Title of article :
Optimal control of ship unloaders using reinforcement learning
Author/Authors :
Scardua، نويسنده , , Leonardo Azevedo and Da Cruz، نويسنده , , José Jaime and Reali Costa، نويسنده , , Anna Helena، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2002
Abstract :
This paper describes the use of Reinforcement Learning (RL) to the computation of time-optimal anti-swing control of a ship unloader. The unloading cycle has been divided into six subtasks and an optimization problem has been defined for each of them. A RL algorithm together with a multilayer perceptron neural network as a value function approximator have been used in the optimization. The results obtained are encouraging, since they reproduce a solution previously generated by using Optimal Control Theory.
Keywords :
Anti-Swing Control , reinforcement learning , Crane control , Ship unloader , optimal control , neural network
Journal title :
ADVANCED ENGINEERING INFORMATICS
Journal title :
ADVANCED ENGINEERING INFORMATICS