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Computationally effective and accurate simulation of cyclic behaviour of old reinforced concrete columns

机译:计算有效,准确地模拟旧钢筋混凝土柱的循环行为

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To evaluate the seismic performance of existing old reinforced concrete (RC) buildings, it is important to use an accurate analytical model. Most columns in these buildings do not satisfy the reinforcement details specified by current seismic design provisions. Columns that possess insufficient reinforcement details can exhibit significant pinching and cyclic deterioration in their strength and stiffness. They can also experience flexure-shear and shear failure during large earthquakes. The objective of this study is to simulate the cyclic behaviour of old RC columns accurately and efficiently with the Pinching4 model considering pinching and cyclic deterioration. Modelling parameters are calibrated based on the test results of 40 collected flexure-shear and shear critical columns. Columns failed by other failure modes rather than shear and flexure-shear failure are not considered in this study. Forward stepwise regression analyses are conducted to determine statistically significant variables from 34 candidate predictor variables and to propose the empirical equations of the modelling parameters. It is shown that the Pinching4 model with the proposed empirical equations accurately simulates the cyclic behaviour of both flexure-shear and shear-critical columns including pinching and cyclic deterioration in strength and stiffness.
机译:要评估现有的旧钢筋混凝土(RC)建筑物的抗震性能,使用精确的分析模型很重要。这些建筑物中的大多数立柱都不满足当前抗震设计规定所指定的加固细节。钢筋细节不足的柱子在强度和刚度上会表现出明显的收缩和周期性劣化。他们还可能在大地震中经历弯曲剪切和剪切破坏。本研究的目的是使用考虑了收缩和循环恶化的Pinching4模型来准确有效地模拟旧RC柱的循环行为。根据收集的40根弯曲-剪切和剪切临界柱的测试结果,对建模参数进行校准。在这项研究中,未考虑因其他破坏模式而不是剪切破坏和弯曲剪切破坏而失效的圆柱。进行正向逐步回归分析,以确定34个候选预测变量的统计显着性变量,并提出建模参数的经验方程。结果表明,带有所提出的经验方程的Pinching4模型可以精确地模拟弯曲剪切和临界剪切柱的循环行为,包括强度和刚度的收缩和循环退化。

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