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Predicting the effects of tool geometries on friction stirred aluminium welds using artificial neural networks and fuzzy logic techniques

机译:使用人工神经网络和模糊逻辑技术预测工具几何形状对搅拌摩擦铝焊缝的影响

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摘要

Effect of friction stir welding (FSW) tool geometries on aluminium welds were investigated using different tool shoulder and pin probe geometry profiles. A combination of 27 tool shoulder and pin profile geometries were used for the experimental purpose using a design matrix. The effect of these tool geometries on the friction stir welds like the weld strength, weld cross-section area and grain sizes were investigated. The effects of the tool geometries were predicted using artificial intelligence techniques such as artificial neural networks (ANN) and fuzzy logic modelling. It was observed that, for a combination of FSW tool geometries, the ANN model was not so effective in predicting the FSW weldment characteristics, while the fuzzy logic model was able to predict the same with much lower percentage of error for the test cases.
机译:使用不同的工具肩部和销形探针几何轮廓,研究了搅拌摩擦焊(FSW)工具几何形状对铝焊缝的影响。使用设计矩阵将27种刀肩和销轮廓几何形状的组合用于实验目的。研究了这些工具几何形状对搅拌摩擦焊缝的影响,如焊接强度,焊缝横截面积和晶粒尺寸。使用人工智能技术(例如,人工神经网络(ANN)和模糊逻辑建模)来预测工具几何形状的影响。可以观察到,对于FSW刀具几何形状的组合,ANN模型在预测FSW焊件特征方面不是那么有效,而模糊逻辑模型能够以较低的测试案例误差进行预测。

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