电动汽车电池系统数字双平台的开发

Putu Handre Kertha Utama, Irsyad Nashirul Haq, E. Leksono, Muhammad Iqbal Juristian, Ghulam Azka Alim, J. Pradipta
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引用次数: 0

摘要

为了保证电动汽车电池系统的可靠、高效、安全运行,需要对电池系统进行适当的监控。最近网络物理技术的进步带来了新兴的数字孪生概念。这一概念为电池系统的实时状态监测和故障诊断开辟了新的可能性。虽然听起来很有希望,但概念的实现仍然面临许多挑战。其中一个挑战是开发数字孪生的平台的可用性,这涉及到数据管道和建模工具。数据管道将包括获取、存储和提取-转换-加载(ETL),这些数据具有高速度、高容量、高价值、多样化和高准确性,被称为大数据。建模工具必须提供应用程序来构建高保真模型,这是数字孪生的必要元素之一。基于这些紧迫性,本文提出了一个促进电动汽车电池系统数字孪生的平台。该平台建立在开源框架CDAP之上,配备了数据管道和建模工具。它使用不同的计算资源配置和工作负载运行了几个性能测试。处理能力增加一倍可以减少12%的计算时间,而内存大小增加四倍只能减少10%的计算时间。结果表明,处理能力比内存大小更能影响数字孪生平台的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Development of Digital Twin Platform for Electric Vehicle Battery System
The battery system in electric vehicles needs proper monitoring and control to ensure reliable, efficient, and safe operation. Recent advancement in cyber-physical technology has brought the emerging digital twin concept. This concept opens a new possibility of real-time condition monitoring and fault diagnosis of the battery system. Although it sounds promising, the concept implementation still faces many challenges. One of the challenges is the availability of a platform to develop digital twins, which involves data pipelines and modeling tools. The data pipeline will include the acquisition, storing, and extract-transform-load (ETL) with high velocity, volume, value, variety, and veracity data, known as big data. The modeling tools must provide applications to build the high-fidelity model, one of the required elements of the digital twin. Based on those urgencies, this paper proposes a platform that facilitates a digital twinning of the battery system in an electric vehicle. The platform is built on the open-source framework CDAP, equipped with a data pipeline and modeling tools. It has run several performance tests with different computation resource configurations and workloads. Doubling the processing power can reduce 12% of computation time while increasing memory size by four times only reduces 10% of computation time. The result shows that the processing power affects the performance digital twin platform more than the memory size.
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