Genetically adaptive neural network systems and methods provide
environmentally adaptable classification algorithms for use, among other
things, in multi-static active sonar classification. Classification
training occurs in-situ with data acquired at the onset of data
collection to improve the classification of sonar energy detections in
difficult littoral environments. Accordingly, in-situ training sets are
developed while the training process is supervised and refined. Candidate
weights vectors evolve through genetic-based search procedures, and the
fitness of candidate weight vectors is evaluated. Feature vectors of
interest may be classified using multiple neural networks and statistical
averaging techniques to provide accurate and reliable signal
classification.