Geoscience Reference
In-Depth Information
Acknowledgements Our thanks are due to an anonymous reviewer for his detailed comments that
improved the quality and the readability of this chapter. We wish to thank Mr. Dung Phan for his
timely help in typesetting this chapter. S. Lakshmivarahan's efforts are supported in part by NSF
EPSCOR RII Track 2 Grant 105-155900 and by NSF Grant 105-15400.
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