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The Application and Study of A Neural Network Model Based on Multivariate Phase Space Reconstruction

机译:基于多变量相空间重建的神经网络模型的应用与研究

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For multi-variable nonlinear system evolution with time-varying, a neural network model based on multi-variable phase-space reconstruction has been proposed, and is used in civil engineering for synthesized deformation prediction of deep foundation pit. By the various time series time delay and embedding dimension determined respectively in this model, the multi-variable series of excavation deformation for deep foundation pit has been done in the first phase space reconstruction. The neural network input extraction by the use of partial least squares regression method can be the strongest impact components. Finally non-linear fitting between the various components has been completed via BP neural network model. With practical application for deformation prediction of deep foundation pit, the method's effectiveness has been verified.
机译:对于多变量的多变量非线性系统演进,提出了一种基于多变量相位空间重建的神经网络模型,并用于土木工程,用于深基坑的合成变形预测。通过分别在该模型中确定的各种时间序列时间延迟和嵌入尺寸,在第一相空间重建中已经完成了深基坑的多变量挖掘变形。通过使用偏最小二乘回归方法的神经网络输入提取可以是最强的影响组件。最后通过BP神经网络模型完成了各种组件之间的非线性拟合。利用深基坑变形预测的实际应用,验证了方法的效率。

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