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초록
For the frequency-domain spectral fatigue analysis, the probability density function of stress range is essential for the assessment of the fatigue damage. The probability distribution of the stress range in the narrow-band process is known to follow the Rayleigh distribution, however the one in the wide-band process is difficult to define with clarity. In this paper, in order to assess the fatigue damage of a structure under wide band excitation, the probability density function of the wide band spectrum was derived based on the artificial neural network, which is one of the most powerful universal function approximation schemes. To achieve the goal, the multi-layer perceptron model with a single hidden layer was introduced and the network parameters are determined using the least square method where the error propagates backward up to the weight parameters between input and hidden layer. To train the network under supervision, the varieties of different wide-band spectrums are assumed and the probability density function of the stress range was derived using the rainflow counting method, and these artificially generated data sets are used as the training data. It turned out that the network trained using the given data set could reproduce the probability density function of arbitrary wide-band spectrum with success.
- 제목
- 인공 신경망 이론을 이용한 광대역 과정에서의 피로 손상 모델 개발
- 제목 (타언어)
- Development of Fatigue Damage Model of Wide-band Process by Artificial Neural Network
- 저자
- KIM KYUNG SU
- 학회명
- 대한조선학회 2013년도 정기총회 및 추계학술대회
- 개최지
- 울산대학교
- 학회 개최일
- 2013-11-07 ~ 2013-11-08