4 research outputs found
On the Quasi-Moment-Method as a Rain Attenuation Prediction Modeling Algorithm
A computationally inexpensive, analytically simple, and remarkably efficient
rain attenuation prediction algorithm is presented in this paper. The
algorithm, here referred to as the Quasi-Moment-Method, has only two main
requirements for its implementation. First, rain attenuation measurement data
for bit terrestrial or slant paths for the site of interest must be available;
and second, a model referred to as the base model, known to have predicted
attenuation for any site to a reasonable level of accuracy and whose analytical
format can be expressed as a linear combination of its parameters, is also
required. An important novelty introduced by the QMM algorithm is a
normalization scheme, through which a modelling difficulty concerning
exceedance probabilities outside a 1 percent and 100 percent is eliminated.
Model validation and performance evaluation using a comprehensive set of data
available from the literature clearly demonstrated that the QMM models
consistently improved base model performance by more than 90 percent and
outperformed all published best fit models with which they were compared.Comment: 12 pages, 36 references, 5 figures, Journal Publicatio