기계의 결함음 검출을 위한 학습 데이터 합성 및 데이터 선별법에 관한 연구
A Study on Training Data Mixing and Selection Methods for Detecting the Sounds of Faulty Machinery
김태원(Dept. of Intelligent Mechatronics Engineering, Sejong University, Korea); 조상묵(WITHROBOT, INC., Seoul, Korea); 김동현(WITHROBOT, INC., Seoul, Korea); 김현돈(Robot Campus of Korea Polytechnics University, Korea); 김도윤(WITHROBOT, INC., Seoul, Korea)
73권 7호, 1232~1238쪽
초록
To train a classifier using a Deep Neural Network (DNN), a substantial amount of data sets is required. However, in cases where data acquisition is challenging or the environment undergoes changes, obtaining sufficient data for training can be problematic. Data augmentation and synthesis can be used to increase the quantity of data for training. The data generated through augmentation or synthesis should closely resemble real data and accurately reflect the environments and characteristics that users aim to model. Without this resemblance, using the generated data may not yield the desired results in the actual environment. In this paper, we propose an empirical method for selecting synthetic training data that enhances the performance of a belt conveyor fault classifier model in environments where data acquisition is challenging, without compromising the existing performance of the model
Abstract
To train a classifier using a Deep Neural Network (DNN), a substantial amount of data sets is required. However, in cases where data acquisition is challenging or the environment undergoes changes, obtaining sufficient data for training can be problematic. Data augmentation and synthesis can be used to increase the quantity of data for training. The data generated through augmentation or synthesis should closely resemble real data and accurately reflect the environments and characteristics that users aim to model. Without this resemblance, using the generated data may not yield the desired results in the actual environment. In this paper, we propose an empirical method for selecting synthetic training data that enhances the performance of a belt conveyor fault classifier model in environments where data acquisition is challenging, without compromising the existing performance of the model
- 발행기관:
- 대한전기학회
- 분류:
- 전기공학