用PURELIN方法模拟神经网络预测建筑物结构的性能问题

Muhammad Gala Garcya, Faisal Ananda, Armada Sukri
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摘要

地震是一种震级无法预测的自然事件。这是可能发生的,因为地震的方向取决于支撑它的土壤的运动。这通常是对建筑,尤其是建筑物的最大威胁。因为可以使用一小块土地,所以人们希望建造建筑物。然而,随着时间的推移,建筑物因地震而倒塌是很常见的,因此需要更详细的分析来设计更好的抗震建筑。时程分析是评估建筑物抗震性能的一种分析方法。然而,时程分析有一个缺点,即分析的持续时间往往很长,因此很难确定一个结构是否仍然能够按照计划运行。利用结构响应数据进行人工神经网络分析,有望预测建筑结构的结构性能。purelin方法线性读取数据,但在这种情况下,基于先前的数据进行预测,或者称为反向传播分析方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
PREDIKSI KERUSAKAN KINERJA STRUKTUR BANGUNAN GEDUNG MENGGUNAKAN JARINGAN SARAF TIRUAN DENGAN METODE PURELIN
An earthquake is one of the natural events whose magnitude cannot be predicted. This is can happen because the direction of the earthquake work depends on the movement of the soil that supports it. This is generally the biggest threat to construction, especially buildings. Buildings are expected to be built because they can use even a small area of land. However, over time, it is common for buildings to collapse due to earthquakes, so a more detailed analysis is needed to design a better earthquake-resistant building. Time history analysis is one of the analyzes used to evaluate buildings against earthquakes. However, time history analysis has a weakness, namely the duration of the analysis tends to be long, so determining whether a structure is still able to function according to plan is difficult to measure. Analysis of artificial neural networks by utilizing structural response data is expected to be able to predict the structural performance of building structures. The purelin method reads data linearly but in this case, predicts based on previous data or is known as the Backpropagation Analysis method.
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