Shallow defects identification for urban roads using interpretable dynamic broad network

IF 4.9 2区 工程技术 Q1 ENGINEERING, CIVIL
Yang Zhang , Ruyang Yin , Xiao-Mei Yang , Yi-Qing Ni
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引用次数: 0

Abstract

Deep learning is extensively utilised in transport geotechnical engineering. However, deep architectures have large computational costs and update times, while failing to understand decisions. To this regard, we propose an interpretable dynamic broad network combined with ground-penetrating radar for internal defect identification in roadbeds. The method is more suitable for feature characterisation of two-dimensional data and satisfies incremental updates. The test results indicated that the proposed method has an average recognition accuracy of 0.9124 for the four types of internal defects in roadbeds. Compared to the other four classical machine learning methods, it balances training efficiency and recognition accuracy. Robustness analysis results demonstrated that the method is noise-resistant. However, comprehending the recognition results of intelligent algorithms is a key topic. Local interpretation approach is introduced to quantify the feature importance that affects the decision of the model. Based on the feature importance calculation, it is possible to distinguish between positive and negative regions in one sample that influence the decision of the detection model. These interpretative analyses can assist us in better understanding the reasons for decisions generated by the detection model that provide technical support for subsequent enhancements.

利用可解释动态广义网络识别城市道路浅层缺陷
深度学习被广泛应用于交通岩土工程中。然而,深度架构的计算成本高、更新时间长,而且无法理解决策。为此,我们提出了一种结合探地雷达的可解释动态广义网络,用于路基内部缺陷识别。该方法更适用于二维数据的特征描述,并满足增量更新的要求。测试结果表明,所提出的方法对四种路基内部缺陷的平均识别准确率为 0.9124。与其他四种经典机器学习方法相比,该方法兼顾了训练效率和识别准确率。鲁棒性分析结果表明,该方法具有抗噪声能力。然而,如何理解智能算法的识别结果是一个关键课题。本文引入了局部解释方法来量化影响模型决策的特征重要性。根据特征重要性计算,可以区分一个样本中影响检测模型决策的正负区域。这些解释性分析可以帮助我们更好地理解检测模型生成决策的原因,为后续改进提供技术支持。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Transportation Geotechnics
Transportation Geotechnics Social Sciences-Transportation
CiteScore
8.10
自引率
11.30%
发文量
194
审稿时长
51 days
期刊介绍: Transportation Geotechnics is a journal dedicated to publishing high-quality, theoretical, and applied papers that cover all facets of geotechnics for transportation infrastructure such as roads, highways, railways, underground railways, airfields, and waterways. The journal places a special emphasis on case studies that present original work relevant to the sustainable construction of transportation infrastructure. The scope of topics it addresses includes the geotechnical properties of geomaterials for sustainable and rational design and construction, the behavior of compacted and stabilized geomaterials, the use of geosynthetics and reinforcement in constructed layers and interlayers, ground improvement and slope stability for transportation infrastructures, compaction technology and management, maintenance technology, the impact of climate, embankments for highways and high-speed trains, transition zones, dredging, underwater geotechnics for infrastructure purposes, and the modeling of multi-layered structures and supporting ground under dynamic and repeated loads.
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