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عنوان
Combining statistical methods with dynamical insight to improve nonlinear estimation

پدید آورنده
Du, Hailiang

موضوع
H Social Sciences (General),HA Statistics

رده

کتابخانه
مرکز و کتابخانه مطالعات اسلامی به زبان‌های اروپایی

محل استقرار
استان: قم ـ شهر: قم

مرکز و کتابخانه مطالعات اسلامی به زبان‌های اروپایی

تماس با کتابخانه : 32910706-025

شماره کتابشناسی ملی

شماره
TLets543119

عنوان و نام پديدآور

عنوان اصلي
Combining statistical methods with dynamical insight to improve nonlinear estimation
نام عام مواد
[Thesis]
نام نخستين پديدآور
Du, Hailiang

وضعیت نشر و پخش و غیره

نام ناشر، پخش کننده و غيره
London School of Economics and Political Science (LSE)
تاریخ نشرو بخش و غیره
2009

یادداشتهای مربوط به پایان نامه ها

جزئيات پايان نامه و نوع درجه آن
Ph.D.
کسي که مدرک را اعطا کرده
London School of Economics and Political Science (LSE)
امتياز متن
2009

یادداشتهای مربوط به خلاصه یا چکیده

متن يادداشت
Physical processes such as the weather are usually modelled using nonlinear dynamical systems. Statistical methods are found to be difficult to draw the dynamical information from the observations of nonlinear dynamics. This thesis is focusing on combining statistical methods with dynamical insight to improve the nonlinear estimate of the initial states, parameters and future states. In the perfect model scenario (PMS), method based on the Indistin-guishable States theory is introduced to produce initial conditions that are consistent with both observations and model dynamics. Our meth-ods are demonstrated to outperform the variational method, Four-dimensional Variational Assimilation, and the sequential method, En-semble Kalman Filter. Problem of parameter estimation of deterministic nonlinear models is considered within the perfect model scenario where the mathematical structure of the model equations are correct, but the true parameter values are unknown. Traditional methods like least squares are known to be not optimal as it base on the wrong assumption that the distribu-tion of forecast error is Gaussian IID. We introduce two approaches to address the shortcomings of traditional methods. The first approach forms the cost function based on probabilistic forecasting; the second approach focuses on the geometric properties of trajectories in short term while noting the global behaviour of the model in the long term. Both methods are tested on a variety of nonlinear models, the true parameter values are well identified. Outside perfect model scenario, to estimate the current state of the model one need to account the uncertainty from both observatiOnal noise and model inadequacy. Methods assuming the model is perfect are either inapplicable or unable to produce the optimal results. It is almost certain that no trajectory of the model is consistent with an infinite series of observations. There are pseudo-orbits, however, that are consistent with observations and these can be used to estimate the model states. Applying the Indistinguishable States Gradient De-scent algorithm with certain stopping criteria is introduced to find rel-evant pseudo-orbits. The difference between Weakly Constraint Four-dimensional Variational Assimilation (WC4DVAR) method and Indis-tinguishable States Gradient Descent method is discussed. By testing on two system-model pairs, our method is shown to produce more consistent results than the WC4DVAR method. Ensemble formed from the pseudo-orbit generated by Indistinguishable States Gradient Descent method is shown to outperform the Inverse Noise ensemble in estimating the current states. Outside perfect model scenario, we demonstrate that forecast with relevant adjustment can produce better forecast than ignoring the existence of model error and using the model directly to make fore-casts. Measurement based on probabilistic forecast skill is suggested to measure the predictability outside PMS.

موضوع (اسم عام یاعبارت اسمی عام)

موضوع مستند نشده
H Social Sciences (General)
موضوع مستند نشده
HA Statistics

نام شخص به منزله سر شناسه - (مسئولیت معنوی درجه اول )

مستند نام اشخاص تاييد نشده
Du, Hailiang

شناسه افزوده (تنالگان)

مستند نام تنالگان تاييد نشده
London School of Economics and Political Science (LSE)

دسترسی و محل الکترونیکی

نام الکترونيکي
 مطالعه متن کتاب 

وضعیت انتشار

فرمت انتشار
p

اطلاعات رکورد کتابشناسی

نوع ماده
[Thesis]
کد کاربرگه
276903

اطلاعات دسترسی رکورد

سطح دسترسي
a
تكميل شده
Y

پیشنهاد / گزارش اشکال

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