基于潜标观测数据的内孤立波人工智能检测模型

An Artificial Intelligence Detection Model for Internal Solitary Waves Based on Mooring Data

  • 摘要: 海洋内孤立波通常携带着巨大的能量,给海上作业带来巨大的安全隐患,因此,对海洋内孤立波进行实时的检测有重要的意义。近年来,人工智能技术在各行业的应用越来越广泛,基于深度学习的目标检测技术也越来越成熟。本文结合现场观测数据和基于深度学习的目标检测算法YOLOv5,开发了一种基于潜标观测数据的内孤立波人工智能检测模型。首先将数据归一化处理,再分别将不同观测要素数据传入网络迭代训练,训练完成后保存最优权重文件并用于评估模型。评估结果表明,在采用单要素检测方案中,温度检测模型稍好于纬向流速检测模型,而经向流速检测模型相对较差,其综合评价因子最值 \varepsilon _\mathrmm\mathrma\mathrmx 分别为80.94、78.74和72.02;在温度、纬向流速和经向流速三种要素不同组合的检测方案中,相比单要素和双要素方案,三要素方案的检测效果最好, \varepsilon _\mathrmm\mathrma\mathrmx 达到82.48。该检测方案的准确率较高,检测速度较快,满足实时检测需求。

     

    Abstract: Internal solitary waves (ISWs) in the ocean usually carry significant amount of energy, posing serious safety hazards to offshore operations, making their real-time detection crucial. In recent years, the application of artificial intelligence (AI) technology has become increasingly widespread across various industries, with deep leaning-based object detection technologies maturing. This paper present an AI-based detection model for ISWs, developed using mooring observation data in combination with YOLOv5 deep leaining object detection algorithm. Firstly, the data are normalized, and different observational elements are fed into the network for iterative training. After the training, the optimal weight files are saved and used to evaluate the model. The evaluation results indicate that in the single-element detection scheme, the temperature detection model performs slightly better than the zonal flow rate model, while the meridional flow rate model is relatively less effective, with the maximum values of the comprehensive evaluation factor \varepsilon _\mathrmm\mathrma\mathrmx being 80.94, 78.74 and 72.02, respectively. In the detection scheme using combinations of temperature, zonal flow rate, and meridional flow rate, the three-element scheme outperforms the single- and two-element scheme, with \varepsilon _\mathrmm\mathrma\mathrmx reaching 82.48. This detection scheme demonstrates high accuracy and fast detection speed, meeting requirements for the real-time detection.

     

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