Monitoring-System Development of Gillnet Using Artificial Neural Network

Chungkuk Jin, HanSung Kim, JeongYong Park, Moo-Hyun Kim, Kiseon Kim
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Abstract

This paper presents a method for detecting damage to a gillnet based on sensor fusion and the Artificial Neural Network (ANN) model. Time-domain numerical simulations of a slender gillnet were performed under various wave conditions and failure and non-failure scenarios to collect big data used in the ANN model. In training, based on the results of global performance analyses, sea states, accelerations of the net assembly, and displacements of the location buoy were selected as the input variables. The backpropagation learning algorithm was employed in training to maximize damage-detection performance. The output of the ANN model was the identification of the particular location of the damaged net. In testing, big data, which were not used in training, were utilized. Well-trained ANN models detected damage to the net even at sea states that were not included in training with high accuracy.
利用人工神经网络开发刺网监测系统
提出了一种基于传感器融合和人工神经网络(ANN)模型的刺网损伤检测方法。对细长刺网进行了不同波浪条件、失效和非失效情况下的时域数值模拟,以收集用于人工神经网络模型的大数据。在训练中,基于全局性能分析的结果,选择海况、网组件的加速度和定位浮标的位移作为输入变量。训练中采用反向传播学习算法,使损伤检测性能最大化。人工神经网络模型的输出是识别受损网络的特定位置。在测试中,我们利用了训练中没有用到的大数据。训练有素的人工神经网络模型即使在未包括在训练中的海上状态下也能以高精度检测到网络的损坏。
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