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Residual Stress Prediction by Adaptive Neuro-Fuzzy System in Milling Aluminum Alloy

机译:铣削铝合金自适应神经模糊系统的残余应力预测

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As a sort of large-scaled structural components in modern aircraft, aluminum part has been widely used nowadays. Its residual stress measurement and prediction are necessary to reduce machining deformation and keep machining precision. By Adaptive Neuro-Fuzzy Inference System (ANFIS), residual stress prediction model is set up based on different cutting parameters. Due to data sample scarcity, input selection and regression are analyzed comparatively to reduce input data dimension. It shows that cutting speed and feed per tooth have major impacts on residual stress, but they do not have better prediction ability in ANFIS model. The combination of cutting speed and radial depth of cut can predict the residual stress better.
机译:作为现代飞机中的一种大型结构部件,目前铝部件已被广泛使用。它的剩余应力测量和预测是必要的,以降低加工变形并保持加工精度。通过自适应神经模糊推理系统(ANFIS),基于不同切削参数建立残余应力预测模型。由于数据样本稀缺,相互分析输入选择和回归,以减少输入数据维度。它表明,每颗牙齿的切割速度和饲料对残余应力产生重大影响,但它们在ANFIS模型中没有更好的预测能力。切割速度和径向切割深度的组合可以更好地预测残余应力。

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