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Machine Learning based Digital Twin Framework for Production Optimization in Petrochemical Industry

Published: 01 December 2019 Publication History

Highlights

This paper proposes a theoretical framework for digital twin-based production optimization, which integrates industrial IoT data processing and machine learning approaches.
This paper designs a practice loop of information exchange between the physical factory and a virtual digital twin model, as well as digital twin modeling process, system architecture, and model evaluation indices.
This paper provides a concrete solution to time series data processing issues in the petrochemical industry, such as frequency alignment, time lag issues, and high demand for immediacy.
The framework and approach proposed are practiced in the catalytic cracking unit of a petrochemical factory, and the results show the effectiveness of this approach for production optimization.

Abstract

Digital twins, along with the internet of things (IoT), data mining, and machine learning technologies, offer great potential in the transformation of today’s manufacturing paradigm toward intelligent manufacturing. Production control in petrochemical industry involves complex circumstances and a high demand for timeliness; therefore, agile and smart controls are important components of intelligent manufacturing in the petrochemical industry. This paper proposes a framework and approaches for constructing a digital twin based on the petrochemical industrial IoT, machine learning and a practice loop for information exchange between the physical factory and a virtual digital twin model to realize production control optimization. Unlike traditional production control approaches, this novel approach integrates machine learning and real-time industrial big data to train and optimize digital twin models. It can support petrochemical and other process manufacturing industries to dynamically adapt to the changing environment, respond in a timely manner to changes in the market due to production optimization, and improve economic benefits. Accounting for environmental characteristics, this paper provides concrete solutions for machine learning difficulties in the petrochemical industry, e.g., high data dimensions, time lags and alignment between time series data, and high demand for immediacy. The approaches were evaluated by applying them in the production unit of a petrochemical factory, and a model was trained via industrial IoT data and used to realize intelligent production control based on real-time data. A case study shows the effectiveness of this approach in the petrochemical industry.

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      Published In

      cover image International Journal of Information Management: The Journal for Information Professionals
      International Journal of Information Management: The Journal for Information Professionals  Volume 49, Issue C
      Dec 2019
      557 pages

      Publisher

      Elsevier Science Publishers B. V.

      Netherlands

      Publication History

      Published: 01 December 2019

      Author Tags

      1. digital twin
      2. machine learning
      3. internet of things
      4. petrochemical industry
      5. production control optimization

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