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Method and system for the analysis of the cause of marine algae and its concentration prediction based on machine learning

A machine learning and concentration prediction technology, applied in machine learning, instrumentation, informatics, etc., can solve problems such as inability to reflect correlation, achieve the effect of improving generalization and ensuring training speed

Active Publication Date: 2021-10-26
SHANDONG UNIV
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  • Abstract
  • Description
  • Claims
  • Application Information

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Problems solved by technology

However, this method has certain requirements for the form of the sequence, which needs to meet the stationarity, and its prediction results have nothing to do with the environmental physical parameters, and cannot reflect the correlation

Method used

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  • Method and system for the analysis of the cause of marine algae and its concentration prediction based on machine learning
  • Method and system for the analysis of the cause of marine algae and its concentration prediction based on machine learning
  • Method and system for the analysis of the cause of marine algae and its concentration prediction based on machine learning

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Embodiment 1

[0044] This embodiment provides a method for analyzing the cause of marine algae and predicting its concentration based on machine learning, to find out the factors affecting the occurrence of harmful algal blooms, and to predict the concentration of algal cells in the water body.

[0045] Please refer to the attached figure 1 , the method for analyzing the cause of formation of marine algae based on machine learning and the concentration prediction method comprises the following steps:

[0046] S101. Obtain data including algae cell concentration and environmental parameters related to the concentration, and construct a data set.

[0047]Specifically, a large amount of data measured by the ocean observation system includes algae cell concentration data, and each algae cell concentration corresponds to a set of environmental parameters, including water temperature, ammonia, chlorophyll, nitrite, silicate, etc. Using all the algae cell concentration data and the environmental ...

Embodiment 2

[0097] The present embodiment provides a machine learning-based marine algae cause analysis and concentration prediction system, the system comprising:

[0098] The data acquisition module is used to obtain a large amount of algae cell concentration data and concentration-related environmental parameters, construct a data set, and standardize it, and divide the processed data set into a training set and a test set;

[0099] The optimal prediction model selection module is used to perform feature selection on the environmental parameters in the training set to obtain a variety of feature subsets, and perform multiple 10-fold cross-validation on all feature subsets on a variety of different machine learning algorithms to obtain each The optimal feature subset corresponding to the machine learning algorithm and its evaluation index; compare the evaluation indexes of all machine learning algorithms, select the machine learning algorithm with the best evaluation index as the optimal p...

Embodiment 3

[0103] This embodiment provides a computer-readable storage medium on which a computer program is stored, and it is characterized in that, when the program is executed by a processor, the following figure 1 The steps in the machine learning-based method for analyzing the cause of marine algae and predicting its concentration are shown.

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Abstract

The invention discloses a method and system for analyzing the cause of marine algae and predicting its concentration based on machine learning. The method includes the following steps: constructing a data set, performing standardized processing on it, and dividing the processed data set into a training set and a test set set; feature selection is performed on the environmental parameters in the training set to obtain a variety of feature subsets, and all feature subsets are verified multiple times on a variety of different machine learning algorithms to obtain the optimal feature subset corresponding to each machine learning algorithm and its evaluation index; select the machine learning algorithm with the best evaluation index as the optimal prediction model; use the optimal prediction model to predict the algae concentration corresponding to the optimal feature subset; use the GBDT model to train the environmental parameter data in the data set, and obtain the optimal The importance of each environmental parameter in the optimal feature subset is used to analyze the cause of algal formation.

Description

technical field [0001] The present disclosure relates to the technical field of harmful algal bloom prediction, in particular to a machine learning-based method and system for analyzing the cause of marine algae and predicting its concentration. Background technique [0002] In the research on the prediction of harmful algal blooms, the existing prediction methods of harmful algal blooms mainly include: nonlinear dynamics, statistical prediction methods, machine learning prediction methods, etc. [0003] The nonlinear dynamics method theoretically studies the ecological dynamic behavior of single-population red tide algae, multi-population red tide algae and red tide food chain, clarifies the nonlinear dynamic characteristics of the model, and puts forward the ecological dynamic mechanism of red tide occurrence. But it will be very difficult to solve when the number of features is large. [0004] Statistical forecasting methods are suitable for statistical analysis of large...

Claims

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Application Information

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Patent Type & Authority Patents(China)
IPC IPC(8): G16B40/00G06N20/00
CPCG06N20/00G16B40/00
Inventor 高瑞于沛轩刘治平张道良
Owner SHANDONG UNIV
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