Parsimonious description for predicting high-dimensional dynamics

نویسندگان

  • Yoshito Hirata
  • Tomoya Takeuchi
  • Shunsuke Horai
  • Hideyuki Suzuki
  • Kazuyuki Aihara
چکیده

When we observe a system, we often cannot observe all its variables and may have some of its limited measurements. Under such a circumstance, delay coordinates, vectors made of successive measurements, are useful to reconstruct the states of the whole system. Although the method of delay coordinates is theoretically supported for high-dimensional dynamical systems, practically there is a limitation because the calculation for higher-dimensional delay coordinates becomes more expensive. Here, we propose a parsimonious description of virtually infinite-dimensional delay coordinates by evaluating their distances with exponentially decaying weights. This description enables us to predict the future values of the measurements faster because we can reuse the calculated distances, and more accurately because the description naturally reduces the bias of the classical delay coordinates toward the stable directions. We demonstrate the proposed method with toy models of the atmosphere and real datasets related to renewable energy.

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عنوان ژورنال:

دوره 5  شماره 

صفحات  -

تاریخ انتشار 2015