WANG Zezhi, FENG Yan, WANG Zijian, et al. Experimental Study on Surface of Magnetic Abrasive Jet Finishing of In-Line Nozzle[J]. Aeronautical Manufacturing Technology, 2025, (23/24).
DOI:
WANG Zezhi, FENG Yan, WANG Zijian, et al. Experimental Study on Surface of Magnetic Abrasive Jet Finishing of In-Line Nozzle[J]. Aeronautical Manufacturing Technology, 2025, (23/24). DOI: 10.16080/j.issn1671-833x.2025.23/24.088.
Experimental Study on Surface of Magnetic Abrasive Jet Finishing of In-Line Nozzle
When traditional nozzles are used for workpiece finishing
the jet leaves the nozzle
concentrating its energy at the central position
and the one-time processing area is small. As a result
although the overall surface roughness of the workpiece after finishing is effectively reduced
it tends to cause local deformation of the workpiece and the problem of poor uniformity. In order to further improve the surface quality and uniformity of thin-walled and complex workpieces processed by abrasive jet finishing
and to impro
ve the efficiency of the finishing process. By changing the shape of the nozzle outlet
and then change the structure of the jet
so that the jet energy distribution is more uniform
to improve the effect and feasibility of abrasive jet finishing. Fluent software was used to analyse the jet structure of the nozzle
abrasive trajectory
erosion and shear effect
to explore the advantages of the in-line nozzle finishing
to verify the finishing effect of the in-line nozzle through the test
and to analyse the influence of the various influencing factors on the effect of the finishing
and finally to establish the BP neural network prediction model and particle swarm parameter optimisation
to find the optimal parameters of the finishing. The in-line nozzle can effectively improve the surface quality and uniformity of the abrasive jet finishing process
improve the efficiency of the abrasive jet finishing process
and in the case of the same mass flow rate
the in-line nozzle has less influence on the deformation of the workpiece. Finally
simulation analysis and experiments show that the slotted nozzle can effectively improve the surface quality and reduce the surface roughness of abrasive jet finishing
improve the efficiency of abrasive jet finishing
and reduce the influence of jet processing on the workpiece. Through the prediction model constructed by BP neural network and the optimization of particle swarm parameters
when the processing time is 15 min
the abrasive particle size is 20 μm
the target distance is 12 mm
and the pressure is 0.08 MPa
the surface roughness of the aluminum alloy after finishing is reduced from R
a
0.513 μm to R
a
0.219 μm
and the surface roughness is basically the same as that measured in the vertical direction. Experiments verify that the BP neural network prediction model has high accuracy.