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    基于蒙特卡洛和DLS联合反演的冻土区微动成像研究

    Microtremor imaging of permafrost based on Monte Carlo and DLS joint inversion

    • 摘要: 微动成像方法广泛用于工程勘察领域,但冻土微动勘察中,由于冻土含冰量的变化,常存在速度突变的夹层,导致常规反演方法精度不足。为此,开展了基于蒙特卡洛(Monte Carlo,MC)与阻尼最小二乘(Damped Least Squares,DLS)的两步联合反演的冻土微动成像研究。利用MC算法的多轮重启和随机游走策略,在全局空间内搜索拟合误差最小的模型,并结合DLS方法对模型进一步优化,实现对地层速度结构的精准探测。首先通过典型地层的理论模型测试,验证方法的准确性与可靠性。然后对冻土区实际微动数据进行处理与成像,结果表明,在冻土区复杂地层条件下,该方法能够划分冻土上限及地层界面的位置,反演结果与实际地质特征吻合度高,可为寒区道路的选线设计与防治病害提供相关参数。

       

      Abstract: The microtremor imaging method is widely used in engineering investigation. However, when applied to frozen ground, variations in the ice content of permafrost often lead to the presence of interlayers with abrupt velocity changes, which compromises the accuracy of conventional inversion methods. To address this issue, this study develops a two-step joint inversion approach for microtremor imaging of frozen ground based on Monte Carlo (MC) and Damped Least Squares (DLS) methods. The MC algorithm, with its multi-restart and random walk strategies, is employed to search the global space for models with the minimum misfit error. The resulting model is then further optimized using the DLS method, enabling precise detection of the subsurface velocity structure. The accuracy and reliability of the proposed method are validated through synthetic tests using typical stratigraphic models. The method is then applied to process and image real microtremor data acquired from a permafrost region. The results demonstrate that, under the complex stratigraphic conditions typical of frozen ground, this method can effectively delineate the permafrost table and stratigraphic interfaces. The inversion results show good agreement with actual geological characteristics, providing relevant parameters for route selection and hazard mitigation in cold-region road construction.

       

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