4.5 Article

Comprehensive Risk Management in Passive Buildings Projects

期刊

ENERGIES
卷 14, 期 20, 页码 -

出版社

MDPI
DOI: 10.3390/en14206830

关键词

passive buildings; risk management; fault tree analysis; fuzzy logic

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Passive buildings are gaining interest due to global climate change, environmental concerns, and rising energy costs. However, meeting Passive House requirements comes with complexity and risks, making risk management crucial for successful project completion. A new risk management model dedicated to passive buildings is proposed, offering strategies for mitigating risks and enabling effective reduction of overall risk in practice.
Nowadays, we can observe a growing interest in passive buildings due to global climate change, environmental concerns, and growing energy costs. However, developing a passive building is associated with meeting many Passive House requirements, which results in their increased complexity as well as many challenges and risks which could threaten the successful completion of the project. Risk management is a key tool enabling meeting today's challenging passive house project's demands connected with quality, costs, deadlines, and legal issues. In this paper, a new model of risk management dedicated for passive buildings based is proposed, in which a novel Fuzzy Fault Tree integrated with risk response matrix was developed. We proposed 171 risk remediation strategies for all 16 recognized risks in passive buildings projects. We show how to apply the proposed model in practice on one passive building example. Thanks to applying the proposed risk management model an effective reduction of the risks of the basic event is enabled, leading to a significant reduction of the top event risk. The proposed model is useful for architects, installation designers, contractors, and owners who are willing to develop attainable and successful passive buildings projects that benefit all stakeholders.

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