The hunt for red tides: Deep learning algorithm forecasts shellfish toxicity at site scales in coastal Maine

Abstract Farmed and wild harvest shellfish industries are increasingly important components of coastal economies globally. Disruptions caused by harmful algal blooms (HABs), colloquially known as red tides, are likely to worsen with increasing aquaculture production, environmental pressures of coast...

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Main Authors: Isabella Grasso, Stephen D. Archer, Craig Burnell, Benjamin Tupper, Carlton Rauschenberg, Kohl Kanwit, Nicholas R. Record
Format: Article
Language:English
Published: Wiley 2019-12-01
Series:Ecosphere
Subjects:
Online Access:https://doi.org/10.1002/ecs2.2960
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spelling doaj-399d11107446464782425014acc11a712020-11-25T02:44:58ZengWileyEcosphere2150-89252019-12-011012n/an/a10.1002/ecs2.2960The hunt for red tides: Deep learning algorithm forecasts shellfish toxicity at site scales in coastal MaineIsabella Grasso0Stephen D. Archer1Craig Burnell2Benjamin Tupper3Carlton Rauschenberg4Kohl Kanwit5Nicholas R. Record6Bigelow Laboratory for Ocean Sciences East Boothbay Maine USABigelow Laboratory for Ocean Sciences East Boothbay Maine USABigelow Laboratory for Ocean Sciences East Boothbay Maine USABigelow Laboratory for Ocean Sciences East Boothbay Maine USABigelow Laboratory for Ocean Sciences East Boothbay Maine USAMaine Department of Marine Resources East Boothbay Maine USABigelow Laboratory for Ocean Sciences East Boothbay Maine USAAbstract Farmed and wild harvest shellfish industries are increasingly important components of coastal economies globally. Disruptions caused by harmful algal blooms (HABs), colloquially known as red tides, are likely to worsen with increasing aquaculture production, environmental pressures of coastal development, and climate change, necessitating improved HAB forecasts at finer spatial and temporal resolution. We leveraged a dataset of chemical analytical toxin measurements in coastal Maine to demonstrate a new machine learning approach for high‐resolution forecasting of paralytic shellfish toxin accumulation. The forecast used a deep learning neural network to provide weekly site‐specific forecasts of toxicity levels. The algorithm was trained on images constructed from a chemical fingerprint at each site composed of a series of toxic compound measurements. Under various forecasting configurations, the forecast had high accuracy, generally >95%, and successfully predicted the onset and end of nearly all closure‐level toxic events at the site scale at a one‐week forecast time. Tests of forecast range indicated a decline in accuracy at a three‐week forecast time. Results indicate that combining chemical analytical measurements with new machine learning tools is a promising way to provide reliable forecasts at the spatial and temporal scales useful for management and industry.https://doi.org/10.1002/ecs2.2960forecastharmful algal bloomMaineneural networkparalytic shellfish toxin
collection DOAJ
language English
format Article
sources DOAJ
author Isabella Grasso
Stephen D. Archer
Craig Burnell
Benjamin Tupper
Carlton Rauschenberg
Kohl Kanwit
Nicholas R. Record
spellingShingle Isabella Grasso
Stephen D. Archer
Craig Burnell
Benjamin Tupper
Carlton Rauschenberg
Kohl Kanwit
Nicholas R. Record
The hunt for red tides: Deep learning algorithm forecasts shellfish toxicity at site scales in coastal Maine
Ecosphere
forecast
harmful algal bloom
Maine
neural network
paralytic shellfish toxin
author_facet Isabella Grasso
Stephen D. Archer
Craig Burnell
Benjamin Tupper
Carlton Rauschenberg
Kohl Kanwit
Nicholas R. Record
author_sort Isabella Grasso
title The hunt for red tides: Deep learning algorithm forecasts shellfish toxicity at site scales in coastal Maine
title_short The hunt for red tides: Deep learning algorithm forecasts shellfish toxicity at site scales in coastal Maine
title_full The hunt for red tides: Deep learning algorithm forecasts shellfish toxicity at site scales in coastal Maine
title_fullStr The hunt for red tides: Deep learning algorithm forecasts shellfish toxicity at site scales in coastal Maine
title_full_unstemmed The hunt for red tides: Deep learning algorithm forecasts shellfish toxicity at site scales in coastal Maine
title_sort hunt for red tides: deep learning algorithm forecasts shellfish toxicity at site scales in coastal maine
publisher Wiley
series Ecosphere
issn 2150-8925
publishDate 2019-12-01
description Abstract Farmed and wild harvest shellfish industries are increasingly important components of coastal economies globally. Disruptions caused by harmful algal blooms (HABs), colloquially known as red tides, are likely to worsen with increasing aquaculture production, environmental pressures of coastal development, and climate change, necessitating improved HAB forecasts at finer spatial and temporal resolution. We leveraged a dataset of chemical analytical toxin measurements in coastal Maine to demonstrate a new machine learning approach for high‐resolution forecasting of paralytic shellfish toxin accumulation. The forecast used a deep learning neural network to provide weekly site‐specific forecasts of toxicity levels. The algorithm was trained on images constructed from a chemical fingerprint at each site composed of a series of toxic compound measurements. Under various forecasting configurations, the forecast had high accuracy, generally >95%, and successfully predicted the onset and end of nearly all closure‐level toxic events at the site scale at a one‐week forecast time. Tests of forecast range indicated a decline in accuracy at a three‐week forecast time. Results indicate that combining chemical analytical measurements with new machine learning tools is a promising way to provide reliable forecasts at the spatial and temporal scales useful for management and industry.
topic forecast
harmful algal bloom
Maine
neural network
paralytic shellfish toxin
url https://doi.org/10.1002/ecs2.2960
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