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Determination of Fire Resistance of Eccentrically Loaded Reinforced Concrete Columns Using Fuzzy Neural Networks

机译:应用模糊神经网络确定偏心受压钢筋混凝土柱的抗火性能。

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摘要

Artificial neural networks, in interaction with fuzzy logic, genetic algorithms, and fuzzy neural networks, represent an example of a modern interdisciplinary field, especially when it comes to solving certain types of engineering problems that could not be solved using traditional modeling methods and statistical methods. They represent a modern trend in practical developments within the prognostic modeling field and, with acceptable limitations, enjoy a generally recognized perspective for application in construction. Results obtained from numerical analysis, which includes analysis of the behavior of reinforced concrete elements and linear structures exposed to actions of standard fire, were used for the development of a prognostic model with the application of fuzzy neural networks. As fire resistance directly affects the functionality and safety of structures, the significance which new methods and computational tools have on enabling quick, easy, and simple prognosis of the same is quite clear. This paper will consider the application of fuzzy neural networks by creating prognostic models for determining fire resistance of eccentrically loaded reinforced concrete columns.
机译:人工神经网络与模糊逻辑,遗传算法和模糊神经网络相结合,代表了现代跨学科领域的一个例子,尤其是在解决某些类型的工程问题时,传统的建模方法和统计方法无法解决这些问题。它们代表了预后建模领域实际发展的现代趋势,并且在可接受的限制下,享有在建筑中应用的公认观点。通过数值分析获得的结果,包括对暴露于标准火灾作用下的钢筋混凝土元件和线性结构的行为的分析,被用于通过模糊神经网络开发预测模型。由于耐火性直接影响结构的功能和安全性,因此很清楚新方法和计算工具对实现其快速,简便和简单的预后的意义。本文将通过创建预测模型来确定偏心加载钢筋混凝土柱的耐火性,从而考虑模糊神经网络的应用。

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