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Advances in Decision Sciences (ADS)

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Optimizing Repair Allocation in Healthcare Comparing Volume- and Value-Based Models under Capacity Constraints

Optimizing Repair Allocation in Healthcare Comparing Volume- and Value-Based Models under Capacity Constraints

Title

Optimizing Repair Allocation in Healthcare: Comparing Volume- and Value-Based Models under Capacity Constraints

Authors

  • Chartchai Leenawong
    School of Science, King Mongkut’s Institute of Technology, Ladkrabang, Bangkok, 10520, Thailand

Abstract

Purpose: This study compares two optimization models—volume-based and value-based—for allocating repair resources in healthcare equipment maintenance. It introduces a dual-model framework with eligibility-weighted fairness constraints, a combination not previously explored in the literature. The study highlights trade-offs between service volume and strategic value, offering practical and adaptable solutions, including for low-resource settings.
Design/methodology/approach: A linear optimization approach evaluates both models under identical capacity and eligibility constraints. The volume-based model maximizes repair volume, while the value-based model maximizes total repair value based on equipment criticality and facility performance. Both incorporate eligibility-weighted proportionality constraints to ensure fair and feasible assignments. Real-world–inspired data simulate multiple demand scenarios to compare assignment patterns and system outcomes.
Findings: The value-based model prioritized high-impact repairs and achieved a higher total repair value score of 1,157,270 compared to 1,130,998 in the volume-based model, with only a one-unit difference in repair volume. These dimensionless scores reflect strategic benefit rather than monetary value. The results highlight trade-offs between broad service coverage and targeted system impact. This study contributes to Decision Sciences by applying linear programming to optimize repair allocation under resource constraints.
Practical implications: Healthcare administrators can use these insights to align repair strategies with institutional priorities—whether maximizing throughput or clinical value.
Social implications: Timely repair of critical equipment enhances patient safety, service reliability, and health system resilience.
Originality/value: This research presents a novel comparison of volume- and value-based optimization models for healthcare repair. Both models incorporate eligibility-weighted proportionality constraints to support fair, effective planning across diverse facilities.

Keywords

Healthcare equipment maintenance, Optimization model, Repair task allocation, Eligibility-weighted assignment, Capacity-constrained scheduling

Classification-JEL

C44, C61, P36

Pages

38-62

How to Cite

Leenawong, C. (2025). Optimizing Repair Allocation in Healthcare: Comparing Volume- and Value-Based Models under Capacity Constraints. Advances in Decision Sciences, 29(4), 38-62.

https://doi.org/10.47654/v29y2025i4p38-62

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ISSN 2090-3359 (Print)
ISSN 2090-3367 (Online)

Scientific and Business World

Asia University, Taiwan

8.3
2024CiteScore
 
88th percentile
Powered by  Scopus
SCImago Journal & Country Rank
Q2 in Scopus
CiteScore 2024 = 8.3
CiteScoreTracker 2025 = 8.2
SNIP 2024 = 0.632
SJR Quartile = Q1
SJR 2024 = 0.814
H-Index = 18

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