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Online detection and measurements of drill wear for the drilling of stainless steel parts

机译:在线检测和测量用于不锈钢零件钻孔的钻头磨损

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摘要

Thrust and torque have been selected in this research for online detection and measurements of drill wear for the drilling of stainless steel parts because cutting forces are closely related to the drilling process and give the best indirect indication of drill conditions. Using thrust and torque information to monitor the drill conditions for control of the drilling process can decrease the operation cost and enhance the product quality. To find the most important feature(s), the feature selection technique is used in this research. Sequential forward search algorithm is used for feature selection. To reduce the dimension of the measurement vector, it is necessary to retain only those components of the extracted features which show a high sensitivity to drill wear and low sensitivity to process parameters. The best feature selected is the peak of torque in the drilling process. Adaptive neuro-fuzzy inference system (ANFIS) is a neuro-fuzzy system. It includes input layer, output layer, and layers between them. ANFIS can construct fuzzy rules with membership functions to generate an input-output pair. A 1 × 6 ANFIS architecture with generalized bell membership function can achieve a success rate of 100% for the online detection of drill states. A 1 × 6 ANFIS architecture with product of sigmoid membership functions can measure the drill wear online with an error as low as 0.15%. Furthermore, the detection and measurement of drill wear is performed under different drilling conditions as compared with the training process. This shows that ANFIS has the capability of generalization.
机译:在本研究中选择了推力和扭矩来在线检测和测量不锈钢零件的钻孔磨损,因为切削力与钻孔过程密切相关,并且可以最好地间接指示钻孔条件。使用推力和扭矩信息监视钻探条件以控制钻探过程可以降低运营成本并提高产品质量。为了找到最重要的特征,本研究中使用了特征选择技术。顺序正向搜索算法用于特征选择。为了减小测量向量的维数,仅保留提取特征中对钻头磨损表现出高敏感性而对过程参数表现出低敏感性的那些分量。选择的最佳功能是钻孔过程中的扭矩峰值。自适应神经模糊推理系统(ANFIS)是一种神经模糊系统。它包括输入层,输出层以及它们之间的层。 ANFIS可以使用隶属函数构造模糊规则以生成输入输出对。具有通用钟形隶属度功能的1×6 ANFIS体系结构可以在线检测钻探状态,并获得100%的成功率。具有S形隶属函数的乘积的1×6 ANFIS体系结构可以在线测量钻头磨损,误差低至0.15%。此外,与训练过程相比,在不同的钻孔条件下进行钻头磨损的检测和测量。这表明ANFIS具有泛化能力。

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