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西铭煤矿煤巷围岩物理力学参数测试 被引量:5
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作者 刘云鹤 《江西煤炭科技》 2021年第2期55-57,60,共4页
针对西铭矿2^(#)煤巷道支护设计缺少相应的地应力、围岩力学指标和围岩结构类型等基础参数等问题,在西十二采区设置了第五、六测点进行了现场地质力学测试,得到2^(#)煤层顶板以上20 m范围内整体完整性较好;2^(#)煤应力场在量值上属于中... 针对西铭矿2^(#)煤巷道支护设计缺少相应的地应力、围岩力学指标和围岩结构类型等基础参数等问题,在西十二采区设置了第五、六测点进行了现场地质力学测试,得到2^(#)煤层顶板以上20 m范围内整体完整性较好;2^(#)煤应力场在量值上属于中等偏低应力值区域,最大水平主应力方向总体为NWW方向;并通过围岩强度测试结果综合计算,得到2^(#)煤层顶板以上10 m范围内泥质砂岩岩层强度平均值为64.45 MPa,细砂岩强度平均值为89.47 MPa,2^(#)煤层煤体强度为14.41 MPa。 展开更多
关键词 煤巷 围岩物理力学参数 测试研究
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Intelligent direct analysis of physical and mechanical parameters of tunnel surrounding rock based on adaptive immunity algorithm and BP neural network 被引量:3
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作者 Xiao-rui Wang1,2, Yuan-han Wang1, Xiao-feng Jia31.School of Civil Engineering and Mechanics,Huazhong University of Science and Technology, Wuhan 430074,China 2.Department of Civil Engineering,Nanyang Institute of Technology,Nanyang 473004,China 3.Department of Chemistry and Bioengineering,Nanyang Institute of Technology,Nanyang 473004,China. 《Journal of Pharmaceutical Analysis》 SCIE CAS 2009年第1期22-30,共9页
Because of complexity and non-predictability of the tunnel surrounding rock, the problem with the determination of the physical and mechanical parameters of the surrounding rock has become a main obstacle to theoretic... Because of complexity and non-predictability of the tunnel surrounding rock, the problem with the determination of the physical and mechanical parameters of the surrounding rock has become a main obstacle to theoretical research and numerical analysis in tunnel engineering. During design, it is a frequent practice, therefore, to give recommended values by analog based on experience. It is a key point in current research to make use of the displacement back analytic method to comparatively accurately determine the parameters of the surrounding rock whereas artificial intelligence possesses an exceptionally strong capability of identifying, expressing and coping with such complex non-linear relationships. The parameters can be verified by searching the optimal network structure, using back analysis on measured data to search optimal parameters and performing direct computation of the obtained results. In the current paper, the direct analysis is performed with the biological emulation system and the software of Fast Lagrangian Analysis of Continua (FLAC3D. The high non-linearity, network reasoning and coupling ability of the neural network are employed. The output vector required of the training of the neural network is obtained with the numerical analysis software. And the overall space search is conducted by employing the Adaptive Immunity Algorithm. As a result, we are able to avoid the shortcoming that multiple parameters and optimized parameters are easy to fall into a local extremum. At the same time, the computing speed and efficiency are increased as well. Further, in the paper satisfactory conclusions are arrived at through the intelligent direct-back analysis on the monitored and measured data at the Erdaoya tunneling project. The results show that the physical and mechanical parameters obtained by the intelligent direct-back analysis proposed in the current paper have effectively improved the recommended values in the original prospecting data. This is of practical significance to the appraisal of stabil 展开更多
关键词 adaptive immunity algorithm BP neural network physical and mechanical parameters surrounding rock direct-back analysis
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