Framework for Risk Identification of Renewable Energy Projects Using Fuzzy Case-Based Reasoning

Construction projects are highly risk-prone due to both internal factors (e.g., organizational, contractual, project, etc.) and external factors (e.g., environmental, economic, political, etc.). Construction risks can thus have a direct or indirect impact on project objectives, such as cost, time, s...

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Main Authors: Sahand Somi, Nima Gerami Seresht, Aminah Robinson Fayek
Format: Article
Language:English
Published: MDPI AG 2020-06-01
Series:Sustainability
Subjects:
Online Access:https://www.mdpi.com/2071-1050/12/13/5231
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spelling doaj-b7bcdc9e89ed4dbb88bb4ff03a768caf2020-11-25T03:46:46ZengMDPI AGSustainability2071-10502020-06-01125231523110.3390/su12135231Framework for Risk Identification of Renewable Energy Projects Using Fuzzy Case-Based ReasoningSahand Somi0Nima Gerami Seresht1Aminah Robinson Fayek2Department of Civil and Environmental Engineering, University of Alberta, Edmonton, AB T6G 1H9, CanadaDepartment of Civil and Environmental Engineering, University of Alberta, Edmonton, AB T6G 1H9, CanadaDepartment of Civil and Environmental Engineering, University of Alberta, Edmonton, AB T6G 1H9, CanadaConstruction projects are highly risk-prone due to both internal factors (e.g., organizational, contractual, project, etc.) and external factors (e.g., environmental, economic, political, etc.). Construction risks can thus have a direct or indirect impact on project objectives, such as cost, time, safety, and quality. Identification of these risks is crucial in order to fulfill project objectives. Many tools and techniques have been proposed for risk identification, including literature review, questionnaire surveys, and expert interviews. However, the majority of these approaches are highly reliant on expert knowledge or prior knowledge of the project. Therefore, the application of such tools and techniques in risk identification for renewable energy projects (e.g., wind farm and solar power plant projects) is challenging due to their novelty and the limited availability of historical data or literature. This paper addresses these challenges by introducing a new risk identification framework for renewable energy projects, which combines case-based reasoning (CBR) with fuzzy logic. CBR helps to solve problems related to novel projects (e.g., renewable energy projects) based on their similarities to existing, well-studied projects (e.g., conventional energy projects). CBR addresses the issue of data scarcity by comparing novel types of construction projects to other well-studied project types and using the similarities between these two sets of projects to solve the different problems associated with novel types of construction projects, such as risk identification of renewable energy projects. Moreover, the integration of fuzzy logic with CBR, to develop fuzzy case-based reasoning (FCBR), increases the applicability of CBR in construction by capturing the subjective uncertainty that exists in construction-related problems. The applicability of the proposed framework was tested on a case study of an onshore wind farm project. The objectives of this paper are to introduce a novel framework for risk identification of renewable energy projects and to identify the risks associated with the construction of onshore wind farm projects at the work package level. The results of this paper will help to improve the risk management of renewable energy projects during the construction phase.https://www.mdpi.com/2071-1050/12/13/5231risk identificationcase-based reasoning (CBR)fuzzy case-based reasoning (FCBR), renewable energy projects
collection DOAJ
language English
format Article
sources DOAJ
author Sahand Somi
Nima Gerami Seresht
Aminah Robinson Fayek
spellingShingle Sahand Somi
Nima Gerami Seresht
Aminah Robinson Fayek
Framework for Risk Identification of Renewable Energy Projects Using Fuzzy Case-Based Reasoning
Sustainability
risk identification
case-based reasoning (CBR)
fuzzy case-based reasoning (FCBR), renewable energy projects
author_facet Sahand Somi
Nima Gerami Seresht
Aminah Robinson Fayek
author_sort Sahand Somi
title Framework for Risk Identification of Renewable Energy Projects Using Fuzzy Case-Based Reasoning
title_short Framework for Risk Identification of Renewable Energy Projects Using Fuzzy Case-Based Reasoning
title_full Framework for Risk Identification of Renewable Energy Projects Using Fuzzy Case-Based Reasoning
title_fullStr Framework for Risk Identification of Renewable Energy Projects Using Fuzzy Case-Based Reasoning
title_full_unstemmed Framework for Risk Identification of Renewable Energy Projects Using Fuzzy Case-Based Reasoning
title_sort framework for risk identification of renewable energy projects using fuzzy case-based reasoning
publisher MDPI AG
series Sustainability
issn 2071-1050
publishDate 2020-06-01
description Construction projects are highly risk-prone due to both internal factors (e.g., organizational, contractual, project, etc.) and external factors (e.g., environmental, economic, political, etc.). Construction risks can thus have a direct or indirect impact on project objectives, such as cost, time, safety, and quality. Identification of these risks is crucial in order to fulfill project objectives. Many tools and techniques have been proposed for risk identification, including literature review, questionnaire surveys, and expert interviews. However, the majority of these approaches are highly reliant on expert knowledge or prior knowledge of the project. Therefore, the application of such tools and techniques in risk identification for renewable energy projects (e.g., wind farm and solar power plant projects) is challenging due to their novelty and the limited availability of historical data or literature. This paper addresses these challenges by introducing a new risk identification framework for renewable energy projects, which combines case-based reasoning (CBR) with fuzzy logic. CBR helps to solve problems related to novel projects (e.g., renewable energy projects) based on their similarities to existing, well-studied projects (e.g., conventional energy projects). CBR addresses the issue of data scarcity by comparing novel types of construction projects to other well-studied project types and using the similarities between these two sets of projects to solve the different problems associated with novel types of construction projects, such as risk identification of renewable energy projects. Moreover, the integration of fuzzy logic with CBR, to develop fuzzy case-based reasoning (FCBR), increases the applicability of CBR in construction by capturing the subjective uncertainty that exists in construction-related problems. The applicability of the proposed framework was tested on a case study of an onshore wind farm project. The objectives of this paper are to introduce a novel framework for risk identification of renewable energy projects and to identify the risks associated with the construction of onshore wind farm projects at the work package level. The results of this paper will help to improve the risk management of renewable energy projects during the construction phase.
topic risk identification
case-based reasoning (CBR)
fuzzy case-based reasoning (FCBR), renewable energy projects
url https://www.mdpi.com/2071-1050/12/13/5231
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