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Budget and cost contingency cart models for power plant projects

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posted on 2023-07-06, 23:58 authored by Md Arifuzzaman, Uneb Gazder, Muhammad Saiful Islam, Martin Skitmore
Cost overruns are a ubiquitous feature of construction projects, and realistic budgeting at the development stage plays a significant role in their control. However, the application of existing models to budgeting for power plant projects is restricted by the limited amount of project-specific cost data available. This study overcomes this by using a Classification and Regression Tree (CART) approach involving mixed methods of website visits, document study, and expert opinion to predict the amount of project cost (PC) and cost contingency (CC) needed to cover probable cost increases by the use of models containing readily available project attributes and national economic parameters at the project development stage. The modeling process is demonstrated and tested with a case study involving 58 Bangladeshi power plant projects – producing average absolute errors ranging from 0.7% to 1.7% and enabling project cost, inflation rate, and GDP to be identified as significant factors affecting PC and CC modeling. The approach can be applied to predict the PC during preliminary budgeting and selecting a project type and location aligned to the country’s economic status and policy-making strategies, thus facilitating further investment decisions.

History

Volume

28

Issue

8

Start Page

680

End Page

695

Number of Pages

16

eISSN

1822-3605

ISSN

1392-3730

Publisher

Taylor & Francis

Additional Rights

CC-BY 4.0

Peer Reviewed

  • Yes

Open Access

  • Yes

Acceptance Date

2022-03-30

External Author Affiliations

Bond University; King Faisal University, Saudi Arabia; University of Bahrain, Bahrain

Era Eligible

  • Yes

Journal

Journal of Civil Engineering and Management

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