Skip to main content

LUP Student Papers

LUND UNIVERSITY LIBRARIES

Optimisation of Run of River Production Forecasting Using Aiolos Forecast Studio

Al-Qes, Amer LU (2020) In TVVRR20/5012 VVRM01 20201
Division of Water Resources Engineering
Abstract
Hydropower is simply the largest source of renewable energy in the Nordic countries, where It compose around 90% of power production in Iceland, 70% in Norway, 40% in Sweden and 20% in Finland. Mountainous terrain and abundance in the surface water is a significant contributing factor in hydropower production. Hydropower is also considered more reliable and continuous than other forms of renewable energy such as solar and wind. In deregulated power markets where large magnitudes of power are bid for and traded continuously, smart trading and accurate power production forecasts give the advantage to the companies participating in the bids. Aiolos Forecast Studio (AFS) is computer software that provides numerous services in power production... (More)
Hydropower is simply the largest source of renewable energy in the Nordic countries, where It compose around 90% of power production in Iceland, 70% in Norway, 40% in Sweden and 20% in Finland. Mountainous terrain and abundance in the surface water is a significant contributing factor in hydropower production. Hydropower is also considered more reliable and continuous than other forms of renewable energy such as solar and wind. In deregulated power markets where large magnitudes of power are bid for and traded continuously, smart trading and accurate power production forecasts give the advantage to the companies participating in the bids. Aiolos Forecast Studio (AFS) is computer software that provides numerous services in power production forecasting; including hydropower production, which is forecasted by the Achelous model. Several power companies currently use this computer software, one of which is Fortum where it forecasts the power production of Småkraft’s hydropower stations. This Report explains how AFS forecasts hydropower as well as the shortcomings and possible improvements; also, it introduces the calibration procedure to the models to achiever better forecast accuracy. The Report starts with a comprehensive understanding of the model, the Nordic power market and the Hydropower stations taken as a case study; leading to the development of a recalibration procedure based on the understanding of the Achelous model and the nature of the watersheds. Seven hydropower stations were used for developing a calibration procedure, where two were used for calibration and five for validation. This study involved developing an excel sheet that analysis the accuracy of the forecasts to interpret the model forecasts results; forecasts of power production, runoff, snow cover and precipitation were compared for the year of 2019 with actual data using the excel sheet. By interpreting the statistical analysis results, several shortcomings of the model were highlighted that cause a decrease in the forecast accuracy. Most significant of which is the overestimation of the precipitation forecasts. Overall, the program showed promising results when compared with the previous method used for production forecasting, where it showed higher accuracies for all the seven power plants taken in the case study. (Less)
Popular Abstract
Smart power production forecasts give an advantage to the participants in the competitive daily bidding procedure. Aiolos Forecast Studio is computer software that forecasts power production and consumptions, which serves as a powerful tool for bidding and management.
Please use this url to cite or link to this publication:
author
Al-Qes, Amer LU
supervisor
organization
course
VVRM01 20201
year
type
H2 - Master's Degree (Two Years)
subject
keywords
Run of river hydropower plants, power production forecasting, Aiolos forecast studio, model accuracy assessment analysis and power market.
publication/series
TVVRR20/5012
report number
20/5012
ISSN
1101-9824
language
English
additional info
Examiner: Cintia Bertacchi Uvo
id
9020357
date added to LUP
2020-06-22 08:59:25
date last changed
2020-06-22 08:59:25
@misc{9020357,
  abstract     = {{Hydropower is simply the largest source of renewable energy in the Nordic countries, where It compose around 90% of power production in Iceland, 70% in Norway, 40% in Sweden and 20% in Finland. Mountainous terrain and abundance in the surface water is a significant contributing factor in hydropower production. Hydropower is also considered more reliable and continuous than other forms of renewable energy such as solar and wind. In deregulated power markets where large magnitudes of power are bid for and traded continuously, smart trading and accurate power production forecasts give the advantage to the companies participating in the bids. Aiolos Forecast Studio (AFS) is computer software that provides numerous services in power production forecasting; including hydropower production, which is forecasted by the Achelous model. Several power companies currently use this computer software, one of which is Fortum where it forecasts the power production of Småkraft’s hydropower stations. This Report explains how AFS forecasts hydropower as well as the shortcomings and possible improvements; also, it introduces the calibration procedure to the models to achiever better forecast accuracy. The Report starts with a comprehensive understanding of the model, the Nordic power market and the Hydropower stations taken as a case study; leading to the development of a recalibration procedure based on the understanding of the Achelous model and the nature of the watersheds. Seven hydropower stations were used for developing a calibration procedure, where two were used for calibration and five for validation. This study involved developing an excel sheet that analysis the accuracy of the forecasts to interpret the model forecasts results; forecasts of power production, runoff, snow cover and precipitation were compared for the year of 2019 with actual data using the excel sheet. By interpreting the statistical analysis results, several shortcomings of the model were highlighted that cause a decrease in the forecast accuracy. Most significant of which is the overestimation of the precipitation forecasts. Overall, the program showed promising results when compared with the previous method used for production forecasting, where it showed higher accuracies for all the seven power plants taken in the case study.}},
  author       = {{Al-Qes, Amer}},
  issn         = {{1101-9824}},
  language     = {{eng}},
  note         = {{Student Paper}},
  series       = {{TVVRR20/5012}},
  title        = {{Optimisation of Run of River Production Forecasting Using Aiolos Forecast Studio}},
  year         = {{2020}},
}