Litcius/Paper detail

Application of reinforcement learning to fire suppression system of an autonomous ship in irregular waves

Eunjoo Lee, Won‐Sun Ruy, Jeonghwa Seo

2020International Journal of Naval Architecture and Ocean Engineering12 citationsDOIOpen Access PDF

Abstract

In fire suppression, continuous delivery of water or foam to the fire source is essential. The present study concerns fire suppression in a ship under sea condition, by introducing reinforcement learning technique to aiming of fire extinguishing nozzle, which works in a ship compartment with six degrees of freedom movement by irregular waves. The physical modeling of the water jet and compartment motion was provided using Unity 3D engine. In the reinforcement learning, the change of the nozzle angle during the scenario was set as the action, while the reward is proportional to the ratio of the water particle delivered to the fire source area. The optimal control of nozzle aiming for continuous delivery of water jet could be derived. Various algorithms of reinforcement learning were tested to select the optimal one, the proximal policy optimization.

Topics & Concepts

NozzleReinforcement learningReinforcementJet (fluid)Fire protectionSet (abstract data type)Marine engineeringEngineeringAction (physics)SimulationComputer scienceArtificial intelligenceStructural engineeringMechanical engineeringCivil engineeringAerospace engineeringProgramming languagePhysicsQuantum mechanicsFire Detection and Safety SystemsEvacuation and Crowd DynamicsRobotic Path Planning Algorithms
Application of reinforcement learning to fire suppression system of an autonomous ship in irregular waves | Litcius