Optimization of Kerf Width in WEDM of Sandwich Woven CFRP-An Ensemble Machine Learning Based Approach

IF 2.9 4区 综合性期刊 Q1 Multidisciplinary
Subhankar Saha, T. Arunkumar, Kishore Debnath, Satish Chaurasia
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引用次数: 0

Abstract

Machining CFRP with WEDM is extremely challenging and produces kerf of poor quality. Therefore, the present research venture is intended to improve the kerf quality produced in WEDM of woven CFRP through a machine learning-based metaheuristic algorithm. Two ensemble-based machine learning algorithms i.e., the Random Forest (RF), and Adaptive Boosting algorithm (AdaBoost) have been used to model the kerf width. The performance of RF is found to be superior to AdaBoost in terms of generalization prowess as the box plot corresponding to the predicted KW by RF closely resembles the box plot of experimental KW whereas the box plot corresponding to the predicted KW by AdaBoost has a varying distribution with the box-plot of experimental KW. Furthermore, the kerf width optimization has been conducted using a broad range of optimization techniques from nature-inspired to mathematically driven approaches such as the Moth flame optimizer (MFO), Grey Wolf optimizer, Chimp optimization algorithm, and sine cosine algorithm in an attempt to compare the computational performance of the algorithms. It has been revealed that MFO discovered the minimum KW (global optimum solution) and exhibited rapid convergence as compared to its counterparts. The optimal results are Ton = 26 microsecs, Toff = 50 microsecs, I = 7A, and V = 70 V. Additionally, the proposed optimization's durability has been examined using the traditional desirability approach. The percentage improvement in KW through the proposed optimization as compared to the desirability approach is 5.6%. Lastly, FESEM images are provided for varying process parametric conditions.

Abstract Image

优化夹层编织 CFRP 线切割加工中的切口宽度--一种基于机器学习的集合方法
使用线切割机床加工 CFRP 极具挑战性,而且会产生质量较差的切口。因此,本研究项目旨在通过基于机器学习的元启发式算法,改善编织 CFRP 的线切割加工过程中产生的切口质量。两种基于集合的机器学习算法,即随机森林算法(RF)和自适应提升算法(AdaBoost)被用于建立切口宽度模型。结果发现,RF 的泛化能力优于 AdaBoost,因为 RF 预测的 KW 对应的盒状图与实验 KW 的盒状图非常相似,而 AdaBoost 预测的 KW 对应的盒状图与实验 KW 的盒状图分布不一。此外,切口宽度优化还采用了从自然启发到数学驱动的多种优化技术,如飞蛾火焰优化器(MFO)、灰狼优化器、Chimp 优化算法和正弦余弦算法,试图比较这些算法的计算性能。结果表明,与同类算法相比,MFO 发现了最小 KW(全局最优解),并表现出快速收敛性。最佳结果为 Ton = 26 微秒,Toff = 50 微秒,I = 7A 和 V = 70 V。此外,还采用传统的可取性方法对所提出的优化方案的耐用性进行了检验。与可取性方法相比,建议的优化方法在 KW 方面的改进百分比为 5.6%。最后,还提供了不同工艺参数条件下的 FESEM 图像。
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来源期刊
Arabian Journal for Science and Engineering
Arabian Journal for Science and Engineering 综合性期刊-综合性期刊
CiteScore
5.20
自引率
3.40%
发文量
0
审稿时长
4.3 months
期刊介绍: King Fahd University of Petroleum & Minerals (KFUPM) partnered with Springer to publish the Arabian Journal for Science and Engineering (AJSE). AJSE, which has been published by KFUPM since 1975, is a recognized national, regional and international journal that provides a great opportunity for the dissemination of research advances from the Kingdom of Saudi Arabia, MENA and the world.
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