A neural network approach for simulating stationary stochastic processes

Publikation: Beitrag in FachzeitschriftArtikelForschungPeer-Review

Autoren

Externe Organisationen

  • National University of Singapore
  • Rice University
Forschungs-netzwerk anzeigen

Details

OriginalspracheEnglisch
Seiten (von - bis)71-94
Seitenumfang24
FachzeitschriftStructural Engineering and Mechanics
Jahrgang32
Ausgabenummer1
PublikationsstatusVeröffentlicht - 10 Mai 2009
Extern publiziertJa

Abstract

In this paper a procedure for Monte Carlo simulation of univariate stationary stochastic processes with the aid of neural networks is presented. Neural networks operate model-free and, thus, circumvent the need of specifying a priori statistical properties of the process, as needed traditionally. This is particularly advantageous when only limited data are available. A neural network can capture the "pattern" of a short observed time series. Afterwards, it can directly generate stochastic process realizations which capture the properties of the underlying data. In the present study a simple feedforward network with focused time-memory is utilized. The proposed procedure is demonstrated by examples of Monte Carlo simulation, by synthesis of future values of an initially short single process record.

ASJC Scopus Sachgebiete

Zitieren

A neural network approach for simulating stationary stochastic processes. / Beer, Michael; Spanos, Pol D.
in: Structural Engineering and Mechanics, Jahrgang 32, Nr. 1, 10.05.2009, S. 71-94.

Publikation: Beitrag in FachzeitschriftArtikelForschungPeer-Review

Download
@article{637f780ef85741aea2d043daadace2f3,
title = "A neural network approach for simulating stationary stochastic processes",
abstract = "In this paper a procedure for Monte Carlo simulation of univariate stationary stochastic processes with the aid of neural networks is presented. Neural networks operate model-free and, thus, circumvent the need of specifying a priori statistical properties of the process, as needed traditionally. This is particularly advantageous when only limited data are available. A neural network can capture the {"}pattern{"} of a short observed time series. Afterwards, it can directly generate stochastic process realizations which capture the properties of the underlying data. In the present study a simple feedforward network with focused time-memory is utilized. The proposed procedure is demonstrated by examples of Monte Carlo simulation, by synthesis of future values of an initially short single process record.",
keywords = "Monte Carlo simulation, Neural networks, Stochastic processes",
author = "Michael Beer and Spanos, {Pol D.}",
year = "2009",
month = may,
day = "10",
doi = "10.12989/sem.2009.32.1.071",
language = "English",
volume = "32",
pages = "71--94",
journal = "Structural Engineering and Mechanics",
issn = "1225-4568",
publisher = "Techno Press",
number = "1",

}

Download

TY - JOUR

T1 - A neural network approach for simulating stationary stochastic processes

AU - Beer, Michael

AU - Spanos, Pol D.

PY - 2009/5/10

Y1 - 2009/5/10

N2 - In this paper a procedure for Monte Carlo simulation of univariate stationary stochastic processes with the aid of neural networks is presented. Neural networks operate model-free and, thus, circumvent the need of specifying a priori statistical properties of the process, as needed traditionally. This is particularly advantageous when only limited data are available. A neural network can capture the "pattern" of a short observed time series. Afterwards, it can directly generate stochastic process realizations which capture the properties of the underlying data. In the present study a simple feedforward network with focused time-memory is utilized. The proposed procedure is demonstrated by examples of Monte Carlo simulation, by synthesis of future values of an initially short single process record.

AB - In this paper a procedure for Monte Carlo simulation of univariate stationary stochastic processes with the aid of neural networks is presented. Neural networks operate model-free and, thus, circumvent the need of specifying a priori statistical properties of the process, as needed traditionally. This is particularly advantageous when only limited data are available. A neural network can capture the "pattern" of a short observed time series. Afterwards, it can directly generate stochastic process realizations which capture the properties of the underlying data. In the present study a simple feedforward network with focused time-memory is utilized. The proposed procedure is demonstrated by examples of Monte Carlo simulation, by synthesis of future values of an initially short single process record.

KW - Monte Carlo simulation

KW - Neural networks

KW - Stochastic processes

UR - http://www.scopus.com/inward/record.url?scp=67449163735&partnerID=8YFLogxK

U2 - 10.12989/sem.2009.32.1.071

DO - 10.12989/sem.2009.32.1.071

M3 - Article

AN - SCOPUS:67449163735

VL - 32

SP - 71

EP - 94

JO - Structural Engineering and Mechanics

JF - Structural Engineering and Mechanics

SN - 1225-4568

IS - 1

ER -

Von denselben Autoren