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Sequential optimization with particle splitting-based reliability assessment for engineering design under uncertainties

机译:不确定条件下基于粒子分裂的可靠性评估的序列优化设计

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The evaluation of probabilistic constraints plays an important role in reliability-based design optimization. Traditional simulation methods such as Monte Carlo simulation can provide highly accurate results, but they are often computationally intensive to implement. To improve the computational efficiency of the Monte Carlo method, this article proposes a particle splitting approach, a rare-event simulation technique that evaluates probabilistic constraints. The particle splitting-based reliability assessment is integrated into the iterative steps of design optimization. The proposed method provides an enhancement of subset simulation by increasing sample diversity and producing a stable solution. This method is further extended to address the problem with multiple probabilistic constraints. The performance of the particle splitting approach is compared with the most probable point based method and other approximation methods through examples.
机译:概率约束的评估在基于可靠性的设计优化中起着重要作用。传统的仿真方法(例如蒙特卡洛仿真)可以提供高度准确的结果,但实现起来通常需要大量的计算。为了提高蒙特卡洛方法的计算效率,本文提出了一种粒子分裂方法,这是一种评估概率约束的稀有事件模拟技术。基于粒子分裂的可靠性评估已集成到设计优化的迭代步骤中。所提出的方法通过增加样本多样性和产生稳定的解决方案来增强子集仿真。该方法被进一步扩展以解决具有多个概率约束的问题。通过示例将粒子分裂方法的性能与最可能的基于点的方法和其他近似方法进行了比较。

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