期刊
EUROPEAN PHYSICAL JOURNAL-SPECIAL TOPICS
卷 232, 期 1, 页码 35-46出版社
SPRINGER HEIDELBERG
DOI: 10.1140/epjs/s11734-022-00512-x
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Irregularly sampled time series analysis is a common problem in various disciplines. We propose a method to obtain a regularly sampled time series spectrum with minimum information loss. The approach is applied to validate a prototypical model and identify critical climate transition periods and their characteristic properties in palaeoclimate proxy data sets around Africa.
Irregularly sampled time series analysis is a common problem in various disciplines. Since conventional methods are not directly applicable to irregularly sampled time series, a common interpolation approach is used; however, this causes data distortion and consequently biases further analyses. We propose a method that yields a regularly sampled time series spectrum of costs with minimum information loss. Each time series in this spectrum is a stationary series and acts as a difference filter. The transformation costs approach derives the differences between consecutive and arbitrarily sized segments. After obtaining regular sampling, recurrence plot analysis is performed to distinguish regime transitions. The approach is applied to a prototypical model to validate its performance and to different palaeoclimate proxy data sets located around Africa to identify critical climate transition periods during the last 5 million years and their characteristic properties.
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