Method for predicting cryptocaryoniosis in Larimichthys crocea
A technology that stimulates cryptonium disease and prediction methods, which is applied in fish farming, application, climate change adaptation and other directions, and can solve the problem that there is no research report on the prediction technology of water environment factors, and there is no large yellow croaker to stimulate the mature method of predicting cryptonium disease, etc. problems, to achieve the effect of facilitating disease prevention and control, prevention and mitigation of disasters, and convenient use
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Embodiment 1
[0032] Example 1: Establishment of water environment factor prediction technology.
[0033] The present invention first collects the monthly monitoring data of water temperature, dissolved oxygen and ammonia nitrogen value of 5 different stations in the large yellow croaker breeding sea area of Sandu Bay, Ningde, Fujian (the water quality data comes from the East China Sea Sub-bureau Fujian Ocean Environment Monitoring Center Station of the State Oceanic Administration, and the disease data From the Department of Disease Prevention and Control of Fujian Marine Aquaculture Technology Extension General Station, data collection and analysis are in accordance with national standards), and a regression equation reflecting its changing trend and historical law was established. Among them, the months are recorded as 1-65 according to January 2005 to May 2010; the water temperature, dissolved oxygen, and ammonia nitrogen values at different stations are respectively averaged, and...
Embodiment 2
[0050] Example 2 Accuracy Analysis of Water Environment Factor Prediction Technology
[0051] According to the fitting equation established in Example 1, the water temperature, dissolved oxygen and ammonia nitrogen values in July of a certain year were predicted. Table 1 compares the predicted value with the actual value. It can be seen from Table 1 that the average relative error between the predicted value and the actual value of each factor is within 10%, indicating that the water quality prediction effect is good.
[0052] Table 1 Comparison of predicted and actual values of water quality factors in July of a certain year
[0053] factor
[0054] Note: relative error = (predicted value - actual value) / actual value * 100%
Embodiment 3
[0055] Example 3 stimulates the advance prediction of Cryptocaryon morbidity
[0056] Collect the historical month, water temperature, dissolved oxygen and ammonia nitrogen 4 factors and the corresponding severity level data of cryptocystosis, use the random forest program package loaded in the R software environment to analyze the above data, and establish the month, water temperature, dissolved oxygen and A mathematical model for distinguishing disease grades with 4 factors of ammonia nitrogen.
[0057] The predicted value of water temperature in July of a certain year is 28.6°C, the predicted value of dissolved oxygen is 6.04 mg / l, and the predicted value of ammonia nitrogen is 0.034 mg / l. Substituting it into the established disease discrimination model can predict the stimulus in July of a certain year. The incidence of cryptocystosis.
[0058] After calculation, the degree of stimulating cryptocystosis in July of a certain year is level 2, that is to say, it is in a sta...
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