考虑泥沙淤积的弧形闸门启门力预测方法研究

    Prediction of opening force for radial gate considering sediment deposition

    • 摘要: 为了确保弧形闸门在泥沙淤积条件下能够正常开启,需准确预测其最大启门力。利用仿真软件ParticleWorks的无网格粒子模拟泥沙淤积环境,构建了一个包含机械、液压和宾汉流体的多领域耦合仿真模型,获取了大量仿真数据;采用结合鲸鱼优化算法(WOA)和核密度估计(KDE)的BP神经网络模型对仿真数据进行训练,以实现启门力的快速点预测与区间预测。结果表明:与物理实验数据相比,多领域耦合仿真模型的最大启门力误差在4%以内;WOA-BP-KDE神经网络模型在仿真样本上的预测误差可控制在3%以内,且区间预测效果良好。研究成果可为模拟泥沙淤积对闸门启门力的影响机制及精确预测启门力提供参考。

       

      Abstract: To ensure the normal operation of radial gates under sediment deposition conditions, accurate prediction on their maximum opening force is essential.First, using the meshless particle method in Particleworks to simulate sediment deposition environments, we constructed a multi-domain coupling simulation model integrating mechanical, hydraulic, and Bingham fluid dynamics.This model generated extensive simulation data.Next, a BP neural network surrogate model, combined with the whale optimization algorithm (WOA) and kernel density estimation (KDE), was employed to train the simulation data, enabling rapid point prediction and interval prediction of the opening force.The results demonstrated that the multi-domain coupling simulation model predicted the maximum opening force with an error margin within 4% compared to physical experimental data.The WOA-BP-KDE neural network model achieved a prediction error less than 3% for simulation samples, with satisfactory interval prediction performance.These findings provide valuable insights for simulating the influence mechanism of sediment deposition on gate opening force and improving prediction accuracy.

       

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