Microseismic sensing taking advantage of sensors can remotely monitor seismic activities
and evaluate seismic hazard. Compared with experts’ seismic event clusters, clustering algorithms
are more objective, and they can handle many seismic events. Many methods have been proposed
for seismic event clustering and the K-means clustering technique has become the most famous one.
However, K-means can be affected by noise events (large location error events) and initial cluster
centers. In this paper, a data field-based K-means clustering methodology is proposed for seismicity
analysis. The application of synthetic data and real seismic data have shown its effectiveness in
removing noise events as well as finding good initial cluster centers. Furthermore, we introduced
the time parameter into the K-means clustering process and applied it to seismic events obtained
from the Chinese Yongshaba mine. The results show that the time-event location distance and data
field-based K-means clustering can divide seismic events by both space and time, which provides
a new insight for seismicity analysis compared with event location distance and data field-based
K-means clustering. The Krzanowski-Lai (KL) index obtains a maximum value when the number of
clusters is five: the energy index (EI) shows that clusters C1, C3 and C5 have very critical periods.
In conclusion, the time-event location distance, and the data field-based K-means clustering can
provide an effective methodology for seismicity analysis and hazard assessment. In addition, further
study can be done by considering time-event location-magnitude distances
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