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Evaluation of Compaction Quality Based on SVR with CFA: Case Study on Compaction Quality of Earth-Rock Dam

机译:基于CVR的SVR压实质量评价-以土石坝压实质量为例。

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The compaction quality of earth-rock dam materials is a major concern in the evaluation of earth-rock dams. Current compaction quality assessment methods, such as graphical reports or simple prediction models, are imprecise and can cause unobserved quality assessment defects. These methods do not comprehensively consider factors that affect the compaction quality because they do not integrate heterogeneous construction data sets collected by different data acquisition systems. In this research, a method of assessing compaction quality on the basis of support vector regression (SVR), the chaos-based firefly algorithm, is presented. The assessment method has three stages. In the first stage, a chaotic firefly algorithm (CFA) is proposed to optimize the SVR hyperparameters. In the second stage, a multisource heterogeneous data integration subsystem based on the compaction monitoring system is designed, in which compaction monitoring data, material source statistical data, and detected data from test pits are integrated. Finally, the optimized SVR is used to evaluate the compaction quality of the storehouse surface. The significance of the proposed method is threefold: first, it integrates both chaos theory and the firefly algorithm to optimize the SVR hyperparameters; second, it integrates heterogeneous construction data, allowing comprehensive consideration of factors that affect the compaction quality; and third, it has high prediction accuracy because it implements structural risk minimization. Compared with current models based on empirical risk minimization, the proposed method performs the best according to several error measures. (C) 2018 American Society of Civil Engineers.
机译:土石坝材料的压实质量是评估土石坝的主要问题。当前的压实质量评估方法(例如图形报告或简单的预测模型)不够精确,并可能导致无法观察到的质量评估缺陷。这些方法没有综合考虑影响压实质量的因素,因为它们没有集成由不同数据采集系统收集的异构施工数据集。在这项研究中,提出了一种基于支持向量回归(SVR)的压实质量评估方法,即基于混沌的萤火虫算法。评估方法分为三个阶段。在第一阶段,提出了一种混沌萤火虫算法(CFA)以优化SVR超参数。在第二阶段,设计了基于压实监测系统的多源异构数据集成子系统,其中集成了压实监测数据,材料来源统计数据和来自测试坑的检测数据。最后,使用优化的SVR评估仓库表面的压实质量。该方法的意义在于三方面:首先,它结合了混沌理论和萤火虫算法来优化SVR超参数。其次,它整合了异构的施工数据,可以综合考虑影响压实质量的因素。第三,由于实现了结构风险最小化,因此具有较高的预测准确性。与基于经验风险最小化的当前模型相比,该方法在几种误差度量下表现最佳。 (C)2018美国土木工程师学会。

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