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Design and development of automobile assembly model using federated artificial intelligence with smart contract

Author

Listed:
  • Arunmozhi Manimuthu
  • V. G. Venkatesh
  • Yangyan Shi
  • V. Raja Sreedharan
  • S. C. Lenny Koh

Abstract

With smart sensors and embedded drivers, today’s automotive industry has taken a giant leap in emerging technologies like Machine learning, Artificial intelligence, and the Internet of things and started to build data-driven decision-making strategies to compete in global smart manufacturing. This paper proposes a novel design framework that uses Federated learning-Artificial intelligence (FAI) for decision-making and Smart Contract (SC) policies for process execution and control in a completely automated smart automobile manufacturing industry. The proposed design introduces a novel element called Trust Threshold Limit (TTL) that helps moderate the excess usage of embedded equipment, tools, energy, and cost functions, limiting wastages in the manufacturing processes. This research highlights the use cases of AI in decentralised Blockchain with smart contracts, the company’s trading policies, and its advantages for effectively handling market risk assessments during socio-economic crisis. The developed model supported by real-time cases incorporated cost functions, delivery time and energy evaluations. Results spotlight the use of FAI in decision accuracy for the developed smart contract-based Automobile Assembly Model (AAM), thereby qualitatively limiting the threshold level of cost, energy and other control functions in procurement assembly and manufacturing. Customisation and graphical user interface with cloud integration are some challenges of this model.

Suggested Citation

  • Arunmozhi Manimuthu & V. G. Venkatesh & Yangyan Shi & V. Raja Sreedharan & S. C. Lenny Koh, 2022. "Design and development of automobile assembly model using federated artificial intelligence with smart contract," International Journal of Production Research, Taylor & Francis Journals, vol. 60(1), pages 111-135, January.
  • Handle: RePEc:taf:tprsxx:v:60:y:2022:i:1:p:111-135
    DOI: 10.1080/00207543.2021.1988750
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