• 177 Citations
  • 8 h-Index
20072019
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Fingerprint Dive into the research topics where Byung-cheol Kim is active. These topic labels come from the works of this person. Together they form a unique fingerprint.

  • 2 Similar Profiles
Costs Engineering & Materials Science
Probability distributions Engineering & Materials Science
Kalman filters Engineering & Materials Science
Risk assessment Engineering & Materials Science
Value engineering Engineering & Materials Science
Taylor series Engineering & Materials Science
Method of moments Engineering & Materials Science
Random processes Engineering & Materials Science

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Research Output 2007 2019

  • 177 Citations
  • 8 h-Index
  • 14 Article
  • 2 Conference contribution
  • 1 Comment/debate
1 Citation (Scopus)
Costs
Trajectories
Performance index
Risk management
Visibility
2 Citations (Scopus)

Improving the accuracy and operational predictability of project cost forecasts: an adaptive combination approach

Kim, B. & Kwak, Y. H., Jul 4 2018, In : Production Planning and Control. 29, 9, p. 743-760 18 p.

Research output: Contribution to journalArticle

Costs
Simulators
Decision making
Predictability
Project control
8 Citations (Scopus)

Cost performance as a stochastic process: EAC projection by Markov chain simulation

Du, J., Kim, B. & Zhao, D., Jun 1 2016, In : Journal of Construction Engineering and Management. 142, 6, 04016009.

Research output: Contribution to journalArticle

Random processes
Markov processes
Costs
Value engineering
Stochastic processes
14 Citations (Scopus)

Probabilistic Evaluation of Cost Performance Stability in Earned Value Management

Kim, B., Jan 1 2016, In : Journal of Management in Engineering. 32, 1, 4015025.

Research output: Contribution to journalArticle

Costs
Evaluation
Value management
Earned value
Performance index
3 Citations (Scopus)
Risk assessment
Evaluation
Credibility
Compatibility
Statistical Models