用海鸥优化算法进化正则化随机向量函数链用于色织物色差分类

IF 2 4区 工程技术 Q3 CHEMISTRY, APPLIED
Yufeng Qiu, Zhiyu Zhou, Jianxin Zhang
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引用次数: 0

摘要

针对色差分类精度低、人工检测成本高的问题,提出了一种基于改进的海鸥优化算法(SOA)优化正则化随机向量函数链接(RRVFL)模型的色差分类方法。首先,针对海鸥优化算法(SOA)收敛速度慢的问题,提出利用海洋掠食者算法(MPA)对SOA初始组进行优化。从而有效地提高了SOA算法的收敛能力和全局优化能力。随后,将改进的SOA算法应用于正则化随机向量功能链路(RRVFL)的参数微调。与仅优化权重和偏置的方法相比,本文的MSOA‐RRVFL模型还增加了对隐层节点数和正则化参数的优化,有效地避免了RRVFL模型因相关参数随机而导致分类准确率低的问题。最后,通过将RRVFL模型与其他优化算法进行比较,实验结果表明改进后的SOA算法的收敛能力得到了提高,MSOA‐RRVFL模型的色差分类平均准确率高达99.79%,分类误差波动可稳定在0.2%以下。总的来说,MSOA‐RRVFL模型在稳定性和显著性方面具有优异的性能。这篇文章受版权保护。版权所有。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evolving regularised random vector functional link by seagull optimisation algorithm for yarn-dyed fabric colour difference classification

To address the issue of low precision in classifying the colour differences of yarn-dyed fabrics and the high cost of manual detection, a colour difference classification method relying on an improved seagull optimisation algorithm (SOA) optimised regularised random vector functional link (RRVFL) model is proposed for dyed fabrics. First, to address the issue of the slow convergence speed of the SOA, the current study optimises the initial SOA group with the marine predators algorithm (MPA) so that it can effectively improve the convergence ability and global optimisation ability of the SOA. Subsequently, the enhanced SOA is applied to fine-tune the parameters of the RRVFL. Compared with the methods that only optimise weights and bias, the proposed algorithm obtained by optimizing the initial group of SOA through the Marine Predators Algorithm (MSOA)-RRVFL model in this paper also increases the optimisation of the number of nodes in the hidden layer and regularisation parameters, which also effectively avoids the issue of the low classification accuracy of the RRVFL model due to random related parameters. Finally, by comparing the RRVFL model with other optimisation algorithms, the experimental outcomes demonstrate that the convergence ability of the improved SOA has been improved, and that the average accuracy of colour difference classification by the MSOA-RRVFL model is as high as 99.79%, and that the classification error fluctuation can be stabilised below 0.2%. In general, the MSOA-RRVFL model displays an excellent performance in terms of stability and significance.

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来源期刊
Coloration Technology
Coloration Technology 工程技术-材料科学:纺织
CiteScore
3.60
自引率
11.10%
发文量
67
审稿时长
4 months
期刊介绍: The primary mission of Coloration Technology is to promote innovation and fundamental understanding in the science and technology of coloured materials by providing a medium for communication of peer-reviewed research papers of the highest quality. It is internationally recognised as a vehicle for the publication of theoretical and technological papers on the subjects allied to all aspects of coloration. Regular sections in the journal include reviews, original research and reports, feature articles, short communications and book reviews.
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