Recent Events

Participation in ICTMS – 2024 at KIIT Deemed to be University

  • International Conference on Thermofluids and Manufacturing Science 2024
  • KIIT Deemed to be University
  • July 9, 2024

I am thrilled to share that I participated in the ICTMS – 2024 held at KIIT Deemed to be University. This international conference provided a platform for researchers, scientists, and engineers to discuss pioneering research in the field of Thermofluids and Manufacturing Science.

Paper Presentation

I presented a paper titled Advancements in Tool Wear Monitoring in Turning Operations: Digital Image Processing and AI Techniques. Here is the abstract of my paper:

Abstract: Tool wear monitoring in machining operations is vital for maintaining product quality and minimizing downtime. Traditional methods, like optical microscopy, are often time-consuming and offline. However, advancements in digital image processing, particularly machine vision, have made online tool wear monitoring more feasible. This systematic literature review investigates the application of artificial intelligence (AI) techniques in tool wear monitoring over the past two decades. The review reveals a growing interest in AI-based approaches, particularly Artificial Neural Networks (ANN) and Convolutional Neural Networks (CNN), for stable turning operations and online prediction. Key trends in input selection, preprocessing techniques, and output considerations across various AI models are identified, providing valuable insights into the evolving landscape of tool wear monitoring methodologies. Looking ahead, the future of tool wear monitoring appears promising, with continued advancements in AI technologies. Challenges remain, including the variable evolution of tool degradation and underutilization of CNC data. Addressing these challenges will require interdisciplinary collaboration and innovative solutions. In conclusion, AI-driven tool wear monitoring represents a promising approach to enhance productivity and quality in the metal cutting industry.

I am honored that my paper titled Advancements in Tool Wear Monitoring in Turning Operations: Digital Image Processing and AI Techniques has been accepted for publication in IoP Science. This acceptance underscores the significance of AI-driven approaches in enhancing manufacturing processes and quality control.

I extend my gratitude to the organizers and participants of ICTMS – 2024 for providing such an enriching platform for academic exchange and collaboration.

Further Recent Events

Machine Learning for Biomedical Signal Processing Course at ABV-IIITM

  • Machine Learning for Biomedical Signal Processing Course
  • ABV-Indian Institute of Information Technology and Management
  • 2024-06-30

I am thrilled to share that I recently completed a short-term, hands-on course in Machine Learning for Biomedical Signal Processing from ABV-Indian Institute of Information Technology and Management. This course enabled me to learn advanced techniques and practical applications of machine learning in the field of biomedical signal processing.