Cascaded Neural-Analog Networks for Real Time Decomposition of Superposed Radar Signals in the Presence of Noise

Abstract

Among the numerous problems which arise in the context of radar signal processing is the problem of extraction of information from a noise corrupted signal. In this application the signal is assumed to be the superposition of outputs from multiple radar emitters. Associated with the output of each emitter is a unique set of parameters which are in general unknown. Significant parameters associated with each emitter are (1) the pulse repetition frequencies, (2) the pulse durations (widths) associated with pulse trains and (3) the pulse amplitudes. A superposition of the outputs of multiple emitters together with additive noise is observed at the receiver. In this study we consider the problem of decomposing such a noise corrupted lin- ear combination of emitter outputs into an underlying set of basis signals while also identifying the parameters associated with each of the emitters involved. Foremost among our objectives is to design a system capable of performing this decomposition/classification in a demanding real-time environment. We present here a system composed of three cascaded neural-analog networks which, in simulation, has demonstrated an ability to nominally perform the task of decomposition and classification of superposed radar signals under extremely high noise conditions.

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Document Details

Document Type
Technical Report
Publication Date
Jan 01, 1989
Accession Number
ADA454381

Entities

People

  • A. Teolis
  • M. C. Peckerar
  • S. Shamma
  • Y. C. Pati

Organizations

  • University of Maryland

Tags

DTIC Thesaurus Topics

  • Abstracts
  • Classification
  • Decomposition
  • Information Operations
  • Military Research
  • Pulse Amplitude
  • Radar Signals
  • Signal Processing

Readers

  • Adaptive Control and Estimation with Uncertainty in Dynamic Systems.
  • Neural Network Machine Learning.
  • Radar Systems Engineering.