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A multi-objective hybrid prediction model of slope deformation based on fuzzy optimization algorithm

机译:基于模糊优化算法的坡度变形多目标混合预测模型

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This paper introduces an algorithm which uses multi-objective fuzzy optimization within a hybrid prediction model to improve the forecasting accuracy of slope deformation.Single forecasting models used in hybrid prediction are optimized by an empirical threshold law.The technique described in this paper uses mean square error to determine the fitting error of the prediction model and a gray relational grade to describe the developing relevance between monitored deformation curve and the predictive model.The multi-objective optimization model is established by introducing a fuzzy satisfaction function aimed at simultaneously decreasing the fitting error while increasing the developing relevance.Particle swarm optimization(PSO)is employed to solve the optimal weight of the hybrid prediction model,and the eventual multi-objective refined forecasts.The model has been used to conduct predictive analysis on an unstable slope(Laowubao)located in the 25th tender of YiBa highway,Hubei,China.The forecast results indicate that the new model obtains a smaller fitting error and can be considered more relevant than a traditional single prediction model.This technique can help effectively improve the precision of the prediction model and shows great application value.
机译:本文介绍了一种在混合预测模型中使用多目标模糊优化的算法,以提高斜坡变形的预测精度。通过经验阈值优化混合预测中使用的预测模型。本文中描述的技术使用均方确定预测模型的拟合误差和灰色关系等级的误差来描述监测变形曲线与预测模型之间的开发相关性。通过引入旨在同时降低拟合误差的模糊满意度函数来建立多目标优化模型在增加显影相关性的同时,采用群体群优化(PSO)来解决混合预测模型的最佳重量,以及最终的多目标精制预测。该模型已被用于对不稳定坡度进行预测分析(LaOWubao)位于湖北湖北宜宾公路25招。预测结果表明,新模型获得了较小的拟合误差,并且可以被认为比传统的单个预测模型更加相关。本技术可以有助于有助于有效地提高预测模型的精度并显示出很大的应用价值。

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