An LJDRNN-based efficient energy intensity prediction in carbon fiber composite material manufacturing process

Carbon Fibers (CFs) are usually derived from a polyacrylonitrile precursor during composite fiber production. Due to high-temperature needs, the CF composite manufacturing process is considerably energy-consuming and costly. Hence, energy intensity prediction is required. Energy intensity is predict...

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Main Authors: Rangaswamy Nikhil, Karthikeyan A G, Prabhu Loganathan, Tabrej Khan, Tamer A Sebaey
Format: Article
Language:English
Published: IOP Publishing 2025-01-01
Series:Materials Research Express
Subjects:
Online Access:https://doi.org/10.1088/2053-1591/ada732
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author Rangaswamy Nikhil
Karthikeyan A G
Prabhu Loganathan
Tabrej Khan
Tamer A Sebaey
author_facet Rangaswamy Nikhil
Karthikeyan A G
Prabhu Loganathan
Tabrej Khan
Tamer A Sebaey
author_sort Rangaswamy Nikhil
collection DOAJ
description Carbon Fibers (CFs) are usually derived from a polyacrylonitrile precursor during composite fiber production. Due to high-temperature needs, the CF composite manufacturing process is considerably energy-consuming and costly. Hence, energy intensity prediction is required. Energy intensity is predicted by the prevailing research techniques; however, it is not predicted accurately. Thus, a Limit Jordan Deep Recurrent Neural Network (LJDRNN)-centric energy intensity prediction was proposed for accurately predicting the energy intensity. Primarily, the material values and processes are detected. Next, for the determined values, pre-processing is done; in addition, the components are extracted from the input values. Then, by employing the Linear Interpolated Honey Badger Optimization (LIHBO), the optimal components are selected. Next, LJDRNN predicts the energy intensity by deploying the optimal components. The proposed LJDRNN achieved an accuracy of 98.32%, outperforming the JRNN (92.10%), RNN (87%), ANN (78%), and CNN (86%), thus demonstrating its superiority in energy intensity prediction. Grounded on the performance measures, the proposed technique’s performance is weighed against the prevailing research techniques where the proposed system attained enhanced performance when analogized to the prevailing methodologies. This study is of high significance to CF producers, offering a robust tool to predict and manage energy consumption effectively. By enabling more precise energy intensity forecasting, the proposed method supports producers in optimizing their manufacturing processes, reducing energy costs, and aligning with sustainable production goals, ultimately driving greater operational efficiency and competitiveness in the CF industry.
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spelling doaj-art-931505b6da244b169e6e6ce29235deb32025-01-28T11:36:00ZengIOP PublishingMaterials Research Express2053-15912025-01-0112101530710.1088/2053-1591/ada732An LJDRNN-based efficient energy intensity prediction in carbon fiber composite material manufacturing processRangaswamy Nikhil0https://orcid.org/0000-0002-4090-6638Karthikeyan A G1https://orcid.org/0000-0002-9868-1099Prabhu Loganathan2Tabrej Khan3https://orcid.org/0000-0002-8619-1340Tamer A Sebaey4Department of Mechatronics Engineering, School of Mechanical Engineering, REVA University , Bengaluru, Karnataka, 560064, IndiaDepartment of Mechatronics Engineering, School of Mechanical Engineering, REVA University , Bengaluru, Karnataka, 560064, IndiaMechanical Engineering, Builders Engineering College (Autonomous), Tirupur, Tamil Nadu, 638108, IndiaEngineering Management Department, College of Engineering, Prince Sultan University , PO Box 66833, Riyadh, 11586, Saudi ArabiaEngineering Management Department, College of Engineering, Prince Sultan University , PO Box 66833, Riyadh, 11586, Saudi Arabia; Mechanical Design and Production Department, Faculty of Engineering, Zagazig University , Zagazig, Sharkia, EgyptCarbon Fibers (CFs) are usually derived from a polyacrylonitrile precursor during composite fiber production. Due to high-temperature needs, the CF composite manufacturing process is considerably energy-consuming and costly. Hence, energy intensity prediction is required. Energy intensity is predicted by the prevailing research techniques; however, it is not predicted accurately. Thus, a Limit Jordan Deep Recurrent Neural Network (LJDRNN)-centric energy intensity prediction was proposed for accurately predicting the energy intensity. Primarily, the material values and processes are detected. Next, for the determined values, pre-processing is done; in addition, the components are extracted from the input values. Then, by employing the Linear Interpolated Honey Badger Optimization (LIHBO), the optimal components are selected. Next, LJDRNN predicts the energy intensity by deploying the optimal components. The proposed LJDRNN achieved an accuracy of 98.32%, outperforming the JRNN (92.10%), RNN (87%), ANN (78%), and CNN (86%), thus demonstrating its superiority in energy intensity prediction. Grounded on the performance measures, the proposed technique’s performance is weighed against the prevailing research techniques where the proposed system attained enhanced performance when analogized to the prevailing methodologies. This study is of high significance to CF producers, offering a robust tool to predict and manage energy consumption effectively. By enabling more precise energy intensity forecasting, the proposed method supports producers in optimizing their manufacturing processes, reducing energy costs, and aligning with sustainable production goals, ultimately driving greater operational efficiency and competitiveness in the CF industry.https://doi.org/10.1088/2053-1591/ada732carbon fiber composite materiallimit jordan deep recurrent neural network (LJDRNN)linear interpolated honey badger optimization (LIHBO)energy intensitymanufacturing process
spellingShingle Rangaswamy Nikhil
Karthikeyan A G
Prabhu Loganathan
Tabrej Khan
Tamer A Sebaey
An LJDRNN-based efficient energy intensity prediction in carbon fiber composite material manufacturing process
Materials Research Express
carbon fiber composite material
limit jordan deep recurrent neural network (LJDRNN)
linear interpolated honey badger optimization (LIHBO)
energy intensity
manufacturing process
title An LJDRNN-based efficient energy intensity prediction in carbon fiber composite material manufacturing process
title_full An LJDRNN-based efficient energy intensity prediction in carbon fiber composite material manufacturing process
title_fullStr An LJDRNN-based efficient energy intensity prediction in carbon fiber composite material manufacturing process
title_full_unstemmed An LJDRNN-based efficient energy intensity prediction in carbon fiber composite material manufacturing process
title_short An LJDRNN-based efficient energy intensity prediction in carbon fiber composite material manufacturing process
title_sort ljdrnn based efficient energy intensity prediction in carbon fiber composite material manufacturing process
topic carbon fiber composite material
limit jordan deep recurrent neural network (LJDRNN)
linear interpolated honey badger optimization (LIHBO)
energy intensity
manufacturing process
url https://doi.org/10.1088/2053-1591/ada732
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