Application of Wavelet Transform in Radar Echo Signal Level Meter Denoising

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Abstract:

Radar Level Meter is being more and more widely used in the industry field. However, due to the complex radar system, the noise contained in the clutter echo signal, and the interference within the system and hardware, it is quietly significant to study the research of radar echo reduction technology. Based on the introduction of radar level meter ‘working theory, This paper presents a wavelet transform analysis of the echo signal de-noising method. Studies have shown that the radar echo signal processing method of using wavelet transform can effectively suppress noise, remove interference and achieve echo signal de-noising processing.

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4399-4402

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September 2014

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© 2014 Trans Tech Publications Ltd. All Rights Reserved

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DOI: 10.1109/83.772237

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