to do classification utilizing a parallel approach. Data from real-time IoT sensors used in agriculture is the subject of experiments. The suggested approach significantly outperforms previous approaches that are computing time, memory efficiency, model accuracy, and speedup.
利用并行 K 近邻分类算法进行农业数据分析
通过利用数据分析(DA)、物联网(IoT)和云计算(CC),可以创建一个经济高效的农业管理系统。地理信息系统(GIS)技术和遥感预测可让用户和利益相关者获取各种感官数据,包括降雨模式和天气相关信息(如气压、湿度和温度)。它们的感官数据格式都是非结构化的。目前的系统在分析此类数据方面表现不佳,因为它们无法有效地平衡速度和内存使用。为解决这一研究难题,我们提出了一种有效的农业管理系统分类模型(ECM)。首先,提供了一种名为 "基于优先级的 k-nearest neighbor(KNN)"的分类技术,将非结构化多维数据分类为结构化形式。此外,还使用了 Hadoop MapReduce(HMR)框架,利用并行方法进行分类。实验对象是来自农业中使用的实时物联网传感器的数据。所建议的方法在计算时间、内存效率、模型准确性和速度方面明显优于之前的方法。
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CiteScore
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