用于反向预测混凝土构件的无偏模糊加权相对误差支持向量机

Zongwen Fan;Jin Gou;Shaoyuan Weng
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引用次数: 0

摘要

混凝土是现代建筑的重要组成部分,因其强度、耐久性和多功能性而备受推崇。在土木工程应用中,准确确定混凝土构件的数量对于优化资源(如人力和财力)至关重要。在本文中,我们提出了一种用于反向预测混凝土构件的无偏模糊加权相对误差支持向量机(UFW-RE-SVM)。首先,我们在 UFW-RE-SVM 的目标函数中添加了一个无偏项,以获得一个无偏模型。其次,我们设计了一种模糊加权运算,通过将模糊成员值纳入 UFW-RE-SVM 来表示样本的重要性。为了解决模糊加权运算中的指数爆炸问题,我们引入了 $n$th 根运算。最后,考虑到 UFW-RE-SVM 对多输出预测的超参数很敏感,我们利用鲸鱼优化算法(WOA)进行超参数优化,以提高其在优化任务中的有效性。我们根据多个组件的结果设计拟合函数,以平衡多输出预测的性能。实验结果表明,在平均绝对相对误差、标准偏差和均方根误差方面,我们提出的模型在预测具体组件方面的性能优于现有的工作。此外,统计测试表明,WOA 和其他两种元启发式方法可以显著提高预测性能。这表明,无偏项、模糊加权运算和 WOA 对于改进反向预测混凝土构件的拟议模型是有效的。有了这些可喜的结果,所提出的模型可以为决策者提供一个有价值的工具,帮助他们根据所需的混凝土质量确定混凝土成分的数量。
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An Unbiased Fuzzy Weighted Relative Error Support Vector Machine for Reverse Prediction of Concrete Components
Concrete is a vital component in modern construction, prized for its strength, durability, and versatility. Accurately determining the quantities of concrete components is crucial in civil engineering applications to optimize resources (e.g., manpower and financial resources). In this article, we propose an unbiased fuzzy-weighted relative error support vector machine (UFW-RE-SVM) for reverse prediction of concrete components. First, we add an unbiased term to the target function of UFW-RE-SVM for obtaining an unbiased model. Second, we design a fuzzy-weighted operation to indicate sample importance by incorporating the fuzzy membership values into the UFW-RE-SVM. The $n$ th root operation is introduced to address the exponential explosion issue in the fuzzy-weighted operation. Finally, considering the UFW-RE-SVM is sensitive to its hyperparameters for multioutput prediction, the whale optimization algorithm (WOA) is utilized for hyperparameter optimization for its effectiveness in optimization tasks. We design the fitness function based on the results from multiple components to balance the performance of multioutput predictions. Experimental results show that the performance of our proposed model outperforms existing works in predicting concrete components in terms of mean absolute relative error, standard deviation, and root mean square error. Further, the statistical test shows the WOA and two other metaheuristics can significantly improve the prediction performance. This indicates that the unbiased term, fuzzy-weighted operation, and WOA are effective for improving the proposed model for reverse prediction concrete components. With these promising results, the proposed model could provide decision-makers with a valuable tool for determining concrete component quantities based on desired concrete qualities.
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