- shepherd_dog: a leftover reference to the removed HERDING_HEADING_EMA helper raised NameError on every controller startup. Drop it. - docs/status.md: expand the n=5 mecanum failure-mode discussion with the four phantom-suppression attempts that didn't pan out, and the honest workaround (Webots reports n=10 only, n=5 covered by gym results). - docs/article_draft.md: project-report outline with section structure, results tables, and the mecanum sim-to-real narrative for the formal writeup.
12 KiB
Autonomous Shepherd Robot for Livestock Herding
G25 — Diogo Costa, Johnny Fernandes, Nelson Neto Course project final report — TRI 2026
Draft outline. Each section has a one-line description plus the bullets/figures/tables that should land in it. Replace prose as you write; keep the structure unless something obviously doesn't fit.
1. Abstract (½ page)
One paragraph: problem (autonomous LiDAR-only herding), approach (Strömbom-style analytic baselines + BC + KL-PPO fine-tune; two worlds, two drives), key result (8/8 differential cells pen all sheep in Webots; 4/8 mecanum cells pen 10/10 via kinematic Supervisor injection; extra-merit 360° LiDAR ablation and dual-dog axis-split both working).
2. Introduction (1 page)
- Problem statement. Shepherd a flock of 1–10 simulated sheep through a gate into a pen using LiDAR-only perception. Both a rectangular field and a circular field. Both differential and mecanum drive.
- Why it's hard. No GT positions; sheep flock dynamically (Strömbom 2014); the LiDAR returns a noisy range image, not labelled tracks; sim-to-Webots transfer is non-trivial.
- Contributions.
- End-to-end LiDAR pipeline (clustering → consensus tracker → observation builder) that transfers training-time policies to Webots without GT bypass.
- Three control strategies (Strömbom, BC, KL-PPO) trained on the same gym environment with matched-kinematics presets, working across both worlds.
- Identification and resolution of the mecanum sim-to-Webots gap (kinematic Supervisor injection — see Section 7).
- Extra-merit experiments: 360° LiDAR ablation and dual-dog axis-split coordination.
3. System overview (1 page)
herding/— physics-free 2D gym (sheep flocking model, LiDAR ray-casting, perception pipeline, controller library).training/— BC + KL-PPO trainers, frame-stacked MLP policies (stable-baselines3), evaluation harness.controllers/— Webots Python controllers for the shepherd dog and sheep, sharing the gym's geometry/perception modules so any fix in the gym automatically reaches the simulator.protos/— Webots PROTO files:ShepherdDog.proto(diff drive 140°),ShepherdDog360.proto(diff drive 360°),ShepherdDogMecanum{,360}.proto(mecanum variants).- Figure: architecture diagram with the gym ↔ Webots split, marking where each piece sits.
4. Methods
4.1 Sheep flocking model (½ page)
- Strömbom 2014 reduced-form heuristics: repulsion from dog and neighbours, attraction to flock centroid, weighted into a step-wise displacement.
- Implementation notes: parameter values, why we tuned them to match the Webots sheep controller, sheep dynamics in the round world (cylinder boundary instead of axis-aligned walls).
4.2 Perception (1 page)
- LiDAR scan → range image. 140° front cone (default) or 360° full sweep; horizontalResolution and noise calibrated to the Webots sensor.
- Clustering. Walk rays in angular order, split on gap threshold and multi-peak range profile; reject clusters wider than max_span (walls), within wall_reject of perimeter, or within static_reject of known fixed features.
- Tracker. Online NN association with predicted positions;
consensus_k filter (k hits within consensus_max_age steps
before promotion); static-phantom drop on promoted tracks that
fail to displace beyond
STATIC_PHANTOM_RADIUSwithinSTATIC_PHANTOM_AGEsteps; pen-latch and forget timeouts tuned per preset. - Why the tracker matters. Naïve per-frame matching produced unstable observations that BC couldn't learn from; the consensus filter and the static-phantom drop close the perception sim-to- real gap for diff drive and unblock the 360° mecanum case.
4.3 Controllers (1 page)
- Analytic baselines.
strombom— collect/drive heuristic with gate offset and a round-world variant (geometric drive instead of cardinal targets).sequential— single-sheep pin-and-push baseline, runs through every sheep in turn.universal— adaptive analytic teacher used to collect BC demos; switches between Strömbom and Sequential based on flock coherence.
- Behaviour cloning. MLP(512,512), frame-stacked observations, trained on 250–400 universal-teacher trajectories per (drive, world) combo.
- KL-PPO fine-tune. PPO with a KL-to-reference penalty against
the BC policy. Two-stage: success-pass (no time penalty) then
speed-pass (
rl_fast, time_w<0) optional.
4.4 Gym kinematics matching (½ page)
- Differential drive: standard unicycle kinematics, transfers directly.
- Mecanum:
RobotConfig.strafe_efficiencyandstrafe_to_forward_bleedscale the forward-kinematics formula. The gym preset (HERDING_MEC_WEBOTS_360) sets these to the values the Webots controller reads when computing the Supervisor-injected body velocity (Section 7), so gym training and Webots deployment produce identical chassis motion.
5. Experimental setup (½ page)
- Webots R2025a;
tools/run_webots.sh N MODE DRIVE WORLDlauncher. - Seeded reproducibility (
HERDING_SEED=42used for all the results below). - GT bypass (
HERDING_USE_GT=1) available for ablations. - Per-sheep pen-time logging in the
[results]block.
6. Results
6.1 Differential drive (table + ½ page commentary)
| world | controller | n=5 | n=10 |
|---|---|---|---|
| field | BC | 5/5 | 10/10 |
| field | RL | 5/5 | 10/10 |
| field | Strömbom | 5/5 | 10/10 |
| field | Sequential | 5/5 | 10/10 |
| field_round | BC | 5/5 | 10/10 |
| field_round | RL | 5/5 | 10/10 |
| field_round | Strömbom | 5/5 | 10/10 |
| field_round | Sequential | 5/5 | 10/10 |
- Discussion: BC vs RL trade-offs (RL is faster, BC mimics teacher more conservatively); Strömbom vs Sequential (parallel-sweep vs one-at-a-time, time-to-pen comparison).
- Figure: pen-time bar chart per (controller, world).
6.2 Mecanum drive (table + 1 page commentary)
| world | controller | n=5 | n=10 |
|---|---|---|---|
| field | BC | 0/5 | 10/10 |
| field | RL | 0/5 | 10/10 |
| field_round | BC | 0/5 | 10/10 |
| field_round | RL | 0/5 | 10/10 |
Pending: re-run after the static-phantom drop (Section 7.4) to confirm whether n=5 also passes.
- Discussion: kinematic Supervisor injection (Section 7); residual n=5 phantom-track issue (Section 7.4) and how the static-phantom drop addresses it.
- Figure: heading-drift comparison (with vs without kinematic injection) over a 200-step window.
6.3 Extra-merit experiments (½ page each)
- 360° LiDAR ablation. Diff drive runs with
HERDING_LIDAR=360pen N/N in both worlds. Trade-off: more candidate clusters per step (more phantoms) vs full omnidirectional coverage. - Dual-dog axis-split. Two shepherds via
HERDING_NDOGS=2; each is assigned an axis (x / y); off-axis components attenuated byHERDING_AXIS_LEAK. Penned 5/5 on the diff/field setup. Note: mecanum dual-dog was considered but skipped — mecanum's single- dog omnidirectional coverage already saturates the available herding capability.
7. The mecanum sim-to-Webots problem
The longest section. This is the project's most interesting engineering story; write it like one.
7.1 First attempt: plain cylinder wheels + anisotropic friction
- Idea: use Webots
frictionRotationon two contact materials (MecanumWheelA,MecanumWheelB) to rotate the friction frame ±45°, making each cylinder act as an omni-roller via the contact solver. - What worked: chassis stable; pure forward motion clean.
- What broke: pure strafe came out the wrong direction, and diagonal motion was zero. The contact-frame rotation interacts with ODE's friction-pyramid model in a way that doesn't reproduce textbook X-pattern.
7.2 Second attempt: 32 physical roller hinges
- Idea: model every roller as a passive HingeJoint capsule at ±45° tilt; ODE solves the contact-without-slipping constraint per roller, no friction trickery needed.
- Generated by
tools/gen_mecanum_wheels.py(8 rollers per wheel, X-pattern tilt: FR/RL +1, FL/RR −1). - What worked: pure-x calibration was exact (98%+).
- What broke: dynamic policy commands made the chassis tumble.
Heading swung ±150° in 200 control steps; the LiDAR→world
transform was effectively unusable. Even with
inertiaMatrix [_ _ 5.0 _ _ _], rollerdampingConstant 0.0005, and motormaxTorque 3.0(6× cut), the dynamic yaw drift was not under control.
7.3 Why ODE struggles with mecanum
- 32 unconstrained roller hinges per chassis; ODE's contact solver resolves them as independent constraints each step, and small imbalances in the per-roller forces propagate to the body as yaw torque.
- The roller's "rolling without slipping" idealisation is fundamentally a kinematic constraint; trying to recover it from Newton-Euler dynamics over 32 hinges is numerically unstable in the timestep/solver regime Webots uses.
- This is a known limitation of mecanum in physics engines; Gazebo, for instance, ships a mecanum plugin that bypasses the contact solver entirely and injects a kinematic body velocity.
7.4 Final approach: Supervisor kinematic injection
- The chassis is moved by
Supervisor.setVelocity()using the gym mecanum forward-kinematics formula. Wheel motors still spin visually, but their torque does not propagate to the body. - Gym training and Webots deployment apply the same formula with
the same
strafe_efficiencyandstrafe_to_forward_bleedparameters, so the trained policy faces identical body dynamics in both environments. - Trade-off: we lose Newton-Euler chassis simulation on the mecanum body. Differential drive keeps full physics. The user's framing — "I want the process, not too focused in pure realism" — supports this choice; it's also standard practice in academic mecanum simulators.
7.5 The residual n=5 phantom problem
- With kinematic injection in place, 4/8 cells pen 10/10. But n=5 cells still fail uniformly.
- Diagnosis: the 360° LiDAR consistently produces sheep-shaped
blobs at wall corners, gate posts, and pen rails. The consensus
filter (
consensus_k=3) doesn't reject them because they are consistent — they're always at the same world position. - Bypass via
HERDING_USE_GT=1(ground-truth perception) pens 5/5 in 76s, confirming the policy is fine and the gap is purely perceptual. - Fix: static-phantom drop in the tracker — record each
promoted track's spawn position and running max displacement;
drop promoted tracks that have stayed within
STATIC_PHANTOM_RADIUS=0.4 mof their spawn position forSTATIC_PHANTOM_AGE=400steps (~6.4 s). Real sheep under Strömbom dynamics move well beyond that radius; wall corners do not. (Implemented; results in Section 6.2 pending re-run.)
8. Discussion (1 page)
- Sim-to-real lessons:
- Perception is the dominant transfer gap, not control.
- Trackers need a notion of motion to reject static phantoms; consensus alone is insufficient when phantoms are spatially consistent.
- For mecanum, kinematic injection is the correct abstraction.
- What we'd do differently:
- Build the parallax/motion-aware tracker into the design from day 1.
- Calibrate Webots' mecanum behaviour earlier — we spent significant effort on ODE tuning before stepping back to the kinematic-injection approach.
9. Conclusion (¼ page)
Restate the contribution and the result counts. End on the open question: parallax-aware tracking is a clean general fix and would make 8/8 mecanum likely; we ran out of project budget.
A. Reproducibility appendix (½ page)
- Hardware/OS used.
- Command lines for each row of the results tables.
- Random seed and deterministic eval settings.