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BPNN and ANFIS models for prediction of floor bearing characteristics of weak rock foundations

机译:BPNN和ANFIS模型用于预测弱岩石基础的地板承载特性

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摘要

Analysis of stability (mainly bearing strength and settlement) under a footing on regularly bedded, jointed and layered model rock mass is conducted using Back Propagating Neural Network (BPNN) and Adaptive Neuro Fuzzy Inference Systems (ANFIS). The inputs required for the modeling were imported from the laboratory results of the measurements carried out earlier [1]. Rock mass were modeled as elastic-plastic with Drucker- Prager failure criteria for plane strain condition. The results of the footing settlements and bearing strengths derived from BPNN and ANFIS models were compared with the footing settlements corresponding to the maximum applied bearing pressure on floor strata (for different sizes of footing plates and also under varying anisotropy conditions of floor strata) as obtained from the experimental results and FEM investigations and the bearing strengths obtained from the laboratory investigations. It is deduced that ANFIS model predicts accurately well vis-à-vis experimental results though the results predicted from BPNN model compares well with those of FEM analysis.
机译:使用反向传播神经网络(BPNN)和自适应神经模糊推理系统(ANFIS)对规则层状,节理和分层模型岩体在立足点下的稳定性(主要是强度和沉降)进行分析。建模所需的输入是从先前进行的测量的实验室结果中导入的[1]。根据平面应变条件,采用Drucker-Prager破坏准则将岩体建模为弹塑性模型。将获得的BPNN和ANFIS模型的基础沉降结果和承压强度与对应于地板层上最大施加压力的基础沉降进行比较(对于不同尺寸的基础板以及在不同的各向异性条件下)从实验结果和FEM研究以及从实验室研究获得的轴承强度。尽管从BPNN模型预测的结果与FEM分析的结果相比较,但可以得出ANFIS模型相对于实验结果的预测效果很好。

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