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David edited this page Feb 5, 2024
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Welcome to the emhass wiki!
This is the roadmap of this project.
The Add-On for Home Assistant OS users is available here: https://github.com/davidusb-geek/emhass-add-on
- Introduce the modeling of constraints during optimization for a thermal energy storage (see Peter Pflaum Thesis: http://www.theses.fr/2017GREAT006).
- Support for EVs (see Peter Pflaum Thesis).
- Support modeling of a heat pump. See: Langer et al paper https://arxiv.org/pdf/2009.02349v2.pdf
- Support V2H and V2G scenarios. See: https://www.sciencedirect.com/science/article/pii/S0306261921014586#s0010
- Add elasticity to LP formulation in case on infeasible solution.
-
Support for functioning hour period for each deferrable load. - Let the user choose the type of mount: TEMPERATURE_MODEL_PARAMETERS['sapm']
- Add constraint to limit the number of battery cycles
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Add additional weights to cost functions -
Create a plotting script to visualize the optimization results. -
Propose multiple types of cost functions: profit maximization, self-consumption maximization, etc -
Integrate the possibility of variable tariffs, for purshasing and selling energy to the grid. -
Support for list of inverters, see: get_power_from_weather in forecast class. -
Implement an energy management with a Model Predictive Control approach. Consider implementing the receiding horizon approach. -
Add total energy constraint for each deferrable load. -
Battery SOC should be an input. For now only SOCinit=SOCend simulations are implemented -
Add a web server app to run the complete module. This will be the webserver used in the add-on. Separate usage in standalone mode in docker container or in HA add-on mode. -
Add simple graphics explaining what is this? -
Expand use case, add battery, test EV as battery with P_discharge=0 -
Allow custom names in published data
- Change to
cvxpy
instead ofpulp
. It is more efficient and better maintained, support more functionalities and allows for direct matrix modeling. - Refactor the webui, switch to
streamlit
.
-
Define the type of forecast that should be used from the configuration file. -
Move get_load_unit_cost from optimization to forecast class: define forecast methods for load and PV production prices. -
Add simple integration of current/now values for PV and load forecast. This is important for MPC applications with high optimization frequencies. The new forecast can be computed using a mixed one-observation presistnace model and the forecasted values from the current method. This can be the equation for this: $P^{mix}{PV} = \alpha \hat{P}{PV}(k) + \beta P_{PV}(k-1)$ -
Test with LTSM with or without Autoencoders.This was tested usingdarts
andpycaret
, but in the end these modules dependencies are too complex to handles and the resulting containers are too big in size (GB's!). -
Improve load forecasting using a time series forecast algorithm. Some tests were made with fbprophet but results are not completly satisfactory. The model needs some regressors for more accuracy.
-
EMHASS hass been tested in Home Assistant Core. It need to be tested on Home Assistant Operating System and Home Assistant Container. -
Create an EMHASS add-on for even easier installation on Home Assistant Operating System and Home Assistant Supervised. -
Improve testing to be used with no running hass instance. -
Package everything in a docker container. -
Package as a docker container with a new Dockerfile simpler than in the add-on