Liu Song, Li Baoren, Gan Runlin, Xu Yue, Yang Gang
FESTO Pneumatics Centre, School of Mechanical Science & Engineering, Huazhong University of Science and Technology, Wuhan, 430074, China.
Sci Rep. 2023 Nov 20;13(1):20259. doi: 10.1038/s41598-023-47509-7.
A good surface texture design can effectively improve the tribological performance of the helical pair within a helical hydraulic rotary actuator(HHRA). However, the optimization design process can be time-consuming due to the multiple design variables involved and the complexity of the mathematical model. This paper proposes a modified efficient global optimization (MEGO) method for solving such demanding surface texture design challenges. The MEGO utilizes a Kriging model with the optimized Latin hypercube sampling (OLHS) for initial sampling and the proposed modified expected improvement (MEI) function for sequential sampling. A comparative study of several global optimization algorithms with the MEGO on the surface texture design is performed. Subsequently, surrogate-based optimization and parameter analysis are carried out, resulting in the identification of an optimal set of texture parameters. The findings reveal the superiority of the MEGO in both model prediction accuracy and refinement of minima. Moreover, compared to the base design, the friction coefficient can be reduced by up to 45.2%.
良好的表面纹理设计可以有效提高螺旋液压旋转执行器(HHRA)中螺旋副的摩擦学性能。然而,由于涉及多个设计变量以及数学模型的复杂性,优化设计过程可能会很耗时。本文提出了一种改进的高效全局优化(MEGO)方法,以解决此类苛刻的表面纹理设计挑战。MEGO使用带有优化拉丁超立方采样(OLHS)的克里金模型进行初始采样,并使用提出的改进预期改进(MEI)函数进行序贯采样。对几种全局优化算法与MEGO在表面纹理设计方面进行了对比研究。随后,进行了基于代理的优化和参数分析,从而确定了一组最佳纹理参数。研究结果揭示了MEGO在模型预测精度和最小值细化方面的优越性。此外,与基础设计相比,摩擦系数可降低高达45.2%。