4.7 Article

A Thermal Displacement Prediction System With an Automatic LRGTVAC-PSO Optimized Branch Structured Bidirectional GRU Neural Network

Journal

IEEE SENSORS JOURNAL
Volume 23, Issue 12, Pages 12574-12586

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/JSEN.2023.3269064

Keywords

Auto optimization; computerized numerical control (CNC) machine tools; gated recurrent unit (GRU); long short-term memory (LSTM); machine learning; particle swarm optimization (PSO); thermal displacement

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Considering the rapid development of technology, traditional manufacturing methods cannot achieve the required high accuracy in aerospace, national defense, and leading-edge engineering projects. Thermal displacement is a significant source of manufacturing errors, and it is difficult or even impossible to accurately correct such errors using traditional machining methods. This article proposes a machine learning method that can be easily implemented by non-professionals for high-accuracy error prediction. An optimized automatic logistic random generator time-varying acceleration coefficient particle swarm optimization (LRGTVAC-PSO) method is proposed to optimize a branch structured bidirectional gated recurrent unit (GRU) neural network. The proposed method achieves superior accuracy (with a three-axis average of 0.945) compared to other optimized algorithms evaluated in this study. The method not only accurately predicts thermal displacement but also autotunes the hyperparameters of machine learning algorithms.
Considering technology's rapid development, traditional manufacturing methods are insufficient to achieve the high accuracy demanded by aerospace, national defense, and numerous leading-edge engineering projects. Thermal displacement is a significant source of manufacturing errors, and accurately correcting such errors is difficult or even impossible using traditional machining methods. This article proposes a machine learning method for high-accuracy error prediction that nonprofessionals can easily implement. An optimized automatic logistic random generator time-varying acceleration coefficient particle swarm optimization (LRGTVAC-PSO) method is proposed to optimize a branch structured bidirectional gated recurrent unit (GRU) neural network. The accuracy of the proposed method (with a three-axis average of 0.945) is superior to that of the other optimized algorithms evaluated in this study. The method serves as a means not only of accurately predicting thermal displacement but also of autotuning the hyperparameters of machine learning algorithms.

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