Abstract

Harmful algal blooms have negatively affected the aquaculture industry and aquatic ecosystems globally. Remote sensing using satellite sensor systems has been applied on large spatial scales with high temporal resolutions for effective monitoring of harmful algal blooms in coastal waters. However, oceanic color satellites have limitations, such as low spatial resolution of sensor systems and the optical complexity of coastal waters. In this study, bands 1 to 4, obtained from Landsat-8 Operational Land Imager satellite images, were used to evaluate the performance of empirical ocean chlorophyll algorithms using machine learning techniques. Artificial neural network and support vector machine techniques were used to develop an optimal chlorophyll-a model. Four-band, four-band-ratio, and mixed reflectance datasets were tested to select the appropriate input dataset for estimating chlorophyll-a concentration using the two machine learning models. While the ocean chlorophyll algorithm application on Landsat-8 Operational Land Imager showed relatively low performance, the machine learning methods showed improved performance during both the training and validation steps. The artificial neural network and support vector machine demonstrated a similar level of prediction accuracy. Overall, the support vector machine showed slightly superior performance to that of the artificial neural network during the validation step. This study provides practical information about effective monitoring systems for coastal algal blooms.

Highlights

  • Harmful algal blooms (HABs) are among the problematic environmental issues worldwide [1,2]

  • The purpose of this research was to evaluate the performance of ocean chlorophyll (OC) algorithms and develop optimal artificial neural network (ANN) and support vector regression (SVR) models for chl-a estimation in coastal waters

  • Seven OC algorithms were evaluated after applying various calibration gains

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Summary

Introduction

Harmful algal blooms (HABs) are among the problematic environmental issues worldwide [1,2]. Fish-killing events by red tides have been observed in Korea; a red tide event of C. polykrikoides was first recorded during the 1980s and the frequency of red tide events has gradually increased up to the 2000s [5]. HABs lead to severe damage to the aquaculture industry, resulting in shellfish and fish kills, and may even threaten human health [6,7,8,9]. Huge economic losses are caused by HABs amounting to approximately $1 billion per year in Europe and $100 million per year in the USA [10]. Economic losses suffered by Korea resulting from HABs since the 1980s amount to $121 million [11]

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