This article shows that increasing the observation variance at small scales
can reduce the ensemble size required to avoid collapse in particle filtering
of spatially-extended dynamics and improve the resulting uncertainty
quantification at large scales. Particle filter weights depend on how well
ensemble members agree with observations, and collapse occurs when a few
ensemble members receive most of the weight. Collapse causes catastrophic
variance underestimation. Increasing small-scale variance in the observation
error model reduces the incidence of collapse by de-emphasizing small-scale
differences between the ensemble members and the observations. Doing so smooths
the posterior mean, though it does not smooth the individual ensemble members.
Two options for implementing the proposed observation error model are
described. Taking discretized elliptic differential operators as an observation
error covariance matrix provides the desired property of a spectrum that grows
in the approach to small scales. This choice also introduces structure
exploitable by scalable computation techniques, including multigrid solvers and
multiresolution approximations to the corresponding integral operator.
Alternatively the observations can be smoothed and then assimilated under the
assumption of independent errors, which is equivalent to assuming large errors
at small scales. The method is demonstrated on a linear stochastic partial
differential equation, where it significantly reduces the occurrence of
particle filter collapse while maintaining accuracy. It also improves
continuous ranked probability scores by as much as 25%, indicating that the
weighted ensemble more accurately represents the true distribution. The method
is compatible with other techniques for improving the performance of particle
filters.Comment: 15 pages, 6 figure