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首页> 外文期刊>The International Journal of Advanced Manufacturing Technology >An in-process neural network-based surface roughness prediction (INN-SRP) system using a dynamometer in end milling operations
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An in-process neural network-based surface roughness prediction (INN-SRP) system using a dynamometer in end milling operations

机译:在立铣操作中使用测力计的基于过程神经网络的表面粗糙度预测(INN-SRP)系统

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摘要

Surface roughness is influenced by the machining parameters and other uncontrollable factors resulting from the cutting tool in end milling operations. To perform the in-process surface roughness prediction (ISRP) system accurately, the uncontrollable factors must be monitored. In this paper, an empirical approach using a statistical analysis was employed to discover the proper cutting force to represent the uncontrollable factors in end milling operations. Furthermore, an in-process neural network-based surface roughness prediction (INN-SRP) system was developed. A neural network associated with sensing technology was applied as a decision-making system to predict the surface roughness for a wide range of machining parameters. The good accuracy of the results for a wide range of machining parameters indicates that the system is suitable for application in industry.
机译:表面粗糙度受加工参数和端铣削操作中切削刀具产生的其他不可控制因素的影响。为了准确地执行过程中表面粗糙度预测(ISRP)系统,必须监控不可控因素。在本文中,采用统计分析的经验方法来发现适当的切削力,以代表立铣操作中不可控的因素。此外,开发了基于过程神经网络的表面粗糙度预测(INN-SRP)系统。与传感技术相关的神经网络被用作决策系统,以预测各种加工参数的表面粗糙度。对于各种加工参数,结果的良好准确性表明该系统适合工业应用。

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