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首页> 外文期刊>SIAM Journal on Numerical Analysis >A LIMITED-MEMORY MULTIPLE SHOOTING METHOD FOR WEAKLY CONSTRAINED VARIATIONAL DATA ASSIMILATION
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A LIMITED-MEMORY MULTIPLE SHOOTING METHOD FOR WEAKLY CONSTRAINED VARIATIONAL DATA ASSIMILATION

机译:用于弱约束变分数据同化的有限内存多拍摄方法

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Maximum-likelihood-based state estimation for dynamical systems with model error raises computational challenges in memory usage due to the much larger number of free variables when compared to the perfect model case. To address this challenge, we present a limited-memory method for maximum-likelihood-based estimation of state space models. We reduce the memory storage requirements by expressing the optimal states as a function of checkpoints bounding a shooting interval. All states can then be recomputed as needed from a recursion stemming from the optimality conditions. The matching of states at checkpoints is imposed, in a multiple shooting fashion, as constraints on the optimization problem, which is solved with an augmented Lagrangian method. We prove that for nonlinear systems under certain assumptions the condition number of the Hessian matrix of the augmented Lagrangian function is bounded above with respect to the number of shooting intervals. Hence the method is stable for increasing time horizon. The assumptions include satisfying the observability conditions of the linearized system on a shooting interval. We also propose a recursion-based gradient evaluation algorithm for computing the gradient, which in turn allows the algorithm to proceed by storing at any time only the checkpoints and the states on a shooting interval. We demonstrate our findings with simulations in different regimes for Burgers' equation.
机译:基于最大似然的动态系统的状态估计误差引起了内存使用中的计算挑战,因为与完美模型案例相比,由于更大的自由变量。为了解决这一挑战,我们提出了一种有限的内存方法,用于了解状态空间模型的最大似然估计。我们通过表示最佳状态作为限定拍摄间隔的检查点的函数来减少内存存储要求。然后可以根据从最佳条件的递归根据所需的递归来重新计算所有状态。以多次拍摄方式强加了各种状态的匹配,以多次拍摄方式,作为优化问题的约束,通过增强拉格朗日方法解决了这一问题。我们证明,对于非线性系统,在某些假设下,增强拉格朗日函数的Hessian矩阵的条件数在上面相对于拍摄间隔的数量界定。因此,该方法对于增加时间范围是稳定的。假设包括满足线性化系统的可观察性条件对拍摄间隔。我们还提出了一种用于计算梯度的次要渐变梯度评估算法,其又允许算法通过仅在拍摄间隔内任何时间存储检查点和状态。我们展示了在汉堡方程的不同政权中的模拟结果。

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