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Ocean wave level observation model training method and system

A technology of observation model and training method, which is applied in the direction of neural learning method, biological neural network model, character and pattern recognition, etc. It can solve the problems of ineffective acquisition of large amounts of data, weak traceability, low resolution, etc.

Active Publication Date: 2022-05-20
国家海洋环境预报中心
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  • Summary
  • Abstract
  • Description
  • Claims
  • Application Information

AI Technical Summary

Problems solved by technology

[0006] However, the buoy observation method is limited by the cost and application range of the buoy, and cannot effectively obtain a large amount of data, which makes the ocean wave observation effect extremely limited
[0007] In addition, although the satellite observation method can realize large-area ocean wave observation, its low resolution will lead to low precision of the ocean wave model
[0008] As for the manual observation method, the labor cost and physical cost it consumes are very high, and the data acquisition depends on the experience of the observer, which makes its traceability weak, and it is impossible to achieve long-term stable observation

Method used

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  • Ocean wave level observation model training method and system
  • Ocean wave level observation model training method and system
  • Ocean wave level observation model training method and system

Examples

Experimental program
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Effect test

Embodiment 1

[0032] Please see figure 1 , figure 1 A schematic flowchart of a method for training an ocean wave level observation model is provided for this embodiment. Among them, the ocean wave level observation model training method includes:

[0033] S101. Acquire ocean wave video, ultra-wide-angle sky video, and meteorological observation data; the ocean wave video includes a first telephoto ocean wave video, a second telephoto ocean wave video, a third telephoto ocean wave video, and a wide-angle ocean wave video.

[0034] In this embodiment, the method can obtain ocean wave video through four ship-mounted cameras, and obtain wide-angle sky video through one ship-mounted ultra-wide-angle camera.

[0035] In this embodiment, the four on-board cameras for acquiring ocean wave video include three telephoto cameras and one wide-angle camera.

[0036] In this embodiment, the ultra-wide-angle camera is used to collect sky phenomena directly above it, such as sunny days and cloudy days. ...

Embodiment 2

[0127] Please see figure 2 , figure 2 A schematic structural diagram of an ocean wave level observation model training system provided in this embodiment. Such as figure 2 As shown, the ocean wave level observation model training system includes:

[0128] The acquiring unit 210 is configured to acquire ocean wave video, ultra-wide-angle sky video and meteorological observation data; the ocean wave video includes a first telephoto ocean wave video, a second telephoto ocean wave video, a third telephoto ocean wave video and a wide-angle ocean wave video;

[0129] The encapsulation unit 220 is configured to perform secondary encapsulation on the ocean wave video, ultra-wide-angle sky video, and meteorological observation data to obtain encapsulated ocean wave data, encapsulated sky data, and encapsulated meteorological data;

[0130] The screening unit 230 is used to filter and process the packaged ocean wave data according to the packaged sky data and packaged meteorologic...

Embodiment approach

[0148] As an optional implementation, the ocean wave level observation model training system also includes:

[0149] Judging unit 250, used to judge whether the model accuracy of the first wave level observation model is higher than the preset accuracy;

[0150]The modeling unit 240 is specifically used to perform deep learning modeling based on the meteorological observation data and the first wave level observation model when the model accuracy of the first wave level observation model is higher than the preset accuracy, to obtain the ocean wave level observation model. operate.

[0151] As an optional implementation manner, the modeling unit 240 includes:

[0152] Extraction subunit 241, used to extract meteorological observation data including wind speed data, wind direction data, temperature data, air pressure data, humidity data and visibility data;

[0153] The modeling subunit 244 is used to perform deep learning modeling according to the wind speed data and the firs...

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Abstract

The invention provides an ocean wave level observation model training method and system. The method comprises the following steps: acquiring an ocean wave video, an ultra-wide-angle sky video and meteorological observation data; performing secondary packaging on the sea wave video, the ultra-wide-angle sky video and the meteorological observation data to obtain packaged sea wave data, packaged sky data and packaged meteorological data; screening the packaged sea wave data according to the packaged sky data and the packaged meteorological data to obtain effective sea wave data; according to a preset GPU convolutional neural network, performing deep learning modeling on the effective sea wave data to obtain a first wave level observation model; and performing deep learning modeling according to the meteorological observation data and the first wave level observation model to obtain an ocean wave level observation model. Therefore, by implementing the implementation mode, a high-quality ocean wave level observation model can be trained, so that ocean waves can be observed with lower cost, higher precision and higher stability.

Description

technical field [0001] The present application relates to the field of ocean wave observation, in particular to a method and system for training an ocean wave level observation model. Background technique [0002] At present, most of the ocean wave observations are concentrated in the coastal and offshore areas, and the constantly updated offshore ocean wave observation methods have been able to better observe the level of offshore ocean waves. However, according to the statistics of sea wave levels along the coast, light waves and below account for about 70%, and medium waves account for about 30%. Except for occasional short-term large waves affected by severe weather processes such as typhoons, there are no high-level waves. [0003] However, waves in the ocean vary depending on the season and sea area, and generally all waves in the wave scale appear. It can be seen that there is a great difference between offshore waves and ocean waves, which makes the offshore wave ob...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06V10/778G06K9/62G06N3/04G06N3/08
CPCG06N3/08G06N3/045G06F18/217Y02A90/10
Inventor 王先桥肖林刘思晗王君成任诗鹤林晓娟张弛姚佳伟
Owner 国家海洋环境预报中心
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