基于学习模糊逻辑的立铣刀进给速度智能确定

Xiankun Lin, Aiping Li, Weimin Zhang
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引用次数: 3

摘要

在立铣削加工中,可行进给速度对提高加工效率起着重要作用,但其数值计算复杂。提出了一种基于学习模糊逻辑的工况智能判定方法。总结并讨论了基于规则的专家系统在铣削加工参数选择中的局限性。然后根据刀具直径、切削深度和材料硬度三种加工条件,提出了基于学习模糊逻辑的推理模型作为智能进给速度选择引擎。采用人工神经网络和数据聚类相结合的方法获取模糊逻辑模型的推理知识。最后,通过实例说明了所提方法的适用性。结果表明,该方法在参数确定方面具有良好的性能。结果表明,该推理逻辑可为立铣削过程进给速度的智能选择提供一种新的手段
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Learning fuzzy logic based intelligent determination of feedrate for end milling operation
Feasible feedrate plays an important role in improving machining efficiency in end milling operation, but it needs complicated calculation to acquire the value. The paper presents a learning fuzzy logic based approach for intelligent determination of the condition. Limitations about rule-based expert system in selection of machining parameters for milling process are summarized and discussed. Then a learning fuzzy logic based inference model is brought forth as an intelligent feedrate selection engine according to three machining conditions: tool diameter, cutting depth and material hardness. A method composed with artificial neural network and data cluster is applied to obtain the inference knowledge for the fuzzy logic model. In the end, an illustration is given to show the applicability of the proposed approach. The results show good performance in determination of the parameter. A conclusion is reached that the reasoning logic can provide a new measure in intelligent selection of feedrate for end milling process
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