基于决策树的旧件再制造能力评估方法

Processes Pub Date : 2024-06-14 DOI:10.3390/pr12061220
Shuhua Chen, Jian Hao, Yanxiang Chen, Zhongyuan Yang
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引用次数: 0

摘要

评估废旧零部件的再制造能力是确定其价值和最佳利用方法的重要依据。由于废旧零部件质量的不确定性和企业加工能力的参差不齐,再加上再制造产业规模的不断扩大,传统的加权分析模型将所有指标放在同一水平上考虑,决策效率低下。为了更有效地评价废旧零部件的再制造能力,提出了一种基于决策树的方法,对评价标准进行分层处理,以提高决策效率和适应性。首先,利用数据平台,借助人工神经网络和 Weibull 模型,对故障程度所反映的废旧零件剩余价值进行分析和预测,提供初步的再制造能力评估。然后,根据企业的加工能力,依次从技术、经济和环境可行性等方面对再制造能力进行评估。最后,通过对废旧叶片再制造的案例研究,验证了所提方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Decision Tree-Based Method for Evaluating the Remanufacturability of Used Parts
Assessing the remanufacturability of used parts is a crucial basis for determining their value and optimal utilization methods. Due to the uncertain quality of used parts and the varying processing capacity of enterprises, coupled with the continuous expansion of the scale of the remanufacturing industry, the traditional weighted-analysis model, which considers all indicators at the same level, is inefficient for decision-making. In order to evaluate the remanufacturability of used parts more efficiently, a decision tree-based method is proposed, which hierarchically processes the evaluation criteria to enhance decision-making efficiency and adaptability. First, using a data platform, the remaining value of used parts reflected in the failure degree is analyzed and predicted, with the aid of artificial neural networks and the Weibull model, providing an initial remanufacturability assessment. Then, remanufacturability is assessed sequentially from the technical, economic, and environmental feasibility aspects, based on the enterprise’s processing capabilities. Finally, the effectiveness of the proposed method is validated through a case study on the remanufacturing of used blades.
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