Understanding Time Slices in Energy Modelling

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Time slices are representative time periods used in long-term energy system models to capture temporal variations in supply and demand, considering factors like seasonality and peak load requirements. Dividing each year into slices helps in detailed analysis with minimal computational cost and efficient representation of data for electricity demand and water resources.


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  1. Basics of energy modelling III: Time representation and considerations CLEWS Summer School, ICTP (Trieste), Italy, 13 June, 2017

  2. Time representation Long-term energy system models: Span a large time horizon (e.g. 2015 2050) Consider a large set of technologies Span a large geographical region (e.g. USA, Africa, Europe, China) Need to capture temporal variations: Variability of supply (e.g. wind, solar, hydro) Variability of demand (e.g. seasonal, monthly, weekly, daily) Peak load requirements Trade-off between level of detail and computational cost

  3. What are Time Slices? Each year divided into representative time periods known as Time Slices: (Summer-Winter-Intermediate) x (Day- Night) = 6 Time Slices (Jan-Feb-Mar- -Dec) x (Weekday- Weekend) x (Day-Night) = 48 Time Slices (365 days) x (24 hours) = 8760 Time Slices Number of Time Slices in OSeMOSYS is practically unlimited Time Slice definition is consistently applied for the entire model Electricity demand Water resources 0 8760

  4. Example of Time Slice definition Model horizon Annual 2017 2050 Seasonal Weekly Daily Source: R. Loulou, U. Remne, A. Kanudia, A. Lehtila, and G. Goldstein. Documentation for the TIMES model: Part I. ETSAP, April 2005

  5. Time Slice-related parameters Year Split: Duration of each Time Slice as a fraction of a year Capacity Factor: Fraction of a technology s capacity that can be utilized in each Time Slice Specified Annual Demand*: Fraction of annual demand for a commodity in a each Time Slice *Accumulated Annual Demand: Total annual demand for a commodity. Can be balanced in any Time Slice.

  6. Time Slice Definition (Example of Bolivia)

  7. Time Slice Definition (Example cont.) Year divided in four Seasons 1. Season 1: 1st January to 30th April 2. Season 2: 1st May to 31st August 3. Season 3: 1st September to 30th November 4. Season 4: 1st December to 31st December

  8. Time Slice Definition (Example cont.) Season 1 Season 2

  9. Time Slice Definition (Example cont.) Season 3 Season 4

  10. Time Slice Definition: Exercise 1 01:00-07:00 6 hours 07:00-18:00 11 hours 18:00-22:00 4 hours 22:00-01:00 3 hours Seasons Season 1 (Jan-Apr) ? ? ? ? Season 2 (May-Aug) ? ? ? ? Season 3 (Sep-Nov) ? ? ? ? Season 4 (Dec) ? ? ? ?

  11. Time Slice Definition: Exercise 1 Time (duration) 01:00-07:00 07:00-18:00 18:00-22:00 22:00-01:00 Total = 24 hours 6 hours 11 hours 4 hours 3 hours Season 1 (Jan-Apr) 120 days 0.08219 0.15068 0.05479 0.04110 Season 2 (May-Aug) 123 days 0.08425 0.15445 0.05616 0.04212 Season 3 (Sep-Nov) 91 days 0.06233 0.11427 0.04155 0.03116 Season 4 (Dec) 31 days 0.02123 0.03893 0.01416 0.01062 Total = 365 days Total = 8760 hours

  12. Exercise 2: Earlier example, with TimeSlices NOTE: SpecifiedAnnualDemand instead of AccumulatedAnnualDemand YearSplit Day Night 18:00-6:00 12 hours 0.1667 0.1667 0.1667 6:00-18:00 12 hours 0.1667 0.1667 0.1667 Summer Winter Intermediate 4 months 4 months 4 months SpecifiedDemandProfile Day 7:00-19:00 19:00-7:00 12 hours 0.15 0.5 0.15 Night 12 hours Summer Winter Intermediate 4 months 4 months 4 months 0.05 0.1 0.05

  13. Exercise 2: Earlier example, with TimeSlices

  14. Exercise 2: YearSplit

  15. Exercise 2: SpecifiedAnnualDemand

  16. Exercise 2: SpecifiedDemandProfile

  17. Exercise 2: Demand

  18. Exercise 2: Results

  19. Exercise 2: Results

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