Water quality parameter time series prediction method based on relevance vector machine regression

A correlation vector machine and water quality parameter technology, applied in the direction of electrical digital data processing, special data processing applications, instruments, etc., can solve problems such as low precision, unstable data results, and inability to realize time series prediction

Active Publication Date: 2014-07-23
ZHEJIANG NORMAL UNIVERSITY
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Problems solved by technology

The Chinese patent application number 20131013190.7 provides a sewage water quality monitoring method and device. The prediction model used in this method is a soft sensor method based on correlation vector machine. Compared with the model established by neural network and support vector machine modeling method , has better applicability and higher prediction accuracy, but this method has the following defects: 1: Since the relevant parameters are used for analysis to obtain the content of effluent total nitrogen or...

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  • Water quality parameter time series prediction method based on relevance vector machine regression
  • Water quality parameter time series prediction method based on relevance vector machine regression
  • Water quality parameter time series prediction method based on relevance vector machine regression

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[0031] like figure 1 As shown, the time series prediction method of water quality parameters based on correlation vector machine regression includes the following steps:

[0032] Step 1: Collect the historical data of water quality parameters from the automatic water quality monitoring station and preprocess the data to complete the missing data in the historical data. Preprocessing, then frequency filtering, and finally using the least squares method for best fitting comparison, find out the fitting value corresponding to the observation point of 0 in the final fitting curve, which is the complement value of the actual missing data , so as to substitute the completion value to complete the missing data in the historical data;

[0033] Step 2: The first 2 / 3 of the preprocessed water quality parameter historical data is used as a training sample set, and the latter 1 / 3 of the data is used as a test sample set;

[0034] Step 3: Use the water quality parameter values ​​of sever...

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Abstract

The invention provides a water quality parameter time series prediction method based on relevance vector machine regression. The water quality parameter time series prediction method comprises the following steps of 1 acquiring water quality parameter historical data from an automatic water quality monitoring station and performing data pre-processing; 2 using front 2/3 data in the pro-processed water quality parameter historical data as a training sample set and using rear 1/3 data as a testing sample set; 3 using the training sample set to train an RVM, using the testing sample set to test the trained RVM so as to obtain a water quality parameter time series prediction model based on the RVM regression; 4 using the water quality parameter time series prediction model based on the RVM regression to predict new water quality parameters. The water quality parameter time series prediction method can perform time series prediction, is large in prediction range, high in accuracy and good in prediction stability, and can provide probabilistic output, give a predicted confidence interval while performing prediction, reduce the prediction time and timely observe water quality parameter change.

Description

technical field [0001] The invention relates to the field of water quality monitoring, in particular to a water quality parameter time series prediction method based on correlation vector machine regression. Background technique [0002] The time series of water quality parameters is an ordered monitoring data sequence, which reflects the distribution of a certain water quality parameter in time, such as the monitoring data of the water quality parameter PH value of a watershed section from the first week to the 50th week of a certain year. The water quality parameter time series prediction method is to use the obtained historical time series collection, analyze the inherent statistical characteristics and development laws of the historical data in the collection, establish a water quality parameter time series prediction model, and use the model to obtain forecast data to indicate the future. Data trends. Time series prediction of water quality parameters is the basic work...

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Application Information

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IPC IPC(8): G06F19/00
Inventor 汪晓东笪英云
Owner ZHEJIANG NORMAL UNIVERSITY
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