Guest Editorial: Selected Papers from The International Conference on Industry 4.0 and Smart Manufacturing 2019 (ISM @SMM)

IF 2.5 Q2 ENGINEERING, INDUSTRIAL
Salvatore Digiesi
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The availability of a great amount of data from the work environment offers the opportunity to define dynamic models that can interact with the physical environment, thus providing reliable prediction of system development and allowing for effective fulfilment of continuous improvements. The same line of reasoning applies for external environments (logistics) in the cases of both freight and human transport.</p><p>The adoption of new technologies and forms of organisation has the potential to spread collaborative intelligent production systems and generate circular economic processes characterised by higher levels of sustainability than those of traditional systems.</p><p>This Special Issue is made up of selected papers that were presented at the first International Conference on Industry 4.0 and Smart Manufacturing 2019, organised by the Modelling &amp; Simulation Center Laboratory of Enterprise Solutions, Department of Mechanical, Energy and Management Engineering of University of Calabria in Rende (Cosenza), Italy, in November 2019. The conference, attended by scientists, researchers and company managers working in smart manufacturing and I4.0, provided opportunities for attendees to network, create new synergies and collaborations, and develop new ideas for research and business. The wide range of topics covered in the conference included invited papers, tutorials and poster sessions chosen through a peer review process.</p><p>Following the successful conclusion of the conference, a select collection of papers from the conference were chosen for this Special Issue in <i>IET Collaborative Intelligent Manufacturing</i>. This Special Issue is dedicated to exploring the state of the art in research and development on the adoption of enabling technologies of I4.0 in collaborative and intelligent production contexts. Papers were selected on the recommendation of a panel of experts and the authors were invited to submit their manuscripts to the journal. After extensive and independent peer review, eight significant manuscripts were accepted for publication.</p><p>The selected papers deal with three main topics: logistics; production systems, data-driven modelling, and support; and technological and organisational innovations for sustainability. Although the range of papers covers a variety of I4.0 topics, two common themes arise from those selected—the attention paid to effective management of the substantial volume of data coming from smart systems; and the focus on sustainability obtained or improved through the adoption of I4.0-enabling technologies in both production and logistics environments. The following is a summary of the accepted papers.</p><p>The first three papers focus on Logistics 4.0. The first paper, ‘Industry 4.0 in the logistics field: a bibliometric analysis’, by Bigliardi <i>et al</i>., provides an overview of state-of-the-art of applications of I4.0 in logistics. The authors perform an analysis and review of the scientific literature from 2013 to 2020 related to I4.0 applied to the logistics field. The results of that analysis allow for identification of the most investigated application fields within the manufacturing, automotive, and fashion sectors. Moreover, their work identifies both the relevant (I4.0, IoT, cyber-physical systems, and radio frequency identification) and emerging topics within this research area (4D printing, Industry 5.0, artificial intelligence and drones). The fashion sector is the application field of the second paper, ‘Optimisation of goods relocation in urban store networks with an incentive strategy’, by Silvestri <i>et al</i>. In their paper, the authors investigate the IoT-based relocation activities of urban fashion stores and define a collaborative win–win strategy for retailers and customers of urban fashion stores that allows for direct costs and externalities to be minimised through relocation activities among stores in the same urban area. The strategy is based on a delivery game approach and an incentive mechanism, and its potential effectiveness is shown through simulation case studies. The third paper, ‘Defining maritime 4.0: reconciling principles, elements and characteristics to support maritime vessel digitalisation’, by Sullivan <i>et al</i>., focuses on maritime digitalisation technologies and provides a descriptive definition of principles that reflect the objectives of Maritime 4.0 to support the development of next-generation vessels that are potentially able to improve the safety, resilience and profitability of the maritime industry. In their work, the authors adopt the outcome of industry interviews to supplement current state-of-the-art scientific literature and highlight critical research areas and research supporting digitalisation in maritime development. Moreover, the maturity of maritime digitalisation and related challenges are thoroughly investigated.</p><p>The next three papers deal with production systems. The fourth paper, ‘Digital Twin models in industrial operations: state-of-the-art and future research directions’, by Melesse <i>et al</i>., carries out a systematic literature review on Digital Twin models in industrial operations. Records retrieved from public databases (Scopus and Google Scholar) for the 2016–2020 period allow the authors to identify the most relevant contributions to Digital Twin models in the fields of production, predictive maintenance and after-sales services. The potential benefits of adopting Digital Twins in industrial operations, as well as related challenges and solutions, are discussed. A highly significant role for Digital Twins is recognised in the advancement of industrial operations, especially production and predictive maintenance, whilst their still-limited role in after-sales services is observed. In the fifth paper, ‘Continuous improvement and adaptation of predictive models in smart manufacturing and model management', by Bachinger <i>et al</i>., the authors investigate the performance and adaptation of predictive models in smart manufacturing by identifying typical causes of concept drift and highlighting the importance of continuous monitoring and adaptation of models. The authors highlight the use of model management systems in the continuous improvement and adaptation of predictive models. A model management system for smart manufacturing is discussed, and generalisable recommendations for continuous model improvement are provided. Moreover, the successful application of two model adaptation strategies is shown. The sixth paper, ‘Cloning and training collective intelligence with generative adversarial networks’, by Terziyan <i>et al</i>., deals with artificial (cloned) collective intelligence applied to digital transformation of business processes in industry. The authors highlight the role of collective intelligence as a powerful decision-making tool to manage complexity and uncertainty within I4.0 processes and present a new model to design and train the digital cognitive clones of groups of decision-makers. The concept of cellular collective intelligence is introduced and discussed. Also provided are the results of tests of cloned collective intelligence under actual scenarios (secure supply chain, IoT middleware, and collaborative work management at an academic portal).</p><p>The final two papers focus on technological and organisational innovations for sustainability. In the seventh paper, ‘An interdisciplinary framework to define strategies for digitalization and sustainability: Proposal of a “digicircular” model’, by De Felice and Petrillo, the challenges to achieving circular economies and bioeconomies in a digital era (“digicircular” economies) are discussed. An integrated and interdisciplinary framework is proposed to prioritise the digital capabilities that are needed for the digicircular economy's implementation. The authors propose an interdisciplinary and multicriteria tool to support companies in implementing the digicircular business model. The tool is based on Bloomberg's environmental scores and the key performance indicators of the <i>Corporate Knights'</i> global sustainability score prioritised through the adoption of an analytic hierarchy process. The effectiveness of the tool proposed is illustrated through two full-scale case studies. In the eighth paper, ‘Technological innovations for green production: the Green Foundry case study’, by Saetta and Caldarelli, the authors investigate the modification of complex production processes to achieve better and more sustainable performance. The study is based on a full-scale case study in the foundry sector and highlights the technological innovations and necessary changes in operations management necessary for increased sustainability of production processes. In developing the case study, the authors observe that for the effective introduction of a single green technological innovation to complex production processes, changes must be made in nearly all of the processes.</p><p>The Guest Editor is grateful to the International Programme Committee of the 2019 International Conference on Industry 4.0 and Smart Manufacturing, with special thanks to Prof. Francesco Longo and Prof. Antonio Padovano. The support from the Editorial Board of IET <i>Collaborative Intelligent Manufacturing</i> is fully acknowledged. Special thanks to Editors-in-Chief Prof. Weiming Shen and Prof. Liang Gao and to Managing Editor Mr Tom Dodds for their valuable support, to all the authors who submitted their work to this Special Issue, and to all the reviewers and the IET Editorial Office that made this Special Issue possible.</p>","PeriodicalId":33286,"journal":{"name":"IET Collaborative Intelligent Manufacturing","volume":"3 1","pages":"1-3"},"PeriodicalIF":2.5000,"publicationDate":"2021-03-29","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"https://ietresearch.onlinelibrary.wiley.com/doi/epdf/10.1049/cim2.12018","citationCount":"1","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"IET Collaborative Intelligent Manufacturing","FirstCategoryId":"1085","ListUrlMain":"https://onlinelibrary.wiley.com/doi/10.1049/cim2.12018","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"Q2","JCRName":"ENGINEERING, INDUSTRIAL","Score":null,"Total":0}
引用次数: 1

Abstract

Industry 4.0 (I4.0) is vastly changing a complete range of industrial operations. Companies are facing new challenges but also taking advantage of the multiple opportunities offered by the Fourth Industrial Revolution. The new work environments are characterised by novel technologies and forms of organisation. When adopted, traditional models often do not provide reliable descriptions of these systems.

Digitalisation, enabling technologies such as machine learning, augmented and virtual reality, collaborative robots, and new forms of lean and smart manufacturing require new production and organisational models to predict and control the performance of I4.0 production systems. The availability of a great amount of data from the work environment offers the opportunity to define dynamic models that can interact with the physical environment, thus providing reliable prediction of system development and allowing for effective fulfilment of continuous improvements. The same line of reasoning applies for external environments (logistics) in the cases of both freight and human transport.

The adoption of new technologies and forms of organisation has the potential to spread collaborative intelligent production systems and generate circular economic processes characterised by higher levels of sustainability than those of traditional systems.

This Special Issue is made up of selected papers that were presented at the first International Conference on Industry 4.0 and Smart Manufacturing 2019, organised by the Modelling & Simulation Center Laboratory of Enterprise Solutions, Department of Mechanical, Energy and Management Engineering of University of Calabria in Rende (Cosenza), Italy, in November 2019. The conference, attended by scientists, researchers and company managers working in smart manufacturing and I4.0, provided opportunities for attendees to network, create new synergies and collaborations, and develop new ideas for research and business. The wide range of topics covered in the conference included invited papers, tutorials and poster sessions chosen through a peer review process.

Following the successful conclusion of the conference, a select collection of papers from the conference were chosen for this Special Issue in IET Collaborative Intelligent Manufacturing. This Special Issue is dedicated to exploring the state of the art in research and development on the adoption of enabling technologies of I4.0 in collaborative and intelligent production contexts. Papers were selected on the recommendation of a panel of experts and the authors were invited to submit their manuscripts to the journal. After extensive and independent peer review, eight significant manuscripts were accepted for publication.

The selected papers deal with three main topics: logistics; production systems, data-driven modelling, and support; and technological and organisational innovations for sustainability. Although the range of papers covers a variety of I4.0 topics, two common themes arise from those selected—the attention paid to effective management of the substantial volume of data coming from smart systems; and the focus on sustainability obtained or improved through the adoption of I4.0-enabling technologies in both production and logistics environments. The following is a summary of the accepted papers.

The first three papers focus on Logistics 4.0. The first paper, ‘Industry 4.0 in the logistics field: a bibliometric analysis’, by Bigliardi et al., provides an overview of state-of-the-art of applications of I4.0 in logistics. The authors perform an analysis and review of the scientific literature from 2013 to 2020 related to I4.0 applied to the logistics field. The results of that analysis allow for identification of the most investigated application fields within the manufacturing, automotive, and fashion sectors. Moreover, their work identifies both the relevant (I4.0, IoT, cyber-physical systems, and radio frequency identification) and emerging topics within this research area (4D printing, Industry 5.0, artificial intelligence and drones). The fashion sector is the application field of the second paper, ‘Optimisation of goods relocation in urban store networks with an incentive strategy’, by Silvestri et al. In their paper, the authors investigate the IoT-based relocation activities of urban fashion stores and define a collaborative win–win strategy for retailers and customers of urban fashion stores that allows for direct costs and externalities to be minimised through relocation activities among stores in the same urban area. The strategy is based on a delivery game approach and an incentive mechanism, and its potential effectiveness is shown through simulation case studies. The third paper, ‘Defining maritime 4.0: reconciling principles, elements and characteristics to support maritime vessel digitalisation’, by Sullivan et al., focuses on maritime digitalisation technologies and provides a descriptive definition of principles that reflect the objectives of Maritime 4.0 to support the development of next-generation vessels that are potentially able to improve the safety, resilience and profitability of the maritime industry. In their work, the authors adopt the outcome of industry interviews to supplement current state-of-the-art scientific literature and highlight critical research areas and research supporting digitalisation in maritime development. Moreover, the maturity of maritime digitalisation and related challenges are thoroughly investigated.

The next three papers deal with production systems. The fourth paper, ‘Digital Twin models in industrial operations: state-of-the-art and future research directions’, by Melesse et al., carries out a systematic literature review on Digital Twin models in industrial operations. Records retrieved from public databases (Scopus and Google Scholar) for the 2016–2020 period allow the authors to identify the most relevant contributions to Digital Twin models in the fields of production, predictive maintenance and after-sales services. The potential benefits of adopting Digital Twins in industrial operations, as well as related challenges and solutions, are discussed. A highly significant role for Digital Twins is recognised in the advancement of industrial operations, especially production and predictive maintenance, whilst their still-limited role in after-sales services is observed. In the fifth paper, ‘Continuous improvement and adaptation of predictive models in smart manufacturing and model management', by Bachinger et al., the authors investigate the performance and adaptation of predictive models in smart manufacturing by identifying typical causes of concept drift and highlighting the importance of continuous monitoring and adaptation of models. The authors highlight the use of model management systems in the continuous improvement and adaptation of predictive models. A model management system for smart manufacturing is discussed, and generalisable recommendations for continuous model improvement are provided. Moreover, the successful application of two model adaptation strategies is shown. The sixth paper, ‘Cloning and training collective intelligence with generative adversarial networks’, by Terziyan et al., deals with artificial (cloned) collective intelligence applied to digital transformation of business processes in industry. The authors highlight the role of collective intelligence as a powerful decision-making tool to manage complexity and uncertainty within I4.0 processes and present a new model to design and train the digital cognitive clones of groups of decision-makers. The concept of cellular collective intelligence is introduced and discussed. Also provided are the results of tests of cloned collective intelligence under actual scenarios (secure supply chain, IoT middleware, and collaborative work management at an academic portal).

The final two papers focus on technological and organisational innovations for sustainability. In the seventh paper, ‘An interdisciplinary framework to define strategies for digitalization and sustainability: Proposal of a “digicircular” model’, by De Felice and Petrillo, the challenges to achieving circular economies and bioeconomies in a digital era (“digicircular” economies) are discussed. An integrated and interdisciplinary framework is proposed to prioritise the digital capabilities that are needed for the digicircular economy's implementation. The authors propose an interdisciplinary and multicriteria tool to support companies in implementing the digicircular business model. The tool is based on Bloomberg's environmental scores and the key performance indicators of the Corporate Knights' global sustainability score prioritised through the adoption of an analytic hierarchy process. The effectiveness of the tool proposed is illustrated through two full-scale case studies. In the eighth paper, ‘Technological innovations for green production: the Green Foundry case study’, by Saetta and Caldarelli, the authors investigate the modification of complex production processes to achieve better and more sustainable performance. The study is based on a full-scale case study in the foundry sector and highlights the technological innovations and necessary changes in operations management necessary for increased sustainability of production processes. In developing the case study, the authors observe that for the effective introduction of a single green technological innovation to complex production processes, changes must be made in nearly all of the processes.

The Guest Editor is grateful to the International Programme Committee of the 2019 International Conference on Industry 4.0 and Smart Manufacturing, with special thanks to Prof. Francesco Longo and Prof. Antonio Padovano. The support from the Editorial Board of IET Collaborative Intelligent Manufacturing is fully acknowledged. Special thanks to Editors-in-Chief Prof. Weiming Shen and Prof. Liang Gao and to Managing Editor Mr Tom Dodds for their valuable support, to all the authors who submitted their work to this Special Issue, and to all the reviewers and the IET Editorial Office that made this Special Issue possible.

嘉宾评论:2019年工业4.0与智能制造国际会议论文集(ISM @SMM)
工业4.0 (I4.0)正在极大地改变整个工业运营范围。企业在面临新挑战的同时,也在利用第四次工业革命带来的多重机遇。新的工作环境的特点是新的技术和组织形式。当被采用时,传统模型通常不能提供这些系统的可靠描述。数字化、机器学习、增强现实和虚拟现实、协作机器人以及新形式的精益和智能制造等技术都需要新的生产和组织模型来预测和控制工业4.0生产系统的性能。来自工作环境的大量数据的可用性为定义可以与物理环境交互的动态模型提供了机会,从而提供了系统开发的可靠预测,并允许有效地实现持续改进。同样的推理也适用于货运和人力运输的外部环境(物流)。新技术和组织形式的采用有可能传播协作智能生产系统,并产生比传统系统具有更高可持续性水平的循环经济过程。本特刊由2019年11月意大利伦德(科森扎)卡拉布里亚大学机械、能源和管理工程系企业解决方案建模与仿真中心实验室组织的第一届工业4.0和智能制造国际会议上发表的精选论文组成。会议由从事智能制造和工业4.0的科学家、研究人员和公司经理参加,为与会者提供了建立网络、创造新的协同效应和合作以及为研究和商业开发新想法的机会。会议涵盖的主题范围广泛,包括通过同行评审程序选择的邀请论文、教程和海报会议。随着会议的圆满结束,本次会议的部分论文被选为IET协同智能制造特刊。本期特刊旨在探讨在协作和智能生产环境中采用工业4.0使能技术的研究和开发现状。论文是根据专家小组的推荐选出的,作者被邀请向该杂志提交手稿。经过广泛和独立的同行评审,八份重要的手稿被接受发表。所选论文涉及三个主要主题:物流;生产系统,数据驱动的建模和支持;以及可持续发展的技术和组织创新。尽管这些论文涵盖了各种各样的工业4.0主题,但所选的论文中出现了两个共同的主题——对来自智能系统的大量数据的有效管理的关注;通过在生产和物流环境中采用工业4.0支持技术,获得或改善了对可持续性的关注。以下是被录用论文的摘要。前三篇论文的重点是物流4.0。第一篇论文,“物流领域的工业4.0:文献计量学分析”,由Bigliardi等人撰写,概述了工业4.0在物流领域的应用现状。作者对2013年至2020年与工业4.0应用于物流领域相关的科学文献进行了分析和回顾。该分析的结果允许在制造业、汽车和时尚行业中确定最受调查的应用领域。此外,他们的工作确定了该研究领域的相关(工业4.0,物联网,网络物理系统和射频识别)和新兴主题(4D打印,工业5.0,人工智能和无人机)。时尚行业是第二篇论文的应用领域,“用激励策略优化城市商店网络中的货物搬迁”,由Silvestri等人撰写。在他们的论文中,作者研究了基于物联网的城市时尚商店搬迁活动,并定义了零售商和消费者的合作双赢策略
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来源期刊
IET Collaborative Intelligent Manufacturing
IET Collaborative Intelligent Manufacturing Engineering-Industrial and Manufacturing Engineering
CiteScore
9.10
自引率
2.40%
发文量
25
审稿时长
20 weeks
期刊介绍: IET Collaborative Intelligent Manufacturing is a Gold Open Access journal that focuses on the development of efficient and adaptive production and distribution systems. It aims to meet the ever-changing market demands by publishing original research on methodologies and techniques for the application of intelligence, data science, and emerging information and communication technologies in various aspects of manufacturing, such as design, modeling, simulation, planning, and optimization of products, processes, production, and assembly. The journal is indexed in COMPENDEX (Elsevier), Directory of Open Access Journals (DOAJ), Emerging Sources Citation Index (Clarivate Analytics), INSPEC (IET), SCOPUS (Elsevier) and Web of Science (Clarivate Analytics).
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