CPMXai:Cognitive Predictive Maintenance and Quality Assurance using Explainable Ai and Machine Learning

Status:

active

Start date:

2021-11-15

End date:

2024-11-14

The practice of predictive maintenance has escalated since the advancement in Artificial Intelligence (AI) and Machine Learning (ML). It anticipates the maintenance required, avoiding unnecessary costs (saving time, energy, money and resources) and breakdowns of machines. However, for more accurate and better predictions cognitive predictive maintenance is required. The AI/ML for cognitive predictive models require all algorithms to be based on supervised and unsupervised learning, requires labelled data where the amount of data is huge as it comprises historical data, sensor data, related proprietary resources and many more. Again, the decisions generated by the model can also be difficult to comprehend without any explanation. CPMXai aims to resolve these issues by forming a collaboration between the leading industry partners, SMEs, research institutes and universities. The collaborated consortium comprises expert personals from the different entities with experience, skills and knowledge to these problems. CPMXai has 3 objectives i.e., 1) identify use cases in the industries, 2) develop a new automatic data labelling tool with the help of digital twin and lastly, 3) develop a self-monitoring, self-learning, self-explainable system to predict. CPMXai will develop a digital twin for cognitive predictive maintenance through automatic data labelling, AI/ML and Explainable AI (XAI) to reduce unwanted situations and enhance maintenance in manufacturing and production processes. This will later be generalized and applied in other industries meeting their requirements and resulting in sustainable manufacturing and increasing the competitiveness of Swedish
manufacturing.

AI system with Explanation for industry

[Show all publications]

ENHANCING EXPLAINABILITY, ROBUSTNESS, AND AUTONOMY: A COMPREHENSIVE APPROACH IN TRUSTWORTHY AI (May 2025)
Mobyen Uddin Ahmed, Shahina Begum, Shaibal Barua, Abu Naser Masud, Gianluca Di Flumeri , Nicolò Navarin
IEEE Symposium on Explainable, Responsible, and Trustworthy CI (IEEE CITREx)

Role of Multi-modal Machine Learning, Explainable AI and Human-AI Teaming in Trusted Intelligent Systems for Remote Digital Towers (Jan 2025)
Mobyen Uddin Ahmed, Shaibal Barua, Shahina Begum, Waleed Reafee Sbu Jmoona, Ricky Stanley D Cruze , Alexandre Veyrie , Christophe Hurter
7th Artificial Intelligence and Cloud Computing Conference (AICCC2024)

Research Issues and Challenges in the Computational Development of Trustworthy AI (Aug 2024)
Shahina Begum, Mobyen Uddin Ahmed, Shaibal Barua, Md Alamgir Kabir
IEEE International Conference on Artificial Intelligence in Engineering and Technology (IICAIET 2024)

Chip Analysis for Tool Wear Monitoring in Machining: A Deep Learning Approach (Aug 2024)
Atiq Ur Rehman, Tahira Salwa Rabbi Nishat, Mobyen Uddin Ahmed, Shahina Begum, Abhishek Ranjan
Journal of IEEE Access (Access'18)

Balancing Fairness: Unveiling the Potential of SMOTE-Driven Oversampling in AI Model Enhancement (May 2024)
Md Alamgir Kabir , Mobyen Uddin Ahmed, Shahina Begum, Shaibal Barua, Md Rakibul Islam
International Conference on Machine Learning Technologies (ICMLT)

Artificial Intelligence in Predictive Maintenance: A Systematic Literature Review on Review Papers (Jul 2023)
Md Rakibul Islam , Shahina Begum, Mobyen Uddin Ahmed
7th International Congress and Workshop on Industrial AI and eMaintenance (IAI)

Shahina Begum, Professor

Email: shahina.begum@mdu.se
Room: U1-089
Phone: +46-21-107370