通过使用数据流模型和数字孪生实现自动化工程项目进度测量

IF 4.9 Q1 BUSINESS
Helena Ebel, T. Riedelsheimer, R. Stark
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引用次数: 4

摘要

管理成功的工程项目的一个重大挑战是随时了解它们的状态。本文描述了一个基于数据流模型、数字孪生和机器学习(ML)算法的自动化项目进度测量概念。该方法通过考虑使用ML算法的历史数据和当前未完成的工件来确定完成程度,从而集成了以前项目的信息。测量工程活动的进度所需的信息是从工程工件中提取出来的,然后根据项目的进度进行分析和解释。工程过程的数据流模型有助于理解所分析工件的上下文。数字孪生的使用使得在工程项目完成期间将计划数据与实际数据连接起来成为可能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enabling automated engineering’s project progress measurement by using data flow models and digital twins
A significant challenge of managing successful engineering projects is to know their status at any time. This paper describes a concept of automated project progress measurement based on data flow models, digital twins, and machine learning (ML) algorithms. The approach integrates information from previous projects by considering historical data using ML algorithms and current unfinished artifacts to determine the degree of completion. The information required to measure the progress of engineering activities is extracted from engineering artifacts and subsequently analyzed and interpreted according to the project’s progress. Data flow models of the engineering process help understand the context of the analyzed artifacts. The use of digital twins makes it possible to connect plan data with actual data during the completion of the engineering project.
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来源期刊
CiteScore
7.50
自引率
6.10%
发文量
17
审稿时长
15 weeks
期刊介绍: The International Journal of Engineering Business Management (IJEBM) is an international, peer-reviewed, open access scientific journal that aims to promote an integrated and multidisciplinary approach to engineering, business and management. The journal focuses on issues related to the design, development and implementation of new methodologies and technologies that contribute to strategic and operational improvements of organizations within the contemporary global business environment. IJEBM encourages a systematic and holistic view in order to ensure an integrated and economically, socially and environmentally friendly approach to management of new technologies in business. It aims to be a world-class research platform for academics, managers, and professionals to publish scholarly research in the global arena. All submitted articles considered suitable for the International Journal of Engineering Business Management are subjected to rigorous peer review to ensure the highest levels of quality. The review process is carried out as quickly as possible to minimize any delays in the online publication of articles. Topics of interest include, but are not limited to: -Competitive product design and innovation -Operations and manufacturing strategy -Knowledge management and knowledge innovation -Information and decision support systems -Radio Frequency Identification -Wireless Sensor Networks -Industrial engineering for business improvement -Logistics engineering and transportation -Modeling and simulation of industrial and business systems -Quality management and Six Sigma -Automation of industrial processes and systems -Manufacturing performance and productivity measurement -Supply Chain Management and the virtual enterprise network -Environmental, legal and social aspects -Technology Capital and Financial Modelling -Engineering Economics and Investment Theory -Behavioural, Social and Political factors in Engineering
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