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AI-based system successfully suppresses shipboard oil fires autonomously
A next-generation fire suppression system capable of autonomously detecting oil fires aboard naval vessels and precisely targeting and extinguishing them even in maritime environments has been developed domestically for the first time. The system uses AI to independently determine the authenticity of a fire, activating only when an actual fire occurs. It concentrates its discharge solely on the fire source, much like a firefighter extinguishing flames. A research team led by Senior Researcher Hyuk Lee at the AX Convergence Research Center, Virtual Engineering Platform Research Division, Korea Institute of Machinery and Materials (KIMM), under the National Research Council of Science & Technology (NST), has developed an autonomous initial suppression firefighting system specialized for shipboard oil fires and successfully completed real-ship trials on an actual vessel. This newly developed initial suppression firefighting system for shipboard oil fires represents an advanced iteration of the research team's autonomous firefighting technology, specifically engineered for the most common oil fires occurring on naval vessels. Its key feature is the ability to autonomously detect oil fires caused by equipment or aircraft leaks in engine rooms, hangars, decks, etc., and accurately target and extinguish the fire source even under complex environmental conditions such as sea waves and ship motion. Existing shipboard firefighting systems release extinguishing agents throughout the entire affected area upon fire detection. This approach caused unnecessary damage during false alarms and made precise targeting difficult in maritime environments. In contrast, the technology developed by the KIMM research team combines AI-based precision fire detection with reinforcement learning algorithms for maritime condition adaptation, dramatically overcoming these limitations. The developed fire suppression system consists of fire detection sensors, fire monitors, and an analysis and control unit equipped with AI-based fire authenticity determination and location estimation capabilities. The system maintains a fire detection accuracy of over 98%, with a foam discharge range reaching approximately 24 meters. It has also been verified to operate stably even in sea states of 3 or higher. The research team conducted systematic performance verification using a large-scale land-based simulation facility (25 m × 5 m × 5 m) that perfectly replicates the actual ship environment. Within the simulation facility, which replicated the color and illumination of actual ship compartments, various oil fire conditions and non-fire situations that could be mistaken for fires (lighters, welding, electric heaters, etc.) were reproduced to perform pre-training and accuracy testing of the AI system. Notably, successful suppression tests were completed for open-area oil fires (maximum 4.5 m oil tray) and shielded fires (helicopter-sized shield installed 50 cm above a 3.0 m oil tray) that could occur from leaks in aircraft carriers, proving the system's capability to respond to all types of oil fires possible on actual vessels. Subsequently, the research team conducted real-ship tests aboard the LST-II class amphibious assault ship (ROKS Ilchulbong) and successfully achieved precise targeting of extinguishing water onto a fire source 18 m away in actual sea conditions with 1 m waves. To accomplish this, they developed and pre-trained a reinforcement learning-based algorithm that recalculates the aiming angle in real-time by reflecting wave and hull motion using only 6-degree-of-freedom acceleration data. Senior Researcher Hyuk Lee of KIMM stated, "This newly developed initial suppression firefighting system for shipboard oil fires is the world's first technology to complete step-by-step verification from land-based simulation facilities to actual shipboard environments. "It can autonomously respond to the most dangerous oil fires on ships in both open and shielded conditions, marking a groundbreaking turning point for crew safety and preserving the ship's combat effectiveness. "This technology is applicable not only to various naval vessels but also to ammunition depots, military supply warehouses, aircraft hangars, and offshore plants. Its future expansion to civilian ships and petrochemical facilities will significantly enhance fire safety at sea and in industrial settings."
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AI-Based System Successfully Suppresses Shipboard Oil Fires Autonomously | Newswise
Newswise -- A next-generation fire suppression system capable of autonomously detecting oil fires aboard naval vessels and precisely targeting and extinguishing them even in maritime environments has been developed domestically for the first time. The system uses AI to independently determine the authenticity of a fire, activating only when an actual fire occurs. It concentrates its discharge solely on the fire source, much like a firefighter extinguishing flames. A research team led by Senior Researcher Hyuk Lee at the AX Convergence Research Center, Virtual Engineering Platform Research Division, Korea Institute of Machinery and Materials (KIMM, President Seog-Hyeon Ryu), under the National Research Council of Science & Technology (NST, Chairman Young-Shik Kim), has developed an autonomous initial suppression firefighting system specialized for shipboard oil fires and successfully completed real-ship trials on an actual vessel. This newly developed initial suppression firefighting system for shipboard oil fires represents an advanced iteration of the research team's autonomous firefighting technology, specifically engineered for the most common oil fires occurring on naval vessels. Its key feature is the ability to autonomously detect oil fires caused by equipment or aircraft leaks in engine rooms, hangars, decks, etc., and accurately target and extinguish the fire source even under complex environmental conditions such as sea waves and ship motion. Existing shipboard firefighting systems release extinguishing agents throughout the entire affected area upon fire detection. This approach caused unnecessary damage during false alarms and made precise targeting difficult in maritime environments. In contrast, the technology developed by the KIMM research team combines AI-based precision fire detection with reinforcement learning algorithms for maritime condition adaptation, dramatically overcoming these limitations. The developed fire suppression system consists of fire detection sensors, fire monitors, and an analysis and control unit equipped with AI-based fire authenticity determination and location estimation capabilities. The system maintains a fire detection accuracy of over 98%, with a foam discharge range reaching approximately 24 meters. It has also been verified to operate stably even in sea states of 3 or higher. The research team conducted systematic performance verification using a large-scale land-based simulation facility (25m×5m×5m) that perfectly replicates the actual ship environment. Within the simulation facility, which replicated the color and illumination of actual ship compartments, various oil fire conditions and non-fire situations that could be mistaken for fires (lighters, welding, electric heaters, etc.) were reproduced to perform pre-training and accuracy testing of the AI system. Notably, successful suppression tests were completed for open-area oil fires (maximum 4.5㎡ oil tray) and shielded fires (helicopter-sized shield installed 50cm above a 3.0㎡ oil tray) that could occur from leaks in aircraft carriers, proving the system's capability to respond to all types of oil fires possible on actual vessels. Subsequently, the research team conducted real-ship tests aboard the LST-II class amphibious assault ship (ROKS Ilchulbong) and successfully achieved precise targeting of extinguishing water onto a fire source 18m away in actual sea conditions with 1m waves. To accomplish this, they developed and pre-trained a reinforcement learning-based algorithm that recalculates the aiming angle in real-time by reflecting wave and hull motion using only 6-degree-of-freedom acceleration data. Senior Researcher Hyuk Lee of KIMM stated, "This newly developed initial suppression firefighting system for shipboard oil fires is the world's first technology to complete step-by-step verification from land-based simulation facilities to actual shipboard environments." He added, "It can autonomously respond to the most dangerous oil fires on ships in both open and shielded conditions, marking a groundbreaking turning point for crew safety and preserving the ship's combat effectiveness." He further noted, "This technology is applicable not only to various naval vessels but also to ammunition depots, military supply warehouses, aircraft hangars, and offshore plants. Its future expansion to civilian ships and petrochemical facilities will significantly enhance fire safety at sea and in industrial settings." This research was conducted as part of the 'Civilian-Military Practical Application Linkage Project' implemented by the Institute of Civil Military Technology Cooperation. Participants included the Korea Institute of Civil Engineering and Building Technology, Chungnam National University, Super Century Co., Ltd., and the Korea Military Academy. Reference Material: Photo(Research Team led by Dr. Hyuk Lee) ### The Korea Institute of Machinery and Materials (KIMM) is a non-profit government-funded research institute under the Ministry of Science and ICT. Since its foundation in 1976, KIMM is contributing to economic growth of the nation by performing R&D on key technologies in machinery and materials, conducting reliability test evaluation, and commercializing the developed products and technologies.
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Korean scientists have successfully developed and tested the world's first AI-based autonomous fire suppression system specifically designed for shipboard oil fires, achieving over 98% detection accuracy and completing real-world trials on naval vessels.
Researchers at the Korea Institute of Machinery and Materials (KIMM) have achieved a significant breakthrough in maritime safety technology by developing the world's first AI-based autonomous fire suppression system specifically designed for shipboard oil fires
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. The system represents a major advancement in naval vessel safety, capable of independently detecting, analyzing, and extinguishing oil fires without human intervention.Led by Senior Researcher Hyuk Lee at the AX Convergence Research Center, the research team has successfully completed comprehensive testing from laboratory simulations to real-world naval vessel trials
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. This groundbreaking technology addresses one of the most critical safety challenges facing naval operations, where oil fires pose significant threats to crew safety and vessel integrity.The autonomous firefighting system employs sophisticated artificial intelligence algorithms to distinguish between genuine fire emergencies and false alarms with remarkable precision. The system maintains a fire detection accuracy rate exceeding 98%, ensuring reliable operation in critical maritime environments
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. Unlike conventional shipboard firefighting systems that flood entire compartments with extinguishing agents upon fire detection, this AI-powered solution precisely targets only the fire source, minimizing collateral damage and resource waste.The technology integrates multiple advanced components including specialized fire detection sensors, precision fire monitors, and an intelligent analysis and control unit equipped with AI-based fire authenticity determination capabilities
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. The system's foam discharge capability extends approximately 24 meters, providing substantial coverage for various shipboard fire scenarios.
Source: Tech Xplore
One of the system's most innovative features is its ability to operate effectively in challenging maritime conditions through reinforcement learning algorithms. The technology has been verified to function stably even in sea states of 3 or higher, demonstrating its resilience against the complex environmental factors inherent to naval operations
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.The research team developed and pre-trained a sophisticated reinforcement learning algorithm that continuously recalculates aiming angles in real-time by processing wave motion and hull movement data through 6-degree-of-freedom acceleration sensors
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. This adaptive capability ensures precise targeting of fire suppression efforts despite the dynamic nature of maritime environments.Related Stories
The development process involved extensive systematic performance verification using a large-scale land-based simulation facility measuring 25 meters by 5 meters by 5 meters, designed to perfectly replicate actual ship environments
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. Within this controlled environment, researchers reproduced various oil fire scenarios and potential false alarm situations including lighters, welding operations, and electric heaters to thoroughly train and test the AI system's discrimination capabilities.The team successfully completed suppression tests for both open-area oil fires using maximum 4.5 square meter oil trays and shielded fire scenarios with helicopter-sized barriers positioned 50 centimeters above 3.0 square meter oil trays
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. These comprehensive tests validated the system's capability to respond to all potential oil fire types that could occur on naval vessels.The culmination of the research involved real-ship trials aboard the LST-II class amphibious assault ship ROKS Ilchulbong, where the system demonstrated its operational effectiveness in actual maritime conditions. During these trials, the autonomous firefighting system successfully achieved precise targeting of extinguishing water onto a fire source located 18 meters away while operating in sea conditions with 1-meter waves
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.This real-world validation represents a crucial milestone in autonomous firefighting technology, proving the system's readiness for operational deployment on naval vessels. The successful completion of trials from laboratory conditions to actual shipboard environments establishes this technology as the world's first fully validated autonomous fire suppression system for maritime applications
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