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Prediction and optimization of friction welding parameters for super duplex stainless steel (UNS S32760) joints
Highlights Corrosion resistance and impact strength – predicted by response surface methodology. Burn off length has highest significance on corrosion resistance. Friction force is a strong determinant in changing impact strength. Pareto front points generated by genetic algorithm aid to fix input control variable. Pareto front will be a trade-off between corrosion resistance and impact strength.
Abstract Friction welding finds widespread industrial use as a mass production process for joining materials. Friction welding process allows welding of several materials that are extremely difficult to fusion weld. Friction welding process parameters play a significant role in making good quality joints. To produce a good quality joint it is important to set up proper welding process parameters. This can be done by employing optimization techniques. This paper presents a multi objective optimization method for optimizing the process parameters during friction welding process. The proposed method combines the response surface methodology (RSM) with an intelligent optimization algorithm, i.e. genetic algorithm (GA). Corrosion resistance and impact strength of friction welded super duplex stainless steel (SDSS) (UNS S32760) joints were investigated considering three process parameters: friction force (F), upset force (U) and burn off length (B). Mathematical models were developed and the responses were adequately predicted. Direct and interaction effects of process parameters on responses were studied by plotting graphs. Burn off length has high significance on corrosion current followed by upset force and friction force. In the case of impact strength, friction force has high significance followed by upset force and burn off length. Multi objective optimization for maximizing the impact strength and minimizing the corrosion current (maximizing corrosion resistance) was carried out using GA with the RSM model. The optimization procedure resulted in the creation of nondominated optimal points which can aid the process operator to fix the input control variables. The selection of a point from the Pareto front will always be a trade-off between the corrosion resistance and impact strength of the weld depending on the application.
Prediction and optimization of friction welding parameters for super duplex stainless steel (UNS S32760) joints
Highlights Corrosion resistance and impact strength – predicted by response surface methodology. Burn off length has highest significance on corrosion resistance. Friction force is a strong determinant in changing impact strength. Pareto front points generated by genetic algorithm aid to fix input control variable. Pareto front will be a trade-off between corrosion resistance and impact strength.
Abstract Friction welding finds widespread industrial use as a mass production process for joining materials. Friction welding process allows welding of several materials that are extremely difficult to fusion weld. Friction welding process parameters play a significant role in making good quality joints. To produce a good quality joint it is important to set up proper welding process parameters. This can be done by employing optimization techniques. This paper presents a multi objective optimization method for optimizing the process parameters during friction welding process. The proposed method combines the response surface methodology (RSM) with an intelligent optimization algorithm, i.e. genetic algorithm (GA). Corrosion resistance and impact strength of friction welded super duplex stainless steel (SDSS) (UNS S32760) joints were investigated considering three process parameters: friction force (F), upset force (U) and burn off length (B). Mathematical models were developed and the responses were adequately predicted. Direct and interaction effects of process parameters on responses were studied by plotting graphs. Burn off length has high significance on corrosion current followed by upset force and friction force. In the case of impact strength, friction force has high significance followed by upset force and burn off length. Multi objective optimization for maximizing the impact strength and minimizing the corrosion current (maximizing corrosion resistance) was carried out using GA with the RSM model. The optimization procedure resulted in the creation of nondominated optimal points which can aid the process operator to fix the input control variables. The selection of a point from the Pareto front will always be a trade-off between the corrosion resistance and impact strength of the weld depending on the application.
Prediction and optimization of friction welding parameters for super duplex stainless steel (UNS S32760) joints
Udayakumar, T. (author) / Raja, K. (author) / Afsal Husain, T.M. (author) / Sathiya, P. (author)
2013-07-01
10 pages
Article (Journal)
Electronic Resource
English
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