Safe Reinforcement Learning for Real-World Engine Control
Julian Bedei, Lucas Koch, Kevin Badalian, Alexander Winkler, Patrick Schaber, Jakob Andert

TL;DR
This paper presents a safe reinforcement learning toolchain using DDPG and real-time safety monitoring for engine control, demonstrated on a combustion engine testbench, achieving effective control while ensuring safety.
Contribution
It introduces a novel safety-aware RL framework with real-time safety monitoring for real-world engine control applications.
Findings
Achieved a root mean square error of 0.1374 bar in pressure control.
Successfully adapted the policy to increase ethanol fuel share.
Demonstrated safe RL interaction with a combustion engine testbench.
Abstract
This work introduces a toolchain for applying Reinforcement Learning (RL), specifically the Deep Deterministic Policy Gradient (DDPG) algorithm, in safety-critical real-world environments. As an exemplary application, transient load control is demonstrated on a single-cylinder internal combustion engine testbench in Homogeneous Charge Compression Ignition (HCCI) mode, that offers high thermal efficiency and low emissions. However, HCCI poses challenges for traditional control methods due to its nonlinear, autoregressive, and stochastic nature. RL provides a viable solution, however, safety concerns, such as excessive pressure rise rates, must be addressed when applying to HCCI. A single unsuitable control input can severely damage the engine or cause misfiring and shut down. Additionally, operating limits are not known a priori and must be determined experimentally. To mitigate these…
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