Argentine shortfin squid central fishery prediction method

A prediction method and fishing ground technology, applied in neural learning methods, biological neural network models, instruments, etc., can solve the problem of not considering the influence of forecasting models, seldom considering the real-time problems of marine environmental factors, and the selection of time-space scales and environmental factors. In-depth research on issues such as

Inactive Publication Date: 2016-12-21
SHANGHAI OCEAN UNIV
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Problems solved by technology

[0003] At present, there are many methods to predict the central fishing grounds of oceanic economic soft fishes. These methods are based on the relationship and law between fish behavior, biological status and environmental conditions, and are essentially based on production statistical data samples. "empirical knowledge" is used for forecasting, but in the past, there was no in-depth study on the selection of time and space scales and environmental factors of samples, which were basically set based on experience (such as large fishing areas and small fishing areas, etc.), without considering the impact of different time and space scales and environmental factors. The influence of the central fishery forecast model; in the selection of the model, the real-time problem of marine environmental factors is rarely considered

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  • Argentine shortfin squid central fishery prediction method
  • Argentine shortfin squid central fishery prediction method
  • Argentine shortfin squid central fishery prediction method

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[0008] In order to be able to compare the optimal spatio-temporal scales of the central fishery forecast model of oceanic economic soft fishes, three levels of spatial scales were set, the latitude and longitude were 0.25°×0.25°, 0.5°×0.5°, 1.0°×1.0° respectively, two The time scales for each level are weeks and months.

[0009] The fishery abundance of pelagic commercial catfish is not only affected by spatio-temporal factors, but also by habitat environmental factors. Among them, SST is the most widely studied and most important influencing factor. Therefore, SST is selected as the main environmental factor, supplemented by two environmental factors, SSH and Chl-a. Therefore, when establishing the central fishery forecast model, the environmental factors are divided into Four situations (Table 1).

[0010] Table 1 Environmental factor settings

[0011]

[0012]

[0013] Therefore, according to the time-space scale of the sample and the setting of environmental factor...

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Abstract

A method for predicting central fishing grounds of Argentinian soft fish, including time-space scale setting, environmental factor setting, and establishment of a central fishing ground prediction model, which is characterized in that the time-space scale setting adopts three levels of spatial scales, and two levels of time scales of weeks and months; Environmental factors are set using surface temperature (SST) as the main environmental factor, supplemented by two environmental factors, sea surface height (SSH) and chlorophyll a (Chl-a), and the environmental factors are divided into four situations when establishing the central fishery prediction model : According to the setting of time-space scale and environmental factors, a set of sample plans for 24 situations is established; the central fishery prediction model adopts the classic error backpropagation BP neural network model, and the BP neural network model has a three-layer structure, namely the input layer and the hidden layer And the output layer, the input layer inputs the spatio-temporal factors and environmental factors of the fishery, and the output layer outputs CPUE or the fishery level index converted from CPUE for forecasting.

Description

technical field [0001] The invention relates to a method for forecasting a central fishery, in particular to a method for forecasting a central fishery for Argentine squid. Background technique [0002] The central fishery forecast is a kind of quick fishery status report. Accurate central fishery forecast can increase the catch yield and reduce fuel costs for fishing production. The fishery status quick report is the position of the central fishery and the movement of fish in the next 24 hours or a few days. And the possibility of prosperous development is predicted, and the fishery news command unit transmits the forecast content to the production ships quickly and accurately through the telecommunication system every day, so as to achieve the purpose of commanding on-site production. [0003] At present, there are many methods to predict the central fishing grounds of oceanic economic soft fishes. These methods are based on the relationship and law between fish behavior, ...

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06N3/02G06N3/08G06Q50/02
CPCG06N3/02G06N3/084G06Q50/02
Inventor 陈新军汪金涛金岳胡贯宇魏广恩陈洋洋李娜
Owner SHANGHAI OCEAN UNIV
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