ENGLISH
|
JAPANESE
|
CONNECT WITH US:
Home
About
Contact
Log in
*
Home
Press release
2020年02月03日 17時33分
Source:
ETRI
ETRI Develops Drone and AI Technology to Predict Algal Blooms
The technology analyzes water quality with drones and artificial intelligence to predict the level of algal bloom.
Korea, 2020年02月03日 - (JCN Newswire) - The Electronics and Telecommunications Research Institute (ETRI) has developed a technology for analyzing water quality with drones and using artificial intelligence (AI) to predict the level of algal bloom. The technology is expected to reduce public anxiety about algal blooms that reoccur each summer and help manage drinking water safety.
ETRI reported it successfully measured and predicted harmful algal blooms in a remote lake with a hyperspectral camera built in a drone. The research was published in the journal Remote Sensing of Environment.
- Prediction of algal bloom expansion with AI analysis
Algal blooms have been observed in many rivers and coastal waters where water flow is slow or stagnant. Large algal blooms can be toxic to the environment and people. If the algal bloom growth reaches a certain point, it expands exponentially making it difficult to manage. Thus, it's critical to accurately monitor and predict algal activity.
In the past, it took a couple of days to collect samples and analyze water quality. Moreover, the process was cumbersome as it required physical site visits, making it difficult to respond quickly before the algal bloom spread.
The technology developed by ETRI uses drones to remotely examine water bodies, making it easier to study blue-green algae status, including migration, spread, and distribution in rivers or streams. Compared to satellites or aircraft, drones can monitor the water more easily at low costs and high resolution. The acquired big data is then quickly analyzed with AI, which helps predict where the blue-green algae will bloom.
- Rivers and streams explored with a hyperspectral camera
A hyperspectral sensor is central to the system's success. While conventional images divide light into three primary colors (RGB), the hyperspectral technology can divide the visible and near-infrared regions into 200 or more colors. Thus, the technology can classify the components of an object in more detail and can be applied widely in the military, environment, medicine, healthcare, and other areas.
The hyperspectral camera in a drone can easily indicate whether the blue-green algae level is at 'Attention', 'Warning', or 'Outbreak'. It uses the light spectrum of blue-green algae to check the current status digitally.
"We have the goal of achieving the world's best level of accuracy in algae prediction. We plan to make it possible to track down the growth of blue-green algae and facilitate early response to prevent further spread," said Dr. Yong-Hwan Kwon, the ETRI project manager.
ETRI has used the hyperspectral camera drone to examine the water quality of Daechung Reservoir in South Korea. The research team next plans to construct a real-time monitoring map of algal blooms in the reservoir. The objective includes a study on automating the process of exploration, data collection, input and analysis after establishing the optimal moving path of the drone.
The research team has the goal of increasing the accuracy of the algae prediction to 90% or higher by enhancing the analysis performance. They also plan to reduce the weight and size of the hyperspectral sensor by 2022.
For more information, contact:
Yong-Hwan Kwon
Project Manager
042-860-5377
yhkwon@etri.re.kr
About ETRI - Electronics and Telecommunications Research Institute
ETRI is a non-profit, government-funded research institute focused on global information and communications technologies (ICT) and artificial intelligence (AI). Since its foundation in 1976, ETRI has helped position Korea as a leading ICT nation by developing world's first and best technologies. For more information, please visit our website:
https://www.etri.re.kr/eng/main/main.etri
Paper:
https://www.sciencedirect.com/science/article/pii/S003442571930536X
Source: ETRI
セクター: エレクトロニクス, AI, IoT, Datacenter & Cloud
Copyright ©2026 JCN Newswire. All rights reserved. A division of Japan Corporate News Network.
Latest Release
Application Submitted for LENVIMA(R) (lenvatinib) in Japan Seeking Approval of Additional Dosage and Administration for Combination with WELIREG(R) (belzutifan) for Renal Cell Carcinoma that has Progressed After Chemotherapy
Mar 27, 2026 20:14 JST
Hitachi and MUFG Bank expand NextGen model to finance vehicles and charging infrastructure for decarbonized mobility
Mar 27, 2026 19:44 JST
Eisai and Nuvation Bio Announce Marketing Authorisation Application for Taletrectinib for the Treatment of Advanced ROS1-Positive Non-Small Cell Lung Cancer Validated by the European Medicines Agency
Mar 27, 2026 18:19 JST
New "L00 Series" Train for the Seibu Railway's Yamaguchi Line Begins Commercial Operation
Mar 27, 2026 16:51 JST
Fujitsu develops high-sensitivity, high-resolution infrared sensor to expand monitoring capabilities in defense and disaster prevention
Mar 27, 2026 14:07 JST
Sharp Develops Long-Range Video Monitoring Technology
Mar 26, 2026 22:39 JST
OKI and Hitachi Agree to Integrate Businesses Related to Automated Teller Machines (ATMs) and Other Automated Equipment
Mar 26, 2026 22:10 JST
Hitachi Rail to manufacture rolling stock for Seibu Railway"s new Fine Dining Train
Mar 26, 2026 15:13 JST
Royal Healthcare in Singapore provides NEC's "FonesVisuas Test" for Disease Risk Prediction
Mar 26, 2026 11:21 JST
MHI-AP Awarded Boiler Retrofit Contract for Waste-to-Energy Facility in Singapore
Mar 26, 2026 11:07 JST
Sumitomo Heavy Industries and NEC to develop system capable of identifying and reporting near-miss incidents
Mar 25, 2026 14:27 JST
NEC Orchestrating Future Fund Invests in U.S.-based AGI7, Provider of "Alpha Vision" Platform for Autonomous Operations of AI Agents in Physical Spaces
Mar 25, 2026 13:17 JST
Fujitsu and The University of Osaka develop new technologies for chemical material energy calculations on early-FTQC quantum computers
Mar 25, 2026 10:58 JST
HIES introduces plant-based lubricant that reduces air compressor lifecycle CO(2) emissions by 40%
Mar 24, 2026 18:07 JST
Fujitsu and Umios conduct joint pilot project for electronic traceability system to visualize seafood distribution
Mar 24, 2026 14:01 JST
Fujitsu-developed traffic simulation system utilized in Maebashi City's public transportation planning
Mar 23, 2026 14:24 JST
Hitachi Receives the 2026 Catalyst Award, a Global Recognition for Building an Inclusive Organization
Mar 23, 2026 11:49 JST
Results from Real-World, Long-Term Treatment Persistence with LEQEMBI(R) (lecanemab-irmb) in the United States Presented at AD/PD(TM) 2026
Mar 23, 2026 11:19 JST
Honda to Expand Motorcycle Production Capacity in India by Adding New Motorcycle Production Line to its Second Plant
Mar 19, 2026 18:32 JST
Honda WN7 Electric Motorcycle Wins Gold Award at iF DESIGN AWARD 2026
Mar 19, 2026 18:16 JST
More Latest Release >>