IECON 2018 - 44th Annual Conference of the IEEE Industrial Electronics Society 2018
DOI: 10.1109/iecon.2018.8591464
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Automatic Generation of a Simulation-Based Digital Twin of an Industrial Process Plant

Abstract: The author wrote the manuscript in collaboration with Mr. Miettinen, Mr. Aikala and Mr. Savolainen. The author implemented and tested the proposed method on the Aalto University laboratory process under the guidance of Dr. Karhela and Prof. Vyatkin. Publication IV: "Sliding Mode SISO Control of Model Parameters for Implicit Dynamic Feedback Estimation of Industrial Tracking Simulation Systems" The author wrote the manuscript in collaboration with Mr. Ruusu. Mr. Ruusu developed the conceptual designed of the pr… Show more

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Cited by 81 publications
(39 citation statements)
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References 117 publications
(286 reference statements)
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“…The closest state-of-the-art works and their differences are analyzed as follows. A dynamic digital twin, as defined in Section 1, has been generated from 3D CAD information for the purpose of using process state values from the twin as soft sensors [11]; the approach is not applicable to brownfield plants for which 3D CAD models are generally not available. A qualitative digital twin of the plant has been generated for co-simulating control software against the plant in order to detect logic errors in the virtual commissioning phase [12,48].…”
Section: Automatic Generation Of Digital Twinsmentioning
confidence: 99%
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“…The closest state-of-the-art works and their differences are analyzed as follows. A dynamic digital twin, as defined in Section 1, has been generated from 3D CAD information for the purpose of using process state values from the twin as soft sensors [11]; the approach is not applicable to brownfield plants for which 3D CAD models are generally not available. A qualitative digital twin of the plant has been generated for co-simulating control software against the plant in order to detect logic errors in the virtual commissioning phase [12,48].…”
Section: Automatic Generation Of Digital Twinsmentioning
confidence: 99%
“…There are different available sources of information at process plants for the automatic generation of a digital display [11], such as datasheets, Process Flow Diagram (PFD) and Piping & Instrumentation Diagram (P&ID) diagrams, IO lists, 3D plant models and logic diagrams. The required information for simulation model creation can be extracted from these documents.…”
Section: Automatic Generation Of Digital Twinsmentioning
confidence: 99%
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“…1). The functionality of the process is not important for the aims of this article, but interested readers will find more details in [4], [9], [10], [37].…”
Section: Case Studymentioning
confidence: 99%
“…This digital replica of physical assets is called a digital twin, which continuously learns and updates itself from multiple sources. Case studies on digital twins are described in articles about digital twin ergonomic optimization (Caputo et al 2019), digital twin commentary (Tomko and Winter 2019), learning experiences by digital twins (David et al 2018), automatic generation of simulation-based digital twins (Martinez et al 2018), digital twins for legacy systems (Khan et al 2018), possibilities of digital twins technology (Shubenkova et al 2018), and rapid qualification of product by digital twins (Mukherjee and DebRoy 2019).…”
Section: Background and Literature Reviewmentioning
confidence: 99%