用邻近的K-Nearest方法对混凝土墙振动刚度进行分类

Mochammad Shidqi Taufiqurrahman, Lukman Awaludin
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引用次数: 0

摘要

在大地震中,墙体的低刚度会对建筑物造成破坏。目前已有许多测量建筑物刚度等级的系统,但尚未达到分级阶段。因此,需要一种可以对刚度进行分类的系统来确定振动对管壁的影响,以最大限度地减少损失。本研究创建了一个系统,该系统可以使用k -最近邻(KNN)方法将墙体刚度水平分为几个类别(安全,脆弱,危险和破坏)。采集阶段采集的数据为地面加速度、倾角、位移、漂移比、峰值。KNN输入为峰值地加速度值,导致漂移比为1%。结果输出是基于BMKG地震烈度表的墙体刚度类别。在功能上,设计的系统可以使用k -最近邻(KNN)方法对非线性数据输入的墙体刚度进行分类。KNN的成功率达到100%。根据PGA漂移比读数,假设即使墙体刚度较低,当PGA漂移比为0.34 g时,墙体也能承受最大振动而不造成损伤。在墙壁上进行测试的精度就不那么高了。这可能是由于PGA以外的因素。这可能会影响壁面上的漂移比,这在本研究中没有考虑到。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Klasifikasi Tingkat Kekakuan Dinding Beton Terhadap Getaran Dengan Metode K-Nearest Neighbor
The low level of wall stiffness can cause damage to buildings during large-scale earthquakes. There are many systems for measuring the level of stiffness in buildings, but they have not yet reached the classification stage. Therefore, a system that can classify stiffness is needed to determine the impact of vibrations on the wall to minimize the losses incurred. This study creates a system that can classify the level of wall stiffness using the K-Nearest Neighbor (KNN) method into several categories (safe, vulnerable, dangerous, and destroyed). The data taken at the acquisition stage are ground acceleration, inclination angle, displacement, drift ratio, and peak value. The KNN input is a peak ground acceleration value, which causes a drift ratio of 1%. The resulting output is a category of wall stiffness based on the Earthquake Intensity Scale by BMKG. Functionally, the system designed can classify wall stiffness with non-linear data input using the K-Nearest Neighbor (KNN) method. The success rate of KNN reaches a value of 100%. Based on the PGA drift ratio reading, it is assumed that the wall can withstand the maximum vibration with a PGA drift ratio value of 0.34 g without causing damage to the wall even though it has a low level of stiffness. Testing on the walls has a less high degree of precision. That may be due to factors other than PGA. That can affect the drift ratio on the walls, which have not been considered in this study.
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