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Simulation-based calibration of geotechnical parameters using parallel hybrid moving boundary particle swarm optimization.

机译:使用并行混合移动边界粒子群优化的基于仿真的岩土参数标定。

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摘要

Simulation-based optimization methods have been recently proposed for calibrating geotechnical models from laboratory and field tests. In these methods, geotechnical parameters are identified by matching model predictions to experimental data, i.e. by minimizing an objective function that measures the difference between the two. Expensive computational models, such as finite difference or finite element models are often required to simulate laboratory or field geotechnical tests. In such cases, simulation-based optimization might prove demanding since every evaluation of the objective function requires a new model simulation until the optimum set of parameter values is achieved. This paper introduces a novel simulation-based “hybrid moving boundary particle swarm optimization” (hmPSO) algorithm that enables calibration of geotechnical models from laboratory or field data. The hmPSO has proven effective in searching for model parameter values and, unlike other optimization methods, does not require information about the gradient of the objective function. Serial and parallel implementations of hmPSO have been validated in this work against a number of benchmarks, including numerical tests, and a challenging geotechnical problem consisting of the calibration of a water infiltration model for unsaturated soils. The latter application demonstrates the potential of hmPSO for interpreting laboratory and field tests as well as a tool for general back-analysis of geotechnical case studies.
机译:最近提出了基于仿真的优化方法,用于根据实验室和现场测试来校准岩土模型。在这些方法中,通过将模型预测与实验数据相匹配(即,通过最小化测量两者之间差异的目标函数)来识别岩土参数。为了模拟实验室或现场岩土工程测试,通常需要昂贵的计算模型,例如有限差分或有限元模型。在这种情况下,由于对目标函数的每次评估都需要进行新的模型仿真,直到获得最佳的参数值集为止,基于仿真的优化可能证明是苛刻的。本文介绍了一种新颖的基于仿真的“混合运动边界粒子群优化”(hmPSO)算法,该算法能够根据实验室或现场数据对岩土模型进行校准。 hmPSO已证明可有效地搜索模型参数值,并且与其他优化方法不同,它不需要有关目标函数梯度的信息。 hmPSO的串行和并行实现已在这项工作中针对许多基准进行了验证,包括数值测试和具有挑战性的岩土工程问题,其中包括针对非饱和土壤的水渗透模型的校准。后者的应用展示了hmPSO在解释实验室和现场测试方面的潜力,以及用于岩土工程案例研究的一般反向分析的工具。

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  • 年度 2009
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