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PID-Analyzer 0.52 changes:

  • Fixed the noise plot ranges for better visual comparability with option for custom or auto range
  • slight change to s/n in deconvolution: Gaussian instead of digital s/n

PID-Analyzer

This program reads Betaflight blackbox logs and calculates the PID step response. It is made as a tool for a more systematic approach to PID tuning.

The step response is a characteristic measure for PID performance and often referred to in tuning techniques. For more details read: https://en.wikipedia.org/wiki/PID_controller#Manual_tuning The program is Python based but utilizes Blackbox_decode.exe from blackbox_tools (https://github.com/cleanflight/blackbox-tools) to read logfiles.

As an example: This was the BF 3.15 stock tune (including D Setpoint weight) on my 2.5" CS110: stock tune

This a nice tune I came up with after some testing: good tune

You can even use angle mode, the result should be the same! The program calculates the system response from input (PID loop input = What the quad should do) and output (Gyro = The quad does). Mathematically this is called deconvolution, which is the invers to convolution: Input * Response = Output. A 0.5s long response is calculated from a 1.5s long windowed region of interest. The window is shifted roughly 0.2s to calculate each next response. From a mathematical point of view this is necessary, but makes each momentary response correspond to an interval of roughly +-0.75s.

Any external input (by forced movement like wind) will result in an incomplete system and thus in a corrupted response. Based on RC-input and quality the momentary response functions are weighted to reduces the impact of corruptions. Due to statistics, more data (longer logs) will further improve reliability of the result.

If D Setpoint Transition is set in Betaflight, your tune and thus the response will differ for high RC-inputs. This fact is respected by calculating separate responses for inputs above and below 500 deg/s. With just moderate input, you will get one result, if you also do flips there will be two.

Keep in mind that if you go crazy on the throttle it will cause more distortion. If throttle-PID-attenuation (TPA) is set in Betaflight there will be a different response caused by a dynamically lower P. This is the reason why the throttle and TPA threshold is additionally plotted.

The whole thing is still under development and results/input of different and more experienced pilots will be appreciated!

Requirements

To install required Python libraries, view the list of packages in requirements.txt or simply run:

sudo apt-get install python3-pip python3-tk
sudo pip3 install -r requirements.txt

How to use this program:

  1. Record your log. Logs of 20s seem to give sufficient statistics. If it's slightly windy, longer logs can still give reasonable results. You can record multiple logs in one session: Each entry will yield a seperate plot.
  2. Place your logfiles, blackbox_decode.exe (Windows download) and PID-Analyzer.exe (Windows download) in the same folder. You can also specify where to find these executables via command-line flags.
  3. Run PID-Analyzer.exe (this takes some seconds, it sets up a complete virtual python environment). Either interactively enter your .BBL files (drop one or more logs into cmd), or pass your .BBL file(s) via flags, like PID-Analyzer --log one.BBL --log two.BBL directly when run in cli mode.
  4. The logs are separated into temp files, read, analyzed and temp files deleted again.
  5. A plot window opens and a .png image is saved automatically in the folder correspoding to you entered name (default is \tmp).

The windows executable includes a virtual python environment and only requires you to drag and drop your Betaflight blackbox logfile into the cmd window.

In case of problems (if the cmd closes for example), please report including the log file.

Tested on Win7/10 and MacOS 10.10, with 3.15/3.2/3.3 logs.

Happy tuning,

Flo

Changes in this fork

  • project restructured from monolithic into modular
  • ability to load CSV exported from Blackbox Explorer
  • refactored code to (more or less) follow Python conventions (WIP)
  • add config file (config.ini) to set the path for blackbox_decode permanently
  • use different default names for blackbox_decode executable on different platforms
  • changed command-line usage syntax (see below)

Usage

usage: PID-Analyzer.py [-h] [-n NAME] [--blackbox_decode PATH] [-d]
                       [-b NOISE_BOUNDS]
                       LOG_PATHS

positional arguments:
  LOG_PATHS             log file(s) to analyze or omit for interactive prompt

optional arguments:
  -h, --help            show this help message and exit
  -n NAME, --name NAME  plot name (default: tmp)
  --blackbox_decode PATH
                        path to blackbox_decode tool (default:
                        /home/kiri/Projects/PID-Analyzer/blackbox_decode)
  -d, --hide            hide plot window when done (default: False)
  -b NOISE_BOUNDS, --noise-bounds NOISE_BOUNDS
                        bounds of plots in noise analysis (use "auto" for
                        autoscaling) (default:
                        [[1.0,10.1],[1.0,100.0],[1.0,100.0],[0.0,4.0]])

Installation in a virtual environment

Installing in a virtual environment means that the dependencies will be installed in a local directory instead of globally on the system. It's a less obtrusive method which may be preferred if you are not using the installed packages in other scripts or you need to have different versions of the same package for different scripts.

# create the virtual env in the working directory
python3 -m venv env
# activate the virtual env
. env/bin/activate
# optionally update package management tools
pip install -U pip wheel setuptools
# install dependencies locally
pip install -r requirements.txt

The above instructions is for Linux(-like) systems. For a more complete guide, please see the official documentation for virtual environments.