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首页> 外文期刊>Mathematical Problems in Engineering >Application of Extreme Learning Machine for Predicting Chlorophyll-a Concentration Inartificial Upwelling Processes
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Application of Extreme Learning Machine for Predicting Chlorophyll-a Concentration Inartificial Upwelling Processes

机译:极端学习机预测叶绿素 - 一种浓度的血清浓度的应用

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Artificial upwelling, artificially pumping up nutrient-rich ocean waters from deep to surface, is increasingly applied to stimulating phytoplankton activity. As a proxy for the amount of phytoplankton present in the ocean, the concentration of chlorophyll a (chl-a) may be influenced by water physical factors altered in artificial upwelling processes. However, the accuracy and convenience of measuring chl-a are limited by present technologies and equipment. Our research intends to study the correlations between chl-a concentration and five water physical factors, i.e., salinity, temperature, depth, dissolved oxygen (DO), and pH, possibly affected by artificial upwelling. In this paper, seven models are presented to predict chl-a concentration, respectively. Two of them are based on traditional regression algorithms, i.e., multiple linear regression (MLR) and multivariate quadratic regression (MQR), while five are based on intelligent algorithms, i.e., backpropagation-neural network (BP-NN), extreme learning machine (ELM), genetic algorithm-ELM (GA-ELM), particle swarm optimization-ELM (PSO-ELM), and ant colony optimization-ELM (ACO-ELM). These models provide a quick prediction to study the concentration of chl-a. With the experimental data collected from Xinanjiang Experiment Station in China, the results show that chl-a concentration has a strong correlation with salinity, temperature, DO, and pH in the process of artificial upwelling and PSO-ELM has the best overall prediction ability.
机译:人工上升,人工泵送富含营养丰富的海水从深处泵送,越来越多地应用于刺激浮游植物活动。作为海洋中存在的浮游植物量的代理,叶绿素A(CHL-A)的浓度可能受到人工升值过程中改变的水物理因素的影响。然而,测量CHL-A的准确性和便利性受到现有技术和设备的限制。我们的研究旨在研究CHL-A浓度和五种水物理因素之间的相关性,即盐度,温度,深度,溶解氧(DO)和pH,可能受人工上升的影响。在本文中,提出了七种模型以分别预测CHL-A浓度。其中两个基于传统的回归算法,即多元线性回归(MLR)和多变量二次回归(MQR),而五个是基于智能算法,即反向衰减 - 神经网络(BP-NN),极限学习机( ELM),遗传算法 - ELM(GA-ELM),粒子群优化 - ELM(PSO-ELM)和蚁群优化 - ELM(ACO-ELM)。这些模型提供了快速预测,以研究CHL-A的浓度。随着来自中国的新江实验站收集的实验数据,结果表明,CHL-A浓度与盐度,温度,培养和pH的浓度强烈相关,在人工上升顺和PSO-ELM具有最佳的整体预测能力。

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  • 来源
    《Mathematical Problems in Engineering 》 |2019年第12期| 8719387.1-8719387.11| 共11页
  • 作者单位

    Zhejiang Univ Ocean Coll Zhoushan 316021 Peoples R China;

    Zhejiang Univ Ocean Coll Zhoushan 316021 Peoples R China|Qingdao Natl Lab Marine Sci & Technol Lab Marine Geol Qingdao 266061 Shandong Peoples R China;

    Zhoushan Agr & Forestry Inst Zhejiang Zhoushan 316021 Peoples R China;

    Zhejiang Univ Ocean Coll Zhoushan 316021 Peoples R China;

    Zhejiang Univ Ocean Coll Zhoushan 316021 Peoples R China;

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