Modelling of Artificial Neural Network to Validate the Experimental Data of a Laboratory Scale ROT

Authors

  • Prabir Biswas Jadavpur University, Mechanical Engineering Department, Jadavpur, Kolkata, West Bengal, India
  • Kaustav Chakraborty Jadavpur University, Mechanical Engineering Department, Jadavpur, Kolkata, West Bengal, India
  • Pratik Kumar Raha Jadavpur University, Mechanical Engineering Department, Jadavpur, Kolkata, West Bengal, India
  • Pranibesh Mandal Jadavpur University, Mechanical Engineering Department, Jadavpur, Kolkata, West Bengal, India

DOI:

https://doi.org/10.13052/jgeu0975-1416.1126

Keywords:

Run Out Table, Artificial Neural Network programs, Cooling rate

Abstract

Run Out Tables (ROTs) are critical in the metallurgical sector for producing unique steel grade. The cooling rate controls the fine structure of steel, which is influenced by a number of factors such as the convective heat transfer coefficient, mean film temperature and many others. As a result, achieving a new steel grade necessitates the optimum combination of all of these factors. The cooling rate as a function of steel characteristics is obtained employing laboratory data such as convective heat transfer coefficient, mean film temperature, and mass flow rate of coolant at preset upper and lower nozzle distances from the experimental setup. Three Artificial Neural Network programs have been used to validate and check the performance of the experimental setup for optimize the cooling rate.

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Author Biographies

Prabir Biswas, Jadavpur University, Mechanical Engineering Department, Jadavpur, Kolkata, West Bengal, India

Prabir Biswas received B.Tech degree in Mechanical Engineering from Kalyani Govt. Engineering College. Completed Master of Engineering from Indian Institute of Engineering Science and Technology (IIEST) formally known as BESU, Shibpur in 2010. Presently doing Ph.D. from Jadavpur University. At the same time working as an Asst. Professor in Techno International New Town, Kolkata.

Kaustav Chakraborty, Jadavpur University, Mechanical Engineering Department, Jadavpur, Kolkata, West Bengal, India

Kaustav Chakraborty is a passionate engineer who graduated with a Bachelor’s degree in Mechanical Engineering from Jadavpur University, where he achieved the distinction of being the salutatorian of his class. Currently working as an engineer at CESC Limited., Fascination with physics dates back to his school days. Throughout academic journey, he had the opportunity to delve deeper into the realms of heat transfer, fluid mechanics, and even gained exposure to data science during his undergraduate years.

Pratik Kumar Raha, Jadavpur University, Mechanical Engineering Department, Jadavpur, Kolkata, West Bengal, India

Pratik Kumar Raha is a final year student of Bachelor’s of Engineering at Jadavpur University Department of Mechanical Engineering. He is interested in Thermal Engineering Applied fluid Mechanical.

Pranibesh Mandal, Jadavpur University, Mechanical Engineering Department, Jadavpur, Kolkata, West Bengal, India

Pranibesh Mandal is working as Assistant Professor of the Department of Mechanical Engineering since January, 2014 in Jadavpur University, Kolkata, India. He is currently doing research in Applied Aerodynamics, Underwater Vehicle Design, Hydraulic Control, Experimental Fluid Mechanics and Heat Transfer as well as other related fields.

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Published

2023-08-03

How to Cite

Biswas, P., Chakraborty, K., Raha, P. K., & Mandal, P. (2023). Modelling of Artificial Neural Network to Validate the Experimental Data of a Laboratory Scale ROT. Journal of Graphic Era University, 11(02), 207–220. https://doi.org/10.13052/jgeu0975-1416.1126

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Articles