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Hybrid optimization assisted deep convolutional neural network for hardening prediction in steel

机译:杂交优化辅助深卷积神经网络钢材加固预测

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Hardness is a property that prevents forced scraping or surface penetration of material surfaces against deformation. Indeed, some methods in the tradition of forecasting the mechanical properties of the steel used to recommend a new hardening forecast using a profound learning model. More particularly, an Optimized Deep Convolutional Neural Network (DCNN) framework is used that makes the prediction more accurate and precise. The input given to the model is the chemical composition of steel along with the distance from the quenched end, which directly predicts the hardening of steel as the model already knows of it. Moreover, to make the prediction more accurate, this paper aims to make a fine-tuning of Convolutional layers in DCNN. This paper suggests a new hybrid algorithm for optimal tuned, which is then hybridized Sea Lion Optimization (SLNO), Dragonfly Algorithm (DA), and Sea Lion insisted on Dragon Fly Modification (SL-DU). This is an optimal tuning. Finally, the performance of the proposed work is compared and validated over other state-of-the-art models for error measures. Finally, the performance of the adopted system was evaluated compared with other traditional systems and the results were achieved. According to the analysis, the MAE of the pattern used for distance 1.5 was 77.16%, 9.84%, 12.71%, and 23.36% better than regression, MVR, ANN, and CNN.
机译:硬度是一种防止材料表面抗变形的强迫刮擦或表面渗透的性质。实际上,在预测钢的力学性能的传统中,一些方法用于推荐使用深刻的学习模型推荐新的硬化预测。更具体地,使用优化的深卷积神经网络(DCNN)框架,使得预测更准确和精确。给出的模型的输入是钢的化学成分以及从淬火端的距离,直接预测钢的硬化,因为模型已经知道它。此外,为了使预测更准确,本文旨在在DCNN中进行微调卷积层。本文提出了一种新的最佳调谐的混合算法,然后是杂交的海狮优化(SLNO),蜻蜓算法(DA),海狮坚持龙飞修改(SL-DU)。这是一个最佳调整。最后,比较了所提出的工作的性能,并在其他最先进的模型中验证了误差措施。最后,与其他传统系统相比,评估了采用系统的性能,并实现了结果。根据分析,用于距离1.5的图案的MAE为77.16%,9.84%,12.71%,比回归,MVR,ANN和CNN优于23.36%。

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