본문

서브메뉴

Machine Learning for Predicting Non-Stationary Dynamical Systems, and Global Subseasonal-to-Seasonal Weather Phenomena.
내용보기
Machine Learning for Predicting Non-Stationary Dynamical Systems, and Global Subseasonal-to-Seasonal Weather Phenomena.
자료유형  
 학위논문
Control Number  
0017160933
International Standard Book Number  
9798383183410
Dewey Decimal Classification Number  
530
Main Entry-Personal Name  
Patel, Dhruvit Paresh.
Publication, Distribution, etc. (Imprint  
[S.l.] : University of Maryland, College Park., 2024
Publication, Distribution, etc. (Imprint  
Ann Arbor : ProQuest Dissertations & Theses, 2024
Physical Description  
204 p.
General Note  
Source: Dissertations Abstracts International, Volume: 86-01, Section: B.
General Note  
Advisor: Ott, Edward.
Dissertation Note  
Thesis (Ph.D.)--University of Maryland, College Park, 2024.
Summary, Etc.  
요약In this thesis, we are interested in modeling (1) the long-term statistical behavior of non-stationary dynamical systems, and (2) global weather patterns on the Subseasonal-to-Seasonal (S2S) time scale (2 weeks - 6 months). The first part of this thesis is primarily concerned with the situation where we have available to us measured time series data of the past states of the system of interest, and in some cases, a (perhaps inaccurate) scientific-knowledge-based model of the system. The central problem here lies in predicting a future behavior of the system that may be fundamentally different than that observed in the measured time series of its past. We develop machine learning -based methods for accomplishing this task and test it in various challenging scenarios (e.g., predicting future abrupt changes in dynamics mediated by bifurcations encountered that were not included in the training data). We also investigate the effects of dynamical noise in the training data on the predictability of such systems. For the second part of this thesis, we modify a machine learning -based global climate model to predict various weather phenomena on the S2S time scale. The model is a hybrid between a purely data-driven machine learning component and an atmospheric general circulation model.We begin by formulating a purely machine learning approach that utilizes the measured time series of the past states of the target non-stationary system, as well as knowledge of the time-dependence of the non-stationarity inducing time-dependent system parameter. We demonstrate that this method can enable the prediction of the future behavior of the non-stationary system even in situations where the future behavior is qualitatively and quantitatively different from the behavior in the training data. For situations where the training data contains dynamical noise, we develop a scheme to enable the trained machine learning model to predict trajectories which mimic the effects of dynamical noise on typical trajectories of the target system. We test our methods on the discrete time logistic map, the continuous time Lorenz system, and the spatiotemporal Kuramoto-Sivashinsky system, and for a variety of non-stationary scenarios.Next, we study the ability of our approach to not only extrapolate to previously unseen dynamics, but also to regions previously unexplored by the training data of the target system's state space. We find that while machine learning models can exhibit some capabilities to extrapolate in state space, they fail quickly as the amount of extrapolation required increases (as expected of any purely data-driven extrapolation method). We explore ways in which such failures can be mitigated. For instance, we show that a hybrid model which combines machine learning with a knowledge-based component can provide substantial improvements in extrapolation. We test our methods on the Ikeda map, the Lorenz system, and the Kuramoto-Sivashinsky system, under challenging scenarios (e.g., predicting future hysteretic transitions in dynamical behavior).Finally, we modify a machine learning -based hybrid global climate model to forecast global weather patterns on the S2S time scale. Predicting on this time scale is crucial for many domains (e.g., land, water, and energy management), yet it remains a difficult period to obtain useful predictions for. We demonstrate that our model has useful skill in predicting a number of phenomena including global precipitation anomalies, the El Nino Southern Oscillation and its related teleconnections, and various equatorial waves.
Subject Added Entry-Topical Term  
Physics.
Subject Added Entry-Topical Term  
Remote sensing.
Subject Added Entry-Topical Term  
Climate change.
Index Term-Uncontrolled  
Kuramoto-Sivashinsky system
Index Term-Uncontrolled  
Equatorial waves
Index Term-Uncontrolled  
Global weather
Index Term-Uncontrolled  
Logistic map
Index Term-Uncontrolled  
Global climate model
Added Entry-Corporate Name  
University of Maryland, College Park Physics
Host Item Entry  
Dissertations Abstracts International. 86-01B.
Electronic Location and Access  
로그인을 한후 보실 수 있는 자료입니다.
Control Number  
joongbu:654893
신착도서 더보기
최근 3년간 통계입니다.

소장정보

  • 예약
  • 캠퍼스간 도서대출
  • 서가에 없는 책 신고
  • 나의폴더
소장자료
등록번호 청구기호 소장처 대출가능여부 대출정보
TQ0030815 T   원문자료 열람가능/출력가능 열람가능/출력가능
마이폴더 부재도서신고

* 대출중인 자료에 한하여 예약이 가능합니다. 예약을 원하시면 예약버튼을 클릭하십시오.

해당 도서를 다른 이용자가 함께 대출한 도서

관련도서

관련 인기도서

도서위치