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AEGIS

Autonomous Engine Guidance Intelligence System — An AI-driven thrust vector control system that uses reinforcement learning to optimize flight trajectory in real-time. Because rockets should be smart enough to steer themselves.

RL/PPO ROS2 Simulink IMU
AEGIS AI-guided rocket in flight with holographic trajectory path and neural network overlay Conceptual visualization of AEGIS AI-driven thrust vector guidance

01Mission Statement

Traditional rocket guidance systems use PID controllers — proven, reliable, and deeply boring. They follow pre-programmed trajectories and react to disturbances with fixed mathematical relationships that were tuned on the ground. AEGIS asks: what if the rocket could learn to fly itself?

Using reinforcement learning trained in high-fidelity simulation, AEGIS develops control policies that can handle wind gusts, thrust asymmetries, mass distribution changes, and off-nominal engine performance — all in real-time, all without pre-programmed response tables. The result is a guidance system that doesn't just follow a trajectory; it discovers the optimal one.

02Core Technology

03Training Results

10MstepsTraining Episodes
0.3°RMSPointing Accuracy
100HzControl Rate
98.7%Mission Success Rate

04Convergence with IGNIS

"The best guidance system is one that learns from every flight — including the ones that went wrong. Especially the ones that went wrong."

AEGIS is designed to eventually integrate with the IGNIS motor. The gimbal mechanism mounts directly to the IGNIS nozzle assembly, and the control system receives thrust telemetry from IGNIS's DAQ system. Our roadmap has hardware-in-the-loop testing with the IGNIS motor by Q3 2026, and a first guided flight test on a sounding rocket by Q1 2027.

The combination of AEGIS + IGNIS represents JPL's path to a fully autonomous, AI-guided launch vehicle — one that can adapt its flight plan in real-time based on actual conditions, not pre-programmed assumptions.

05Control Validation

06Development Roadmap

The immediate path is simulation maturity: better aerodynamic models, actuator lag, noisy sensors, and randomized thrust curves. The next step is hardware-in-the-loop validation with the same embedded stack intended for flight tests.

AEGIS becomes meaningful when it closes the loop with real propulsion data. IGNIS provides measured thrust behavior, NOVA can inform perception and state awareness, and AEGIS turns those signals into controlled flight decisions.

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Interested in AEGIS?

We're looking for control systems engineers, RL researchers, and simulation specialists.

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