统计数据同化的精密退火蒙特卡罗方法:大都会-黑斯廷斯程序

Adrian S. Wong, Kangbo Hao, Zheng Fang, H. Abarbanel
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引用次数: 1

摘要

摘要统计数据同化(SDA)是将现场或实验室观测的信息传递到产生这些观测的用户选择的动力系统模型。数据有噪声,模型存在误差;信息传递处理了模型状态的条件概率分布的属性,这些属性以观测值为条件。SDA中感兴趣的量是模型状态函数的条件期望值,这些需要对高维积分进行近似评估。我们引入了一个条件概率分布,并使用拉普拉斯退火法来识别条件概率分布的最大值。退火方法在进入拉普拉斯方法时,缓慢地增加模型的精度项。本文利用Metropolis-Hastings方法,将精密退火(PA)的思想推广到条件期望值的蒙特卡罗计算中。
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Precision Annealing Monte Carlo Methods for Statistical Data Assimilation: Metropolis-Hastings Procedures
Abstract. Statistical Data Assimilation (SDA) is the transfer of information from field or laboratory observations to a user selected model of the dynamical system producing those observations. The data is noisy and the model has errors; the information transfer addresses properties of the conditional probability distribution of the states of the model conditioned on the observations. The quantities of interest in SDA are the conditional expected values of functions of the model state, and these require the approximate evaluation of high dimensional integrals. We introduce a conditional probability distribution and use the Laplace method with annealing to identify the maxima of the conditional probability distribution. The annealing method slowly increases the precision term of the model as it enters the Laplace method. In this paper, we extend the idea of precision annealing (PA) to Monte Carlo calculations of conditional expected values using Metropolis-Hastings methods.
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