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TIR_PROJ/docs/project.md
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Johnny Fernandes 1bb9415414 Checkpoint 2
2026-05-07 22:00:10 +01:00

2.6 KiB

Group G25 - Formal & Title & Goals

Team members

(i) Title and General objectives

Autonomous Shepherd Robot for Livestock Herding (Strömbom)

  • Implement effective herding behaviors through proximity and movement strategies
  • Build a 3D environment with realistic robot dynamics and LIDAR-based perception
  • Develop a mobile robot capable of autonomously guiding a flock of sheep into a designated target area using the Strömbom heuristic approach

Group G25 - (ii) Intermediate Goals

Intermediate goals

  • Set up the Webots simulation environment with an open field and target zone
  • Implement lightweight 2D herding environment for algorithm evaluation
  • Design a Sheep and Dog robot
  • Implement a sheep flocking model for fast Strömbom iteration
  • Validate LiDAR sensor feedback for sheep detection and distance estimation

Group G25 - Course Project (Final) Goals

(iii) Main goals

  • State-of-the-art survey on shepherding algorithms with focus on Strömbom herding
  • Implement and tune Strömbom controller to successfully herd a single sheep into the goal
  • Achieve fully autonomous herding of multiple sheep and a full flock into the target area
  • Optimize robot trajectory to minimize the time required to group the flock
  • Ensure zero collisions between the robot and the sheep during the task
  • Quantitative evaluation: success rate, time-to-pen, flock dispersion metrics
  • Article, demo video, and final presentation

(iv) Extra Merit

  • Progressive evaluation (scaling from 1 sheep to a flock)
  • Comparison of performance between Differential Drive and Mecanum wheels
  • Robustness testing under sensor noise or varying sheep speeds, configurations and parameters
  • Multi-shepherd cooperative mode: 2 dogs learn role specialization (collector vs. driver)
  • Obstacles and terrain (walls, narrow gates, corridors) the flock must be funneled through

Group G25 - Tools & Limitations

(v) Tools

  • Webots for 3D physics simulation with ROS2 integration via webots_ros2 package
  • Gymnasium (OpenAI) for the simulation wrapper and evaluation tooling
  • Python as the primary programming language (sheep flocking model, reward shaping, evaluation)

(vi) Limitations

  • Computational Power: Large batch evaluation and parameter sweeps can still be time-consuming
  • Sim-to-Real Gap: No real-world validation of the herding controller; project is simulation-only (2D + Webots 3D)
  • Model Complexity: Simplified sheep behavior (scripted) may not account for all biological livestock nuances