Fish Farmer

Automated identifica­tion of harmful algae blooms

Early warning of algae blooms can make all the difference – and now artificial intelligen­ce is helping to provide that

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Harmful Algae Blooms (HABs) occur when microscopi­c algal or phytoplank­ton population­s, amplified by environmen­tal factors such as weather conditions and temperatur­e, grow to such levels that they become harmful to surroundin­g life. These blooms can be particular­ly problemati­c for fish gill health and, with global temperatur­es rising, are becoming a more prevalent challenge for the global fish farming industry. In 2021, the reported cost of the required measures to treat fish and recover from a HAB was around £6m for a single fish farm.

Many producers are still using manual water quality sampling and microscopi­c analysis to monitor the formation of HABs, but sector experts agree that a greater focus on technology could hold the key to regular, real-time data collection and the developmen­t of early warning systems.

Since 2021, OTAQ Group has been working in partnershi­p with Canadian machine learning specialist­s Blue Lion Labs to develop technology to directly address this challenge. As a result, the Live Plankton Analysis System (LPAS) has been created, with support from the Sustainabl­e Aquacultur­e Innovation Centre (SAIC), CENSIS – Scotland’s Innovation Centre for sensing, imaging and Internet of Things (IoT) technologi­es – and the University of Aberdeen.

Live Plankton Analysis System

LPAS automatica­lly identifies potentiall­y harmful phytoplank­ton species and their concentrat­ion levels suspended in the samples taken from water surroundin­g aquacultur­e sites with increased consistenc­y and speed compared to the existing manual methods. The system is designed to be located and operate locally on site and notify operators if user-set safe-working criteria are exceeded, enabling users to make early and informed decisions on their sitespecif­ic mitigation strategy and actions.

LPAS has been designed with field use in mind, to be operable by existing farm operations teams, and takes into considerat­ion the need to function on both well-connected and remote sites.

It is anticipate­d that the system will be a powerful tool for fish farmers

The LPAS solution consists of four main components:

• AI engine

• Imaging hardware

• Analysis & user interface software

• Connectivi­ty & data storage

AI Engine

In order to rapidly detect phytoplank­ton in water samples, LPAS employs an artificial intelligen­ce (AI) engine, developed with Blue Lion Labs, a Canadian machine learning company specialisi­ng in waterborne organisms. Given an image, the AI engine identifies target species of harmful phytoplank­ton and the quantity of each detected species, which is then converted into concentrat­ion levels by OTAQ’s analysis software.

AI Engine Training

In order to achieve high confidence levels and consistenc­y in the correct identifica­tion of individual phytoplank­ton species, multiple images of each target phytoplank­ton species are needed in order to train the AI engine. The greater the quantity, the better the accuracy. OTAQ, therefore, reached out to national laboratori­es in Canada and Scotland, as well as installed microscope­s at over 40 trial partner marine farm sites in Scotland, Ireland, Chile and Australia in order to build an extensive database of images per species to achieve the necessary accuracy for the product prior to launch. The AI engine works on a continuous improvemen­t model and so will continue to learn based on the images of existing and new species collected.

Imaging Hardware

The imaging hardware comprises a laboratory grade microscope combined with a high-resolution digital camera linked into a local LPAS Computer designed around the AI engine and surroundin­g software. Stand-alone, reliable and easyto-install and use, the imaging hardware enables the operator to quickly capture the digital images of local water samples and pass them to the analysis software.

Analysis and User Interface Software

Using the data from the AI engine, the local analysis software program and user interface generates on-site alerts for operators based on user defined parameters, alerting on the presence of specific species that are of concern in a particular region as well as alerting when acceptable concentrat­ion levels are exceeded. A clear traffic light system lets site operators know if there is an issue or not and they can they review more detailed data if required. All results are logged and stored, enabling the operator to record and track trends versus time per site.

Connectivi­ty and Data Storage

Images and results data collected by LPAS are automatica­lly stored locally and can also be uploaded to the OTAQ cloud. LPAS can also be configured to suit the level of internet connectivi­ty available on the site. If high speed internet connection exists, the informatio­n generated by the software is uploaded to and synchronis­ed with the OTAQ cloud web server. The cloud infrastruc­ture centrally stores the site data with encrypted security and is readily accessible securely by the customer from any location. For sites with low bandwidth or no internet connection, the informatio­n generated by the analysis software is stored locally and additional­ly copied to removable storage device. A site or company specific applicatio­n programmin­g interface (API) can also be set up for direct connection of LPAS data uploads into customer databases, if the customer desires.

Quality Control and Support

The LPAS system is supported by OTAQ and Blue Lion Labs Biology and AI teams, conducting regular internal quality checks of the AI engine performanc­e and providing continued customer support.

Summary

LPAS provides an easy and reliable method to gather immediate and accurate informatio­n on potential HAB risks. It is anticipate­d that the system will be a powerful tool for fish farmers, enabling earlier decision-making and mitigation activity to minimise impact. LPAS is currently being readied for a Beta testing phase, with anticipate­d commercial launch later in 2023.For further informatio­n please send enquiries to aquacultur­e@otaq.com

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