Process Parameters Decision to Optimization of Cold Rolling-Beating Forming Process through Experiment and Modelling

The cold roll-beating forming (CRBF) process is a particular cold plastic bulk forming technology for metals that is adequate for shaping the external teeth of important parts. The process parameters of the CRBF process were studied in this work to improve the process performance. Of the CRBF proces...

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Main Authors: Long Li, Yan Li, Mingshun Yang, Tong Tong
Format: Article
Language:English
Published: MDPI AG 2019-04-01
Series:Metals
Subjects:
Online Access:https://www.mdpi.com/2075-4701/9/4/405
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spelling doaj-5191ca7e8a494e98be356bbe33b5b39c2020-11-24T20:54:53ZengMDPI AGMetals2075-47012019-04-019440510.3390/met9040405met9040405Process Parameters Decision to Optimization of Cold Rolling-Beating Forming Process through Experiment and ModellingLong Li0Yan Li1Mingshun Yang2Tong Tong3School of Mechanical and Precision Instrument Engineering, Xi′an University of Technology, Xi’an 710048, ChinaSchool of Mechanical and Precision Instrument Engineering, Xi′an University of Technology, Xi’an 710048, ChinaSchool of Mechanical and Precision Instrument Engineering, Xi′an University of Technology, Xi’an 710048, ChinaSchool of Mechanical and Precision Instrument Engineering, Xi′an University of Technology, Xi’an 710048, ChinaThe cold roll-beating forming (CRBF) process is a particular cold plastic bulk forming technology for metals that is adequate for shaping the external teeth of important parts. The process parameters of the CRBF process were studied in this work to improve the process performance. Of the CRBF process characteristics, the forming forces, tooth profile angle, surface roughness, and forming efficiency were selected as the target indices to describe the process performance. Single tooth experimental tests of ASTM 1045 steel were conducted with different roll-beating modes, spindle rotation speeds, and feed speeds. Using analysis of variance (ANOVA) and regression analysis, the influence of the process parameters in each index was investigated, and regression models of each index were established. Then, the linear weighted sum method and compound entropy weight method were used to determine the process parameters for multi-objective optimization. The results show that the impact capacity and optimum value range of the process parameters vary in different indices, and that, to achieve the comprehensive optimum effect of a small forming force, high product quality, and high forming efficiency, the optimal process parameter combination is the up-beating mode, a spindle rotation speed of 801 r/min, and a feed speed of 960 mm/min.https://www.mdpi.com/2075-4701/9/4/405plasticity formingcold roll-beating formingprocess parametermulti-objective optimization
collection DOAJ
language English
format Article
sources DOAJ
author Long Li
Yan Li
Mingshun Yang
Tong Tong
spellingShingle Long Li
Yan Li
Mingshun Yang
Tong Tong
Process Parameters Decision to Optimization of Cold Rolling-Beating Forming Process through Experiment and Modelling
Metals
plasticity forming
cold roll-beating forming
process parameter
multi-objective optimization
author_facet Long Li
Yan Li
Mingshun Yang
Tong Tong
author_sort Long Li
title Process Parameters Decision to Optimization of Cold Rolling-Beating Forming Process through Experiment and Modelling
title_short Process Parameters Decision to Optimization of Cold Rolling-Beating Forming Process through Experiment and Modelling
title_full Process Parameters Decision to Optimization of Cold Rolling-Beating Forming Process through Experiment and Modelling
title_fullStr Process Parameters Decision to Optimization of Cold Rolling-Beating Forming Process through Experiment and Modelling
title_full_unstemmed Process Parameters Decision to Optimization of Cold Rolling-Beating Forming Process through Experiment and Modelling
title_sort process parameters decision to optimization of cold rolling-beating forming process through experiment and modelling
publisher MDPI AG
series Metals
issn 2075-4701
publishDate 2019-04-01
description The cold roll-beating forming (CRBF) process is a particular cold plastic bulk forming technology for metals that is adequate for shaping the external teeth of important parts. The process parameters of the CRBF process were studied in this work to improve the process performance. Of the CRBF process characteristics, the forming forces, tooth profile angle, surface roughness, and forming efficiency were selected as the target indices to describe the process performance. Single tooth experimental tests of ASTM 1045 steel were conducted with different roll-beating modes, spindle rotation speeds, and feed speeds. Using analysis of variance (ANOVA) and regression analysis, the influence of the process parameters in each index was investigated, and regression models of each index were established. Then, the linear weighted sum method and compound entropy weight method were used to determine the process parameters for multi-objective optimization. The results show that the impact capacity and optimum value range of the process parameters vary in different indices, and that, to achieve the comprehensive optimum effect of a small forming force, high product quality, and high forming efficiency, the optimal process parameter combination is the up-beating mode, a spindle rotation speed of 801 r/min, and a feed speed of 960 mm/min.
topic plasticity forming
cold roll-beating forming
process parameter
multi-objective optimization
url https://www.mdpi.com/2075-4701/9/4/405
work_keys_str_mv AT longli processparametersdecisiontooptimizationofcoldrollingbeatingformingprocessthroughexperimentandmodelling
AT yanli processparametersdecisiontooptimizationofcoldrollingbeatingformingprocessthroughexperimentandmodelling
AT mingshunyang processparametersdecisiontooptimizationofcoldrollingbeatingformingprocessthroughexperimentandmodelling
AT tongtong processparametersdecisiontooptimizationofcoldrollingbeatingformingprocessthroughexperimentandmodelling
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