This Paper seeks to model a periodic time series using Fourier Series Analysis Method and to use such model to forcast future values of such data. The mean monthly temperature of Uyo Metropolis consisting of 180 data points (1991 – 2006) are collected for the study. The parameter estimates of the Fourier series model are obtained by ordinary least squares method in multiple regression. The test of significance of the general model and parameters indicate that the model is statistically significant and the significant parameters provide a Fourier series model of the form: 26.82-1.163cosωt - 0.169 sinωt + 0.133cos2ωt +0.164sin2ωt - 0.116sin4ωt + 0.255et-1. The P – P plot is also used to test for the overall goodness...
The complexity of climate variability on all time scales requires the use of several refined tools t...
A method for creating scenarios of time series of monthly mean surface temperature at a specific sit...
Long-term historical daily temperatures are used in electricity forecasting to simulate the probabil...
Time-series analysis is used to identify and quantify periodic features in datasets and has many app...
The well-known methodology of the Fourier analysis is put against the background in the 2nd half of ...
Generally, the climate variable such as rainfall and temperature data are collected on daily, monthl...
This work presents a time series model for daily average temperatures. The data is modeled by flexi...
One of the periodic natural phenomena in life is temperature patterns. A mathematical model ba...
Temperature-based weather derivatives are written on an index which is normally defined to be a nonl...
textabstractThis book considers periodic time series models for seasonal data, characterized by para...
Fourier analysis is used to forecast weekly hard red spring wheat prices 25 weeks into the future. T...
Title: Statistical analysis of historical temperature series Author: Václav Gergelits Department: De...
Temperature is one of the main climatic elements that can indicate climate change as climate change ...
Many natural hazards have cyclic/periodic behaviour, e.g. radon, earthquakes (under some circumstanc...
In this work over 200 temperature proxy data sets have been analyzed to determine if periodic and or...
The complexity of climate variability on all time scales requires the use of several refined tools t...
A method for creating scenarios of time series of monthly mean surface temperature at a specific sit...
Long-term historical daily temperatures are used in electricity forecasting to simulate the probabil...
Time-series analysis is used to identify and quantify periodic features in datasets and has many app...
The well-known methodology of the Fourier analysis is put against the background in the 2nd half of ...
Generally, the climate variable such as rainfall and temperature data are collected on daily, monthl...
This work presents a time series model for daily average temperatures. The data is modeled by flexi...
One of the periodic natural phenomena in life is temperature patterns. A mathematical model ba...
Temperature-based weather derivatives are written on an index which is normally defined to be a nonl...
textabstractThis book considers periodic time series models for seasonal data, characterized by para...
Fourier analysis is used to forecast weekly hard red spring wheat prices 25 weeks into the future. T...
Title: Statistical analysis of historical temperature series Author: Václav Gergelits Department: De...
Temperature is one of the main climatic elements that can indicate climate change as climate change ...
Many natural hazards have cyclic/periodic behaviour, e.g. radon, earthquakes (under some circumstanc...
In this work over 200 temperature proxy data sets have been analyzed to determine if periodic and or...
The complexity of climate variability on all time scales requires the use of several refined tools t...
A method for creating scenarios of time series of monthly mean surface temperature at a specific sit...
Long-term historical daily temperatures are used in electricity forecasting to simulate the probabil...