Integrated optimisation of pricing manufacturing and procurement decisions of a make-to-stock system operating in a fluctuating environment

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Date

2023

Authors

Oktay Karabağ
Burak Gökgür

Journal Title

Journal ISSN

Volume Title

Publisher

Taylor and Francis Ltd.

Open Access Color

HYBRID

Green Open Access

No

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No
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Top 10%
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Average
Popularity
Top 10%

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Abstract

Manufacturers experience random environmental fluctuations that influence their supply and demand processes directly. To cope with these environmental fluctuations they typically utilise operational hedging strategies in terms of pricing manufacturing and procurement decisions. We focus on this challenging problem by proposing an analytical model. Specifically we study an integrated problem of procurement manufacturing and pricing strategies for a continuous-review make-to-stock system operating in a randomly fluctuating environment with exponentially distributed processing times. The environmental changes are driven by a continuous-time discrete state-space Markov chain and they directly affect the system's procurement price raw material flow rate and price-sensitive demand rate. We formulate the system as an infinite-horizon Markov decision process with a long-run average profit criterion and show that the optimal procurement and manufacturing strategies are of state-dependent threshold policies. Besides that we provide several analytical results on the optimal pricing strategies. We introduce a linear programming formulation to numerically obtain the system's optimal decisions. We particularly investigate how production rate holding cost procurement price and demand variabilities customers' price sensitivity and interaction between supply and demand processes affect the system's performance measures through an extensive numerical study. Furthermore our numerical results demonstrate the potential benefits of using dynamic pricing compared to that of static pricing. In particular the profit enhancement being achieved with dynamic pricing can reach up to 15% depending on the problem parameters. © 2023 Elsevier B.V. All rights reserved.

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Keywords

Dynamic Programming, Linear Programming Dynamic Pricing, Manufacturing Systems, Markov Modelling, Stochastic Models, Continuous Time Systems, Costs, Investments, Linear Programming, Markov Processes, Profitability, Stochastic Models, Stochastic Systems, Dynamic Pricing, Environmental Fluctuations, Linear Programming Dynamic Pricing, Linear-programming, Make-to-stock Systems, Markov Modeling, Pricing Decision, Procurement Decisions, Procurement Strategy, Stochastic-modeling, Dynamic Programming, Continuous time systems, Costs, Investments, Linear programming, Markov processes, Profitability, Stochastic models, Stochastic systems, Dynamic pricing, Environmental fluctuations, Linear programming dynamic pricing, Linear-programming, Make-to-stock systems, Markov modeling, Pricing decision, Procurement decisions, Procurement strategy, Stochastic-modeling, Dynamic programming, 670, 330

Fields of Science

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

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OpenCitations Citation Count
9

Source

International Journal of Production Research

Volume

61

Issue

Start Page

8423

End Page

8450
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CrossRef : 12

Scopus : 12

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Mendeley Readers : 42

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