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ISSN 2415-3400 (Online)
ISSN 1028-821X (Print)

Optimal nonlinear filtering of stochastic processes in rescue radar

Sytnik, OV
Organization: 

O.Ya. Usikov Institute for Radio Physics and Electronics of NASU
12, Acad. Proskury St., Kharkiv, 61085, Ukraine
E-mail: ssvp127@gmail.com

https://doi.org/10.15407/rej2021.03.018
Language: english
Abstract: 

Subject and Purpose. Smoke, fog, avalanches, debris of collapsed structures and other optically opaque obstacles in both natural and man-made disasters make optical sensors useless for detecting victims. Electromagnetic waves of the decimeter range penetrate well almost all obstacles, reflect from the trapped people and return to the radar receiver. Due to the breathing and heartbeat, the human-reflected sounding signals get the Doppler phase modulation, which is an information signal. These information signals and their properties provide the subject matter for the present research with the aim to create optimal methods and algorithms of random event processing for the prompt location of survivors by rescuers.

Method and Methodology. The method of stochastic analysis of the fluctuation Doppler spectra of reflected sounding signals shows that the information signals have properties of conditional Markov processes.

Results. The problem of optimal nonlinear filtering of conditional Markov processes entering the radar signal processing unit has been examined closely. An optimal adaptive filter has been proposed to reduce the masking effect of interferences caused by non-stationary noises and sounding signal reflections from stationary objects. The optimality criterion is the minimum mean square error function whose current value is evaluated in real time during the filtering process as the statistics is accumulated. The filter coefficients are calculated by the recurrent, steepest descent algorithm. The real-time work is carried out through the use of fast Fourier transform algorithms.

Conclusion. The structure of the optimal adaptive filter to be built into the radar signal processing unit has been developed. Real radar signals have shown that the optimal filtering during the signal processing in systems designed for detecting live people by their breathing and heartbeat facilitates the interpretation of the observed signals. Some spectra of real signals generated by human breathing and heartbeat are presented.

Keywords: algorithm, conditional Markov processes, digital signal processing, Doppler shift, mean square error criterion, noise, optimal filter, radar, sampling frequency, sounding signals, spectral function, stochastic process

Manuscript submitted 09.06.2021
Radiofiz. elektron. 2021, 26(3): 18-23
Full text (PDF)

 

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