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基于RF-RSM的RAP多目标拌和工艺参数优化

Multi-Objective Optimization of RAP Mixing Process Parameters Based on RF-RSM

  • 摘要: 针对再生沥青混合料(RAP)生产过程中加热温度与拌和时间两个关键工艺参数多凭经验确定、缺乏协同优化手段的问题,为实现工艺参数的快速精准优化与绿色生产,本研究基于数据驱动方法探索RAP工艺参数优化新途径。采用均匀-随机混合采样设计开展29组成型试验,依据JTG E20-2011规范测定空隙率、稳定度、浸水残留稳定度、动稳定度与冻融劈裂强度比五项关键性能指标,构建综合评价函数;构建基于随机森林(RF)-响应面(RSM)耦合的多目标综合评分模型,运用RF回归建立工艺参数与综合评分之间的非线性映射关系,通过网格搜索法寻优确定最佳工艺参数组合。研究结果表明:试验样本的综合评分在46.3分~72.1分之间,其中加热温度对评分的影响更为显著;RF-RSM模型决定系数R2=0.948,均方根误差RMSE=1.78,预测精度较高;最优工艺参数为加热温度125°C、拌和时间115 s。该模型能够有效处理RAP工艺参数与性能指标间的非线性关系,具有良好的工程适用性与可移植性,可显著提升RAP工艺优化效率,为RAP绿色生产提供科学的数据驱动优化方法。

     

    Abstract: In order to achieve the synergistic optimization of two key process parameters—heating temperature and mixing time—during the mixing process of recycled asphalt mixture (RAP), this study constructed a multi-objective comprehensive scoring model based on Random Forest (RF) - Response Surface Methodology (RSM) after conducting 29 experimental trials, enabling rapid optimization of the process parameters. The experiments were designed using a uniform-random mixture sampling approach, and five key performance indicators—voids, stability, residual stability after immersion, dynamic stability, and freeze-thaw splitting strength ratio—were measured according to JTG E20-2011 to establish a comprehensive scoring function. An RF regression model was used to create a nonlinear response surface coupling model between process parameters and the comprehensive score, and finally, the optimal heating temperature and mixing time were determined through grid search. The results indicate that the comprehensive scores of the experimental samples ranged from 46.3 to 72.1 points, with heating temperature having a more significant impact on the score. The RF-RSM model has a coefficient of determination (R2) of 0.948 and a root mean square error (RMSE) of 1.78. The optimal process parameters were a heating temperature of 125°C and a mixing time of 115 seconds. This model demonstrates strong portability and engineering application value, effectively improving RAP process optimization efficiency and providing a data-driven optimization method for green RAP production.

     

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