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基于PSO-SVM算法的钢管混凝土脱空缺陷超声识别

Ultrasonic Identification of Hollow Defects in Concrete-Filled Steel Tubes Based on PSO-SVM Algorithm

  • 摘要: 钢管混凝土立柱凭借其卓越的承载性能,在大跨度、重载铁路站房雨棚结构中得到了广泛应用。然而,受混凝土收缩、徐变以及施工工艺等因素的影响,钢管壁与内部混凝土之间易产生不同程度的脱空现象。这种脱空现象会显著降低钢管混凝土的力学性能,进而对建筑物的安全性构成严重威胁。为此,本文提出了一种基于粒子群优化-支持向量机(particle swarm optimization-support vector machine,PSO-SVM)算法的钢管混凝土脱空缺陷智能识别方法。通过超声检测仪对正常和脱空的钢管混凝土检测,采集信号,并进行小波变换,提取关键特征值,构建数据集,结合粒子群优化算法对模型进行优化,优化后模型的分类准确率高达98.46%。并与传统模型进行了对比分析。结果表明,基于PSO-SVM算法的模型在钢管混凝土内部脱空缺陷的智能分类识别方面优于其他算法,能有效实现脱空缺陷的智能分类识别,为相关工程检测与维护提供了有力的技术支持。

     

    Abstract: Concrete-filled steel tube (CFST) columns have been widely used in the canopy structures of large-span, heavy-load railway stations due to their outstanding load-bearing capacity. However, owing to factors such as concrete shrinkage, creep, and construction techniques, voids of varying degrees may develop between the steel tube wall and the internal concrete. This delamination (or “hollowing”) phenomenon significantly reduces the composite load-bearing performance of CFST members, thereby posing a serious threat to structural safety. To address this issue, this paper proposes an intelligent recognition method for internal void defects in CFST members based on the Particle Swarm Optimization–Support Vector Machine (PSO-SVM) algorithm. Ultrasonic testing was conducted on both intact and hollow CFST specimens. The acquired ultrasonic signals were processed using wavelet transform, and key time–frequency feature parameters were extracted to construct a labeled dataset. The SVM classifier was then optimized using the PSO algorithm. The optimized classification model achieved a recognition accuracy of 98.46%. A comparative analysis was performed between the proposed PSO-SVM model and conventional classification models (e.g., standard SVM, BP neural network). Results demonstrate that the PSO-SVM model outperforms these alternatives in the intelligent classification and recognition of internal void defects in CFST members, enabling effective, automated defect identification and providing robust technical support for engineering inspection and maintenance.

     

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