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基于蒙特卡罗法的碳化耐久性研究

Study on Carbide Durability Based on Monte Carlo Method
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摘要 碳化是影响混凝土结构老化的重要因素。应用蒙特卡罗法来研究葠窝水库6号、8号坝段工作桥纵梁的碳化问题。从碳化寿命准则和锈胀开裂寿命准则预测其使用寿命。结果表明:在使用110年时,6号坝段工作桥纵梁的碳化深度到达钢筋表面,使用142年时,出现了锈胀裂缝;在使用130年时,8号坝段工作桥纵梁的碳化深度到达钢筋表面,钢筋开始发生锈蚀,使用160年时,出现了锈胀裂缝,结构开始开裂。 Carbonization is an important factor affecting the aging of concrete structure. The carbonization problems of girders in No. 6 and 8 monolith of Shenwo Reservoir are studied respectively by using Monte Carlo method, and its service life is predicted from carbonation life criterion and corrosive cracking life criterion. The results show that: (a) the carbonation depth of the girder in No. 6 monolith will reach the surface of steel after servicing for 110 years, and after 142 year service, the corrosive cracks will appear; and (b) for the girder in No. 8 monolith, the times are 130 years and 160 years respectively.
出处 《水力发电》 北大核心 2017年第5期60-63,90,共5页 Water Power
基金 辽宁省水利科技指导性计划项目(20150200)
关键词 蒙特卡罗法 碳化耐久性 灵敏度 ANSYS 葠窝水库 Monte Carlo method carbide durability sensitivity ANSYS Shenwo Reservoir
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