Abstract
In this study, we design an intelligent model to predict chlorophyll-a concentration, which is the primary indicator of algal blooms, using extreme learning machine (ELM) models. Modeling algal blooms is important for environmental management and ecological risk assessment. For this purpose, the performance of the designed models was evaluated for four artificial weirs in the Nakdong River, Korea. The Nakdong River has harmful annual algal blooms that can affect health due to exposure to toxins. In contrast to conventional neural network (NN) that use backpropagation (BP) learning methods, ELMs are fast learning, feedforward neural networks that use least square estimates (LSE) for regression. The weights connecting the input layer to the hidden nodes are randomly assigned and are never updated. The dataset used in this study includes air temperature, rainfall, solar radiation, total nitrogen, total phosphorus, N/P ratio, and chlorophyll-a concentration, which were collected on a weekly basis from January 2013 to December 2016. Here, upstream chlorophyll-a concentration data was used in our ELM2 model to improve algal bloom prediction performance. In contrast, the ELM1 model only uses downstream chlorophyll-a concentration data. The experimental results revealed that the ELM2 model showed better performance in comparison to the ELM1 model. Furthermore, the ELM2 model showed good prediction and generalization performance compared to multiple linear regression (LR), conventional neural network with backpropagation (NN-BP), and adaptive neuro-fuzzy inference system (ANFIS).
Highlights
Recent climate change and economic development around the world has been at the cost of environmental deterioration over the same time period, and development has impacted human life directly and indirectly
We applied extreme learning machine (ELM) to chlorophyll-a concentration prediction in four weirs located in the Nakdong
In the design of ELM, sigmoid networks were adopted as the activation function
Summary
Recent climate change and economic development around the world has been at the cost of environmental deterioration over the same time period, and development has impacted human life directly and indirectly. Algal blooms refer to the explosive increase and high concentration of phytoplankton in the ecosystem. This has become a challenge facing human society today as algal blooms are becoming more prevalent throughout the world [1,2]. Hydrology, and climate are the main factors influencing algal blooms in terms of chlorophyll dynamics. The general relationship between environmental conditions and phytoplankton dynamics has been extensively studied in the past [3,4,5], controlling algal blooms. Public Health 2018, 15, 2078; doi:10.3390/ijerph15102078 www.mdpi.com/journal/ijerph
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More From: International Journal of Environmental Research and Public Health
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