Abstract

The article presents a random neural Q-learning strategy for the obstacle avoidance problem of an autonomous mobile robot in unknown environments. In the proposed strategy, two independent modules, namely, avoidance without considering the target and goal-seeking without considering obstacles, are first trained using the proposed random neural Q-learning algorithm to obtain their best control policies. Then, the two trained modules are combined based on a switching function to realize the obstacle avoidance in unknown environments. For the proposed random neural Q-learning algorithm, a single-hidden layer feedforward network is used to approximate the Q-function to estimate the Q-value. The parameters of the single-hidden layer feedforward network are modified using the recently proposed neural algorithm named the online sequential version of extreme learning machine, where the parameters of the hidden nodes are assigned randomly and the sample data can come one by one. However, different from the original online sequential version of extreme learning machine algorithm, the initial output weights are estimated subjected to quadratic inequality constraint to improve the convergence speed. Finally, the simulation results demonstrate that the proposed random neural Q-learning strategy can successfully solve the obstacle avoidance problem. Also, the higher learning efficiency and better generalization ability are achieved by the proposed random neural Q-learning algorithm compared with the Q-learning based on the back-propagation method.

Highlights

  • Obstacle avoidance is one of the primary tasks for autonomous mobile robots (AMRs), whose purpose is to enable mobile robots to arrive at the target points without colliding with any obstacles in the working environment

  • The core avoidance and goal-seeking modules in the strategy are trained by a novel random neural Q-learning (RNQL) algorithm where the SLFN is used as a Q-function approximator to estimate the Q-value

  • In the proposed RNQL algorithm, the parameters of the SLFN are tuned by the OS-extreme learning machine (ELM) algorithm

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Summary

Introduction

Obstacle avoidance is one of the primary tasks for autonomous mobile robots (AMRs), whose purpose is to enable mobile robots to arrive at the target points without colliding with any obstacles in the working environment. In our proposed RNQL algorithm, a SLFN is used to estimate the Q-value, which is given as follows

Results
Conclusion

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