一个新的基于Apache spark的框架,用于物联网网络中的大数据流预测。

IF 2.5 3区 计算机科学 Q2 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE Journal of Supercomputing Pub Date : 2023-01-01 DOI:10.1007/s11227-023-05100-x
Antonio M Fernández-Gómez, David Gutiérrez-Avilés, Alicia Troncoso, Francisco Martínez-Álvarez
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引用次数: 3

摘要

分析在连续流中获取的时间相关数据是许多领域的主要挑战,例如大数据和机器学习。能够分析来自各种来源的大量数据,如传感器、网络和互联网,对于提高我们社会生产过程的效率至关重要。此外,这些大量的数据是在连续流中动态收集的。本研究的目标是为预测来自物联网网络的大数据流提供一个全面的框架,并作为设计和部署其他第三方解决方案的指南。因此,本文提出了一种利用物联网网络收集的数据在大数据流场景下进行时间序列预测的新框架。该框架包括物联网网络设计与部署、大数据流架构、流数据建模方法、大数据预测方法和一个全面的现实应用场景五个主要模块,由一个物理的物联网网络喂养大数据流架构,作为线性回归算法用于说明。与其他框架的比较表明,这是第一个包含并集成了上述所有模块的框架。
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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A new Apache Spark-based framework for big data streaming forecasting in IoT networks.

Analyzing time-dependent data acquired in a continuous flow is a major challenge for various fields, such as big data and machine learning. Being able to analyze a large volume of data from various sources, such as sensors, networks, and the internet, is essential for improving the efficiency of our society's production processes. Additionally, this vast amount of data is collected dynamically in a continuous stream. The goal of this research is to provide a comprehensive framework for forecasting big data streams from Internet of Things networks and serve as a guide for designing and deploying other third-party solutions. Hence, a new framework for time series forecasting in a big data streaming scenario, using data collected from Internet of Things networks, is presented. This framework comprises of five main modules: Internet of Things network design and deployment, big data streaming architecture, stream data modeling method, big data forecasting method, and a comprehensive real-world application scenario, consisting of a physical Internet of Things network feeding the big data streaming architecture, being the linear regression the algorithm used for illustrative purposes. Comparison with other frameworks reveals that this is the first framework that incorporates and integrates all the aforementioned modules.

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来源期刊
Journal of Supercomputing
Journal of Supercomputing 工程技术-工程:电子与电气
CiteScore
6.30
自引率
12.10%
发文量
734
审稿时长
13 months
期刊介绍: The Journal of Supercomputing publishes papers on the technology, architecture and systems, algorithms, languages and programs, performance measures and methods, and applications of all aspects of Supercomputing. Tutorial and survey papers are intended for workers and students in the fields associated with and employing advanced computer systems. The journal also publishes letters to the editor, especially in areas relating to policy, succinct statements of paradoxes, intuitively puzzling results, partial results and real needs. Published theoretical and practical papers are advanced, in-depth treatments describing new developments and new ideas. Each includes an introduction summarizing prior, directly pertinent work that is useful for the reader to understand, in order to appreciate the advances being described.
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