Digital twins in the green life sciences

W. Knibbe, L. Afman, S. Boersma, M. Bogaardt, J. Evers, F. van Evert, Jene van der Heide, I. Hoving, S. van Mourik, D. de Ridder, A. de Wit
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引用次数: 2

Abstract

ABSTRACT Digital twins provide a new paradigm for the integrated use of sensor data, process-based and data-driven modelling, and user interaction, to explore the behaviour of individual objects and processes. Digital twins originate from an engineering context and were developed for machines and mainly physical and chemical processes. In this paper, we further develop an understanding of digital twins for the green life sciences, which also include biological and social processes. We report on three use cases, in precision farming, greenhouse control and personalized dietary advice, focusing on practical benefits and challenges of digital twins compared with other research methods. This research extends earlier more conceptual research on digital twins in this domain. We find benefits in increased accuracy and impact because of the real-time data connection of digital twins to their real-life counterparts. Specification, availability and accuracy of relevant data sources are still major challenges. Specifically, when using digital twins for personalized advice, further research is needed on nontechnical aspects so that users will comply with the advice from the digital twins. We have outlined four directions of future research and expect that further research will include data-driven modelling to simulate the complex character of living objects and processes and at the same time develop approaches to limit the amount of required input data.
绿色生命科学中的数字双胞胎
数字孪生为传感器数据、基于过程和数据驱动的建模以及用户交互的综合使用提供了一个新的范例,以探索单个对象和过程的行为。数字孪生源于工程背景,主要是为机器和物理和化学过程开发的。在本文中,我们进一步发展了绿色生命科学的数字双胞胎的理解,其中也包括生物和社会过程。我们报告了三个用例,分别在精准农业、温室控制和个性化饮食建议方面,重点讨论了数字双胞胎与其他研究方法相比的实际好处和挑战。这项研究扩展了该领域早期对数字孪生的概念性研究。我们发现,由于数字孪生与现实生活中的对等体之间的实时数据连接,其准确性和影响力都有所提高。相关数据源的规范、可用性和准确性仍然是主要挑战。具体而言,在使用数字双胞胎进行个性化建议时,需要进一步研究非技术方面的问题,以便用户能够遵从数字双胞胎的建议。我们概述了未来研究的四个方向,并期望进一步的研究将包括数据驱动的建模,以模拟活体物体和过程的复杂特征,同时开发限制所需输入数据量的方法。
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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