Remanufacturing cost analysis under uncertain core quality and return conditions: extreme and non-extreme scenarios
Saeed Z.Gavidel, Jeremy L.Rickli

TL;DR
This paper introduces SCoRM, a novel stochastic model for analyzing remanufacturing costs under uncertain core quality and return conditions, including extreme scenarios, validated through a case study and comparative analysis.
Contribution
The paper develops a new multivariate stochastic model, SCoRM, integrating hybrid Pareto distribution and Markov chains to accurately assess remanufacturing costs under uncertainty.
Findings
SCoRM effectively predicts remanufacturing costs with high accuracy.
Extreme return scenarios significantly impact cost estimates.
SCoRM outperforms traditional machine learning models in predictive tasks.
Abstract
Uncertainties in core quality condition, return quantity and timing can propagate and accumulate in process cost and complicate cost assessments. However, regardless of cost assessment complexities, accurate cost models are required for successful remanufacturing operation management. In this paper, joint effects of core quality condition, return quantity, and timing on remanufacturing cost under normal and extreme return conditions is analyzed. To conduct this analysis, a novel multivariate stochastic model called Stochastic Cost of Remanufacturing Model (SCoRM) is developed. In building SCoRM, a Hybrid Pareto Distribution (HPD), Bernoulli process, and a polynomial cost function are employed. It is discussed that core return process can be characterized as a Discrete Time Markov Chain (DTMC). In a case study, SCoRM is applied to assess remanufacturing costs of steam traps of a chemical…
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Taxonomy
TopicsSustainable Supply Chain Management · Multi-Criteria Decision Making
