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Predicting fish kills and toxic blooms in an intensive mariculture site in the Philippines using a machine learning model

dc.citation.journaltitleScience of The Total Environment
dc.contributor.authorYñiguez, Aletta T.
dc.contributor.authorOttong, Zheina J.
dc.coverage.spatialPhilippines
dc.date.accessioned2025-06-22T18:33:44Z
dc.date.issued2020-03
dc.description.abstractHarmful algal blooms (HABs) that produce toxins and those that lead to fish kills are global problems that appear to be increasing in frequency and expanding in area. One way to help mitigate their impacts on people's health and livelihoods is to develop early-warning systems. Models to predict and manage HABs typically make use of complex multi-model structures incorporating satellite imagery and frequent monitoring data with different levels of detail into hydrodynamic models. These relatively more sophisticated methods are not necessarily applicable in countries like the Philippines. Empirical statistical models can be simpler alternatives that have also been successful for HAB forecasting of toxic blooms. Here, we present the use of the random forest, a machine learning algorithm, to develop an early-warning system for the prediction of two different types of HABs: fish kill and toxic bloom occurrences in Bolinao-Anda, Philippines, using data that can be obtained from in situ sensors. This site features intensive and extensive mariculture activities, as well as a long history of HABs. Data on temperature, salinity, dissolved oxygen, pH and chlorophyll from 2015 to 2017 were analyzed together with shellfish ban and fish kill occurrences. The random forest algorithm performed well: the fish kill and toxic bloom models were 96.1% and 97.8% accurate in predicting fish kill and shellfish ban occurrences, respectively. For both models, the most important predictive variable was a decrease in dissolved oxygen. Fish kills were more likely during higher salinity and temperature levels, whereas the toxic blooms occurred more at relatively lower salinity and higher chlorophyll conditions. This demonstrates a step towards integrating information from data that can be obtained through real-time sensors into a an early-warning system for two different types of HABs. Further testing of these models through times and different areas are recommended.
dc.identifier.citationYñiguez, A. T., & Ottong, Z. J. (2020). Predicting fish kills and toxic blooms in an intensive mariculture site in the Philippines using a machine learning model. <i>Science of the Total Environment, 707</i>, Article 136173. https://doi.org/10.1016/j.scitotenv.2019.136173
dc.identifier.doi10.1016/j.scitotenv.2019.136173
dc.identifier.issn0048-9697
dc.identifier.urihttps://hdl.handle.net/20.500.14697/583
dc.language.isoen
dc.publisherElsevier BV
dc.subject.agrovocred tides
dc.subject.agrovocfish kill
dc.subject.agrovocshellfish
dc.subject.agrovocmariculture
dc.subject.agrovocmachine learning
dc.subject.agrovocalgal blooms
dc.subject.agrovocalgal toxins
dc.subject.lcshFish kills--Research
dc.subject.lcshAlgal blooms--Toxicology
dc.subject.lcshShellfish
dc.subject.lcshAlexandrium
dc.subject.lcshMariculture
dc.subject.odcChallenge 2: Protect and restore ecosystems and biodiversity
dc.subject.odcChallenge 1: Understand and beat marine pollution
dc.subject.sdgSDG 14 - Life below water
dc.titlePredicting fish kills and toxic blooms in an intensive mariculture site in the Philippines using a machine learning model
dc.typeArticle
local.subjectHarmful algal blooms
local.subjectRandom forest algorithm
local.subjectFish kill
local.subjectToxic blooms
local.subjectShellfish
local.subjectAlexandrium
local.subject.scientificnameAlexandrium
oaire.citation.startPage136173
oaire.citation.volume707

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