实时物联网边缘应用的数据库管理系统优化

Valentin Pupezescu, Marilena-Cătălina Pupezescu, L. Perisoara
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引用次数: 1

摘要

物联网类型系统的指数级增长导致了对数据库管理系统领域在存储和处理大容量数据方面的重新考虑。最近,已经开发了许多实时数据库管理系统(DBMS)来解决诸如安全性、管理对存储数据的并发访问以及优化数据查询性能等问题。本文研究了减少常用数据库管理系统时间有效范围的方法。物联网边缘设备的主要目的是生成数据并使其可用于机器学习或统计算法。这是在数据库中的知识发现过程中实现的。为了可视化和获得关键的数据挖掘结果,所有设备生成的数据必须尽可能快地用于选择、预处理和数据转换。在本研究中,我们调查了物联网边缘设备是否可以与正确配置的通用DBMS一起使用,以便快速访问数据,而不是使用实时DBMS。我们将研究大型物联网生态系统中需要什么样的事务,并分析控制对公共资源(存储数据)的并发访问的技术。为此,我们构建了一系列能够模拟对公共DBMS的并发写操作的应用程序,以便研究并发访问数据库资源的性能。将对开发的应用程序进行测试的另一个重要过程是为用户和数据挖掘应用程序增加数据的可用性。这将通过使用字段索引来实现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimizations of Database Management Systems for Real Time IoT Edge Applications
The exponential growth of IoT-type systems has led to a reconsideration of the field of database management systems in terms of storing and handling high-volume data. Recently, many real-time Database Management Systems(DBMS) have been developed to address issues such as security, managing concurrent access to stored data, and optimizing data query performance. This paper studies methods that allow to reduce the temporal validity range for common DBMS. The primary purpose of IoT edge devices is to generate data and make it available for machine learning or statistical algorithms. This is achieved inside the Knowledge Discovery in Databases process. In order to visualize and obtain critical Data Mining results, all the device-generated data must be made available as fast as possible for selection, preprocessing and data transformation. In this research we investigate if IoT edge devices can be used with common DBMS proper configured in order to access data fast instead of working with Real Time DBMS. We will study what kind of transactions are needed in large IoT ecosystems and we will analyze the techniques of controlling concurrent access to common resources (stored data). For this purpose, we built a series of applications that are able to simulate concurrent writing operations to a common DBMS in order to investigate the performance of concurrent access to database resources. Another important procedure that will be tested with the developed applications will be to increase the availability of data for users and data mining applications. This will be achieved by using field indexing.
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