Experiments in forecasting atmospheric marine horizontal visibility using model output statistics with conditional probabilities of discretized parameters.

This report describes the development and application of a program to forecast important air/ocean parameters using the method (s) of model output statistics. The focus of this operationally oriented study is to forecast atmospheric marine horizontal visibility using a discrete analysis of observed...

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Bibliographic Details
Main Author: Karl, Michael L.
Other Authors: Renard, R.J., Naval Postgraduate School (U.S.), Meteorology, Preisendorfer, Rudolph W.
Format: Thesis
Language:English
Published: Monterey, California. Naval Postgraduate School 1984
Subjects:
Online Access:https://hdl.handle.net/10945/19336
Description
Summary:This report describes the development and application of a program to forecast important air/ocean parameters using the method (s) of model output statistics. The focus of this operationally oriented study is to forecast atmospheric marine horizontal visibility using a discrete analysis of observed visibility and the Navy's Operational Global Atmospheric Prediction System (NOGAPS) model output parameters. Three strategies (two based on maximum-probability and one based on natural-regression) are compared to two multiple linear regression methods. The primary data set is from a North Atlantic Ocean area bounded approximately by the North American coast from Norfolk, Va. to St. Johns, Newfoundland, and then eastward to about 37.5°W. Both the dependent and independent data were derived from the same basic set. New or unfamiliar concepts, in addition to the primary methodology, include the statistical division of the North Atlantic Ocean into physically homogeneous areas, two new threshold models for the application of linear regression equations, linear regression based upon a 'decision-tree' concept, functional dependence of predictors and class errors. Results show that the methodology proposed by Preisendorfer does out perform multiple linear regression. Approved for public release; distribution is unlimited. Lieutenant Commander, United States Navy http://archive.org/details/experimentsinfor1094519336