This paper describes a maximum likelihood method using historical weather data to estimate a parametric model of daily precipitation and maximum and minimum air temperatures. Parameter estimates are reported for Brookings, SD, and Boone, IA, to illustrate the procedure. The use of this parametric model to generate stochastic time series of daily weather is then summarized. A soil temperature model is described that determines daily average, maximum, and minimum soil temperatures based on air temperatures and precipitation, following a lagged process due to soil heat storage and other factors
Abstract: This article reviews the historical development of statistical weather models, from simple...
The Richardson model is a popular technique for stochastic simulation of daily weather variables, in...
Weather Generators (WGs) are widely used in water engineering, agriculture, ecosystem and climate ch...
This paper describes a maximum likelihood method using historical weather data to estimate a paramet...
Although General Circulation Models (GCMs) are used to provide insight into scenario planning, ecolo...
We present the logical and algorithmic framework of a numerical model which generates daily interpol...
Abstract. Generated weather that represents alternative realizations of a particular historical reco...
Stochastic weather generators (SWGs) are designed to create simulations of synthetic weather data an...
A nonparametric resampling technique for generating daily weather variables at a site is presented. ...
Considering the importance of preserving spatial correlation between neighboring stations in many of...
A method for creating scenarios of time series of monthly mean surface temperature at a specific sit...
A method for generating daily surfaces of temperature, precipitation, humidity, and radiation over l...
Prepared with the Support of the National Oceanic and Atmospheric Administration, the National Weath...
AbstractThis paper describes a versatile stochastic daily weather generator (WeaGETS) for producing ...
A semi-parametric stochastic model for generation of daily precipitation amounts, simultaneously at ...
Abstract: This article reviews the historical development of statistical weather models, from simple...
The Richardson model is a popular technique for stochastic simulation of daily weather variables, in...
Weather Generators (WGs) are widely used in water engineering, agriculture, ecosystem and climate ch...
This paper describes a maximum likelihood method using historical weather data to estimate a paramet...
Although General Circulation Models (GCMs) are used to provide insight into scenario planning, ecolo...
We present the logical and algorithmic framework of a numerical model which generates daily interpol...
Abstract. Generated weather that represents alternative realizations of a particular historical reco...
Stochastic weather generators (SWGs) are designed to create simulations of synthetic weather data an...
A nonparametric resampling technique for generating daily weather variables at a site is presented. ...
Considering the importance of preserving spatial correlation between neighboring stations in many of...
A method for creating scenarios of time series of monthly mean surface temperature at a specific sit...
A method for generating daily surfaces of temperature, precipitation, humidity, and radiation over l...
Prepared with the Support of the National Oceanic and Atmospheric Administration, the National Weath...
AbstractThis paper describes a versatile stochastic daily weather generator (WeaGETS) for producing ...
A semi-parametric stochastic model for generation of daily precipitation amounts, simultaneously at ...
Abstract: This article reviews the historical development of statistical weather models, from simple...
The Richardson model is a popular technique for stochastic simulation of daily weather variables, in...
Weather Generators (WGs) are widely used in water engineering, agriculture, ecosystem and climate ch...