The abrupt event monitoring is a challenging and critical
issue in water environment systems. There are two main different abrupt events
in the monitoring system, namely, the emergency water pollution accident and
the abrupt sensor fault. The two different abrupt events have similar data
characteristics, and few methods can be used to recognize the events. In this
paper, a novel abrupt event monitoring approach based on kernel principal component
analysis (KPCA) and support vector machines is proposed, which is combined with
the physical redundancy method. The trust mechanism is introduced into the
proposed approach to reduce the interference of external noise and improve the
performance of quick response for the abrupt events. A spare data area is set
up to store the data for the KPCA modeling. The data in the spare data area are
updated continuously, and the KPCA model is updated subsequently to improve the
adaptivity of the KPCA model for the abrupt event monitoring. The experimental results
show that the proposed approach is capable of detecting and recognizing the two
different abrupt events efficiently.
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