* feat: add inverter AC/DC efficiency and break-even penalty * test: update tests/test_geneticoptimize.py with new ac_charge_break_even parameter * docs: update documentation * chore: update version numbers in configuration files to v0.2.0.dev2602272006923535
17 KiB
% SPDX-License-Identifier: Apache-2.0
Automatic Optimization
Introduction
EOS offers two approaches to optimize your energy management system: post /optimize optimization and
automatic optimization.
The post /optimize optimization interface, based on a POST request to /optimize, is widely
used. It was originally developed by Andreas at the start of the project and is still demonstrated
in his instructional videos. This interface allows users or external systems to trigger an
optimization manually, supplying custom parameters and timing.
As an alternative, EOS supports automatic optimization, which runs automatically at configured
intervals. It retrieves all required input data — including electricity prices, battery storage
capacity, PV production forecasts, and temperature data — based on your system configuration.
Genetic Algorithm
Both optimization modes use the same core optimization engine.
EOS uses a genetic algorithm to find an optimal control strategy for home energy devices such as household loads, batteries, and electric vehicles.
In this context, each individual represents a possible solution — a specific control schedule that defines how devices should operate over time. These individuals are evaluated using resource simulations, which model the system’s energy behavior over a defined time period divided into fixed intervals.
The quality of each solution (its fitness) is determined by how well it performs during simulation, based on objectives such as minimizing electricity costs, maximizing self-consumption, or meeting battery charge targets.
Through an iterative process of selection, crossover, and mutation, the algorithm gradually evolves more effective solutions. The final result is an optimized control strategy that balances multiple system goals within the constraints of the input data and configuration.
:::{admonition} Note :class: note You don’t need to understand the internal workings of the genetic algorithm to benefit from automatic optimization. EOS handles everything behind the scenes based on your configuration. However, advanced users can fine-tune the optimization behavior using additional settings like population size, penalties, and random seed. :::
Energy Management Plan
Whenever the optimization is run, the energy management plan is updated. The energy management plan provides a list of energy management instructions in chronological order. The instructions lean on to the S2 standard to have maximum flexibility and stay completely independent from any manufacturer.
Battery Instructions
The battery control instructions assume an idealized battery model. Under this model, the battery can be operated in four discrete operation modes:
| Operation Mode ID | Description |
|---|---|
| IDLE | Battery neither charges nor discharges; holds its state of charge. |
| CHARGE | Charge at a specified power rate up to the allowable maximum. |
| DISCHARGE | Discharge at a specified power rate up to the allowable maximum. |
| ALLOW_DISCHARGE | Allow the battery to freely discharge depending on its instantaneous power setpoint. |
The operation mode factor (0.0–1.0) specifies the normalized power rate relative to the battery's nominal maximum charge or discharge power. A value of 1.0 corresponds to full-rate charging or discharging, while 0.0 indicates no power transfer. Intermediate values scale the power proportionally.
Electric Vehicle Instructions
The electric vehicle control instructions assume an idealized EV battery model. Under this model, the EV battery can be operated in two operation modes:
| Operation Mode ID | Description |
|---|---|
| IDLE | Battery neither charges nor discharges; holds its state of charge. |
| CHARGE | Charge at a specified power rate up to the allowable maximum. |
The operation mode factor (0.0–1.0) specifies the normalized power rate relative to the battery's nominal maximum charge power. A value of 1.0 corresponds to full-rate charging, while 0.0 indicates no power transfer. Intermediate values scale the power proportionally.
Home Appliance Instructions
The home appliance instructions assume an idealized home appliance model. Under this model, the home appliance can be operated in two operation modes:
| Operation Mode ID | Description |
|---|---|
| RUN | The home appliance is started and runs until the end of it's power sequence. |
| IDLE | The home appliance does not run. |
The operation mode factor (0.0–1.0) is ignored.
Configuration
Energy management configuration
The energy management is run on configured intervals with some startup delay after server start. Both values are given in seconds.
:::{admonition} Note
:class: note
If no interval is configured (None, null) there will be only one energy management run at
startup.
:::
The energy management can be run in two modes:
- OPTIMIZATION: A full optimization is done. This includes update of predictions.
- PREDICTION: Only the predictions are updated.
Example:
{
"ems": {
"startup_delay": 5.0,
"interval": 300.0,
"mode": "OPTIMIZATION"
}
}
Optimization Configuration
Optimization Time Configuration
-
horizon_hours: The optimization horizon parameter defines the default time window — in hours — within which the energy optimization goal shall be achieved.
Specific devices, like the home appliance, have their own configuration for time windows. If the time windows are not configured the simulation uses the default time window.
Each device simulation run must ensure that all tasks or appliance cycles (e.g., running a dishwasher) are completed within the configured time windows.
-
interval: Defines the time step in seconds between control actions (e.g.
3600for one hour,900for 15 minutes).
:::{warning} Current Limitation
At present, the interval setting is not used by the genetic algorithm. Instead:
- The control interval is fixed to 1 hour.
Support for configurable intervals (e.g. 15-minute steps) may be added in a future release. :::
Genetic Algorithm Parameters
The behavior of the genetic algorithm can be customized using the following configuration options:
-
individuals (
int, default:300): Sets the number of individuals (candidate solutions) in the (first) generation. A higher number increases solution diversity and the chance of finding a good result, but also increases computation time. -
generations (
int, default:400): Sets the number of generations to evaluate the optimal solution. In each generation, solutions are evaluated and evolved. More generations can improve optimization quality but increase computation time. Best results are usually found within a moderate number of generations. -
seed (
intornull, default:null): Sets the random seed for reproducible results.-
If
null, a random seed is used (non-reproducible). -
If an integer is provided, it ensures that the same optimization input yields the same output.
A fixed seed to ensure reproducibility. Runs with the same seed and configuration will produce the same results.
-
-
penalties (
dict): Defines how penalties are applied to solutions that violate constraints (e.g., undercharged batteries). Penalty function parameter values influence the fitness score, discouraging undesirable solutions.
:::{note} Supported Penalty Functions
-
ev_soc_miss: Applies a penalty when the state of charge (SOC) of the electric vehicle battery falls below the required minimum. This encourages the optimizer to ensure sufficient EV charging. Default:10. -
ac_charge_break_even: Applies a penalty for each scheduled AC grid-charging hour where the round-trip losses (AC→DC inverter, battery internal, DC→AC inverter) mean the stored energy can never be discharged at a price that recovers the charging cost. Energy already stored in the battery from PV generation is treated as free and covers the most expensive future hours first, so the penalty only fires for the hours that remain genuinely uncovered.A value of
1.0(default) means the penalty equals the actual economic loss in €. Use larger values (e.g.3.0) to make the optimizer more aggressively avoid unprofitable AC charging, or0.0to disable this penalty entirely. :::
Value Formats
-
Time-related values:
hours: specified in hours (e.g.24)interval: specified in seconds (e.g.3600)
-
Genetic algorithm parameters:
individuals: must be an integerseed: must be an integer ornullfor random behavior
-
Penalty function parameter values: may be
float,int, orstring, depending on the type of penalty function.
Optimization configuration example
{
"optimization": {
"hours": 24,
"interval": 3600,
"genetic" : {
"individuals": 300,
"generations": 400,
"seed": null,
"penalties": {
"ev_soc_miss": 10,
"ac_charge_break_even": 1.0
}
}
}
}
Device simulation configuration
The device simulations are used to evaluate the fitness of the individuals of the solution population.
The GENETIC algorithm supports 4 devices:
- inverter: A photovoltaic power inverter that can export to the grid and charge a battery. The inverter is mandatory.
- electric_vehicle: An electric vehicle, basically the battery of an electric vehicle. The The electrical vehicle is optional.
- battery: A battery that can be charged by the inverter. The battery is mandatory.
- home_appliance: A home appliance, like a washing machine or a dish washer. The home appliance is optional.
:::{admonition} Warning :class: warning The GENETIC algorithm can only use the first inverter, electrical vehicle, battery, home appliance that is configured, even if more devices are configured. :::
Inverter simulation configuration
Example:
{
"devices": {
"max_inverters": 1,
"inverters": [
{
"device_id": "inv1",
"max_power_w": 10000,
"battery_id": "bat1",
"ac_to_dc_efficiency": 0.95,
"dc_to_ac_efficiency": 0.95,
"max_ac_charge_power_w": 5000
}
]
}
}
The inverter supports separate AC↔DC conversion efficiencies:
ac_to_dc_efficiency: Conversion loss when charging the battery from AC grid power (0-1). Set to0to disable AC charging. Default1.0.dc_to_ac_efficiency: Conversion loss when discharging battery to AC load/grid (0-1). Must be > 0. Default1.0.max_ac_charge_power_w: Maximum AC charging power in watts.null= no additional limit. Set to0to disable AC charging. Defaultnull.
Electric vehicle simulation configuration
Example:
{
"devices": {
"max_electric_vehicles": 1,
"electric_vehicles": [
{
"device_id": "ev1",
"capacity_wh": 50000,
"max_charge_power_w": 10000,
"charge_rates": [0.0, 0.25, 0.5, 0.75, 1.0],
"min_soc_percentage": 10,
"max_soc_percentage": 80
}
]
},
"measurement": {
"electric_vehicle_soc_keys": ["ev1_soc"]
}
}
Battery simulation configuration
Example:
{
"devices": {
"max_batteries": 1,
"batteries": [
{
"device_id": "battery1",
"capacity_wh": 8000,
"charging_efficiency": 0.88,
"discharging_efficiency": 0.88,
"levelized_cost_of_storage_kwh": 0.12,
"max_charge_power_w": 8000,
"min_charge_power_w": 50,
"charge_rates": null,
"min_soc_percentage": 5,
"max_soc_percentage": 95
}
]
}
}
Home appliance simulation configuration
Example:
{
"devices": {
"max_home_appliances": 1,
"home_appliances": [
{
"device_id": "washing machine",
"consumption_wh": 600,
"duration_h": 3,
"time_windows": null,
}
]
}
}
The time windows the home appliance may run can be configured in several ways. See the time window configuration for details.
Predictions configuration
The device simulation may rely on predictions to simulate proper behaviour. E.g. the inverter needs to know the PV forecast.
Configure the predictions as described on the prediction page.
Providing your own prediction data
If EOS does not have a suitable prediction provider you can provide your own data for a prediction. Configure the respective import provider (ElecPriceImport, LoadImport, PVForecastImport, WeatherImport) and use one of the following endpoints to provide your own data:
- PUT
/v1/prediction/import/ElecPriceImport - PUT
/v1/prediction/import/LoadImport - PUT
/v1/prediction/import/PVForecastImport - PUT
/v1/prediction/import/WeatherImport
Measurement configuration
Predictions and device simulations often rely on measurement data to produce accurate results. For example:
- A load forecast requires past energy meter readings.
- A battery simulation needs the current state of charge (SoC) to start from the correct condition.
Before using these features, make sure to configure the measurement as described on the measurement page.
Providing your own measurement data
You can provide your own measurement data to the prediction and simulation engine through the following REST endpoints (see the measurement page for details on the data format):
- PUT
/v1/measurement/data - PUT
/v1/measurement/dataframe - PUT
/v1/measurement/series - PUT
/v1/measurement/value
Example: Supplying Battery and EV SoC
For batteries and electric vehicles, it is strongly recommended to provide current SoC. This ensures that simulations start with the correct state.
The simplest way is to use the /v1/measurement/value endpoint.
Assuming the battery is named battery1 and the EV is named ev11:
-
Use the measurement keys that are pre-configured for your devices. For example:
{ "devices": { "batteries": [ { "device_id": "battery1", "capacity_wh": 8000, ... "measurement_key_soc_factor": "battery1-soc-factor", ... } ], "electric_vehicles": [ { "device_id": "ev11", "capacity_wh": 8000, ... "measurement_key_soc_factor": "ev11-soc-factor", ... } ] } } -
Record your SoC readings to these keys.
- Enter the values as factor of total capacity of the respective battery.
In these examples:
- datetime specifies the timestamp of the measurement.
- key is the measurement key (e.g. battery1-soc-factor).
- value is the numeric measurement value (e.g. SoC as factor of total capacity).
Raw HTTP request
PUT http://127.0.0.1:8503/v1/measurement/value?datetime=2025-09-26T16%3A39&key=battery1-soc-factor&value=0.57
PUT http://127.0.0.1:8503/v1/measurement/value?datetime=2025-09-26T16%3A39&key=ev11-soc-factor&value=0.22
Equivalent curl commands
curl -X PUT "http://127.0.0.1:8503/v1/measurement/value?datetime=2025-09-26T16%3A39&key=battery1-soc-factor&value=0.57"
curl -X PUT "http://127.0.0.1:8503/v1/measurement/value?datetime=2025-09-26T16%3A39&key=ev11-soc-factor&value=0.22"
Example: Supplying Load Data
To provide your actual load measurements in Akkudoktor-EOS:
-
Configure the measurement keys for your load energy meters. For example:
{ "measurements": { "load_emr_keys": ["my_load_meter_reading", "my_other_load_meter_reading"] } } -
Record your meter readings to these keys.
- Enter the values exactly as your energy meters report them, in kWh.
- Use the same approach as when supplying battery or EV SoC data.