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Maintenance schedule optimisation for manufacturing systems

Maintenance schedule optimisation for manufacturing systems

by Ander Azkarate | Mar 12, 2021 | News & Events

The paper entitled “Maintenance schedule optimisation for manufacturing systems” written by BME, CeSi and We+ has been presented at the 4th Advanced Maintenance Engineering, Services and Technologies (AMEST 2020) conference, which was held virtually on September...
A RUL calculation approach based on physical-based simulation models for predictive maintenance

A RUL calculation approach based on physical-based simulation models for predictive maintenance

by Ander Azkarate | Mar 12, 2021 | News & Events

The paper entitled “A RUL calculation approach based on physical-based simulation models for predictive maintenance” has been presented in the 23rd International Conference on Engineering, Technology and Innovation (ICE/ITMC) 23rd which took place on the 27th, 28th...
Maintenance schedule optimisation for manufacturing systems

Towards accurate robot modelling of flexible robotic manipulators

by Ander Azkarate | Mar 12, 2021 | News & Events

The paper entitled “Towards accurate robot modelling of flexible robotic manipulators” was presented by LMS at the 8th CIRP Conference Assembly Technology and Systems (CATS2020) held virtually on September 29 – October 1, 2020. Authors: Z.Arkouli, P.Aivaliotis,...
A RUL calculation approach based on physical-based simulation models for predictive maintenance

A RUL calculation approach based on physical-based simulation models for predictive maintenance

by Ander Azkarate | Mar 12, 2021 | Sin categoría

The paper entitled “A RUL calculation approach based on physical-based simulation models for predictive maintenance” has been presented in the 23rd International Conference on Engineering, Technology and Innovation (ICE/ITMC) 23rd which took place on the 27th, 28th...
Design for reliability of robotic systems based on the prognostic approach

Design for reliability of robotic systems based on the prognostic approach

by Ander Azkarate | Mar 12, 2021 | Sin categoría

The paper entitled “Design for reliability of robotic systems based on the prognostic approach” has been presented in the 23rd International Conference on Mechatronics Technology (ICMT2019) which took place on October 23-26, 2019 at Fisciano Campus, University of...
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Latest News

  • Maintenance Service Platform (MSP) for maintenance information collection and sharing 2021-03-12
  • Machines’ Behaviour Prediction Tool (BPT) for maintenance applications 2021-03-12
  • The use of Digital Twin for predictive maintenance in manufacturing 2021-03-12
  • PROGRAMS project approach to maintenance management 2021-03-12
  • Karbantartási műveletek tervezése Monte Carlo szimulációva 2021-03-12
  • Maintenance schedule optimisation for manufacturing systems 2021-03-12
  • A RUL calculation approach based on physical-based simulation models for predictive maintenance 2021-03-12
  • Towards accurate robot modelling of flexible robotic manipulators 2021-03-12

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Latest News

  • Maintenance Service Platform (MSP) for maintenance information collection and sharing
  • Machines’ Behaviour Prediction Tool (BPT) for maintenance applications
  • The use of Digital Twin for predictive maintenance in manufacturing
  • PROGRAMS project approach to maintenance management
  • Karbantartási műveletek tervezése Monte Carlo szimulációva

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This project is funded by the European Commission under the Horizon 2020 Programme under grant agreement no. 767287.