常微分方程系统分析的数据同化方法

W. Arter, A. Osojnik, C. Cartis, Godwin Madho, Chris Jones, S. Tobias
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引用次数: 3

摘要

采用集成卡尔曼滤波和优化技术相结合的方法解决了非线性振子模型对噪声时间序列的参数拟合问题。对可接受的采样率和噪声水平提出了令人鼓舞的初步结果。讨论了在理解和控制托卡马克核反应堆运行中的应用。
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Data assimilation approach to analysing systems of ordinary differential equations
The problem of parameter fitting for nonlinear oscillator models to noisy time series is addressed using a combination of Ensemble Kalman Filter and optimisation techniques. Encouraging preliminary results for acceptable sampling rates and noise levels are presented. Application to the understanding and control of tokamak nuclear reactor operation is discussed.
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