In order to solve the problems of high volume fraction silicon carbide particle reinforced aluminum matrix composite (SiC
p
/Al) machining difficulty and poor surface quality
the longitudinal torsional ultrasonic vibration assisted milling composite process was proposed. Taking ultrasonic amplitude
cutting speed
feed per tooth and cutting depth as variables
a four-factor and five-level orthogonal experimental study was designed. By using response surface method and artificial neural network
the pr
ediction models of cutting force
cutting temperature and surface roughness are established
the interaction effect of two indexes among the four parameter variables is analyzed
and the accuracy of the prediction models is compared and verified. Finally
the multi-objective parameters of cutting force
cutting temperature and surface roughness are optimized by genetic algorithm. The results show that both the response surface method and the artificial neural network have better predictive ability
but the artificial neural network is more accurate. The optimal parameter combination optimized by genetic algorithm is ultrasonic amplitude A=1.84 μm
cutting speed v
c
=20 m/min
feed per tooth f
z
=0.015 mm/z
cutting depth a
p
=0.8 mm. After verification experiment
it is found that the optimal parameter can effectively reduce the cutting force
cutting temperature and surface roughness
and the values are F
t
=7.23 N
T=40.18 ℃
R
a
=2.4673 μm
respectively. And the prediction errors were 6.91%
6.53% and 2.53%
respectively
which proved the accuracy of the prediction model and the effectiveness of the optimization parameters.