The concept of a digital twin has exploded in popularity over the past decade, yet confusion around its plurality of definitions, its novelty as a new technology, and its practical applicability still exists, all despite numerous reviews, surveys, and press releases. The history of the term digital twin is explored, as well as its initial context in the fields of product life cycle management, asset maintenance, and equipment fleet management, operations, and planning. A definition for a minimally viable framework to utilize a digital twin is also provided based on seven essential elements. A brief tour through DT applications and industries where DT methods are employed is also outlined. The application of a digital twin framework is highlighted in the field of predictive maintenance, and its extensions utilizing machine learning and physics based modeling. Employing the combination of machine learning and physics based modeling to form hybrid digital twin frameworks, may synergistically alleviate the shortcomings of each method when used in isolation. Key challenges of implementing digital twin models in practice are additionally discussed. As digital twin technology experiences rapid growth and as it matures, its great promise to substantially enhance tools and solutions for intelligent upkeep of complex equipment, are expected to materialize.
翻译:数字双胞胎的概念在过去10年中受到广泛欢迎,然而,尽管有许多审查、调查和新闻稿,其多种定义、新技术的新颖性及其实际适用性仍然存在混乱,尽管进行了许多审查、调查和新闻稿,但数字双胞胎一词的历史及其在产品生命周期管理、资产维护、设备车队管理、操作和规划等领域的初始背景都得到了探讨。关于利用数字双胞胎的最起码可行框架的定义也基于七个基本要素。还概述了对DT应用程序和采用DT方法的行业的简短考察。数字双胞胎框架的应用在预测维护领域得到强调,其扩展利用机器学习和物理模型模型进行。利用机器学习和物理模型的结合形成混合数字双胞胎框架,在孤立地使用时可以协同减轻每种方法的缺点。还进一步讨论了在实践中实施数字双胞胎模型的主要挑战。随着数字双胞胎技术的迅速增长和成熟,其大幅度加强复杂设备智能更新的工具和解决方案的巨大承诺有望实现。