Reliable fire detection is pivotal for safety in both domestic and industrial environments. Traditional detection methods often suffer from false alarms and environmental interference, thus proving inadequate in critical scenarios. In this study we propose a novel flame detector based on a voltage-tunable dual-band Ge-on-Si photodetector combining a wavelength sensitive detection with classification algorithms. We evaluated its performance against various interference sources, exploiting machine learning models such as Support Vector Machines (SVM) and Quadratic SVM, achieving up to 99.8% classification accuracy. We demonstrate the system can effectively distinguish flames from background illumination. In addition, the sensor is able to detect hot objects, making the device suitable for early hazard detection, as well. This combination of the unique optical property of the wavelength sensitive photodetector and powerful machine learning algorithms may represent a significant advancement in fire detection technology.

Flame Detector Based on a Ge-on-Si Photodetector With a Voltage Tunable Spectral Response

de Iacovo, A.;Frigerio, J.;Isella, G.;Colace, L.
2025-01-01

Abstract

Reliable fire detection is pivotal for safety in both domestic and industrial environments. Traditional detection methods often suffer from false alarms and environmental interference, thus proving inadequate in critical scenarios. In this study we propose a novel flame detector based on a voltage-tunable dual-band Ge-on-Si photodetector combining a wavelength sensitive detection with classification algorithms. We evaluated its performance against various interference sources, exploiting machine learning models such as Support Vector Machines (SVM) and Quadratic SVM, achieving up to 99.8% classification accuracy. We demonstrate the system can effectively distinguish flames from background illumination. In addition, the sensor is able to detect hot objects, making the device suitable for early hazard detection, as well. This combination of the unique optical property of the wavelength sensitive photodetector and powerful machine learning algorithms may represent a significant advancement in fire detection technology.
2025
Dual-band photodetector
flame detection
machine learning algorithm
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11311/1301093
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