MoDyPy (rhymes with "modify") is a Python framework for Modelling dynamic systems in Python. The framework provides methods for describing continuous-time linear and non-linear systems in state-space representation. It was originally inspired by simupy developed by Ben Margolis, but has a completely different philosophy and architecture than simupy.
The basic components of a dynamic system in MoDyPy are states and signals. States represent the internal state of the system, and signals represent the values calculated based on the state. Ports can be connected to signals, so that reusable blocks with input and output ports can be easily built. For more details refer to the documentation or check out the video tutorial.
- Simple architecture based on states, signals and connectible ports
- Enables hierarchical modelling
- Allows the establishment of reusable building blocks
- Simulator for linear and non-linear continuous- and discrete-time systems
- Clock system to model periodic events and discrete-time components
- Steady state determination and linearization
- Library of standard blocks, including 6-degree-of-freedom rigid body motion
- Tested for 100% statement and branch coverage
MoDyPy is available via the pip installer:
$ pip install modypy
To install the development version,
$ git clone https://github.com/modypy/modypy.git
$ pip install -e modypy
Check out the examples in the examples directory and the User's Guide. These include:
- dcmotor.py
- A simple example using a DC-motor driving a propeller and sampling the thrust using a zero-order hold.
- rigidbody.py
- Some rigid-body simulation using moments and forces showing an object moving in a circle with constant velocity and turn-rate.
- bouncing_ball.py
- An example modelling a bouncing ball, demonstrating the use of events and event-handler functions.
- quadcopter_trim.py
- A larger example showcasing the steady-state-determination and linearisation of complex systems, in this case for a quadrocopter frame with four DC-motors with propellers.
They can be run from the sources using, e.g.,
$ pip install matplotlib
$ python examples/bouncing_ball.py
Note that some of the examples require matplotlib
to run and display the
results.
Contributions are welcome! Check out the GitHub Project Page for issues and ideas on how to add to the project.
Contributions must adhere to the following conditions:
- New features must be accompanied by appropriate pytest tests (ensure 100% statement and branch coverage!)
- New features should at least carry Python Docstrings for API documentation following the general style of the existing API documentation.
- Use black with a line-length of 80 to format your code. We are successively moving the project to the black style.
- Contributors must accept publishing their contribution under the licensing
conditions laid out in the
LICENSE
file.