Affiliation:
1. School of Electronic Information Engineering, Changchun University of Science and Technology, Changchun, Jilin, China
Abstract
Abstract
ReliefF algorithm was used to analyze the weight of each water quality evaluation factor, and then based on the Relevance Vector Machine (RVM), Particle Swarm Optimization (PSO) was used to optimize the kernel width factor and hyperparameters of RVM to build a water quality evaluation model, and the experimental results of RVM, PSO-RVM, ReliefF-RVM and PSO-ReliefF-RVM were compared. The results show that ReliefF algorithm, combined with threshold value, selects 5 evaluation factors with significant weight from eight evaluation factors, which reduces the amount of data used in the model, CSI index is used to calculate the separability of each evaluation factor combination. The results show that the overall separability of the combination is best when the evaluation factor with significant weight is reserved. When different water quality evaluation factors were included, the evaluation accuracy of PSO-ReliefF-RVM model reached 95.74%, 14.23% higher than that of RVM model, which verified the effectiveness of PSO algorithm and ReliefF algorithm, and had a higher guiding significance for the study of water quality grade evaluation. It has good practical application value.
Subject
Water Science and Technology,Environmental Engineering
Reference29 articles.
1. Research on water quality prediction of Xijiang River based on IMPROVED particle swarm optimization algorithm and BP neural network;Research and Progress in Hydrodynamics (Series A),2020
2. Analysis of influencing factors of water quality of main reservoirs in henan province based on decision tree;Journal of Wuhan University (Engineering Edition),2019
3. Application of entropy-set pair analysis method in groundwater quality evaluation in Dawu;Groundwater,2021
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