Prediction of Dissolved Oxygen Concentration in Sewage Treatment Process Based on Data Recognition Algorithm

In order to realize the real-time and accurate prediction of dissolved oxygen concentration in the sewage treatment process, a prediction model of dissolved oxygen concentration in the sewage treatment process based on a data identification algorithm was proposed. Combined with the data characterist...

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Main Authors: Lili Ma, Jiangping Liu
Format: Article
Language:English
Published: Wiley 2022-01-01
Series:International Journal of Analytical Chemistry
Online Access:http://dx.doi.org/10.1155/2022/1525902
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author Lili Ma
Jiangping Liu
author_facet Lili Ma
Jiangping Liu
author_sort Lili Ma
collection DOAJ
description In order to realize the real-time and accurate prediction of dissolved oxygen concentration in the sewage treatment process, a prediction model of dissolved oxygen concentration in the sewage treatment process based on a data identification algorithm was proposed. Combined with the data characteristics of the sewage treatment process, a new sample similarity measure is defined to extract more representative modeling data. In the improved algorithm, in order to improve the quality of the initial members of the basic fireworks algorithm, the chaos algorithm is integrated. The search mechanism of the basic fireworks algorithm is improved, and the optimization process is divided into two stages based on the set criteria, and two groups are used simultaneously. The results show that compared with the basic FWA algorithm, the CFWA algorithm makes better use of the chaotic search mechanism. On the one hand, it avoids the excessive random or blind selection of the initial weight threshold of the neural network in the initial stage; on the other hand, in the optimization process of the weight threshold, two types of search mechanisms, FWA and COA, are used to give full play to their respective strengths and to continuously conduct information exchange and mutual cooperation between groups and individuals. The number of times is better than the basic FWA algorithm, and the training error and generalization error of the CFWA model in the simulation results of the soft sensor model are also better than those of the FWA model, which fully verifies the effectiveness of the CFWA algorithm. It is proved that the data recognition algorithm can effectively predict sewage treatment. It is proved that the data recognition algorithm can effectively predict the dissolved oxygen concentration in wastewater treatment process. It provides a new measurement method for some key process variables that cannot be measured or are difficult to measure in complex chemical processes.
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spelling doaj-art-066b5c6de6b84ca9992f22351515c84f2025-02-03T01:32:30ZengWileyInternational Journal of Analytical Chemistry1687-87792022-01-01202210.1155/2022/1525902Prediction of Dissolved Oxygen Concentration in Sewage Treatment Process Based on Data Recognition AlgorithmLili Ma0Jiangping Liu1College of Computer and Information Engineering of the Inner Mongolia Agricultural UniversityCollege of Computer and Information Engineering of the Inner Mongolia Agricultural UniversityIn order to realize the real-time and accurate prediction of dissolved oxygen concentration in the sewage treatment process, a prediction model of dissolved oxygen concentration in the sewage treatment process based on a data identification algorithm was proposed. Combined with the data characteristics of the sewage treatment process, a new sample similarity measure is defined to extract more representative modeling data. In the improved algorithm, in order to improve the quality of the initial members of the basic fireworks algorithm, the chaos algorithm is integrated. The search mechanism of the basic fireworks algorithm is improved, and the optimization process is divided into two stages based on the set criteria, and two groups are used simultaneously. The results show that compared with the basic FWA algorithm, the CFWA algorithm makes better use of the chaotic search mechanism. On the one hand, it avoids the excessive random or blind selection of the initial weight threshold of the neural network in the initial stage; on the other hand, in the optimization process of the weight threshold, two types of search mechanisms, FWA and COA, are used to give full play to their respective strengths and to continuously conduct information exchange and mutual cooperation between groups and individuals. The number of times is better than the basic FWA algorithm, and the training error and generalization error of the CFWA model in the simulation results of the soft sensor model are also better than those of the FWA model, which fully verifies the effectiveness of the CFWA algorithm. It is proved that the data recognition algorithm can effectively predict sewage treatment. It is proved that the data recognition algorithm can effectively predict the dissolved oxygen concentration in wastewater treatment process. It provides a new measurement method for some key process variables that cannot be measured or are difficult to measure in complex chemical processes.http://dx.doi.org/10.1155/2022/1525902
spellingShingle Lili Ma
Jiangping Liu
Prediction of Dissolved Oxygen Concentration in Sewage Treatment Process Based on Data Recognition Algorithm
International Journal of Analytical Chemistry
title Prediction of Dissolved Oxygen Concentration in Sewage Treatment Process Based on Data Recognition Algorithm
title_full Prediction of Dissolved Oxygen Concentration in Sewage Treatment Process Based on Data Recognition Algorithm
title_fullStr Prediction of Dissolved Oxygen Concentration in Sewage Treatment Process Based on Data Recognition Algorithm
title_full_unstemmed Prediction of Dissolved Oxygen Concentration in Sewage Treatment Process Based on Data Recognition Algorithm
title_short Prediction of Dissolved Oxygen Concentration in Sewage Treatment Process Based on Data Recognition Algorithm
title_sort prediction of dissolved oxygen concentration in sewage treatment process based on data recognition algorithm
url http://dx.doi.org/10.1155/2022/1525902
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AT jiangpingliu predictionofdissolvedoxygenconcentrationinsewagetreatmentprocessbasedondatarecognitionalgorithm