It is a pleasure to thank Dick P. Dee for many discussions throughout the course of this work. The numerical results were obtained on the Cray C90 through cooperation of the NASA Center for Computational Sciences at the Goddard Space Flight Center. This research was supported by a fellowship from the Universities Space Research Association (RT) and by the NASA EOS Interdisciplinary Project on Data Assimilation (SEC and NSS).
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