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首页> 外文期刊>Journal of guidance, control, and dynamics >Closed-Loop Adaptive Monte Carlo Framework for Uncertainty Forecasting in Nonlinear Dynamic Systems
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Closed-Loop Adaptive Monte Carlo Framework for Uncertainty Forecasting in Nonlinear Dynamic Systems

机译:非线性动态系统不确定性预测的闭环自适应蒙特卡洛框架

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摘要

A novel adaptive Monte Carlo simulation (MCS) framework for uncertainty forecasting in nonlinear dynamical systems is presented. A closed-loop architecture is created that controls transient forecasting performance as well as associated computational burden. Performance is quantified in terms of estimation accuracy of application-dependent quantities of interest (QoI), bounds on which are prescribed by the user. When the QoI estimation error, measured periodically via bootstrap sampling, exceeds the prescribed upper threshold, optimally selected particles are sequentially introduced into the initial ensemble and then forward propagated to join the current ensemble. Optimality of new particles is defined in terms of ensemble efficiency, quantified in turn by space-filling and noncollapsing properties. On the other hand, when the QoI estimation error is less than the prescribed lower threshold, particles are removed in the interest of alleviating computational load. Probability of particle retention is proportional to the state probability density function value at its location, computed numerically by solving the associated stochastic Liouville equation via the method of characteristics. This approach creates a minimal particle representation of state uncertainty while maintaining guaranteed performance of MCS within user-defined accuracy bounds. Numerical simulations demonstrate the effectiveness of the proposed adaptive forecasting method.
机译:提出了一种新颖的自适应蒙特卡罗模拟(MCS)框架,用于非线性动力学系统的不确定性预测。创建了一个闭环体系结构,该体系结构可控制瞬态预测性能以及相关的计算负担。根据应用程序相关的兴趣量(QoI)的估计准确性来量化性能,该兴趣由用户指定。当通过自举采样定期测量的QoI估计误差超过规定的上限时,将最佳选择的粒子顺序引入到初始集合中,然后向前传播以加入当前集合。新粒子的最佳性是根据集合效率定义的,集合效率依次由空间填充和非塌陷属性进行量化。另一方面,当QoI估计误差小于规定的下限阈值时,为了减轻计算负荷而去除粒子。粒子保留的概率与位于其位置的状态概率密度函数值成正比,这是通过特征方法通过求解关联的随机Liouville方程进行数值计算的。这种方法创建了状态不确定性的最小粒子表示,同时在用户定义的精度范围内保持了MCS的性能保证。数值模拟表明了所提出的自适应预测方法的有效性。

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  • 来源
    《Journal of guidance, control, and dynamics》 |2019年第6期|1218-1236|共19页
  • 作者

    Yang Chao; Kumar Mrinal;

  • 作者单位

    Ohio State Univ, Mech & Aerosp Engn, 2300 W Case Rd, Columbus, OH 43210 USA;

    Ohio State Univ, Mech & Aerosp Engn, 2300 W Case Rd, Columbus, OH 43210 USA;

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  • 正文语种 eng
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