利用深度学习技术在澳大利亚全国范围内绘制地震诱发的液化危险图

IF 8.5 1区 地球科学 Q1 GEOSCIENCES, MULTIDISCIPLINARY
Ratiranjan Jena , Biswajeet Pradhan , Mansour Almazroui , Mazen Assiri , Hyuck-Jin Park
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引用次数: 5

摘要

澳大利亚是一个相对稳定的大陆区域,但并非构造惰性,其地质条件在遭受地震地面运动时很容易液化。由于目前没有基于现代人工智能技术的澳大利亚液化地图,因此对澳大利亚进行了液化危害评估。在本研究中,考虑了剪切波速(Vs30)、粘土含量、土壤含水量、土壤容重、土壤厚度、土壤pH、与河流的距离、坡度和海拔等几个调节因素来估算液化潜力指数(LPI)。采用概率地震危险性评估(PSHA)技术,推导了澳大利亚50年(500年和2500年回复期)的峰值地加速度(PGA)。首先,考虑液化危险指数(LPI)以及地震危险性超出2%和10%的概率,估算了液化危险指数(LHI)(基于可液化区域大小和深度的影响)。其次,利用澳大利亚地球科学(Geoscience Australia)预测的50年PGA超过2%和10%的地面加速度数据,绘制了地震诱发土壤液化危险度图。第三,深度神经网络(dnn)也被用于估计液化危害,可以作为澳大利亚液化危害基础图报告,准确率分别为94%和93%。根据结果,在澳大利亚西部和南部,包括维多利亚州的一些地区,可以观察到非常高的液化危险。这项研究是有史以来第一个考虑澳大利亚土壤液化危害的国家级研究,使用地理空间信息与PSHA和深度学习技术相结合。本研究使用震源模型表征的地震设计震级阈值为Mw 6。绘制的地图显示了地震引发的液化危险,并打算建立一个概念结构,以指导今后可能需要的更详细的调查。深度学习模型的局限性是复杂的,需要大量的数据、拓扑知识、参数和训练方法,而PSHA遵循的假设很少。其优点在于模型代码的可重用性及其在其他类似研究领域的可移植性。本研究旨在支持利益相关者对基础设施投资、应急规划和震后重建项目优先排序的决策。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Earthquake-induced liquefaction hazard mapping at national-scale in Australia using deep learning techniques

Earthquake-induced liquefaction hazard mapping at national-scale in Australia using deep learning techniques

Australia is a relatively stable continental region but not tectonically inert, having geological conditions that are susceptible to liquefaction when subjected to earthquake ground motion. Liquefaction hazard assessment for Australia was conducted because no Australian liquefaction maps that are based on modern AI techniques are currently available. In this study, several conditioning factors including Shear wave velocity (Vs30), clay content, soil water content, soil bulk density, soil thickness, soil pH, distance from river, slope and elevation were considered to estimate the liquefaction potential index (LPI). By considering the Probabilistic Seismic Hazard Assessment (PSHA) technique, peak ground acceleration (PGA) was derived for 50 yrs period (500 and 2500 yrs return period) in Australia. Firstly, liquefaction hazard index (LHI) (effects based on the size and depth of the liquefiable areas) was estimated by considering the LPI along with the 2% and 10% exceedance probability of earthquake hazard. Secondly, ground acceleration data from the Geoscience Australia projecting 2% and 10% exceedance rate of PGA for 50 yrs were used in this study to produce earthquake induced soil liquefaction hazard maps. Thirdly, deep neural networks (DNNs) were also exerted to estimate liquefaction hazard that can be reported as liquefaction hazard base maps for Australia with an accuracy of 94% and 93%, respectively. As per the results, very-high liquefaction hazard can be observed in Western and Southern Australia including some parts of Victoria. This research is the first ever country-scale study to be considered for soil liquefaction hazard in Australia using geospatial information in association with PSHA and deep learning techniques. This study used an earthquake design magnitude threshold of Mw 6 using the source model characterization. The resulting maps present the earthquake-triggered liquefaction hazard and are intending to establish a conceptual structure to guide more detailed investigations as may be required in the future. The limitations of deep learning models are complex and require huge data, knowledge on topology, parameters, and training method whereas PSHA follows few assumptions. The advantages deal with the reusability of model codes and its transferability to other similar study areas. This research aims to support stakeholders’ on decision making for infrastructure investment, emergency planning and prioritisation of post-earthquake reconstruction projects.

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来源期刊
Geoscience frontiers
Geoscience frontiers Earth and Planetary Sciences-General Earth and Planetary Sciences
CiteScore
17.80
自引率
3.40%
发文量
147
审稿时长
35 days
期刊介绍: Geoscience Frontiers (GSF) is the Journal of China University of Geosciences (Beijing) and Peking University. It publishes peer-reviewed research articles and reviews in interdisciplinary fields of Earth and Planetary Sciences. GSF covers various research areas including petrology and geochemistry, lithospheric architecture and mantle dynamics, global tectonics, economic geology and fuel exploration, geophysics, stratigraphy and paleontology, environmental and engineering geology, astrogeology, and the nexus of resources-energy-emissions-climate under Sustainable Development Goals. The journal aims to bridge innovative, provocative, and challenging concepts and models in these fields, providing insights on correlations and evolution.
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