Juan De Antón , Félix Villafáñez , David Poza , Adolfo López-Paredes
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引用次数: 0
Abstract
The increasing adoption of additive manufacturing (AM) in the industrial sector is leading to an imbalance between supply and demand of additively manufactured subcomponents: companies demanding AM services require very specific products and AM suppliers differ widely in their capabilities. Some existing proposals aim to help match supply and demand by merely making customer–supplier allocations. Only a few recent works go beyond allocation issues and propose market mechanisms to also address pricing aspects. However, we observe that these mechanisms do not fully exploit the potential of additive manufacturing techniques. The aim of this paper is to design a market mechanism that considers the particularity of AM techniques, wherein suppliers can benefit from manufacturing multiple heterogeneous parts from multiple customers in the same build area to increase production throughput. This market mechanism has been implemented as an iterative combinatorial double auction that adapts to this feature of the AM market: customers will bid to get their orders produced and suppliers will submit asking quotes to win the production of combinations of those orders. The mechanism solves the allocation and pricing of AM orders while seeking the maximization of social welfare. The procedure is simulated in a theoretical environment to evaluate its performance and to identify the most appropriate conditions for its implementation in a real environment. Unlike other existing proposals for client-supplier allocation mechanisms in additive manufacturing, the proposed mechanism allows a single supplier to produce a combination of orders from different clients, leading to a pricing system that maximizes social welfare without participants disclosing sensitive information.
工业部门越来越多地采用增材制造(AM)技术,导致增材制造子部件的供需失衡:要求提供增材制造服务的公司需要非常特殊的产品,而增材制造供应商的能力却大相径庭。现有的一些建议旨在仅通过客户与供应商之间的分配来帮助实现供需匹配。近期只有少数著作超越了分配问题,提出了同时解决定价问题的市场机制。然而,我们注意到这些机制并没有充分利用增材制造技术的潜力。本文旨在设计一种考虑到增材制造技术特殊性的市场机制,供应商可以从在同一构建区域制造来自多个客户的多个异构部件中获益,从而提高生产吞吐量。该市场机制以迭代组合式双重拍卖的形式实现,以适应自动机械加工市场的这一特点:客户通过竞标获得订单生产,供应商通过报价赢得订单组合的生产。该机制在寻求社会福利最大化的同时,解决了 AM 订单的分配和定价问题。该程序在理论环境中进行了模拟,以评估其性能,并确定在真实环境中实施该程序的最合适条件。与其他现有的增材制造客户-供应商分配机制建议不同的是,所建议的机制允许单一供应商生产来自不同客户的订单组合,从而在参与者不披露敏感信息的情况下实现社会福利最大化的定价系统。
期刊介绍:
Computers & Industrial Engineering (CAIE) is dedicated to researchers, educators, and practitioners in industrial engineering and related fields. Pioneering the integration of computers in research, education, and practice, industrial engineering has evolved to make computers and electronic communication integral to its domain. CAIE publishes original contributions focusing on the development of novel computerized methodologies to address industrial engineering problems. It also highlights the applications of these methodologies to issues within the broader industrial engineering and associated communities. The journal actively encourages submissions that push the boundaries of fundamental theories and concepts in industrial engineering techniques.