Water quality mechanism modeling and water quality prediction method based on drosophila optimization algorithm

A fruit fly optimization algorithm and water quality prediction technology, applied in the field of environmental engineering, can solve the problems that the evolution process of water quality indicators cannot be reasonably explained, the modeling effect depends on the quantity and quality of data, and it is difficult to meet the accuracy requirements, so as to compensate for inaccuracy. , high accuracy, reducing the effect of chance

Active Publication Date: 2018-12-18
BEIJING TECHNOLOGY AND BUSINESS UNIVERSITY
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Problems solved by technology

Both methods have certain advantages. However, the effect of data-driven water quality modeling depends on the quantity and quality of data, and cannot reasonably explain the evolution process of water quality indicators.
At present, the existing classical water quality mechanism models usually contain a large number of unknown parameters, and only given empirical value ranges, it is difficult to predict water quality changes on this basis to meet the accuracy requirements

Method used

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  • Water quality mechanism modeling and water quality prediction method based on drosophila optimization algorithm
  • Water quality mechanism modeling and water quality prediction method based on drosophila optimization algorithm
  • Water quality mechanism modeling and water quality prediction method based on drosophila optimization algorithm

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Experimental program
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Effect test

Embodiment 1

[0058] Step 1: Establish a water quality mechanism model;

[0059] Based on the evolution mechanism of water quality indicators, a water quality mechanism model is established, and the model equation is shown in formula (1).

[0060] Step 2: Construction of water quality mechanism modeling method based on fruit fly optimization algorithm

[0061] The water quality index data comes from the 30-day water quality data at Suzhou Baiyang Bay Jinshu Station from October 11th to November 10th, that is, each group has 8 water quality index data, totaling N D =720 sets of data;

[0062] The maximum number of iterations of the fruit fly optimization algorithm is MaxGeneration=100,

[0063] The number of fruit fly populations is MaxGroup=400,

[0064] Smell concentration threshold ObjSmell=10.

[0065] Calculate the evolution results of 8 water quality indicators according to Table 2 and the above parameter values, and compare them with the particle swarm optimization algorithm and g...

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Abstract

The invention discloses a water quality mechanism modeling and water quality prediction method based on a fruit fly optimization algorithm, belonging to the technical field of environmental engineering. At first, the invention combines the water quality evolution mechanism, and proposes a lake reservoir water quality mechanism modeling and water quality prediction method based on a fruit fly optimization algorithm. Based on the known water quality measurement data, the unknown parameters of the water quality mechanism model are estimated by using Drosophila optimization algorithm. On this basis, the water quality evolution process is predicted by Monte Carlo simulation, and the probability distribution of water quality indexes in the future is obtained, and the water quality prediction isrealized. The invention can establish an accurate water quality mechanism model, and the water quality mechanism modeling method based on the drosophila optimization algorithm can accurately estimateunknown parameters of the water quality mechanism model, which improves the optimization accuracy and speed compared with the prior method; water quality prediction method can effectively realize water quality prediction, and consider more comprehensive, accurate, and overcome the contingency of single-value prediction results.

Description

technical field [0001] The invention designs a water quality mechanism modeling and water quality prediction method based on a fruit fly optimization algorithm, and belongs to the technical field of environmental engineering. Background technique [0002] Water is the foundation of life on our planet, but this precious resource is increasingly under threat. The International Commission on Lake Environment and the United Nations Environment Program have carried out a project entitled "Survey of the State of the World's Lakes". The project collected detailed data on 217 lakes around the world. Through this project, it was possible to identify six major environmental issues that all have a significant impact on water quality, eutrophication being one of them. At present, the eutrophication percentages of lakes in different regions of the world are: 54% in Asia, 53% in Europe, 28% in Africa; 48% in North America; 41% in South America, and more than 60% in South Africa. In Chi...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06F17/50G06N3/00G06N3/12
CPCG06F30/20G06N3/006G06N3/126Y02A20/152
Inventor 赵峙尧王小艺周宇琴许继平王立于家斌
Owner BEIJING TECHNOLOGY AND BUSINESS UNIVERSITY
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