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Data-based mechanistic modelling, generalised sensitivity and dominant mode analysis.

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Data-based mechanistic modelling, generalised sensitivity and dominant mode analysis. / Young, Peter C.
In: Computer Physics Communications, Vol. 117, No. 1-2, 01.03.1999, p. 113-129.

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Young PC. Data-based mechanistic modelling, generalised sensitivity and dominant mode analysis. Computer Physics Communications. 1999 Mar 1;117(1-2):113-129. doi: 10.1016/S0010-4655(98)00168-4

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Young, Peter C. / Data-based mechanistic modelling, generalised sensitivity and dominant mode analysis. In: Computer Physics Communications. 1999 ; Vol. 117, No. 1-2. pp. 113-129.

Bibtex

@article{a722ffea931248fd8c673d9a102c76cc,
title = "Data-based mechanistic modelling, generalised sensitivity and dominant mode analysis.",
abstract = "Since the inherent uncertainty associated with most environmental and climatic systems is often acknowledged, it is surprising that most mathematical models of such systems are large, complex and completely deterministic in nature. In this situation, it seems sensible to consider alternative modelling methodologies which overtly acknowledge the often poorly defined nature of such systems and attempt to find simpler, stochastic descriptions which are more appropriate to the often limited data and information base. This paper considers one such approach, Data-based Mechanistic (DBM) modelling, and demonstrates how it can be useful not only for the modelling of environmental and other systems directly from time series data, but also as an approach to the evaluation and simplification of large deterministic simulation models. To achieve these objectives, the DBM approach exploits various methodological tools, including advanced methods of statistical identification and estimation; a particular form of Generalised Sensitivity Analysis based on Monte Carlo Simulation; and Dominant Mode Analysis, the latter involving a new statistical approach to combined model linearisation and order reduction. These various techniques are outlined in the paper and they are applied to the stochastic modelling of water pollution in rivers and the evaluation of nonlinear global carbon cycle models.",
keywords = "Monte Carlo analysis, Sensitivity analysis, Dominant mode analysis, Water pollution modelling, Global carbon cycle modelling",
author = "Young, {Peter C.}",
year = "1999",
month = mar,
day = "1",
doi = "10.1016/S0010-4655(98)00168-4",
language = "English",
volume = "117",
pages = "113--129",
journal = "Computer Physics Communications",
issn = "0010-4655",
publisher = "Elsevier",
number = "1-2",

}

RIS

TY - JOUR

T1 - Data-based mechanistic modelling, generalised sensitivity and dominant mode analysis.

AU - Young, Peter C.

PY - 1999/3/1

Y1 - 1999/3/1

N2 - Since the inherent uncertainty associated with most environmental and climatic systems is often acknowledged, it is surprising that most mathematical models of such systems are large, complex and completely deterministic in nature. In this situation, it seems sensible to consider alternative modelling methodologies which overtly acknowledge the often poorly defined nature of such systems and attempt to find simpler, stochastic descriptions which are more appropriate to the often limited data and information base. This paper considers one such approach, Data-based Mechanistic (DBM) modelling, and demonstrates how it can be useful not only for the modelling of environmental and other systems directly from time series data, but also as an approach to the evaluation and simplification of large deterministic simulation models. To achieve these objectives, the DBM approach exploits various methodological tools, including advanced methods of statistical identification and estimation; a particular form of Generalised Sensitivity Analysis based on Monte Carlo Simulation; and Dominant Mode Analysis, the latter involving a new statistical approach to combined model linearisation and order reduction. These various techniques are outlined in the paper and they are applied to the stochastic modelling of water pollution in rivers and the evaluation of nonlinear global carbon cycle models.

AB - Since the inherent uncertainty associated with most environmental and climatic systems is often acknowledged, it is surprising that most mathematical models of such systems are large, complex and completely deterministic in nature. In this situation, it seems sensible to consider alternative modelling methodologies which overtly acknowledge the often poorly defined nature of such systems and attempt to find simpler, stochastic descriptions which are more appropriate to the often limited data and information base. This paper considers one such approach, Data-based Mechanistic (DBM) modelling, and demonstrates how it can be useful not only for the modelling of environmental and other systems directly from time series data, but also as an approach to the evaluation and simplification of large deterministic simulation models. To achieve these objectives, the DBM approach exploits various methodological tools, including advanced methods of statistical identification and estimation; a particular form of Generalised Sensitivity Analysis based on Monte Carlo Simulation; and Dominant Mode Analysis, the latter involving a new statistical approach to combined model linearisation and order reduction. These various techniques are outlined in the paper and they are applied to the stochastic modelling of water pollution in rivers and the evaluation of nonlinear global carbon cycle models.

KW - Monte Carlo analysis

KW - Sensitivity analysis

KW - Dominant mode analysis

KW - Water pollution modelling

KW - Global carbon cycle modelling

U2 - 10.1016/S0010-4655(98)00168-4

DO - 10.1016/S0010-4655(98)00168-4

M3 - Journal article

VL - 117

SP - 113

EP - 129

JO - Computer Physics Communications

JF - Computer Physics Communications

SN - 0010-4655

IS - 1-2

ER -