Abstract:To further improve the accuracy and convenience of prediction on the surface roughness (Ra) of milled 7475 aluminum alloy, the least squares vector machine (LSSVM) was optimized based on the Aquila Optimizer algorithm (AO). The Ra prediction model of milled aluminum alloy was constructed with four milling parameters as the input values and Ra as the output value. This model was compared with two other algorithms, PSO-LSSVM and LSSVM. The correlation between the milling parameters and surface roughness was analyzed using gray correlation . The Ra prediction system was built through the GUI interface. The results show that the prediction error of the Ra prediction model based on AO-LSSVM is 4.2876%, and the goodness-of-fit reaches 0.93864, which is better than other algorithms. The correlation between feed per tooth and Ra is the largest, with a gray correlation value of 0.764. The GUI prediction application system can realize efficient, convenient, and accurate prediction of Ra values.