Fuzzy-Based Multivariate Analysis for Input Modeling of Risk Assessment in Wind Farm Projects

Currently, input modeling for Monte Carlo simulation (MSC) is performed either by fitting a probability distribution to historical data or using expert elicitation methods when historical data are limited. These approaches, however, are not suitable for wind farm construction, where—although lacking...

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Main Authors: Emad Mohamed, Parinaz Jafari, Simaan AbouRizk
Format: Article
Language:English
Published: MDPI AG 2020-12-01
Series:Algorithms
Subjects:
Online Access:https://www.mdpi.com/1999-4893/13/12/325
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spelling doaj-7df36ec1430d47088862a657911abd1f2020-12-05T00:06:45ZengMDPI AGAlgorithms1999-48932020-12-011332532510.3390/a13120325Fuzzy-Based Multivariate Analysis for Input Modeling of Risk Assessment in Wind Farm ProjectsEmad Mohamed0Parinaz Jafari1Simaan AbouRizk2Department of Civil and Environmental Engineering, University of Alberta, Edmonton, AB T6G 2W2, CanadaDepartment of Civil and Environmental Engineering, University of Alberta, Edmonton, AB T6G 2W2, CanadaDepartment of Civil and Environmental Engineering, University of Alberta, Edmonton, AB T6G 2W2, CanadaCurrently, input modeling for Monte Carlo simulation (MSC) is performed either by fitting a probability distribution to historical data or using expert elicitation methods when historical data are limited. These approaches, however, are not suitable for wind farm construction, where—although lacking in historical data—large amounts of subjective knowledge describing the impacts of risk factors are available. Existing approaches are also limited by their inability to consider a risk factor’s impact on cost and schedule as dependent. This paper is proposing a methodology to enhance input modeling in Monte Carlo risk assessment of wind farm projects based on fuzzy set theory and multivariate modeling. In the proposed method, subjective expert knowledge is quantified using fuzzy logic and is used to determine the parameters of a marginal generalized Beta distribution. Then, the correlation between the cost and schedule impact is determined and fit jointly into a bivariate distribution using copulas. To evaluate the feasibility of the proposed methodology and to demonstrate its main features, the method was applied to an illustrative case study, and sensitivity analysis and face validation were used to evaluate the method. The results demonstrated that the proposed approach provides a reliable method for enhancing input modeling in Monte Carlo simulation (MCS).https://www.mdpi.com/1999-4893/13/12/325Monte Carlo simulationinput modelingfuzzy logicrisk analysis and assessmentmultivariate distributionmarginal Beta
collection DOAJ
language English
format Article
sources DOAJ
author Emad Mohamed
Parinaz Jafari
Simaan AbouRizk
spellingShingle Emad Mohamed
Parinaz Jafari
Simaan AbouRizk
Fuzzy-Based Multivariate Analysis for Input Modeling of Risk Assessment in Wind Farm Projects
Algorithms
Monte Carlo simulation
input modeling
fuzzy logic
risk analysis and assessment
multivariate distribution
marginal Beta
author_facet Emad Mohamed
Parinaz Jafari
Simaan AbouRizk
author_sort Emad Mohamed
title Fuzzy-Based Multivariate Analysis for Input Modeling of Risk Assessment in Wind Farm Projects
title_short Fuzzy-Based Multivariate Analysis for Input Modeling of Risk Assessment in Wind Farm Projects
title_full Fuzzy-Based Multivariate Analysis for Input Modeling of Risk Assessment in Wind Farm Projects
title_fullStr Fuzzy-Based Multivariate Analysis for Input Modeling of Risk Assessment in Wind Farm Projects
title_full_unstemmed Fuzzy-Based Multivariate Analysis for Input Modeling of Risk Assessment in Wind Farm Projects
title_sort fuzzy-based multivariate analysis for input modeling of risk assessment in wind farm projects
publisher MDPI AG
series Algorithms
issn 1999-4893
publishDate 2020-12-01
description Currently, input modeling for Monte Carlo simulation (MSC) is performed either by fitting a probability distribution to historical data or using expert elicitation methods when historical data are limited. These approaches, however, are not suitable for wind farm construction, where—although lacking in historical data—large amounts of subjective knowledge describing the impacts of risk factors are available. Existing approaches are also limited by their inability to consider a risk factor’s impact on cost and schedule as dependent. This paper is proposing a methodology to enhance input modeling in Monte Carlo risk assessment of wind farm projects based on fuzzy set theory and multivariate modeling. In the proposed method, subjective expert knowledge is quantified using fuzzy logic and is used to determine the parameters of a marginal generalized Beta distribution. Then, the correlation between the cost and schedule impact is determined and fit jointly into a bivariate distribution using copulas. To evaluate the feasibility of the proposed methodology and to demonstrate its main features, the method was applied to an illustrative case study, and sensitivity analysis and face validation were used to evaluate the method. The results demonstrated that the proposed approach provides a reliable method for enhancing input modeling in Monte Carlo simulation (MCS).
topic Monte Carlo simulation
input modeling
fuzzy logic
risk analysis and assessment
multivariate distribution
marginal Beta
url https://www.mdpi.com/1999-4893/13/12/325
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