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carnd-controls-mpc's Introduction

CarND-Controls-MPC

Self-Driving Car Engineer Nanodegree Program


The simulator video

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Model

The vehicle model used in this project is a kinematic bicycle model. It neglects all dynamical effects such as inertia, friction and torque. The model takes changes of heading direction into account and is thus non-linear.

Timestep Length and Elapsed Duration

The time T=N dt defines the prediction horizon. Short prediction horizons lead to more responsive controlers, but are less accurate and can suffer from instabilities when chosen too short. Long prediction horizons generally lead to smoother controls. For a given prediction horizon shorter time steps dt imply more accurate controls but also require a larger NMPC problem to be solved, thus increasing latency.

Here I chose values of N and dt such that drives the car smoothly around the track for slow velocities of about 25mph all the way up to about 70mph. The values are N=12 and dt=0.05. Note that the 100ms = 2*dt latency imply that the controls of the first two time steps are not used in the optimization.

Polynomial Fitting and MPC Preprocessing

All computations are performed in the vehicle coordinate system. The coordinates of waypoints in vehicle coordinates are obtained by first shifting the origin to the current poistion of the vehicle and a subsequet 2D rotation to align the x-axis with the heading direction. Therby the waypoints are obtained in the frame of the vehicle. A third order polynomial is then fitted to the waypoints.

Model Predictive Control with Latency

An additional complication of this project consists in taking delayed actuations into account. After the solution of the NMPC problem a delay of 100ms is introduced before the actuations are sent back to the simulator.

When delays are not properly accounted for oscillations and/or bad trajectories can occur. These delays make the control problem a so-called sampled MPC problem.

Dependencies

Basic Build Instructions

  1. Clone this repo.
  2. Make a build directory: mkdir build && cd build
  3. Compile: cmake .. && make
  4. Run it: ./mpc.

Tips

  1. It's recommended to test the MPC on basic examples to see if your implementation behaves as desired. One possible example is the vehicle starting offset of a straight line (reference). If the MPC implementation is correct, after some number of timesteps (not too many) it should find and track the reference line.
  2. The lake_track_waypoints.csv file has the waypoints of the lake track. You could use this to fit polynomials and points and see of how well your model tracks curve. NOTE: This file might be not completely in sync with the simulator so your solution should NOT depend on it.
  3. For visualization this C++ matplotlib wrapper could be helpful.)
  4. Tips for setting up your environment are available here
  5. VM Latency: Some students have reported differences in behavior using VM's ostensibly a result of latency. Please let us know if issues arise as a result of a VM environment.

Editor Settings

We've purposefully kept editor configuration files out of this repo in order to keep it as simple and environment agnostic as possible. However, we recommend using the following settings:

  • indent using spaces
  • set tab width to 2 spaces (keeps the matrices in source code aligned)

Code Style

Please (do your best to) stick to Google's C++ style guide.

Project Instructions and Rubric

Note: regardless of the changes you make, your project must be buildable using cmake and make!

More information is only accessible by people who are already enrolled in Term 2 of CarND. If you are enrolled, see the project page for instructions and the project rubric.

Hints!

  • You don't have to follow this directory structure, but if you do, your work will span all of the .cpp files here. Keep an eye out for TODOs.

Call for IDE Profiles Pull Requests

Help your fellow students!

We decided to create Makefiles with cmake to keep this project as platform agnostic as possible. Similarly, we omitted IDE profiles in order to we ensure that students don't feel pressured to use one IDE or another.

However! I'd love to help people get up and running with their IDEs of choice. If you've created a profile for an IDE that you think other students would appreciate, we'd love to have you add the requisite profile files and instructions to ide_profiles/. For example if you wanted to add a VS Code profile, you'd add:

  • /ide_profiles/vscode/.vscode
  • /ide_profiles/vscode/README.md

The README should explain what the profile does, how to take advantage of it, and how to install it.

Frankly, I've never been involved in a project with multiple IDE profiles before. I believe the best way to handle this would be to keep them out of the repo root to avoid clutter. My expectation is that most profiles will include instructions to copy files to a new location to get picked up by the IDE, but that's just a guess.

One last note here: regardless of the IDE used, every submitted project must still be compilable with cmake and make./

How to write a README

A well written README file can enhance your project and portfolio. Develop your abilities to create professional README files by completing this free course.

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