We present four models for predicting temperatures that can be used for pricing weather derivatives. Three of the models have been suggested in previous literature, and we propose another model which uses splines to remove trend and seasonality effects from temperature time series in a flexible way. Using historical temperature data from 35 weather stations across the United States, we test the performance of the models by evaluating virtual heating degree days (HDD) and cooling degree days (CDD) contracts. We find that all models perform better when predicting HDD indices than predicting CDD indices. However, all models based on a daily simulation approach significantly underestimate the variance of the errors
In recent years , weather derivatives have become a common tool in risk management for many sectors....
This study first proposes a temperature model to calculate the temperature indices upon which temper...
Weather influences our daily lives and choices and has an enormous impact on cooperate revenues and ...
We present four models for predicting temperatures that can be used for pricing weather derivatives....
We take a simple time-series approach to modeling and forecasting daily average temperature in U.S. ...
Author's version of an article published in the journal: Energy Economics. Also available from the p...
Temperature-based weather derivatives are written on an index which is normally defined to be a nonl...
We analyze a consistent two-factor model for pricing temperature derivatives that incorporates the f...
Values of weather derivatives depend on weather outcomes, such as temperature or precipitation. Acad...
In usual pricing approaches for weather derivatives, forward-looking information such as meteorologi...
This paper analyzes observed prices of U.S. temperature futures at the Chicago Mercantile Exchange (...
This thesis focuses on developing an appropriate stochastic model for temperature dynamics as a mean...
The main objective of this paper is to present a technique for pricing weather derivatives with payo...
This study aims to construct improved daily air temperature models to obtain more precise index valu...
Abstract The aim of this paper is to design a temperature foresting model which is able to model th...
In recent years , weather derivatives have become a common tool in risk management for many sectors....
This study first proposes a temperature model to calculate the temperature indices upon which temper...
Weather influences our daily lives and choices and has an enormous impact on cooperate revenues and ...
We present four models for predicting temperatures that can be used for pricing weather derivatives....
We take a simple time-series approach to modeling and forecasting daily average temperature in U.S. ...
Author's version of an article published in the journal: Energy Economics. Also available from the p...
Temperature-based weather derivatives are written on an index which is normally defined to be a nonl...
We analyze a consistent two-factor model for pricing temperature derivatives that incorporates the f...
Values of weather derivatives depend on weather outcomes, such as temperature or precipitation. Acad...
In usual pricing approaches for weather derivatives, forward-looking information such as meteorologi...
This paper analyzes observed prices of U.S. temperature futures at the Chicago Mercantile Exchange (...
This thesis focuses on developing an appropriate stochastic model for temperature dynamics as a mean...
The main objective of this paper is to present a technique for pricing weather derivatives with payo...
This study aims to construct improved daily air temperature models to obtain more precise index valu...
Abstract The aim of this paper is to design a temperature foresting model which is able to model th...
In recent years , weather derivatives have become a common tool in risk management for many sectors....
This study first proposes a temperature model to calculate the temperature indices upon which temper...
Weather influences our daily lives and choices and has an enormous impact on cooperate revenues and ...