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Wetland effluent ammonia nitrogen concentration prediction method and system based on hybrid neural network

A technology of mixed neural network and ammonia nitrogen concentration, applied in the field of wetland effluent ammonia nitrogen concentration prediction, can solve problems such as difficulty in finding the global optimal solution, improve robustness and generalization ability, shorten time, and fall into local minimum The effect of reducing the chance of

Pending Publication Date: 2022-07-05
HARBIN INST OF TECH SHENZHEN GRADUATE SCHOOL
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  • Application Information

AI Technical Summary

Problems solved by technology

However, these methods generally have the problem of being easily trapped in a local minimum and difficult to find a global optimal solution.
Moreover, for water quality prediction, there are many input water quality indicators, more than 8 items, how to process the input multiple indicators, put forward useful information, use for subsequent processing and make accurate predictions, and reduce prediction errors. difficulty

Method used

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  • Wetland effluent ammonia nitrogen concentration prediction method and system based on hybrid neural network
  • Wetland effluent ammonia nitrogen concentration prediction method and system based on hybrid neural network
  • Wetland effluent ammonia nitrogen concentration prediction method and system based on hybrid neural network

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Embodiment 1

[0141] Collect 185 sets of water quality and environmental data on the inlet and outlet sections of constructed wetlands. The collected data is a set of 11-dimensional data sets, including water quality data indicators COD value, TP value, SS value, TN value, BOD5 (water quality five-day biochemical value) Oxygen demand) value, pH value, the water volume indicators include the influent flow rate and rainfall, and the atmospheric environment indicators include temperature, humidity, and atmospheric pressure; the data are shown in Table 1:

[0142] Table 1

[0143]

[0144]

[0145]

[0146]

[0147]

[0148]

[0149] Step 1: Using the moving average method, use the following formula to smooth the output indicators of the obtained samples: effluent ammonia nitrogen, which includes:

[0150] Formula: Y t =W t +W t-1 +...+W t-n

[0151] Y t : the average ammonia nitrogen concentration in the effluent after t days,

[0152] W t : effluent ammonia nitrogen ...

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Abstract

The invention provides a wetland effluent ammonia nitrogen concentration prediction method and system based on a hybrid neural network, and the method comprises the steps: carrying out the principal component analysis and moving average processing of the obtained water quality environment data of the water inlet and outlet section of a constructed wetland, and obtaining input data; the number of indexes of the water quality environment data is not less than 8; constructing a training set and a test set by adopting input data, and constructing a prediction model by adopting a BP neural network; optimizing the weight and the threshold value of the BP neural network by adopting a genetic algorithm to obtain an optimized weight value and an optimized threshold value, and substituting the optimized weight value and the optimized threshold value into the neural network to complete the optimization of the neural network to obtain an optimized model; training the optimized model by adopting an LM algorithm to obtain an optimal water quality parameter prediction model; and predicting the ammonia nitrogen concentration of the constructed wetland to be predicted by using the test set. By adopting the technical scheme of the invention, the robustness and generalization ability of the model are improved, and the accuracy of effluent ammonia nitrogen concentration prediction is improved.

Description

technical field [0001] The invention belongs to the technical field of calculators, and in particular relates to a method and system for predicting the concentration of ammonia nitrogen in wetland effluent based on a hybrid neural network. Background technique [0002] At present, the multi-dimensional data-driven model has achieved remarkable results in the prediction of effluent water quality, among which the neural network technology has the best prediction effect. Neural network is an algorithm model extracted from the simplification of biological nervous system. In recent years, it is widely used in the field of urban sewage treatment due to its high robustness and good fitting effect on multivariate nonlinear relationships. At present, the neural networks commonly used in sewage treatment include error back propagation neural network, radial basis function neural network, genetic algorithm, recurrent neural network, long short-term memory neural network and so on. How...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06Q10/04G06Q10/06G06Q50/06G06N3/04G06N3/08
CPCG06Q10/04G06Q10/0639G06Q50/06G06N3/086G06N3/044
Inventor 杨博文冯骁驰
Owner HARBIN INST OF TECH SHENZHEN GRADUATE SCHOOL
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