Hybrid neural-fuzzy modeling for impact toughness prediction of alloy steels

M.-Y. Chen, D. Linkens
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引用次数: 1

Abstract

As one of the most important characteristics of structural steels, toughness is assessed by the Charpy V-notch impact test. The absorbed impact energy and the transition temperature defined at a given Charpy energy level are regarded as the common criteria for toughness assessment. This paper aims at establishing generic toughness prediction models which link materials compositions and processing conditions with Charpy impact properties. Hybrid knowledge-based neural-fuzzy modeling techniques which incorporate linguistic knowledge into data-driven neural-fuzzy models have been used to develop the Charpy properties prediction models for thermomechanically controlled rolled (TMCR) steels. Two basic ways of knowledge incorporation are introduced to improve the performance of the obtained fuzzy models. Simulation experiments show that both numeric data and linguistic information can be combined in a unified framework and that both Charpy impact energy and the impact transition temperature (ITT) can be predicted by the same model
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基于神经-模糊混合模型的合金钢冲击韧性预测
作为结构钢最重要的特性之一,韧性是通过夏比v形缺口冲击试验来评估的。将吸收的冲击能和在给定夏比能级下定义的转变温度作为评定韧性的常用标准。本文旨在建立将材料成分、加工条件与夏比冲击性能联系起来的通用韧性预测模型。将语言知识与数据驱动的神经模糊模型相结合的基于知识的混合神经模糊建模技术已被用于开发热控轧钢(TMCR)的Charpy性能预测模型。介绍了两种基本的知识整合方法,以提高所得到的模糊模型的性能。仿真实验表明,该方法可以将数值数据和语言信息结合在一个统一的框架中,并且可以用同一模型预测Charpy冲击能和冲击转变温度(ITT)
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