Modelling a Moore-Spiegel Electronic Circuit : the imperfect model scenario

The goal of this thesis is to investigate model imperfection in the context of forecasting. We focus on an electronic circuit built in a laboratory and then enclosed to reduce environmental effects. The non-dimensionalised model equations, obtained by applying Kirchhoff’s current and voltage laws, a...

Full description

Bibliographic Details
Main Author: Machete, R. L.
Published: University of Oxford 2007
Subjects:
Online Access:http://ethos.bl.uk/OrderDetails.do?uin=uk.bl.ethos.445775
id ndltd-bl.uk-oai-ethos.bl.uk-445775
record_format oai_dc
spelling ndltd-bl.uk-oai-ethos.bl.uk-4457752015-03-19T05:17:24ZModelling a Moore-Spiegel Electronic Circuit : the imperfect model scenarioMachete, R. L.2007The goal of this thesis is to investigate model imperfection in the context of forecasting. We focus on an electronic circuit built in a laboratory and then enclosed to reduce environmental effects. The non-dimensionalised model equations, obtained by applying Kirchhoff’s current and voltage laws, are the Moore-Spiegel Equations [47], but they exhibit a large disparity with the circuit. At parameter values used in the circuit, they yield a periodic trajectory whilst the circuit exhibits chaotic behaviour. Therefore, alternative models for the circuit are sought. The models we consider are local and global prediction models constructed from data. We acknowledge that all our models have errors and then seek to quantify how these errors are distributed across the circuit attractor. To this end, q-pling times of initial uncertainties are computed for the various models. A q-pling time is the time for an initial uncertainty to increase by a factor of q [67], where q is a real number. Whereas it is expected that different models should have different q-pling time distributions, it is found that the diversity in our models can be increased by constructing them in different coordinate spaces. To forecast the future dynamics of the circuit using any of the models, we make probabilistic forecasts [8]. The question of how to choose the spread of the initial ensemble is addressed by the use of skill scores [8, 9]. Finally, the diversity in our models is exploited by combining probabilistic forecasts from them so as to minimise some skill score. It is found that the skill of combined not-so-good models can be increased by combining them as discussed in this thesis.530.1Dynamical systems and ergodic theory : Ordinary differential equationsUniversity of Oxfordhttp://ethos.bl.uk/OrderDetails.do?uin=uk.bl.ethos.445775http://ora.ox.ac.uk/objects/uuid:0186999b-3e62-4e18-9ca9-9603be0acae2 : http://eprints.maths.ox.ac.uk/850/Electronic Thesis or Dissertation
collection NDLTD
sources NDLTD
topic 530.1
Dynamical systems and ergodic theory : Ordinary differential equations
spellingShingle 530.1
Dynamical systems and ergodic theory : Ordinary differential equations
Machete, R. L.
Modelling a Moore-Spiegel Electronic Circuit : the imperfect model scenario
description The goal of this thesis is to investigate model imperfection in the context of forecasting. We focus on an electronic circuit built in a laboratory and then enclosed to reduce environmental effects. The non-dimensionalised model equations, obtained by applying Kirchhoff’s current and voltage laws, are the Moore-Spiegel Equations [47], but they exhibit a large disparity with the circuit. At parameter values used in the circuit, they yield a periodic trajectory whilst the circuit exhibits chaotic behaviour. Therefore, alternative models for the circuit are sought. The models we consider are local and global prediction models constructed from data. We acknowledge that all our models have errors and then seek to quantify how these errors are distributed across the circuit attractor. To this end, q-pling times of initial uncertainties are computed for the various models. A q-pling time is the time for an initial uncertainty to increase by a factor of q [67], where q is a real number. Whereas it is expected that different models should have different q-pling time distributions, it is found that the diversity in our models can be increased by constructing them in different coordinate spaces. To forecast the future dynamics of the circuit using any of the models, we make probabilistic forecasts [8]. The question of how to choose the spread of the initial ensemble is addressed by the use of skill scores [8, 9]. Finally, the diversity in our models is exploited by combining probabilistic forecasts from them so as to minimise some skill score. It is found that the skill of combined not-so-good models can be increased by combining them as discussed in this thesis.
author Machete, R. L.
author_facet Machete, R. L.
author_sort Machete, R. L.
title Modelling a Moore-Spiegel Electronic Circuit : the imperfect model scenario
title_short Modelling a Moore-Spiegel Electronic Circuit : the imperfect model scenario
title_full Modelling a Moore-Spiegel Electronic Circuit : the imperfect model scenario
title_fullStr Modelling a Moore-Spiegel Electronic Circuit : the imperfect model scenario
title_full_unstemmed Modelling a Moore-Spiegel Electronic Circuit : the imperfect model scenario
title_sort modelling a moore-spiegel electronic circuit : the imperfect model scenario
publisher University of Oxford
publishDate 2007
url http://ethos.bl.uk/OrderDetails.do?uin=uk.bl.ethos.445775
work_keys_str_mv AT macheterl modellingamoorespiegelelectroniccircuittheimperfectmodelscenario
_version_ 1716741241119440896