An Integrated Approach of GIS and Machine Learning to Assess the Spatio-Temporal Earthquake Vulnerability in South Africa

Iqra Atif, F. Cawood, M. Mahboob, Sarfraz Ali
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Abstract

South Africa is experiencing a high frequency of seismic events which have catastrophic effects on individuals and infrastructure. This study aims to utilize the integrated approach of Geographical Information Systems (GIS) and Machine Learning (ML) based algorithms to analyse the large amount of seismicity data to discover the meaningful patterns and assess the geo-vulnerability of earthquakes with good confidence level in South Africa. Several analytical and modelling techniques including Space-Time Pattern Mining, Artificial Neural Networks (ANN) based hot and cold spots were applied. The results of earthquake data from year 1973 to 2021 revealed that in total there were 1,680 earthquake events that occurred with magnitude ranges from mild to moderate (2 ≤ M ≤ 5). Earthquakes with higher magnitude were concentrated notably in the Gauteng (48%) followed by North-West (31%) provinces of the South Africa. Also, 63% of the magnitude and depth of earthquakes are oriented from North-East to South-West direction. A significant increasing trend of earthquake was observed in some areas of Free State (p ≤ 0.1), Limpopo (p ≤ 0.1), Western Cape (p ≤ 0.5) and Gauteng (p ≤ 0.5) provinces. Whereas decreasing trend was found in areas of North-West (p ≤ 0.1) and Mpumalanga (p ≤ 0.5). The ANN based hot spot analysis predicted the cluster of high magnitude earthquakes (hot spots) in North-West province and low magnitude earthquakes (cold spots) in Gauteng province. Although the earthquake vulnerability is low in Gauteng province but these cold spots could be related to the deep mining activities in the region and have the potential to trigger the rock burst phenomena at the mines. The results can help the disaster management authorities for smart decision making, and urban and regional planning of future activities in the region.
基于GIS和机器学习的南非地震时空脆弱性综合评估
南非正在经历高频率的地震事件,对个人和基础设施造成灾难性影响。本研究旨在利用地理信息系统(GIS)和基于机器学习(ML)的算法的综合方法来分析大量的地震活动数据,以发现有意义的模式,并以良好的置信度评估南非地震的地理脆弱性。应用了时空模式挖掘、基于人工神经网络(ANN)的热点和冷点分析和建模技术。1973年至2021年的地震资料结果显示,总共发生了1680次地震事件,震级从轻到中(2≤M≤5)不等。较高震级的地震主要集中在豪登省(48%),其次是西北部(31%)。此外,63%的地震震级和深度是由东北向西南方向的。在自由邦省(p≤0.1)、林波波省(p≤0.1)、西开普省(p≤0.5)和豪登省(p≤0.5)的部分地区,地震有明显的增加趋势。西北地区(p≤0.1)和普马兰加地区(p≤0.5)呈下降趋势。基于人工神经网络的热点分析预测了西北省的高震级地震(热点)和豪登省的低震级地震(冷点)。豪登省虽然地震易损性较低,但这些冷点可能与该地区深部采矿活动有关,有可能引发矿山冲击地压现象。研究结果可以帮助灾害管理当局做出明智的决策,并对该地区未来的城市和区域活动进行规划。
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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