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大数据下冻结井筒整体结构模糊随机可靠性模型建立

Fuzzy random reliability model establishment of freezing shaft lining structure under big data environment

  • 摘要: 为解决传统可靠性模型在表征深部地下结构稳定性时的不足,利用大数据挖掘算法对可靠性一次二阶矩法进行模糊随机改进,提出了更加符合实际工况的井筒整体结构的模糊随机可靠性模型。研究结果表明:将两淮矿区钢筋混凝土冻结井筒工程数据作为样本数据集,结合大数据隐马可夫(HMM)模型和最大期望(EM)算法,研究井筒整体外荷载和极限抗力的模糊随机表达式,可有效建立该区钢筋混凝土冻结井筒整体结构的模糊随机可靠性解析模型,获得其整体结构的模糊随机可靠性。此外,大数据模糊随机可靠性以区间值表示不同埋深井段整体结构的可靠程度,实例中井深426~483 m段的模糊随机可靠性区间极值分别比常规可靠性计算结果值偏小0.45%和偏大0.53%。该方法考虑了地下工程结构存在从有效状态到失效状态的渐变模糊过程的受力特点,相比常规可靠性的单值表现方法能更准确反映深井整体工况,其形式更具合理性。

     

    Abstract: Aiming at the shortcomings of the conventional reliability in characterization of deep underground structure stability, the fuzzy random reliability model of the whole shaft structure is proposed which is more consistent with the actual working condition. The research results show that: taking the engineering data of reinforced concrete freezing shaft in the Huainan and Huaibei Mining Area as the sample data set and combining the big data HMM model and EM algorithm, researching fuzzy random analysis with shaft external load and shaft ultimate bearing capacity, the analytic model of fuzzy random reliability is obtained for overall shaft lining structure of reinforced concrete in deep alluvium. In addition, the fuzzy random reliability of big data represents the reliability of the whole structure of different depth by interval value. For example, the extreme value of the fuzzy random reliability interval in the 426~483 m section of the lining shaft depth is 0.45% smaller than that of the conventional reliability calculation result and 0.53% larger than that of the conventional reliability calculation result.This method takes into account the stress characteristics of underground engineering structures in a gradual fuzzy process from the effective state to the failure state, thus can reflect the working condition better of deep shaft compared with the conventional single value representation method, and its performance is more reasonable.

     

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