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An architecture for big data processing on intelligent transportation systems. An application scenario on highway traffic flows

机译:智能交通系统上大数据处理的体系结构。公路交通流量的应用场景

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The transportation sector, and in particularly intelligent transportation systems, generate large volumes of real-time data that needs to be managed, communicated, interpreted, aggregated, and analyzed. To this end, innovative big data processing and mining as well as optimization techniques, need to be developed and applied in order to support real-time decision-making capabilities. Towards this end, this paper presents an ETL (extract, transform and load) architecture for intelligent transportation systems, addressing an application scenario on dynamic toll charging for highways. The ETL approach presented here, is responsible for preparing the data to be used by traffic prediction services, which will dynamically affect toll prices within different contexts. The proposed architecture relies on the adoption of “big data” technologies, to process and store large volumes of data from heterogeneous sources, provided by different highway operators. The proposed architecture is capable of handling real-time and historical data using big data technologies such as Spark on Hadoop and MongoDB. The DATEX-II data model is adopted, in order to harmonize traffic data provided by the highway operators. The work presented here, is still part of ongoing work currently addressed under the EU H2020 OPTIMUM project. Preliminary results achieved so far do not address the final conclusions of the project, but enabled us to demonstrate considerable gains in performance, when compared to other traditional ETL approaches, and also form the basis for pointing out and discuss future work directions and opportunities in the area of the development of big data processing and mining methods under the ITS domain.
机译:运输部门,尤其是在智能运输系统中,会生成大量实时数据,需要对其进行管理,传达,解释,汇总和分析。为此,需要开发和应用创新的大数据处理和挖掘以及优化技术,以支持实时决策能力。为此,本文提出了一种用于智能交通系统的ETL(提取,转换和加载)体系结构,解决了高速公路动态收费的应用场景。这里介绍的ETL方法负责准备要由流量预测服务使用的数据,这将动态影响不同上下文中的通行费价格。提议的体系结构依靠采用“大数据”技术来处理和存储由不同高速公路运营商提供的来自异构源的大量数据。所提出的架构能够使用大数据技术(例如Hadoop上的Spark和MongoDB)处理实时和历史数据。采用DATEX-II数据模型,以协调高速公路运营商提供的交通数据。此处介绍的工作仍是EU H2020 OPTIMUM项目当前正在处理的工作的一部分。到目前为止所取得的初步结果并未解决该项目的最终结论,但是使我们能够证明与其他传统ETL方法相比,在性能方面取得了可观的收益,并且还为指出和讨论未来工作方向和机遇提供了基础。领域的大数据处理和挖掘方法开发领域。

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