Zheng Bin, Shui Qintao, Luo Zhecheng, Hu Peihao, Yang Yunjin, Lei Jilin, Yin Guofu
School of Intelligent Manufacturing, Panzhihua University, Panzhihua 617000, China.
Yunnan Province Key Laboratory of Internal Combustion Engines, Kunming University of Science and Technology, Kunming 650500, China.
Materials (Basel). 2025 Jun 26;18(13):3043. doi: 10.3390/ma18133043.
This paper focuses on the use of advanced optimization design strategies to improve the performance and service life of engine pistons, with emphasis on enhancing their stiffness, strength, and dynamic characteristics. As a core component of the engine, the structural design and optimization of the piston are of great significance to its efficiency and reliability. First, a three-dimensional (3D) model of the piston was constructed and imported into ANSYS Workbench for finite element modeling and high-quality meshing. Based on the empirical formula, the actual working environment temperature and heat transfer coefficient of the piston were accurately determined and used as boundary conditions for thermomechanical coupling analysis to accurately simulate the thermal and deformation state under complex working conditions. Dynamic characteristic analysis was used to obtain the displacement-frequency curve, providing key data support for predicting resonance behavior, evaluating structural strength, and optimizing the design. In the optimization stage, five geometric dimensions are selected as design variables. The deformation, mass, temperature, and the first to third natural frequencies are considered as optimization goals. The response surface model is constructed by means of the design of the experiments method, and the fitted model is evaluated in detail. The results show that the models are all significant. The adequacy of the model fitting is verified by the "Residuals vs. Run" plot, and potential data problems are identified. The "Predicted vs. Actual" plot is used to evaluate the fitting accuracy and prediction ability of the model for the experimental data, avoiding over-fitting or under-fitting problems, and guiding the optimization direction. Subsequently, the sensitivity analysis was carried out to reveal the variables that have a significant impact on the objective function, and in-depth analysis was conducted in combination with the response surface. The multi-objective genetic algorithm (MOGA), screening, and response surface methodology (RSM) were, respectively, used to comprehensively optimize the objective function. Through experiments and analysis, the optimal solution of the MOGA algorithm was selected for implementation. After optimization, the piston mass and deformation remained relatively stable, and the working temperature dropped from 312.75 °C to 308.07 °C, which is conducive to extending the component life and improving the thermal efficiency. The first to third natural frequencies increased from 1651.60 Hz to 1671.80 Hz, 1656.70 Hz to 1665.70 Hz, and 1752.90 Hz to 1776.50 Hz, respectively, significantly enhancing the dynamic stability and vibration resistance. This study integrates sensitivity analysis, response surface models, and genetic algorithms to solve multi-objective optimization problems, successfully improving piston performance.
本文着重探讨运用先进的优化设计策略来提升发动机活塞的性能和使用寿命,重点在于增强其刚度、强度及动态特性。作为发动机的核心部件,活塞的结构设计与优化对其效率和可靠性具有重大意义。首先,构建了活塞的三维(3D)模型,并导入ANSYS Workbench进行有限元建模和高质量网格划分。基于经验公式,精确确定了活塞实际工作环境温度和传热系数,并将其用作热-机械耦合分析的边界条件,以准确模拟复杂工况下的热状态和变形状态。通过动态特性分析获得位移-频率曲线,为预测共振行为、评估结构强度及优化设计提供关键数据支持。在优化阶段,选取五个几何尺寸作为设计变量,将变形、质量、温度以及第一至第三阶固有频率作为优化目标。借助实验设计方法构建响应面模型,并对拟合模型进行详细评估。结果表明各模型均具有显著性。通过“残差与运行次数”图验证了模型拟合的充分性,并识别出潜在的数据问题。利用“预测值与实际值”图评估模型对实验数据的拟合精度和预测能力,避免过拟合或欠拟合问题,进而指导优化方向。随后,进行敏感性分析以揭示对目标函数有显著影响的变量,并结合响应面进行深入分析。分别采用多目标遗传算法(MOGA)、筛选法和响应面法(RSM)对目标函数进行综合优化。通过实验与分析,选取MOGA算法的最优解进行实施。优化后,活塞质量和变形保持相对稳定,工作温度从312.75℃降至308.07℃,有利于延长部件寿命并提高热效率。第一至第三阶固有频率分别从1651.60Hz增至1671.80Hz、1656.70Hz增至1665.70Hz以及1752.90Hz增至1776.50Hz,显著增强了动态稳定性和抗振性。本研究集成敏感性分析、响应面模型和遗传算法来解决多目标优化问题,成功提升了活塞性能。