Identifying key AI challenges in make-to-order manufacturing organisations: A multiple case study

IF 4.1 2区 计算机科学 Q1 COMPUTER SCIENCE, SOFTWARE ENGINEERING
Jonatan Flyckt , Tony Gorschek , Daniel Mendez , Niklas Lavesson
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引用次数: 0

Abstract

Artificial Intelligence can make manufacturing organisations more effective and efficient, but it is not clear which AI tasks hold the greatest potential. Make-to-order manufacturers must constantly adapt to customers’ unique and rapidly changing needs, and therefore have different challenges than make-to-stock manufacturers. Our ambition is to develop an AI-enabled software system to support manufacturing organisations in improving their processes. To this end, we first seek to understand the data and technology requirements for key AI-enabled tasks in a make-to-order setting and determine the level of performance and explainability needed to address them. We perform a multiple case study of five make-to-order packaging manufacturers, interviewing personnel from sales, production, and supply chain to identify and prioritise operational challenges suitable for AI approaches. Demand forecasting emerges as the most important task, followed by predictive maintenance, quality inspection, complex decision risk estimation, and production planning. Participants emphasise the importance of explainable techniques to ensure trust in the systems. The results highlight a need for a greater control of the production process and a better understanding of customer needs. Although most of the tasks could be solved with current techniques, some, such as intermittent demand forecasting and complex decision risk estimation, would require further development. The study clarifies the potential of AI-enabled systems in make-to-order manufacturing and outlines the steps required to realise it.
确定按订单制造组织中的关键人工智能挑战:多案例研究
人工智能可以使制造业组织更有效率,但目前尚不清楚哪些人工智能任务最有潜力。按订单生产的制造商必须不断适应客户独特和快速变化的需求,因此与按库存生产的制造商面临不同的挑战。我们的目标是开发一个支持人工智能的软件系统,以支持制造组织改进其流程。为此,我们首先试图了解在定制环境中关键人工智能任务的数据和技术要求,并确定解决这些问题所需的性能水平和可解释性。我们对五家定制包装制造商进行了多案例研究,采访了来自销售、生产和供应链的人员,以确定适合人工智能方法的运营挑战并对其进行优先排序。需求预测成为最重要的任务,其次是预测性维护、质量检查、复杂决策风险评估和生产计划。与会者强调了可解释技术对确保系统信任的重要性。结果表明,需要加强对生产过程的控制,并更好地了解客户需求。虽然大多数任务可以用目前的技术解决,但有些任务,如间歇性需求预测和复杂决策风险估计,将需要进一步发展。该研究阐明了人工智能系统在按订单制造中的潜力,并概述了实现这一潜力所需的步骤。
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来源期刊
Journal of Systems and Software
Journal of Systems and Software 工程技术-计算机:理论方法
CiteScore
8.60
自引率
5.70%
发文量
193
审稿时长
16 weeks
期刊介绍: The Journal of Systems and Software publishes papers covering all aspects of software engineering and related hardware-software-systems issues. All articles should include a validation of the idea presented, e.g. through case studies, experiments, or systematic comparisons with other approaches already in practice. Topics of interest include, but are not limited to: •Methods and tools for, and empirical studies on, software requirements, design, architecture, verification and validation, maintenance and evolution •Agile, model-driven, service-oriented, open source and global software development •Approaches for mobile, multiprocessing, real-time, distributed, cloud-based, dependable and virtualized systems •Human factors and management concerns of software development •Data management and big data issues of software systems •Metrics and evaluation, data mining of software development resources •Business and economic aspects of software development processes The journal welcomes state-of-the-art surveys and reports of practical experience for all of these topics.
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