Digital Twinning From Vehicle Usage Statistics for Customer-Centric Automotive Systems Engineering

IF 4.6 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Kunxiong Ling
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引用次数: 0

Abstract

Towards customer-centric automotive systems engineering, it is essential to incorporate physical models and vehicle usage behavior into decision support systems (DSSs). Such DSSs tend to apply digital twin concepts, where simulations are parameterized with fine-grained time-series data acquired from customer fleets. However, logging vast amounts of data from customer fleets is costly and raises privacy concerns. Alternatively, these time-series data can be aggregated into vehicle usage statistics. The feasibility of creating digital twins from these vehicle usage statistics and the corresponding DSSs for systems engineering is yet to be established. This paper aims to demonstrate this feasibility by proposing a DSS framework that integrates four key elements of digital twinning: aggregate usage statistics from customer fleets, logging data from testing fleets, physical models for vehicle simulation, and evaluation models to derive decision support metrics. The digital twinning involves a four-step process: pre-processing, profiling, simulation, and post-processing. Based on a real-world fleet of 57110 vehicles and four evaluation metrics, a proof of concept is conducted. Results show that the digital twin covers the evaluation metrics of 99% of the vehicles and reaches an average fleet twinning accuracy of 91.09%, which indicates the feasibility and plausibility of the proposed DSS framework.
根据车辆使用统计数据进行数字孪生,打造以客户为中心的汽车系统工程
为了实现以客户为中心的汽车系统工程,必须将物理模型和车辆使用行为纳入决策支持系统(DSS)。此类 DSS 往往采用数字孪生概念,利用从客户车队获取的细粒度时间序列数据对模拟进行参数化。然而,从客户车队记录大量数据不仅成本高昂,而且会引发隐私问题。或者,可以将这些时间序列数据汇总为车辆使用统计数据。从这些车辆使用统计数据中创建数字孪生系统和相应的系统工程 DSS 的可行性尚待确定。本文旨在通过提出一个数字孪生系统框架来证明这种可行性,该框架整合了数字孪生的四个关键要素:来自客户车队的综合使用统计数据、来自测试车队的日志数据、用于车辆仿真的物理模型以及用于得出决策支持指标的评估模型。数字孪生包括四个步骤:预处理、剖析、模拟和后处理。基于现实世界的 57110 辆车和四个评估指标,进行了概念验证。结果表明,数字孪生覆盖了 99% 的车辆的评价指标,车队孪生的平均准确率达到 91.09%,这表明了所提出的 DSS 框架的可行性和合理性。
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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CiteScore
5.40
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