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Title:A generalized neural network model of ball-end milling force system
Authors:ID Župerl, Uroš (Author)
ID Čuš, Franc (Author)
ID Muršec, Bogomir (Author)
ID Ploj, Anton (Author)
Files:URL http://dx.doi.org/10.1016/j.jmatprotec.2005.04.036
 
Language:English
Work type:Unknown
Typology:1.01 - Original Scientific Article
Organization:FS - Faculty of Mechanical Engineering
Abstract:The focus of this paper is to develop a reliable method to predict 3D cutting forces during ball-end milling process. This paper uses the artificial neural networks (ANNs) approach to evolve an generalized model for prediction of cutting forces, based on a set of input cutting conditions. A set of ten input milling parameters that have a major impact on the cutting forces was chosen to represent the machining conditions. The training of the networks is performed with experimental machining data. This approach greatly reduces the time-consuming mathematical work normally required for obtaining the cutting force expressions. The estimation performance of the network is evaluated through a detailed simulation study. The accuracy of an analytical model, which is a feasible alternative to the network, is compared to that of the network. With similar system parameter estimates for both methods, the network is found to be considerably more accurate than the analytical model. The results of model validation experiments on machining Ck45 are also reported. Experimental results demonstrate that this method can accurately estimate feed cutting force within an error of 4%. The results also indicate that when the combination of sigmoidal and gaussian transfer function were applied, the prediction accuracy of neural network is as high as 98%.
Keywords:end-milling, cutting forces, cutting parameters, generalized neural networks, modeling
Year of publishing:2005
PID:20.500.12556/DKUM-27031 New window
UDC:621.914:004.89
ISSN on article:0924-0136
COBISS.SI-ID:9650966 New window
NUK URN:URN:SI:UM:DK:JRM2AGIF
Publication date in DKUM:01.06.2012
Views:2688
Downloads:96
Metadata:XML DC-XML DC-RDF
Categories:Misc.
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Record is a part of a journal

Title:Journal of materials processing technology
Shortened title:J. mater. process. technol.
Publisher:Elsevier
ISSN:0924-0136
COBISS.SI-ID:30105600 New window

Secondary language

Language:English
Keywords:čelno frezanje, rezalne sile, rezalni parametri, modeliranje, posplošena envronska omrežja


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