Abstract:
We present a Visual Analytics approach that addresses the detection of
interesting patterns in numerical time series, specifically from
environmental sciences. Crucial for the detection of interesting temporal
patterns are the time scale and the starting points one is looking at. Our
approach makes no assumption about time scale and starting position of
temporal patterns and consists of three main steps: an algorithm to compute
statistical values for all possible time scales and starting positions of
intervals, visual identification of potentially interesting patterns in a
matrix visualization, and interactive exploration of detected patterns. We
demonstrate the utility of this approach in two scientific scenarios and
explain how it allowed scientists to gain new insight into the dynamics of
environmental systems.