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首页> 外文期刊>The International Journal of Advanced Manufacturing Technology >Support vector machines model for classification of thermal error in machine tools
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Support vector machines model for classification of thermal error in machine tools

机译:支持向量机模型,用于机床热误差分类

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This paper addresses a change in the concept of machine tool thermal error prediction which has been hitherto carried out by directly mapping them with the temperature of critical elements on the machine. The model developed herein using support vector machines, a powerful data-training algorithm, seeks to account for the impact of specific operating conditions, in addition to temperature variation, on the effective prediction of thermal errors. Several experiments were conducted to study the error pattern, which was found to change significantly with variation in operating conditions. This model attempts to classify the error based on operating conditions. Once classified, the error is then predicted based on the temperature states. This paper also briefly describes the concept of the implementation of such a comprehensive model along with an on-line error assessment and calibration system in a PC-based open-architecture controller environment, so that it could be employed in regular production for the purpose of periodic calibration of machine tools.
机译:本文针对机床热误差预测的概念进行了更改,该概念迄今已通过将它们与机器上关键元件的温度直接映射来进行。本文使用支持向量机(一种功能强大的数据训练算法)开发的模型,除了温度变化外,还试图考虑特定操作条件对热误差有效预测的影响。进行了一些实验来研究错误模式,发现该错误模式会随着操作条件的变化而显着变化。该模型尝试根据操作条件对错误进行分类。一旦分类,就可以根据温度状态预测误差。本文还简要介绍了在基于PC的开放式架构控制器环境中实现这种综合模型以及在线错误评估和校准系统的概念,以便将其用于常规生产中以达到以下目的:定期校准机床。

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