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Dynamic stock and end-of-life flow identification based on the internal cycle model and mean-age monitoring

机译:基于内部周期模型和均值监控的动态库存和报废流程识别

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Planning of end-of-life (EoL) product take-back systems and sizing of dismantling and recycling centers, entails the EoL flow (EoLF) that originates from the product dynamic stock (DS). Several uncertain factors (economic, technological, health, social and environmental) render both the EoLF and the remaining stock uncertain. Early losses of products during use due to biodegradation, wear and uncertain factors such as withdrawals and exports of used, may diminish the stock and the EoLF. Life expectancy prediction methods are static, ignoring early losses and inapt under dynamic conditions. Existing dynamic methods, either consider a single uncertain factor (e.g. GDP) approximately or heuristically modelled and ignore other factors that may become dominant, or assume cognizance of DS and of the center axis of the EoL exit distribution that are unknown for most products. As a result, reliable dynamic EoLF prediction for both durables and consumer end-products is still challenging. The present work develops an identification method for estimating the early loss and DS and predicting the dynamic EoLF, based on available input data (production + net imports) and on sampled measurements of the stock mean-age and the EoLF mean-age. The mean ages are scaled quantities, slowly varying, even under dynamic conditions and can be reliably determined, even from small size and/or frequent samples. The method identifies the early loss sequence, as well as the center axis and spread of the EoL exit distribution, which are subsequently used to determine the DS and EoLF profiles, enabling consistent and reliable predictions.
机译:规划报废(EoL)产品回收系统并确定拆解和回收中心的规模,就需要产生于产品动态库存(DS)的EoL流量(EoLF)。几个不确定因素(经济,技术,健康,社会和环境)使EoLF和剩余库存量都不确定。使用过程中由于生物降解,磨损和不确定因素(例如废旧物品的回收和出口)而造成的产品早期损失可能会减少库存和EoLF。预期寿命预测方法是静态的,忽略了早期损失,并且在动态条件下不可行。现有的动态方法要么考虑单个不确定因素(例如GDP),要么近似地或通过启发式建模,而忽略可能成为主导的其他因素,或者假设大多数产品都未知的DS和EoL出口分布的中心轴。结果,对于耐用性和消费者最终产品的可靠的动态EoLF预测仍然具有挑战性。本工作基于可用的输入数据(生产量+净进口量)以及库存平均年龄和EoLF平均年龄的抽样测量值,开发了一种识别方法,用于估计早期损失和DS,并预测动态EoLF。平均年龄是按比例缩放的数量,即使在动态条件下也可以缓慢变化,即使是小尺寸和/或频繁采样的样本也可以可靠地确定。该方法可识别早期损失序列,以及EoL出口分布的中心轴和展布,随后可用于确定DS和EoLF分布图,从而实现一致且可靠的预测。

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