학술논문

Research on Pattern Recognition Performance of Control Chart Based on Deep Learning
Document Type
Conference
Source
2022 Global Conference on Robotics, Artificial Intelligence and Information Technology (GCRAIT) GCRAIT Robotics, Artificial Intelligence and Information Technology (GCRAIT), 2022 Global Conference on. :212-216 Jul, 2022
Subject
Computing and Processing
Deep learning
Training
Monte Carlo methods
Neural networks
Training data
Control charts
Data models
control chart
deep learning
neural network
pattern recognition
Language
Abstract
This paper is aiming at the problem that the existing anomaly discrimination methods of control chart can not realize the discrimination of complex anomaly data and the low level of intelligence. It is exploring the performance of control chart pattern recognition based on deep learning. It briefly introduces 1DCNN, LSTM and BiLSTM then adopts a neural network model based on 1DCNN+BiLSTM. The Monte Carlo method is used to generate the simulation data of the control chart, and different abnormal data are generated by changing the parameters for simulation experiments. According to the effect of control chart pattern recognition under different abnormal data, the training samples are optimized and the parameters of the network model are determined. The results show that the proposed method performs better in recognition.