Separation of Trend and Chaotic Components of Time Series and Estimation of Their Characteristics by Linear Splines

This paper considers the problem of separating the trend and the chaotic component of chaotic time series in the absence of information on the characteristics of the chaotic component. Such a problem arises in nuclear physics, biomedicine, and many other applied fields. The scheme has two stages. At the first stage, smoothing linear splines with different values of smoothing parameter are used to separate the “trend component.” At the second stage, the method of least squares is used to find the unknown variance σ2 of the noise component. © 2018, Pleiades Publishing, Ltd.

Authors
Kryanev A.V.1, 2 , Ivanov V.V.1, 2 , Romanova A.O.1 , Sevastyanov L.A. 2, 3 , Udumyan D.K. 1, 3, 4
Number of issue
2
Language
English
Pages
194-197
Status
Published
Volume
15
Year
2018
Organizations
  • 1 National Research Nuclear University Moscow Engineering Physics Institute, Moscow, 115409, Russian Federation
  • 2 Joint Institute for Nuclear Research, Dubna, Moscow oblast, 141980, Russian Federation
  • 3 Russian People’s Friendship University, Moscow, 117198, Russian Federation
  • 4 University of Miami, Coral Gables, FL 33124, United States
Share

Other records