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− | This page grew out of the [https://docs.google.com/document/d/1xmZbse_Vy04i8q7Ws-fyZ1GdWlvDd3Bd58D0wOJTayI/edit Hydro Modelling Breakout Group] at the [[Open_Energy_Modelling_Workshop_-_London_2015|3rd openmod workshop]] in London, 2015. | + | This page grew out of the [https://docs.google.com/document/d/1xmZbse_Vy04i8q7Ws-fyZ1GdWlvDd3Bd58D0wOJTayI/edit Hydro Modelling Breakout Group] at the [[Open Energy Modelling Workshop - London 2015|3rd openmod workshop]] in London, 2015. |
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| = Introduction = | | = Introduction = |
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| *Modelling inflow from weather data is non-trivial: need to model precipitation, runoff, evaporation, snow melt, etc. | | *Modelling inflow from weather data is non-trivial: need to model precipitation, runoff, evaporation, snow melt, etc. |
| *Water in resevoirs is tapped for other purposes, e.g. irrigation. | | *Water in resevoirs is tapped for other purposes, e.g. irrigation. |
− | *There are other constraints, such as maintaining navigability on rivers, etc. | + | *There are other constraints, such as maintaining navigability on rivers, fish ladders, water levels for recreation, etc. |
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| = Hydroelectric modelling = | | = Hydroelectric modelling = |
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| == Desired data for power plants == | | == Desired data for power plants == |
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− | *Power plant type (run of river, pumped storage, storage dam) | + | *Plant type (run of river, pumped storage, storage dam) |
− | *Power dispatch capacity (MW) | + | *Dispatch capacity (MW) |
− | *Power pumping capacity (if present) (MW) | + | *Pumping capacity (if present) (MW) |
| *Storage capacity (litres or MWh) | | *Storage capacity (litres or MWh) |
| *(head) Height of reservoir (m) | | *(head) Height of reservoir (m) |
| *Type of inflow | | *Type of inflow |
| + | *Inflow time series |
| *Legal restrictions on flow levels (maintaining enough water for nature) | | *Legal restrictions on flow levels (maintaining enough water for nature) |
| *minimal resevoir level | | *minimal resevoir level |
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| == European datasets == | | == European datasets == |
| + | |
| + | === Eurelectric statistics === |
| + | |
| + | http://www.eurelectric.org/powerstats2013/ |
| + | |
| + | http://www.eurelectric.org/hydro-factsheets |
| + | |
| + | === Renpass for Norway and Germany === |
| + | |
| + | http://renpass.eu/files/public-docs/renpass_installation/ |
| + | |
| + | SQL database of hydroelectric power plants (storage and run of river) in Norway and Germany. |
| + | |
| + | |
| + | === Swiss data === |
| + | |
| + | |
| + | Swiss Federal Office of Energy: |
| + | Yearly Hydropower statistic for Switzerland: |
| + | |
| + | http://www.bfe.admin.ch/themen/00490/00491/index.html?lang=en&dossier_id=01049 |
| + | |
| + | Geographic information on Hydropower in Switzerland: |
| + | |
| + | http://www.bfe-gis.admin.ch/storymaps/WK_WASTA/index.php?lang=de |
| + | |
| + | Swiss Federal Office of Environment Runoff data for Switzerland: |
| + | |
| + | http://www.bafu.admin.ch/wasser/13462/13496/15016/index.html?lang=en |
| | | |
| = Hydroelectric inflow time series data = | | = Hydroelectric inflow time series data = |
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− | == Introduction == | + | == Deriving time series from weather data == |
| | | |
− | == Deriving time series from first principles ==
| + | Inflow time series can in principle be derived if precipitation, run-off, temperature for snow melt, transpiration, ground height and orientation, and other water uses are all known. |
| | | |
− | == European datasets == | + | Reanalysis datasets such as the [http://rda.ucar.edu/datasets/ds094.1/ CFSR] contain data on |
| + | runoff, precipitable water, precipitation rate. |
| + | |
| + | == Global datasets == |
| + | |
| + | === Global Runoff Data Centre === |
| + | |
| + | The [http://www.bafg.de/GRDC/EN/Home/homepage_node.html Global Runoff Data Centre (GRDC)] has |
| + | measured daily average discharge data for 7362 measurement stations worldwide. |
| + | |
| + | Used in [http://elib.dlr.de/77976/ Yvonne Scholz PhD thesis], 2012. |
| + | |
| + | |
| + | === WaterGAP === |
| + | |
| + | |
| + | Global water resource modelling at high spatial/temporal resolution. |
| + | |
| + | http://www.eea.europa.eu/data-and-maps/data/external/input-data-to-watergap-model-4 |
| + | |
| + | https://www.uni-frankfurt.de/45218063/WaterGAP |
| + | |
| + | Used in Gregor Czisch PhD thesis, 2006. |
Revision as of 14:43, 2 February 2016
This page grew out of the Hydro Modelling Breakout Group at the 3rd openmod workshop in London, 2015.
Introduction
Hydroelectricity is still the dominant source of renewable electricity in many countries (around 17% share of European electricity, if you include Norway and Switzerland).
Technically it can be very flexible and smooth out variable production of wind and solar, so for future scenarios with high RES, it’s important to get right.
For market models hydro in the Alps and Scandinavia can have a big influence on market prices, which is hard to capture.
There are different types of hydroelectric plants:
- Run-of-river plants with little storage
- Storage dams with inflow
- Pumped storage
- Mixed variants (e.g. storage dams with inflow and pumping)
Hydroelectricity modelling is complicated by several factors:
- Although it has low marginal cost, the storage allows dispatch to be time-shifted, which makes optimal dispatch strategies complicated
- Plants on rivers can be chained, so that the inflow depends on the output of power plants upstream
- Hydro availability varies year-by-year (e.g. there are dry and wet years in Scandinavia)
- Modelling inflow from weather data is non-trivial: need to model precipitation, runoff, evaporation, snow melt, etc.
- Water in resevoirs is tapped for other purposes, e.g. irrigation.
- There are other constraints, such as maintaining navigability on rivers, fish ladders, water levels for recreation, etc.
Hydroelectric modelling
In a linear programming setup, hydroelectric dams can be modelled as storage units with state of charge limits, set inflow, controllable spillage and optional pumping.
The chaining of run-of-river plants, multiple turbines fed from the same reservoir, can all be modelled too.
More detail can be found in books such as
A. J. Wood, B. F. Wollenberg, and G. B. Sheblé, "Power Generation, Operation and Control," New York: John Wiley & Sons, Third Edition, 2014.
Hydroelectric power plant static data
Desired data for power plants
- Plant type (run of river, pumped storage, storage dam)
- Dispatch capacity (MW)
- Pumping capacity (if present) (MW)
- Storage capacity (litres or MWh)
- (head) Height of reservoir (m)
- Type of inflow
- Inflow time series
- Legal restrictions on flow levels (maintaining enough water for nature)
- minimal resevoir level
- (black start reserves - capacity reserves)
- Pumped storage efficiency
- Chaining run-of-river
- Some reservoirs have several outlets
European datasets
Eurelectric statistics
http://www.eurelectric.org/powerstats2013/
http://www.eurelectric.org/hydro-factsheets
Renpass for Norway and Germany
http://renpass.eu/files/public-docs/renpass_installation/
SQL database of hydroelectric power plants (storage and run of river) in Norway and Germany.
Swiss data
Swiss Federal Office of Energy:
Yearly Hydropower statistic for Switzerland:
http://www.bfe.admin.ch/themen/00490/00491/index.html?lang=en&dossier_id=01049
Geographic information on Hydropower in Switzerland:
http://www.bfe-gis.admin.ch/storymaps/WK_WASTA/index.php?lang=de
Swiss Federal Office of Environment Runoff data for Switzerland:
http://www.bafu.admin.ch/wasser/13462/13496/15016/index.html?lang=en
Hydroelectric inflow time series data
Deriving time series from weather data
Inflow time series can in principle be derived if precipitation, run-off, temperature for snow melt, transpiration, ground height and orientation, and other water uses are all known.
Reanalysis datasets such as the CFSR contain data on
runoff, precipitable water, precipitation rate.
Global datasets
Global Runoff Data Centre
The Global Runoff Data Centre (GRDC) has
measured daily average discharge data for 7362 measurement stations worldwide.
Used in Yvonne Scholz PhD thesis, 2012.
WaterGAP
Global water resource modelling at high spatial/temporal resolution.
http://www.eea.europa.eu/data-and-maps/data/external/input-data-to-watergap-model-4
https://www.uni-frankfurt.de/45218063/WaterGAP
Used in Gregor Czisch PhD thesis, 2006.