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Affordable sensor system detects algal bloom in real time
Korea Institute of Civil Engineering and Building Technology has successfully developed a real-time, low-cost algal bloom monitoring system utilizing inexpensive optical sensors and a novel labeling logic. The system achieves higher accuracy than state-of-the-art AI models such as Gradient Boosting and Random Forest. The findings are published in the journal Environmental Monitoring and Assessment. Harmful algal blooms (HABs) pose significant threats to water quality, public health, and aquatic ecosystems. Conventional detection methods such as satellite imaging and UAV-based remote sensing are cost-prohibitive and not suitable for continuous field operation. To address this issue, KICT research team led by Dr. Lee, Jai-Yeop of Department of Environmental Research Division, developed a compact, sensor-based probe that integrates ambient light and sunlight sensors into a microcontroller-based platform. The device categorizes water surface conditions into four labels -- "algae," "sunny," "shade," and "aqua" -- based on real-time readings from four sensor variables: lux (lx), ultraviolet (UV), visible light (VIS), and infrared (IR). Sensor data labeling was processed using a Support Vector Machine (SVM) classifier with four input variables, achieving 92.6% accuracy. To enhance performance further, the research team constructed a sequential logic-based classification algorithm that interprets SVM boundary conditions, boosting accuracy to 95.1%. When applying PCA (Principal Component Analysis) for dimension reduction followed by SVM classification, accuracy reached 91.0%. However, applying logic sequencing on PCA-transformed SVM boundaries resulted in 100% prediction accuracy, outperforming both Random Forest and Gradient Boosting models, which reached 99.2%. This approach demonstrates that simplicity and logic can outperform complexity, especially in constrained environments. "The logic-based framework demonstrated exceptional robustness and interpretability, especially for real-time deployment in embedded systems," said Dr. Lee. "It outperformed ensemble tree methods in small-sample settings and is ideal for field-based MCU environments." The system also quantifies Chlorophyll-a (Chl-a) concentrations -- an essential marker for harmful algal blooms -- using a Multiple Linear Regression (MLR) model. The model, derived from the same four sensor inputs, achieved a 14.3% error rate for Chl-a levels above 5 mg/L, proving reliable for practical field use. Unlike complex nonlinear models, the MLR model runs efficiently on low-power devices and is easily interpretable and maintainable. This study marks a significant advancement in affordable and accessible water quality monitoring. By combining low-cost IoT sensor technology with efficient logic-based modeling, the system enables real-time algal bloom detection without the need for expensive hardware or extensive training data.
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Affordable Real-Time Sensor System for Algal Bloom Detection | Newswise
Newswise -- Korea Institute of Civil Engineering and Building Technology (KICT, President Park, Sun-Kyu) has successfully developed a real-time, low-cost algal bloom monitoring system utilizing inexpensive optical sensors and a novel labeling logic. The system achieves higher accuracy than state-of-the-art AI models such as Gradient Boosting and Random Forest. Harmful algal blooms (HABs) pose significant threats to water quality, public health, and aquatic ecosystems. Conventional detection methods such as satellite imaging and UAV-based remote sensing are cost-prohibitive and not suitable for continuous field operation. To address this issue, KICT research team led by Dr. Lee, Jai-Yeop of Department of Environmental Research Division, developed a compact, sensor-based probe that integrates ambient light and sunlight sensors into a microcontroller-based platform. The device categorizes water surface conditions into four labels -- "algae," "sunny," "shade," and "aqua" -- based on real-time readings from four sensor variables: lux (lx), ultraviolet (UV), visible light (VIS), and infrared (IR). Sensor data labeling was processed using a Support Vector Machine (SVM) classifier with four input variables, achieving 92.6% accuracy. To enhance performance further, the research team constructed a sequential logic-based classification algorithm that interprets SVM boundary conditions, boosting accuracy to 95.1%. When applying PCA (Principal Component Analysis) for dimension reduction followed by SVM classification, accuracy reached 91.0%. However, applying logic sequencing on PCA-transformed SVM boundaries resulted in 100% prediction accuracy, outperforming both Random Forest and Gradient Boosting models, which reached 99.2%. This approach demonstrates that simplicity and logic can outperform complexity, especially in constrained environments. "The logic-based framework demonstrated exceptional robustness and interpretability, especially for real-time deployment in embedded systems," said Dr. Lee. "It outperformed ensemble tree methods in small-sample settings and is ideal for field-based MCU environments." The system also quantifies Chlorophyll-a (Chl-a) concentrations -- an essential marker for harmful algal blooms -- using a Multiple Linear Regression (MLR) model. The model, derived from the same four sensor inputs, achieved a 14.3% error rate for Chl-a levels above 5 mg/L, proving reliable for practical field use. Unlike complex nonlinear models, the MLR model runs efficiently on low-power devices and is easily interpretable and maintainable. This study marks a significant advancement in affordable and accessible water quality monitoring. By combining low-cost IoT sensor technology with efficient logic-based modeling, the system enables real-time algal bloom detection without the need for expensive hardware or extensive training data. ### Korea Institute of Civil Engineering and Building Technology, a government-funded research institute with 42 years of extensive research experience, is at the forefront of solving national issues that are directly related to the quality of the people's life. The research was supported by the Korea Environmental Industry & Technology Institute (KEITI) through the Aquatic Ecosystem Conservation Research Program, funded by the Korea Ministry of Environment (Project No. 2021003040001).
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Korea Institute of Civil Engineering and Building Technology creates an affordable, real-time algal bloom monitoring system using inexpensive optical sensors and novel AI algorithms, outperforming traditional detection methods and state-of-the-art AI models.
Researchers at the Korea Institute of Civil Engineering and Building Technology (KICT) have made a significant advancement in water quality monitoring with the development of a low-cost, real-time algal bloom detection system. This innovative approach combines inexpensive optical sensors with novel artificial intelligence algorithms, offering a more accessible and efficient solution to a pressing environmental issue
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.Harmful algal blooms (HABs) pose substantial threats to water quality, public health, and aquatic ecosystems. Traditional detection methods, such as satellite imaging and UAV-based remote sensing, are often prohibitively expensive and unsuitable for continuous field operation. The KICT team, led by Dr. Lee Jai-Yeop of the Department of Environmental Research Division, set out to address this challenge
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.The research team developed a compact, sensor-based probe that integrates ambient light and sunlight sensors into a microcontroller-based platform. This device categorizes water surface conditions into four labels: "algae," "sunny," "shade," and "aqua." The classification is based on real-time readings from four sensor variables: lux (lx), ultraviolet (UV), visible light (VIS), and infrared (IR)
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.Source: Phys.org
The system employs a Support Vector Machine (SVM) classifier for initial data labeling, achieving 92.6% accuracy. To enhance performance, the team developed a sequential logic-based classification algorithm, boosting accuracy to 95.1%. When combined with Principal Component Analysis (PCA) for dimension reduction, the system achieved an impressive 100% prediction accuracy, outperforming both Random Forest and Gradient Boosting models
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.Dr. Lee emphasized the system's robustness: "The logic-based framework demonstrated exceptional robustness and interpretability, especially for real-time deployment in embedded systems. It outperformed ensemble tree methods in small-sample settings and is ideal for field-based MCU environments"
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In addition to detection, the system quantifies Chlorophyll-a (Chl-a) concentrations, a crucial marker for harmful algal blooms. Using a Multiple Linear Regression (MLR) model derived from the same four sensor inputs, the system achieved a 14.3% error rate for Chl-a levels above 5 mg/L. This level of accuracy proves reliable for practical field use
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.This study represents a significant step forward in affordable and accessible water quality monitoring. By combining low-cost IoT sensor technology with efficient logic-based modeling, the system enables real-time algal bloom detection without the need for expensive hardware or extensive training data
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.The research, supported by the Korea Environmental Industry & Technology Institute (KEITI) through the Aquatic Ecosystem Conservation Research Program, demonstrates the potential for AI and IoT technologies to address critical environmental challenges. As water quality concerns continue to grow globally, this affordable and accurate monitoring system could play a crucial role in early detection and management of harmful algal blooms
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