基于IKOA优化SAGRU的大坝变形预测模型

    Dam deformation prediction model based on IKOA-optimized SAGRU

    • 摘要: 为充分发掘大坝变形监测数据中的有效信息并提升监控模型的预测精度,提出了基于IKOA优化SAGRU的大坝变形预测模型。首先,在门控循环单元(GRU)中引入自注意力机制,通过计算时间维度特征的贡献率,有效捕捉实测数据中的关键时序特征,提升模型对关键信息的敏感性;然后通过混沌映射初始化、Runge-Kutta位置更新和ESQ强化3种策略对开普勒优化算法(KOA)进行改进,以对耦合自注意力机制的门控循环单元(SAGRU)中的超参数进行自动寻优。应用实例表明:改进开普勒优化算法(IKOA)在寻优速度和精度方面均优于麻雀搜索算法、灰狼优化算法、北方苍鹰优化算法和传统KOA,模型的RMSE相比GRU、LSTM和XGBoost模型分别降低了48.45%,54.56%和58.14%,尤其在实测位移变化的关键拐点和峰值处,优化后的模型展现了更好的拟合效果,表明该模型能够全面挖掘大坝变形序列中的时序特征,解决了GRU记忆容量有限,以及传统优化算法收敛速度慢且易陷入局部最优解的问题,显著提高了大坝变形预测模型的准确性。

       

      Abstract: In order to fully explore the effective information in dam deformation monitoring data and improve monitoring model prediction accuracy, a dam deformation prediction model based on IKOA-optimized SAGRU (IKOA-SAGRU model) was proposed.First, a self-attention mechanism was introduced into the gated recurrent unit (GRU).By calculating the contribution rate of time-dimension features, the model effectively captured key time-series features in the measured data, enhancing its sensitivity to key information.Next, the Kepler optimization algorithm (KOA) was improved through three strategies: chaotic map initialization, Runge-Kutta-based position update, and ESQ reinforcement exploration, to automatically optimize the hyperparameters of the self-attention gated recurrent unit (SAGRU).Case studies showed that the improved Kepler optimization algorithm (IKOA) outperformed the sparrow search algorithm, the gray wolf optimizer, the northern goshawk optimization algorithm, and the original KOA in optimization speed and accuracy.The RMSE of the IKOA-SAGRU model′s prediction accuracy was 48.45%, 54.56%, and 58.14% lower than that of the GRU, LSTM, and XGBoost models, respectively.Notably, at key inflection points and peaks in the measured displacement changes, the optimized model achieved better fitting performance.The results demonstrate that the model can effectively extract time-series features from dam deformation sequences, addressing the problems of limited GRU memory capacity, the slow convergence speed of traditional optimization algorithms and their tendency to fall into local optima, thereby significantly improving prediction accuracy.

       

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