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Prediction of seismic damage spectra using computational intelligence methods

机译:计算智能方法预测地震损伤光谱

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摘要

Predicting seismic damage spectra, capturing both structural and earthquake features, is useful in performance-based seismic design and quantifying the potential seismic damage of structures. The objective of this paper is to accurately predict the seismic damage spectra using computational intelligence methods. For this purpose, an inelastic single-degree-of-freedom system subjected to a set of earthquake ground motion records is used to compute the (exact) spectral damage. The Park-Ang damage index is used to quantify the seismic damage. Both structural and earthquake features are involved in the prediction models where multi-gene genetic programming (MGGP) and artificial neural networks (ANNs) are applied. Common performance metrics were used to assess the models developed for seismic damage spectra, and indicated that their accuracy was higher than a corresponding model in the literature. Although the performance metrics revealed that the ANN model is more accurate than the MGGP model, the explicit MGGP-based mathematical model renders it more practical in quantifying the potential seismic damage of structures. (C) 2021 Elsevier Ltd. All rights reserved.
机译:预测地震损伤光谱,捕获结构和地震特征,可用于基于性能的地震设计和量化结构的潜在地震损伤。本文的目的是使用计算智能方法准确地预测地震损伤光谱。为此目的,经受一组地震地面运动记录的非弹性单度自由度系统用于计算(精确)光谱损坏。公园-Ang损伤指数用于量化地震损伤。结构和地震特征涉及应用多基因遗传编程(MGGP)和人工神经网络(ANNS)的预测模型。常见的性能指标用于评估用于地震损伤光谱的模型,并表明它们的准确性高于文献中的相应模型。虽然性能指标表明,ANN模型比MGGP模型更准确,但基于显式的MGGP数学模型使得量化结构的潜在地震损伤更加实用。 (c)2021 elestvier有限公司保留所有权利。

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