Analyzing key success factors in public-private partnership BOT projects: an empirical study on financing influences, insights, and analysis in construction management

ABSTRACT The study encompasses various infrastructural amenities such as railways, roads, ports, bridges, tunnels, power plants, hospitals, municipal buildings, and other public-use facilities, which are essential for every country’s economic growth. Recognizing the challenges faced by governments i...

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Veröffentlicht in:Matéria 2024, Vol.29 (2)
Hauptverfasser: Krishnaraj, Rajkumar, Subbaiyan, Anandakumar, Viswanathan, Rajeshkumar, Velusamy, Sampathkumar
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Sprache:eng
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Zusammenfassung:ABSTRACT The study encompasses various infrastructural amenities such as railways, roads, ports, bridges, tunnels, power plants, hospitals, municipal buildings, and other public-use facilities, which are essential for every country’s economic growth. Recognizing the challenges faced by governments in independently providing all infrastructure components, Public Private Partnerships [PPPs] have emerged as a cooperative approach between the public and private sectors. This paper explores the risks, delays, key success factors, contractor selection, and best value selection models in construction project management. In addition, the paper emphasizes the challenges that governments need to address in order to ensure the efficient functioning of the BOT (Built Operate Transfer) network. The challenges in establishing an efficient BOT network are highlighted, and a decision-support system using the .Net framework is developed to aid in the prequalification and rating of BOT marketers. The purpose of this system is to provide the best value to the public procurer by employing regression analysis to rate bidders/applicants and utilizing a composite programming method based on relative weighting.
ISSN:1517-7076
1517-7076
DOI:10.1590/1517-7076-rmat-2024-0140