Estimating Unknown Cycles in Geophysical data

10/06/2019
by   Xueheng Shi, et al.
0

Examples of cyclic (periodic) behavior in geophysical data abound. In many cases the primary period is known, such as in daily measurements of rain, temperature, and sea level. However, many time series of measurements contain cycles of unknown or varying length. We consider the problem of estimating the unknown period in a time series.We review the basic methods, compare their performance through a simulation studyusing observed sea level data, apply them to an astronomical data set, and discuss generalizations of the methods.

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