人工神经网络
校准
算法
计算机科学
遗传算法
人工智能
数学
机器学习
统计
作者
Yaodong Ni,Xianlun Leng,Ruirui Wang,Fengmin Xia,Feng Wang,Chengtang Wang
摘要
ABSTRACT The discrete element method (DEM) represents a crucial numerical simulation approach for investigating the internal damage mechanisms of rocks. However, in order to construct an accurate simulation model, it is essential to set the correct microscopic parameters. Consequently, parameter calibration has emerged as a key area of focus within this field. The existing parameter calibration methods have yielded satisfactory results; however, there is still scope for further improvement and advancement. In this study, a novel intelligent parameter calibration method has been proposed, combining the benefits of the BP neural network and genetic algorithm (GA). The method constructs a parameter relationship model with micro‐parameters as inputs and macro‐parameters as outputs. Then GA is employed to invert the relationship model to calculate the parameter calibration. The results demonstrate that the method is capable of calculating a set of high‐precision micro‐parameter solutions in a mere 2 min, with the majority of its errors being within 5%.
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