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首页> 外文期刊>Journal of the royal statistical society >Realtime sequential inference of static parameters with expensive likelihood calculations
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Realtime sequential inference of static parameters with expensive likelihood calculations

机译:静态参数的实时顺序推理和昂贵的似然计算

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摘要

A methodology is developed for making inference about parameters of a possible covert chemical or biological atmospheric release from sensor readings. The key difficulty in performing this inference is that the results must be obtained in a very short timescale (5 min) to make use of the inference for protection. The methodology that is developed uses some of the components in a sequential Monte Carlo algorithm. However, this inference problem is different from many other sequential Monte Carlo problems, in that there are no state evolution equations, the forward model is highly non-linear and the likelihoods are non-Gaussian. The algorithm that is developed can use stored output from complex physics models for more rapid update of the posterior from new data without having to rerun the models. The use of differential evolution Markov chain sampling allows new samples to diverge rapidly from degenerate sample sets. Results for inferences made of atmospheric releases (both real and simulated) of material are presented, demonstrating that the sampling scheme performs adequately despite constraints of a short time span for calculations.
机译:已开发出一种方法,用于根据传感器读数推断出可能的秘密化学或生物大气释放的参数。进行此推断的关键困难在于,必须在非常短的时间范围内(5分钟)获得结果,以利用该推断进行保护。开发的方法使用顺序蒙特卡洛算法中的某些组件。但是,此推理问题与许多其他顺序蒙特卡洛问题不同,因为没有状态演化方程,前向模型是高度非线性的,似然性是非高斯的。所开发的算法可以使用复杂物理模型的存储输出来从新数据中更快速地更新后验,而不必重新运行模型。差分进化马尔可夫链采样的使用允许新样本与退化样本集快速分离。给出了由大气释放(真实的和模拟的)得出的推论结果,表明尽管计算时间间隔很短,但采样方案仍能充分发挥作用。

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