|
|
Line 21: |
Line 21: |
| |processing_software=PostgreSQL, Ethereum | | |processing_software=PostgreSQL, Ethereum |
| |External optimizer=Gurobi, CPLEX, GLPK | | |External optimizer=Gurobi, CPLEX, GLPK |
− | |Additional software=PostgreSQL, Ethereum | + | |Additional software=PyCharm, PostgreSQL, Ethereum |
| |GUI=No | | |GUI=No |
| |model_class=agent-based simulation | | |model_class=agent-based simulation |
Line 37: |
Line 37: |
| |is_suited_for_many_scenarios=No | | |is_suited_for_many_scenarios=No |
| |montecarlo=Yes | | |montecarlo=Yes |
| + | |computation_time_minutes=10 |
| + | |computation_time_hardware=CPU: Intel Core i7-8550U, SSD: Samsung 3000MB/s read, 1800 MB/s write |
| + | |computation_time_comments=50 prosumers, one day |
| |Model input file format=No | | |Model input file format=No |
| |Model file format=No | | |Model file format=No |
| |Model output file format=No | | |Model output file format=No |
| }} | | }} |
Model Scope |
Model type and solution approach |
Model class
|
agent-based simulation
|
Sectors
|
local energy markets
|
Technologies
|
Renewables, Conventional Generation, CHP
|
Decisions
|
|
Regions
|
|
Geographic Resolution
|
|
Time resolution
|
|
Network coverage
|
|
|
Model type
|
Simulation, Agent-based
|
|
Agents: intertemporal convex optimization
Markets: (iterative) double-sided auctions, p2p clearing
Forecasting: naive, deterministic forecasting, neural networks
|
Variables
|
|
Computation time
|
10 minutes (50 prosumers, one day)
|
Objective
|
|
Uncertainty modeling
|
perfect forecast, deterministic, stochastic
|
Suited for many scenarios / monte-carlo
|
No
|
|