震后损害评估的图像分类:2023 年卡赫拉曼马拉什地震案例

IF 5.1 2区 工程技术 Q1 ENGINEERING, MULTIDISCIPLINARY
Gizem Özerol Özman , Semra Arslan Selçuk , Abdussamet Arslan
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引用次数: 0

摘要

专家们在全市地震多发区进行破坏评估,以评估地震造成的破坏。根据 ATC-20 建筑安全值,受地震影响的建筑物被归类为 "已检查、限制使用、不安全"。利用在建筑物内部和外部捕捉到的可视图像记录,可快速识别结构缺陷及其根本原因。然而,建筑师和工程师发现记录、报告和决策过程是一项耗时的任务。在过去的十年中,为了缩短这些程序的时间,特别是在建筑和机器学习领域,已经开展了广泛的研究。本研究以震后损害评估研究为基础,探讨了机器学习在决策支持系统中的应用。震后损害评估报告利用 CNN 损害评估算法对显示 "已检查、限制使用、不安全 "损害的建筑物外部图像进行分类。比较了各种算法的准确性和损失值,包括不同的 AlexNet 算法、VGG19 算法和 Resnet50 算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Image classification on Post-Earthquake damage assessment: A case of the 2023 Kahramanmaraş earthquake

Experts conduct damage assessments throughout the city in earthquake-prone areas to evaluate the destruction caused by the earthquake. Based on the ATC-20 Building Safety Values, the buildings impacted by the earthquake are categorized as “Inspected, Restricted Use, Unsafe”. Visual imagery captured both inside and outside the buildings is utilized to document the expedited identification of structural deficiencies and their underlying causes. Nevertheless, architects and engineers find the documentation, reporting, and decision-making process to be a time-consuming task. In the past ten years, extensive research has been carried out to reduce the duration of these procedures, specifically in the fields of construction and machine learning. This study investigates the application of machine learning in decision support systems, drawing on research on post-earthquake damage assessment. Post-earthquake damage assessment reports utilized CNN damage assessment algorithms to classify exterior images of buildings exhibiting “Inspected, Restricted Use, Unsafe” damage. The accuracy and loss values of various algorithms, including different AlexNet algorithms, the VGG19 algorithm, and the Resnet50 algorithm, were compared.

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来源期刊
Engineering Science and Technology-An International Journal-Jestech
Engineering Science and Technology-An International Journal-Jestech Materials Science-Electronic, Optical and Magnetic Materials
CiteScore
11.20
自引率
3.50%
发文量
153
审稿时长
22 days
期刊介绍: Engineering Science and Technology, an International Journal (JESTECH) (formerly Technology), a peer-reviewed quarterly engineering journal, publishes both theoretical and experimental high quality papers of permanent interest, not previously published in journals, in the field of engineering and applied science which aims to promote the theory and practice of technology and engineering. In addition to peer-reviewed original research papers, the Editorial Board welcomes original research reports, state-of-the-art reviews and communications in the broadly defined field of engineering science and technology. The scope of JESTECH includes a wide spectrum of subjects including: -Electrical/Electronics and Computer Engineering (Biomedical Engineering and Instrumentation; Coding, Cryptography, and Information Protection; Communications, Networks, Mobile Computing and Distributed Systems; Compilers and Operating Systems; Computer Architecture, Parallel Processing, and Dependability; Computer Vision and Robotics; Control Theory; Electromagnetic Waves, Microwave Techniques and Antennas; Embedded Systems; Integrated Circuits, VLSI Design, Testing, and CAD; Microelectromechanical Systems; Microelectronics, and Electronic Devices and Circuits; Power, Energy and Energy Conversion Systems; Signal, Image, and Speech Processing) -Mechanical and Civil Engineering (Automotive Technologies; Biomechanics; Construction Materials; Design and Manufacturing; Dynamics and Control; Energy Generation, Utilization, Conversion, and Storage; Fluid Mechanics and Hydraulics; Heat and Mass Transfer; Micro-Nano Sciences; Renewable and Sustainable Energy Technologies; Robotics and Mechatronics; Solid Mechanics and Structure; Thermal Sciences) -Metallurgical and Materials Engineering (Advanced Materials Science; Biomaterials; Ceramic and Inorgnanic Materials; Electronic-Magnetic Materials; Energy and Environment; Materials Characterizastion; Metallurgy; Polymers and Nanocomposites)
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