Selecting the remanufacturing system as object of the study, the buffer capacity is served as control
variable, and design of experiment (DOE) and simulation are used to analyze the effect that uncertain quality of
returns acts on system performance. The remanufacturing time and the recovery rate in each station are used to
represent the quality level of the returns, and the variance of remanufacturing time is used to denote the variability
of returns’ quality. Three factors (the variability, the proportion and the recovery rate) of different quality levels
in returns are considered. By analyzing the variance and the range of the simulation results, some important
conclusions are obtained: recovery rate affects the remanufacturing cost by far, and the variability has the minimum
influence; furthermore, for the returns, the more obvious of the dispersion degree, the higher proportion of the
high-level quality, and the higher of the recovery rate, the lower the cost of remanufacturing will be.
ZHENG Yuqiao *(郑玉巧), ZHANG Chengcheng (张铖铖), SU Chun (苏春)
. Simulation on Remanufacturing Cost by Considering Quality Grade of Returns and Buffer Capacity[J]. Journal of Shanghai Jiaotong University(Science), 2019
, 24(4)
: 471
-476
.
DOI: 10.1007/s12204-019-2096-0
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