Seismic Damage Prediction and Classification tool: Utilizing Adaptive Neuro-Fuzzy Inference System (ANFIS) and Geographic Information System (GIS)

Alyssa Beatriz Manubag, D. Silva
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Abstract

Seismic damage prediction of wide range of buildings is an important prioritization and classification tool for implementation of seismic risk and vulnerability assessment. This study has developed a rapid visual screening (RVS) tool using Adaptive Neuro-Fuzzy Inference System (ANFIS) model and Geographic Information System (GIS). Hospital and public-school buildings located in districts 5 and 6 have been selected for assessment. Technical calculation basis in the development of FEMA P-154 was followed in formulating the model using the neuro-fuzzy tool package in MATLAB. Six (6) building parameters and their resulting output (final score) were inputted for training. Sub-clustering FIS model showed the lowest RMSE and R2 result out of the five (5) FIS models compared. The model showed effective performance in classifying the buildings' damage grades having 0.2908, 0.8073 and 0.948 for RMSE, and for testing and overall coefficient of determination (R2) values, respectively. Performance metrics from the developed confusion matrix showed high range of values for sensitivity, specificity, precision, and accuracy, with maximum error rate and false positive rate of 0.11 and 0.25, respectively, in classifying the buildings' damage grade. These validate the model's performance and ability in classifying the damage grade of the buildings observed. The results were used to develop a digital mapping of the damage grade distribution of the selected buildings in the area using ArcGIS.
基于自适应神经模糊推理系统(ANFIS)和地理信息系统(GIS)的震害预测分类工具
大范围建筑物震害预测是实施地震危险性和易损性评估的重要排序和分类工具。本研究利用自适应神经模糊推理系统(ANFIS)模型和地理信息系统(GIS)开发了一种快速视觉筛选(RVS)工具。选择了位于第5和第6区的医院和公立学校建筑进行评估。根据FEMA P-154开发中的技术计算基础,利用MATLAB中的神经模糊工具包制定模型。输入六(6)个建筑参数及其结果输出(最终得分)进行训练。在5个FIS模型中,子聚类FIS模型的RMSE和R2结果最低。该模型的RMSE值为0.2908、0.8073和0.948,检验和总决定系数(R2)值分别为0.2908、0.8073和0.948,对建筑物的损伤等级进行了分类。从所开发的混淆矩阵中得出的性能指标在灵敏度、特异性、精密度和准确度方面具有较高的取值范围,在对建筑物的损坏等级进行分类时,最大错误率和假阳性率分别为0.11和0.25。验证了该模型对所观测建筑物的损伤等级进行分类的性能和能力。利用ArcGIS开发了该地区选定建筑物的损坏等级分布的数字地图。
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