AUGUR is PULSAR’s digital twin framework—engineered to bring robotic simulation closer to reality than ever before. At its core, AUGUR is a physics-based, actuator-level digital twin that captures the true dynamics of PULSE actuators, including motor physics, gearbox friction and dynamics, current and torque limits, embedded control loops, and sensor noise.
Unlike conventional simplified models, which often break down outside of narrow operating conditions, AUGUR faithfully reproduces both steady-state behavior and transient responses across a wide range of loads, gains, and trajectories. This means simulations no longer rely on fragile tuning or optimistic assumptions; they reflect the behavior of the hardware itself.
What makes AUGUR unique is its balance of fidelity and efficiency. Built for integration with robotic simulation environments like MuJoCo, AUGUR runs faster than real time on standard laptops, enabling large-scale training and validation without sacrificing accuracy. From 1-DOF characterisation tests to multi-DOF kinematic chains, AUGUR consistently narrows the sim-to-real gap, empowering developers to design, test, and optimize with confidence.
With AUGUR, roboticists gain:
In short, AUGUR transforms simulation into a trustworthy mirror of reality; a vital tool for accelerating humanoid robotics, safe deployment, and advanced control research.
AUGUR brings predictive accuracy and scalability to robotic simulation by modeling PULSAR actuators as they behave in the real world. Unlike simplified models, which often fail under changing conditions, AUGUR captures the full physics of PULSAR actuators, simulating internal parameters of motors (also from PULSAR), friction, saturation, sensors, and embedded control loops, delivering simulations that remain trustworthy across tasks, loads, and speeds.
The following use cases highlight AUGUR’s versatility: from validating a single actuator against experimental data to scaling up to multi-joint humanoid arms while running faster than real time.
One of the core demonstrations of AUGUR is its ability to act as a virtual replica of a real actuator and match experimental results with high fidelity.
To test this, PULSAR’s PULSE115 actuator was mounted on a simple 1-DOF pendulum setup.
The experiment compared three systems side by side:
The test involved challenging trajectories, from smooth ramps to aggressive multi-step motions, executed under different load conditions.
Results:
Impact: This validation proves that AUGUR can
faithfully mirror real actuator behavior, including subtle effects from embedded control loops, saturation limits, and sensor noise.
For roboticists, this means simulation results are not just approximations—they are predictive of what will happen on hardware.
In practice, AUGUR enables:
After validating AUGUR at the single-actuator level, the next challenge was to test its scalability in a robotic system with multiple interacting joints. To do this, researchers integrated AUGUR into a 4-DOF humanoid arm composed of a 3-DOF shoulder and 1-DOF elbow.
The arm was tasked with executing end-effector trajectories in task space
(moving along straight lines between waypoints under varying speeds: from slow, precise motions
to rapid, aggressive ones). The same low-level control logic implemented in real hardware was embedded in AUGUR,
ensuring that the digital twin carried the same dynamics into simulation.
Results:
Impact: This experiment demonstrated that AUGUR is not just a single-actuator tool, it can scale to
complex robotic systems while preserving real-time efficiency.
This capability is crucial for humanoid robotics, where 30+ actuators must be simulated in coordination.
For developers, this means AUGUR can:
By scaling from a single actuator to coordinated humanoid limbs, AUGUR proves its role as a
generalizable digital twin framework, bringing predictive, high-fidelity simulation
to the next generation of robotic systems.