Litcius/Paper detail

Fault diagnosis of industrial robot reducer by an extreme learning machine with a level-based learning swarm optimizer

Jianwen Guo, Xiaoyan Li, Zhenpeng Lao, Yandong Luo, Jiapeng Wu, Shaohui Zhang

2021Advances in Mechanical Engineering16 citationsDOIOpen Access PDF

Abstract

Fault diagnosis is of great significance to improve the production efficiency and accuracy of industrial robots. Compared with the traditional gradient descent algorithm, the extreme learning machine (ELM) has the advantage of fast computing speed, but the input weights and the hidden node biases that are obtained at random affects the accuracy and generalization performance of ELM. However, the level-based learning swarm optimizer algorithm (LLSO) can quickly and effectively find the global optimal solution of large-scale problems, and can be used to solve the optimal combination of large-scale input weights and hidden biases in ELM. This paper proposes an extreme learning machine with a level-based learning swarm optimizer (LLSO-ELM) for fault diagnosis of industrial robot RV reducer. The model is tested by combining the attitude data of reducer gear under different fault modes. Compared with ELM, the experimental results show that this method has good stability and generalization performance.

Topics & Concepts

ReducerExtreme learning machineGeneralizationComputer scienceFault (geology)Artificial intelligenceRobotGradient descentStability (learning theory)Swarm behaviourMachine learningAlgorithmArtificial neural networkEngineeringMathematicsSeismologyCivil engineeringGeologyMathematical analysisMachine Learning and ELMMetaheuristic Optimization Algorithms ResearchAdvanced Battery Technologies Research