增强新型神经网络算法对聚合物混凝土面板形状和缺陷的预测识别能力

Vinod Mansiram Kapse, Arun Kumar Marandi, Beemkumar Nagappan, Ankita Agarwal
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引用次数: 0

摘要

聚合物混凝土板的耐久性和性能特点的提高使其在建筑中得到了广泛应用。制造精确有效的模板和缺陷识别技术对于保证这些板材的高质量至关重要。为了提高聚合物混凝土板结构和缺陷识别的准确性,本研究提出了一种新的随机乌鸦栖息优化增强型人工神经网络(SRRO-EANN)预测技术。用于评估已完成模型与训练数据集拟合程度的数据样本称为测试数据集。高斯滤波器(GF)是一种用于预处理和主成分分析(PCA)特征提取的工具,可更有效地利用和理解缺陷捕捉。研究结果表明,预测技术在质量控制和建筑材料检测领域的未来发展中将发挥有效作用。
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ENHANCING A NOVEL NEURAL NETWORK ALGORITHM FOR FORECASTING THE IDENTIFICATION OF SHAPES AND DEFECTS IN POLYMER CONCRETE PANELS
The increased durability and performance features of polymer concrete panels have led to their widespread application in construction. The manufacturing of precise and effective techniques for identifying forms and flaws is vital to guarantee the high quality of these panels. To increase the accuracy of structure and defect-recognition in polymer concrete panels, this study presents a new Stochastic raven roosting optimization enhanced artificial neural network (SRRO-EANN) forecasting technique. The data sample used to assess the completed model fits the training dataset is referred to the test dataset. The Gaussian filter (GF) is a tool used in the pre-processing and Principal Component Analysis (PCA) feature extraction, leading to more effective utilization and understanding the defect capturing. The findings of the research indicate the effectiveness for the future development of forecasting technologies in the realm of quality control and building material inspection.
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CiteScore
1.00
自引率
0.00%
发文量
55
审稿时长
12 weeks
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