A Self-adapting Algorithm for Identifying Rheology Model and Its Parameters of Rock Mass

Bing-Rui Chen, Xiating Feng, Chengxiang Yang
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引用次数: 1

Abstract

As it is difficult to previously determine rockmass rheology constitutive model using phenomena methods of mechanics, so a new self-adapting system identification method, a hybrid genetic programming (GP) with the chaos-genetic algorithm(CGA) based on self-rheological characteristic of rock mass, is proposed. Genetic programming is used for exploring the model’s structure and the chaos-genetic algorithm is produced to identify parameters (coefficients) in the tentative model. The optimal rheological model is determined by mechanical and rheological characteristic, important expertise ect and can describe rheological behavior of identified rock mass perfectly. The assistant tunnel B of Jinping-2 hydropower station is used as an example for verifying the proposed method. The results show that the algorithm is feasible and has great potential in finding new rheological models.
岩体流变模型及其参数识别的自适应算法
针对以往用力学现象方法难以确定岩体流变本构模型的问题,提出了一种新的基于岩体自流变特性的混合遗传规划(GP)和混沌遗传算法(CGA)自适应系统辨识方法。利用遗传规划对模型结构进行探索,并提出混沌遗传算法对模型中的参数(系数)进行辨识。最优流变模型由岩体的力学和流变特性、重要的专业知识等决定,能较好地描述所识别岩体的流变特性。结果表明,该算法是可行的,在寻找新的流变模型方面具有很大的潜力。
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