A simulation-optimization approach for fractional, profitability-oriented inventory control under service-level type constraints
Tianxiao Sun, Noah Schwarzkopf

TL;DR
This paper presents a data-driven simulation-optimization framework that enhances inventory control by balancing profitability and service-level constraints under uncertainty.
Contribution
It introduces a novel combined simulation and fractional optimization approach for profit-oriented inventory management under service constraints.
Findings
Improves service consistency and financial yield in simulated business scenarios.
Provides a practical decision-making tool integrating stochastic simulations with optimization.
Demonstrates adaptability to dynamic enterprise systems.
Abstract
Managing stock efficiently remains a core issue in modern logistics, where companies must reconcile cost efficiency with dependable service despite unpredictable market conditions. Conventional models often overlook the direct connection between investment in inventory and overall financial performance. This study introduces a data-driven decision framework that combines stochastic simulations with a profit-oriented optimization routine to enhance decision-making under uncertainty. The simulation stage generates performance estimates across multiple operating scenarios, providing realistic data on expenditures, revenues, and service reliability. These outcomes inform a fractional optimization process that searches for policies yielding the highest financial returns while maintaining required availability levels. The algorithm iteratively refines parameter values through feedback between…
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