Keywords: filtering, fire detectors, hybrid filter, FIR filter, kalman filter, weighted median filter
A method for hybrid filtering of information from fire sensors based on a weighted median filter with a finite impulse response and a Kalman filter
UDC 004.942; 654.924.56
DOI: 10.26102/2310-6018/2026.53.2.011
The relevance of this study necessitated improving the resilience of recursive fire hazard prediction systems to various types of disturbances, such as vibrations, electromagnetic interference, and cumulative forecast errors. In such cases, even a minor impact on predicted time series can lead to false alarms or missed threats, which is especially critical in areas with high occupant illumination, such as subways. Existing filters, when used in isolation, do not consistently suppress Gaussian and impulsive signals, preserving sharp signal changes and minimizing phase shift. Therefore, a hybrid filter method combining a Kalman filter and a weighted FIR hybrid median filter was developed and evaluated. The method's effectiveness is evaluated using synthetic and in-house data (including ~6 million samples from subway sensors) using a combination of metrics: MAE, MSE, SNR, derivative result accuracy, and response time. The proposed hybrid is shown to provide the best results: a reduction in MAE to 0.419, an increase in SNR to 2.05 dB, and an accuracy level of 99.98%. The papers' materials are of practical value to fire safety system developers and early sensor data processing specialists.
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Keywords: filtering, fire detectors, hybrid filter, FIR filter, kalman filter, weighted median filter
For citation: Singh S., Pribylsky A.V. A method for hybrid filtering of information from fire sensors based on a weighted median filter with a finite impulse response and a Kalman filter. Modeling, Optimization and Information Technology. 2026;14(2). URL: https://moitvivt.ru/ru/journal/pdf?id=2176 DOI: 10.26102/2310-6018/2026.53.2.011 (In Russ).
Received 08.01.2026
Revised 11.02.2026
Accepted 24.02.2026