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Knowledge discovery for friction stir welding via data driven approaches: Part 2 – multiobjective modelling using fuzzy rule based systems

机译:通过数据驱动方法进行搅拌摩擦焊的知识发现:第2部分–使用基于模糊规则的系统进行多目标建模

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摘要

In this final part of this extensive study, a new systematic data-driven fuzzy modelling approach has been developed, taking into account both the modelling accuracy and its interpretability (transparency) as attributes. For the first time, a data-driven modelling framework has been proposed designed and implemented in order to model the intricate FSW behaviours relating to AA5083 aluminium alloy, consisting of the grain size, mechanical properties, as well as internal process properties. As a result, ‘Pareto-optimal’ predictive models have been successfully elicited which, through validations on real data for the aluminium alloy AA5083, have been shown to be accurate, transparent and generic despite the conservative number of data points used for model training and testing. Compared with analytically based methods, the proposed data-driven modelling approach provides a more effective way to construct prediction models for FSW when there is an apparent lack of fundamental process knowledge.
机译:在这项广泛研究的最后一部分中,考虑到建模准确性及其作为属性的可解释性(透明度),开发了一种新的系统的数据驱动的模糊建模方法。首次提出并设计了一种数据驱动的建模框架,以对与AA5083铝合金相关的复杂FSW行为进行建模,该行为包括晶粒尺寸,机械性能以及内部工艺性能。结果,成功地得出了“帕累托最优”的预测模型,该模型通过对铝合金AA5083的真实数据进行验证,尽管用于模型训练和预测的数据点数量保守,但被证明是准确,透明和通用的。测试。与基于分析的方法相比,当明显缺乏基本过程知识时,所提出的数据驱动建模方法为构建FSW的预测模型提供了更有效的方法。

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