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Computerized Hammer Sounding Interpretation for Concrete Assessment with Online Machine Learning

机译:用于在线评估的混凝土评估的计算机锤击测深解释

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摘要

Developing efficient Artificial Intelligence (AI)-enabled systems to substitute the human role in non-destructive testing is an emerging topic of considerable interest. In this study, we propose a novel hammering response analysis system using online machine learning, which aims at achieving near-human performance in assessment of concrete structures. Current computerized hammer sounding systems commonly employ lab-scale data to validate the models. In practice, however, the response signal patterns can be far more complicated due to varying geometric shapes and materials of structures. To deal with a large variety of unseen data, we propose a sequential treatment for response characterization. More specifically, the proposed system can adaptively update itself to approach human performance in hammering sounding data interpretation. To this end, a two-stage framework has been introduced, including feature extraction and the model updating scheme. Various state-of-the-art online learning algorithms have been reviewed and evaluated for the task. To conduct experimental validation, we collected 10,940 response instances from multiple inspection sites; each sample was annotated by human experts with healthy/defective condition labels. The results demonstrated that the proposed scheme achieved favorable assessment accuracy with high efficiency and low computation load.
机译:开发有效的支持人工智能(AI)的系统来替代人类在无损检测中的作用是引起人们极大兴趣的新兴话题。在这项研究中,我们提出了一种使用在线机器学习的新型锤击响应分析系统,旨在在评估混凝土结构时获得接近人类的性能。当前的计算机锤击测深系统通常采用实验室规模的数据来验证模型。然而,实际上,由于变化的几何形状和结构材料,响应信号模式可能更加复杂。为了处理大量看不见的数据,我们建议对响应特性进行顺序处理。更具体地,所提出的系统可以自适应地更新自身以在锤击测深数据解释中接近人类性能。为此,引入了两阶段框架,包括特征提取和模型更新方案。各种最先进的在线学习算法已针对该任务进行了评估和评估。为了进行实验验证,我们从多个检查点收集了10,940个响应实例;每个样本均由具有健康/不良状况标签的人类专家注释。结果表明,该方案具有较高的效率和较低的计算量,具有良好的评估精度。

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