Algorithms to Handle Signal Delay in Deep Reinforcement Learning
Algorithms to Handle Signal Delay in Deep Reinforcement Learning aims to address the problem of signal delay in continuous robotic control. Signal delay occurs when there is a lag between an agent's perception of the environment and its corresponding actions. Our methods achieve remarkable performance in simulated continuous robotic control tasks with large delays, yielding results comparable to those in non-delayed cases.