Adaptive tempering schedules with approximative intermediate measures for filtering problems
Data assimilation algorithms integrate prior information from numerical model simulations with observed data. Ensemble-based filters, regarded as state-of-the-art, are widely employed for large-scale estimation tasks in disciplines such as geoscience and meteorology. Despite their inability to produ...
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Zusammenfassung: | Data assimilation algorithms integrate prior information from numerical model
simulations with observed data. Ensemble-based filters, regarded as
state-of-the-art, are widely employed for large-scale estimation tasks in
disciplines such as geoscience and meteorology. Despite their inability to
produce the true posterior distribution for nonlinear systems, their robustness
and capacity for state tracking are noteworthy. In contrast, Particle filters
yield the correct distribution in the ensemble limit but require substantially
larger ensemble sizes than ensemble-based filters to maintain stability in
higher-dimensional spaces. It is essential to transcend traditional Gaussian
assumptions to achieve realistic quantification of uncertainties. One approach
involves the hybridisation of filters, facilitated by tempering, to harness the
complementary strengths of different filters. A new adaptive tempering method
is proposed to tune the underlying schedule, aiming to systematically surpass
the performance previously achieved. Although promising numerical results for
certain filter combinations in toy examples exist in the literature, the tuning
of hyperparameters presents a considerable challenge. A deeper understanding of
these interactions is crucial for practical applications. |
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DOI: | 10.48550/arxiv.2405.14408 |