Modelling Microcystis Cell Density in a Mediterranean Shallow Lake of Northeast Algeria (Oubeira Lake), Using Evolutionary and Classic Programming

Q3 Social Sciences
Salah Arif, Adel Djellal, Nawel Djebbari, S. Belhaoues, Hassen Touati, Fatma Zohra Guellati, M. Bensouilah
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引用次数: 0

Abstract

Caused by excess levels of nutrients and increased temperatures, freshwater cyanobacterial blooms have become a serious global issue. However, with the development of artificial intelligence and extreme learning machine methods, the forecasting of cyanobacteria blooms has become more feasible. We explored the use of multiple techniques, including both statistical [Multiple Regression Model (MLR) and Support Vector Machine (SVM)] and evolutionary [Particle Swarm Optimization (PSO), Genetic Algorithm (GA), and Bird Swarm Algorithm (BSA)], to approximate models for the prediction of Microcystis density. The data set was collected from Oubeira Lake, a natural shallow Mediterranean lake in the northeast of Algeria. From the correlation analysis of ten water variables monitored, six potential factors including temperature, ammonium, nitrate, and ortho-phosphate were selected. The performance indices showed; MLR and PSO provided the best results. PSO gave the best fitness but all techniques performed well. BSA had better fitness but was very slow across generations. PSO was faster than the other techniques and at generation 20 it passed BSA. GA passed BSA a little further, at generation 50. The major contributions of our work not only focus on the modelling process itself, but also take into consideration the main factors affecting Microcystis blooms, by incorporating them in all applied models.
阿尔及利亚东北部地中海浅湖(Oubeira湖)微囊藻细胞密度的进化和经典规划建模
由于营养过剩和温度升高,淡水蓝藻大量繁殖已经成为一个严重的全球性问题。然而,随着人工智能和极限学习机方法的发展,蓝藻华的预测变得更加可行。我们探索了使用多种技术,包括统计[多元回归模型(MLR)和支持向量机(SVM)]和进化[粒子群优化(PSO),遗传算法(GA)和蜂群算法(BSA)]来近似预测微囊藻密度的模型。数据集是从阿尔及利亚东北部的天然地中海浅湖Oubeira湖收集的。通过对监测的10个水分变量进行相关性分析,筛选出温度、铵态氮、硝态氮和正磷酸盐6个潜在影响因子。性能指标显示:MLR和PSO的效果最好。PSO的适应度最好,但所有方法均表现良好。BSA具有较好的适合度,但代际间的适应速度很慢。PSO比其他技术更快,在第20代时超过了BSA。GA在第50代进一步超过了BSA。我们工作的主要贡献不仅集中在建模过程本身,而且还考虑了影响微囊藻华的主要因素,将它们纳入所有应用模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Geomatics and Environmental Engineering
Geomatics and Environmental Engineering Earth and Planetary Sciences-Computers in Earth Sciences
CiteScore
2.30
自引率
0.00%
发文量
27
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