Journal Article10.1080/13632469.2023.2252521
Machine Learning-Based Classification for Rapid Seismic Damage Assessment of Buildings at a Regional Scale
Sanjeev Bhatta,Ji Dang +1 more
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TL;DR: Machine learning-based classification for rapid seismic damage assessment of buildings at a regional scale is explored using real-world earthquake damage datasets. The model is able to classify damage into five categories and three traffic light damage tags.
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Abstract: ABSTRACT The damage assessment of numerous buildings after the earthquake is still a challenge by traditional methods as it requires a significant amount of time and resources for carrying out building-by-building seismic damage assessment. This study presents the machine learning (ML)-based damage assessment of buildings after an earthquake. The applicability of the machine learning model will be limited considering only structural properties or ground motion characteristics. Thus, in this study, the applicability of different machine learning techniques is explored using real-world earthquake damage datasets considering both the structural properties and ground motion characteristics. Initially, the entire dataset is used to train the ML models to classify the building’s damage into five categories ranging from null to slight damage to collapse. Later, the dataset is divided into three traffic light damage tags: green, yellow, and red. The performance of the ML model to classify the building’s damage into three damage tags is found better than that of classifying it into five damage categories. This research aims to be beneficial in planning and decision-making for emergency response and recovery following an earthquake.
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Citations
Effectiveness of Generative AI for Post-Earthquake Damage Assessment
TL;DR: This study evaluates the effectiveness of Generative AI models in post-earthquake damage assessment, achieving correct classification rates of 28.6-75.0% for masonry and reinforced concrete buildings, with potential to accelerate damage evaluation and inform resilience planning.
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Machine learning prediction models for ground motion parameters and seismic damage assessment of buildings at a regional scale
Sanjeev Bhatta,Xiandong Kang,Ji Dang +2 more
TL;DR: This study applies machine learning models to predict ground motion parameters and seismic damage to RC buildings at a regional scale, achieving high accuracy with random forest models, and providing a valuable tool for post-disaster response.
4
Quantum‐enhanced machine learning technique for rapid post‐earthquake assessment of building safety
Sanjeev Bhatta,Ji Dang +1 more
TL;DR: QML-based seismic damage assessment of buildings offers faster and more accurate damage evaluation than traditional methods, improving urban resilience.
2
Convolutional Neural Network-Based Seismic Response Prediction Method Using Spectral Acceleration of Earthquakes and Conditional Vector of Structural Property
Insub Choi,Han Yong Lee,Byung Kwan Oh +2 more
- 01 Jan 2024
References
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Leo Breiman
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TL;DR: Internal estimates monitor error, strength, and correlation and these are used to show the response to increasing the number of features used in the forest, and are also applicable to regression.
SMOTE: synthetic minority over-sampling technique
TL;DR: In this article, a method of over-sampling the minority class involves creating synthetic minority class examples, which is evaluated using the area under the Receiver Operating Characteristic curve (AUC) and the ROC convex hull strategy.
A vector-valued ground motion intensity measure consisting of spectral acceleration and epsilon
Jack W. Baker,C. Allin Cornell +1 more
TL;DR: In this article, an intensity measure consisting of two parameters, spectral acceleration and epsilon, is considered, which is termed a vector-valued IM, as opposed to the single parameter or scalar, IMs that are traditionally used.
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