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Artificial Neural Network Model for Discrimination of Stability of Ancient Landslide in Impounding Area of Three Gorges Project, China

机译:中国三峡工程蓄水区古滑坡稳定性判别的人工神经网络模型

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摘要

The factors of geomorphology. geological setting, effect of ground water and environment dynamic factors (e. g. rainfall and artificial water recharge) should be integrated in the discrimination of the stability of the ancient landslide. As the criterion of landslide stability has been studied, the artificial neural network model was then applied to discriminate the stability of the ancient landslide in the impounding area of the Three Gorges project on the Yangtze River, China The model has the property of self-adaptive identifying and integrating complex qualitative factors and quantitative factors. The results of the artificial neural network model are coincided well with what were gained by classical limit equilibrium analysis (the Bishop method and Janbu method) and by other comprehensive discrimination methods.
机译:地貌因素。地质条件,地下水的影响和环境动态因素(例如降雨和人工补给水)应综合到古滑坡稳定性的判别中。在研究了滑坡稳定性判据的基础上,应用人工神经网络模型判别了长江三峡工程蓄水区古滑坡的稳定性。该模型具有自适应性。识别和整合复杂的定性因素和定量因素。人工神经网络模型的结果与经典极限平衡分析(Bishop方法和Janbu方法)以及其他综合判别方法所获得的结果非常吻合。

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