Xinyu Kang , Yanlong Li , Ye Zhang , Ning Ma , Lifeng Wen
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引用次数: 0
摘要
从变形监测数据中检测混凝土大坝的异常对大坝安全评估意义重大。现有的异常检测模型在识别微小异常值和检测精度方面面临挑战。本文将记忆增量深度自动编码器(MemAE)与生成式对抗网络(GAN)相结合,构建了无监督的 MemAE-GAN 模型,利用 MemAE 的建模精度和 GAN 的对抗训练能力来突出微小异常值,从而显著提高了异常检测的灵敏度和准确性。实验结果表明,MemAE-GAN 模型的异常检测准确率始终保持在 0.97 以上,大大优于其他同类模型。该模型提供了一种高精度的变形异常检测方法,为后续的变形预测和预警研究奠定了基础。未来的研究可以探索分析异常值成因的算法,并建立异常检测框架。
Anomaly detection in concrete dam using memory-augmented autoencoder and generative adversarial network (MemAE-GAN)
Anomaly detection of concrete dam from deformation monitoring data is significant for dam safety evaluation. Existing anomaly detection models face challenges in identifying minor abnormal values and detection accuracy. This paper integrates the memory-augmented deep autoencoder (MemAE) with the generative adversarial network (GAN) to construct the unsupervised MemAE-GAN model, which leverages MemAE's precision in modeling and the GAN's adversarial training capability to highlight minor abnormal values, thereby significantly enhancing both sensitivity and accuracy in anomaly detection. Experimental results indicate that the MemAE-GAN model consistently achieved anomaly detection accuracy exceeding 0.97, considerably outperforming other comparative models. This model provides a highly accurate approach for deformation anomaly detection and lays the groundwork for subsequent research on deformation prediction and early warning. Future research could explore the algorithms to analyze the causes of abnormal values and establish the anomaly detection framework.
期刊介绍:
Automation in Construction is an international journal that focuses on publishing original research papers related to the use of Information Technologies in various aspects of the construction industry. The journal covers topics such as design, engineering, construction technologies, and the maintenance and management of constructed facilities.
The scope of Automation in Construction is extensive and covers all stages of the construction life cycle. This includes initial planning and design, construction of the facility, operation and maintenance, as well as the eventual dismantling and recycling of buildings and engineering structures.