A Simulation-Based Approximate Dynamic Programming Approach to Dynamic and Stochastic Resource-Constrained Multi-Project Scheduling Problem

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Date

2024, 2024

Journal Title

Journal ISSN

Volume Title

Publisher

Elsevier

Open Access Color

HYBRID

Green Open Access

Yes

OpenAIRE Downloads

75

OpenAIRE Views

260

Publicly Funded

No
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Top 10%
Influence
Top 10%
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Top 10%

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Abstract

We consider the dynamic and stochastic resource -constrained multi -project scheduling problem which allows for the random arrival of projects and stochastic task durations. Completing projects generates rewards, which are reduced by a tardiness cost in the case of late completion. Multiple types of resource are available, and projects consume different amounts of these resources when under processing. The problem is modelled as an infinite -horizon discrete -time Markov decision process and seeks to maximise the expected discounted long -run profit. We use an approximate dynamic programming algorithm (ADP) with a linear approximation model which can be used for online decision making. Our approximation model uses project elements that are easily accessible by a decision -maker, with the model coefficients obtained offline via a combination of Monte Carlo simulation and least squares estimation. Our numerical study shows that ADP often statistically significantly outperforms the optimal reactive baseline algorithm (ORBA). In experiments on smaller problems however, both typically perform suboptimally compared to the optimal scheduler obtained by stochastic dynamic programming. ADP has an advantage over ORBA and dynamic programming in that ADP can be applied to larger problems. We also show that ADP generally produces statistically significantly higher profits than common algorithms used in practice, such as a rule -based algorithm and a reactive genetic algorithm.

Description

Kirkbride, Christopher/0000-0002-3667-3413; Satic, Ugur/0000-0002-9160-0006; Jacko, Peter/0000-0003-3376-0260;

Keywords

Project Scheduling, Markov Decision Processes, Approximate Dynamic Programming, Dynamic Resource Allocation, Dynamic Programming, 330, Approximate dynamic programming, Project scheduling, 650, Dynamic resource allocation, Dynamic programming, Markov decision processes, dynamic programming, Operations research and management science, approximate dynamic programming, project scheduling, dynamic resource allocation

Fields of Science

0209 industrial biotechnology, 0211 other engineering and technologies, 02 engineering and technology

Citation

WoS Q

Q1

Scopus Q

Q1
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OpenCitations Citation Count
17

Source

European Journal of Operational Research

Volume

315

Issue

2

Start Page

454

End Page

469
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CrossRef : 18

Scopus : 19

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Mendeley Readers : 31

SCOPUS™ Citations

22

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Web of Science™ Citations

19

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Page Views

247

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Downloads

230

checked on Mar 06, 2026

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6.1134

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