Estimation of fish distribution by means of neural network using monitoring data by fishing boats

Kimitoshi Iwaba, S. Tabeta, T. Hamada, K. Mizuno
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引用次数: 2

Abstract

It is important to understand and predict fish behavior to assess the impacts of coastal development on ecosystem or to conduct appropriate fishery management. In order to collect information for understanding fish behavior, we measured the environmental factors and the distribution of fish simultaneously by using fishing boats. The memory-type sensors were attached to the fishing gear of the small trawling boats in Ise Bay, through which the water temperature, dissolved oxygen, and depth were measured as well as position information by GPS. At the same time, fish catch of each haul by trawling were recorded to grasp the fish distribution. The obtained data provides much more information for temporal and spatial distribution of water qualities than conventional monitoring. We tried to predict resource distributions by artificial neural network using the obtained data. It is found that the environmental factor affecting the behavior of conger eel varies with respect to the months. The developed neural network could predict the horizontal distribution of the conger eel fairly well.
基于渔船监测数据的神经网络鱼类分布估计
了解和预测鱼类行为对于评估沿海开发对生态系统的影响或进行适当的渔业管理具有重要意义。为了收集鱼类行为信息,我们利用渔船同时测量了环境因素和鱼类分布。记忆型传感器安装在伊势湾小型拖网渔船的渔具上,通过传感器测量水温、溶解氧和深度,并通过GPS获取位置信息。同时记录每次拖网渔获量,掌握鱼类分布情况。所获得的数据比常规监测提供了更多关于水质时空分布的信息。我们尝试利用获得的数据,用人工神经网络预测资源分布。研究发现,影响长鳝行为的环境因素随月份的变化而变化。所建立的神经网络能较好地预测长鳝的水平分布。
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