Collaborative Aluminum Profile Design to Adaptable Die Process Planning Using Neural Networks

2010 ◽  
Vol 443 ◽  
pp. 207-212 ◽  
Author(s):  
Suthep Butdee ◽  
Chaiwat Noomtong ◽  
Serge Tichkiewitch

Aluminum extrusion die manufacturing is a critical task for productive improvement and increasing potential of competition in aluminum extrusion industry. It causes to meet the efficiency not only consistent quality but also time and production cost reduction. Die manufacturing consists first of die design and process planning in order to make a die for extruding the customer’s requirement products. The efficiency of die design and process planning are based on the knowledge and experience of die design and die manufacturer experts. This knowledge has been formulated into a computer system called the knowledge-based system. It can be reused to support a new die design and process planning. Such knowledge can be extracted directly from die geometry which is composed of die features. These features are stored in die feature library to be prepared for producing a new die manufacturing. Die geometry is defined according to the characteristics of the profile, is called product data, so we can reuse die features from the previous similar profile design cases. This paper presents the artificial neural network to assist aluminum extrusion die design and process planning based on collaborative design methodology. Product data can be shared and distributed in die design team members via computer network technology. This product data is used to support die design and process planning. Die manufacturing cases in the case library would be retrieved with searching and learning method by neural network for reusing or revising it to build a die design and process planning when a new case is similar with the previous die manufacturing cases. The results of the system are dies design and machining process.

2009 ◽  
Vol 19 (3) ◽  
pp. 401-412 ◽  
Author(s):  
S. S. Akhtar ◽  
A. F. M. Arif ◽  
B. S. Yilbas

1991 ◽  
Vol 58 (3) ◽  
pp. 644-650 ◽  
Author(s):  
P. Aravamadhu Balaji ◽  
T. Sundararajan ◽  
G. K. Lal

A viscoplastic model for extrusion is discussed which simultaneously predicts the deformation field, optimal die geometry, and plastic boundaries. The die geometry and plastic boundaries are expressed in terms of chosen trial functions that satisfy certain geometrical and physical constraints. The variational power integral is minimized in the trial plastic domain using FEM technique to determine the deformation field and shape coefficients for the die contour and plastic boundaries. The proposed method is implemented for the optimal design of an axisymmetric streamlined die. The predicted values are in reasonable agreement with the experimental observations and are in conformity with the results published earlier.


2013 ◽  
Vol 13 (3) ◽  
pp. 177-181
Author(s):  
Alexandre Milanez ◽  
Lírio Schaeffer ◽  
Anderson Daleffe ◽  
Mateus Milanez

AbstractThis work describes the development and manufacture of micro and meso extrusion dies used to extrude metal materials. The die design was based on different extrusion angles and diameters of input materials. An extrusion die was made to input material measuring 1 mm and for reduction to 0.8 mm with a 30° angle of extrusion. For the same diameter of material, another two dies were manufactured with extrusion angles of 45° and 60°. For meso sized extrusion, another three dies were made and the diameter of the input material was 4 mm with a reduction to 3 mm and extrusion angles of 30°, 45° and 60°. During the machining of the extrusion dies, high speed steel (HSS) drills were used with a tip angle according to the extrusion angles. After machining, the dies were treated thermally and polished to diminish the friction coefficient between the part to be extruded and the die. The results of the machining process indicate that extrusion dies can be manufactured using quick HSS drill and polishing can be done using diamond paste with satisfactory results.


2011 ◽  
Vol 383-390 ◽  
pp. 6747-6754
Author(s):  
Suthep Butdee

Aluminum extrusion die design involves with two critical parts; die features and its parameters. Presently, die design process is performed by adaptation approach. The previous dies together with their parameters are collected and stored in a database under the well-memory organization. Case-Based Reasoning (CBR) has been applied and enhanced the design productivity. However, the CBR method has an excellent ability only that an exact or similar design features are existed. Reality, aluminum die design requires regularly changed according to the profile changes. Therefore, it needs to predict optimum parameters to assist in the process of aluminum profile extrusion. This paper presents the redesign process using adaptive method. In this case, CBR & ANN method are combined and development. The CBR uses for die feature adaptation; whereas the ANN is used for parameter adaptation and prediction to a new profile and die design. The actual production yield is given and the ANN will find the best size of billet length in order to receive the maximum yield.


2017 ◽  
Vol 5 ◽  
pp. 1169-1174
Author(s):  
Oleg Mihaylov ◽  
Galina Nikolcheva ◽  
Peter Popov

The article presents an unsupervised learning algorithm that groups technological features in a setup for machining process. Setup generation is one of the most important tasks in automated process planning and in fixture configuration. A setup is created based on approach direction of the features. The algorithm proposed in this work generates a neural network that determines the setup each feature belongs to, and the number of setups generated is minimal. This algorithm, unlike others, is not influenced by the order of the input sequence. Parallel implementation of the algorithm is straightforward and can significantly increase the computational performance.


Alloy Digest ◽  
2018 ◽  
Vol 67 (1) ◽  

Abstract YSS DAC 40 high-strength aluminum extrusion die steel has higher strength and better softening resistance at elevated temperature than DAC. This datasheet provides information on composition and elasticity. It also includes information on heat treating. Filing Code: TS-746. Producer or source: Hitachi Metals America Ltd.


2021 ◽  
Vol 36 (1) ◽  
pp. 69-78
Author(s):  
M. Gupta

Abstract A combined flow, thermal and structural analysis is employed to simulate post-die extrudate distortion in different profile dies. All four factors which can cause extrudate distortion, namely, nonuniform exit velocity distribution, extrudate shrinkage, extrudate draw down, and deformed shape of the calibrator or sizer profile, are simulated. To analyze the effect of exit velocity variation on extrudate distortion, the parameterized geometry of a simple profile die is optimized using an extrusion die optimization software. The simulation results presented for a bi-layer profile die successfully demonstrate how gradually changing profile shape in successive calibrators/sizers can be used to simplify the die design for extrusion of complex profiles. The predicted extrudate shape and layer structure for the bi-layer die are found to accurately match with those in the extruded product.


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