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Large Scale Inverse Problems - Computational Methods and Applications in the Earth Sciences (Hardcover)
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Large Scale Inverse Problems - Computational Methods and Applications in the Earth Sciences (Hardcover)
Series: Radon Series on Computational and Applied Mathematics
Expected to ship within 10 - 15 working days
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This book is the second volume of a three volume series recording
the "Radon Special Semester 2011 on Multiscale Simulation &
Analysis in Energy and the Environment" that took placein Linz,
Austria, October 3-7, 2011. This volume addresses the common ground
in the mathematical and computational procedures required for
large-scale inverse problems and data assimilation in forefront
applications. The solution of inverse problems is fundamental to a
wide variety of applications such as weather forecasting, medical
tomography, and oil exploration. Regularisation techniques are
needed to ensure solutions of sufficient quality to be useful, and
soundly theoretically based. This book addresses the common
techniques required for all the applications, and is thus truly
interdisciplinary. This collection of survey articles focusses on
the large inverse problems commonly arising in simulation and
forecasting in the earth sciences. For example, operational weather
forecasting models have between 107 and 108 degrees of freedom.
Even so, these degrees of freedom represent grossly space-time
averaged properties of the atmosphere. Accurate forecasts require
accurate initial conditions. With recent developments in satellite
data, there are between 106 and 107 observations each day. However,
while these also represent space-time averaged properties, the
averaging implicit in the measurements is quite different from that
used in the models. In atmosphere and ocean applications, there is
a physically-based model available which can be used to regularise
the problem. We assume that there is a set of observations with
known error characteristics available over a period of time. The
basic deterministic technique is to fit a model trajectory to the
observations over a period of time to within the observation error.
Since the model is not perfect the model trajectory has to be
corrected, which defines the data assimilation problem. The
stochastic view can be expressed by using an ensemble of model
trajectories, and calculating corrections to both the mean value
and the spread which allow the observations to be fitted by each
ensemble member. In other areas of earth science, only the
structure of the model formulation itself is known and the aim is
to use the past observation history to determine the unknown model
parameters. The book records the achievements of Workshop 2
"Large-Scale Inverse Problems and Applications in the Earth
Sciences". It involves experts in the theory of inverse problems
together with experts working on both theoretical and practical
aspects of the techniques by which large inverse problems arise in
the earth sciences.
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