An improved UNet model based on adaptive activation function and squeeze-and-excitation module for milling tool wear segmentation

Canyu Cai, Zhichao You, Changgen Li, Yi Sun, Shichao Li, Hongli Gao
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Abstract

The fine monitoring technology of the milling tool wear condition is a crucial prerequisite to ensure both the processing quality and the smooth progress of the machining process. In order to fulfil this requirement, this paper constructs an improved UNet model to achieve end-to-end high-precision segmentation of milling tool wear area. The model uses Resnet as the feature extraction framework, and introduces an adaptive activation function to prevent information loss and minimize the activation function cost. Meanwhile, the squeeze-and-excitation module is introduced in the front and back ends of the feature extraction framework to enhance the important features and suppress irrelevant features. The accuracy and adapt ability of the proposed model is confirmed through the experiment of accelerating milling cutter life and three different failure phenomena.
基于自适应激活函数和挤压激励模块的铣刀磨损分割改进UNet模型
铣刀磨损状态的精细监测技术是保证加工质量和加工过程顺利进行的重要前提。为了满足这一要求,本文构建了一种改进的UNet模型,实现了端到端铣刀磨损区域的高精度分割。该模型采用Resnet作为特征提取框架,引入自适应激活函数,防止信息丢失,最小化激活函数代价。同时,在特征提取框架的前后端分别引入挤压激励模块,增强重要特征,抑制无关特征。通过加速铣刀寿命试验和三种不同失效现象,验证了所提模型的准确性和自适应能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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