Most of the operating vessel traffic management systems experience problems, such
as track loss and track swap, which may cause confusion to the traffic regulators and
lead to potential hazards in the harbour operation. The reason is mainly due to the
limited adaptive capabilities of the algorithms used in the detection process. The
decision on whether a target is present is usually based on the magnitude of the
returning echoes. Such a method has a low efficiency in discriminating between the
target and clutter, especially when the signal to noise ratio is low. The performance
of radar target detection depends on the features, which can be used to discriminate
between clutter and targets. To have a significant improvement in the detection of
weak targets, more obvious discriminating features must be identified and extracted.
This research investigates conventional Constant False Alarm Rate (CFAR)
algorithms and introduces the approach of applying ar1ificial intelligence methods to
the target detection problems. Previous research has been unde11aken to improve the
detection capability of the radar system in the heavy clutter environment and many
new CFAR algorithms, which are based on amplitude information only, have been
developed. This research studies these algorithms and proposes that it is feasible to
design and develop an advanced target detection system that is capable of
discriminating targets from clutters by learning the .different features extracted from
radar returns.
The approach adopted for this further work into target detection was the use of
neural networks. Results presented show that such a network is able to learn
particular features of specific radar return signals, e.g. rain clutter, sea clutter, target,
and to decide if a target is present in a finite window of data. The work includes a
study of the characteristics of radar signals and identification of the features that can
be used in the process of effective detection. The use of a general purpose marine
radar has allowed the collection of live signals from the Plymouth harbour for
analysis, training and validation. The approach of using data from the real
environment has enabled the developed detection system to be exposed to real clutter
conditions that cannot be obtained when using simulated data.
The performance of the neural network detection system is evaluated with further
recorded data and the results obtained are compared with the conventional CFAR
algorithms. It is shown that the neural system can learn the features of specific radar
signals and provide a superior performance in detecting targets from clutters. Areas
for further research and development arc presented; these include the use of a
sophisticated recording system, high speed processors and the potential for target
classification.
Date of Award | 1999 |
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Original language | English |
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Awarding Institution | |
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AN ARTIFICIAL INTELLIGENCE APPROACH TO THE PROCESSING OF RADAR RETURN SIGNALS FOR TARGET DETECTION
Li, V. Y. F. (Author). 1999
Student thesis: PhD