Lake and reservoir algal bloom predicating method based on multielement nonstationary time series analysis and neural network and support vector machine compensation

A technology of time series analysis and support vector machine, which is applied in special data processing applications, instruments, electrical digital data processing, etc., and can solve problems such as low accuracy of algae bloom prediction, prediction, and difficult small sample data

Active Publication Date: 2014-06-25
BEIJING TECHNOLOGY AND BUSINESS UNIVERSITY
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Problems solved by technology

[0010] The present invention studies the prediction method of water bloom in lakes and reservoirs, and aims to solve the problems of low precision of existing water bloom prediction and difficulty in predicting small sample data, etc., and aim at the characteristic factors of the formation process of water bloom that actually have non-stationary and nonlinear characteristics Time series, using the multivariate non-stationary time series analysis method to model, and considering different sample sizes, using the neural network and support vector machine method suitable for nonlinear system modeling to compensate the prediction error of the time series model, thereby improving the water bloom Prediction accuracy provides effective reference for environmental protection departments and plays an important role in the protection and improvement of lake water environment

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  • Lake and reservoir algal bloom predicating method based on multielement nonstationary time series analysis and neural network and support vector machine compensation
  • Lake and reservoir algal bloom predicating method based on multielement nonstationary time series analysis and neural network and support vector machine compensation
  • Lake and reservoir algal bloom predicating method based on multielement nonstationary time series analysis and neural network and support vector machine compensation

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Embodiment 1

[0113] Step 1. Multivariate non-stationary time series modeling of characteristic factors;

[0114] Nine water bloom characteristic factors were monitored from June 2009 to June 2012 in Taihu Lake, Jiangsu Province, see Table 1 for details.

[0115] Table 1 Monitoring list of characteristic factors of water bloom

[0116] name

[0117] Among them, chlorophyll is the characterization factor of water bloom, and the other 8 characteristic factors are the influencing factors of water bloom. The monitoring equipment recorded a total of 1050 days of water bloom characteristic factor data, and the 901-day monitoring data after the original time series of 9 characteristic factors were zero-meanized was used for multivariate non-stationary time-series modeling, and the characteristic factors from 901 days to 1050 days For multivariate non-stationary time-series prediction of chlorophyll, see image 3 with Figure 4 .

[0118] In order to compare the error prediction resul...

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Abstract

The invention discloses a lake and reservoir algal bloom predicating method based on multielement nonstationary time series analysis and neural network and support vector machine compensation, and belongs to the technical field of water quality monitoring. The method comprises the steps of characteristic factor nonstationary time series modeling, error influence factor kernel principal component analysis, neural network error modeling according to the situation of large sample data, support vector machine error modeling according to the situation of small sample data, final error compensation and predicating result obtaining. The problems that existing algal bloom predication precision is not high, and predication is hard to carry out according to the small sample data are solved, the description of the algal bloom forming process corresponds to reality better, and the result of algal bloom modeling predication is more accurate. The advantage compensation of a time series analysis method suitable for linear system modeling and a statistical learning method suitable for nonlinear system modeling is achieved, and the algal bloom predication accuracy is improved.

Description

technical field [0001] The invention relates to a water bloom prediction method, which belongs to the technical field of water quality monitoring. Specifically, it refers to performing time series modeling and prediction on the basis of multivariate non-stationary time series analysis of the random process of water bloom generation of various characteristic factors. Neural network or support vector machine algorithm is used to modify the prediction model to improve the prediction accuracy of algae bloom prediction method. Background technique [0002] With the development of social economy, the status and role of water in national economic and social development are becoming more and more prominent. However, in recent years, due to the excessive intake of plant nutrients such as nitrogen and phosphorus in my country's lakes and reservoirs, algae and other aquatic plants have grown abnormally, water transparency and dissolved oxygen have decreased, and fish and other organism...

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06F19/00
Inventor 王立王小艺许继平于家斌施彦王凌斌
Owner BEIJING TECHNOLOGY AND BUSINESS UNIVERSITY
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