Trustworthy and Explainable Deep Reinforcement Learning for Safe and Energy-Efficient Process Control: A Use Case in Industrial Compressed Air Systems
PositiveArtificial Intelligence
- A new paper presents a trustworthy deep reinforcement learning framework aimed at enhancing the control of industrial compressed air systems, focusing on safe and energy-efficient operations. The framework incorporates a multi-level explainability pipeline that includes input perturbation tests and SHAP feature attribution, demonstrating its effectiveness through empirical evaluations across various compressor configurations.
- This development is significant as it offers a solution that not only reduces unnecessary overpressure but also achieves energy savings of approximately 4%, all without relying on explicit physics models. This could lead to more sustainable practices in industrial operations, aligning with global energy efficiency goals.
- The introduction of this framework reflects a broader trend in artificial intelligence towards integrating explainability and safety in reinforcement learning applications. As industries increasingly adopt AI technologies, the emphasis on certifiable autonomy and energy efficiency becomes crucial, paralleling advancements in related fields such as imitation learning and hierarchical planning methods.
— via World Pulse Now AI Editorial System
