Artificial intelligence, robotics, and logistics employment: The human factor in digital logistics

IF 11.2 2区 管理学 Q1 MANAGEMENT Journal of Business Logistics Pub Date : 2022-06-12 DOI:10.1111/jbl.12314
Matthias Klumpp, Caroline Ruiner
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Starting from the observation of technological innovations such as AI, robotics, and digital technologies and their implementation into supply chains, it can be expected that this impacts work and employment in the field of logistics. It is also evident that a change in work content and job demands is expected, which also depends on the design of human–computer interaction (HCI). HCI is a broad field that covers any interaction between humans and machines such as operating computers, handheld scanners, and mobile devices (Grudin, <span>2012</span>). Depending on the interaction with machines, humans will refrain more and more from operational tasks and have to migrate their capabilities and attention toward supervisory tasks. It is likely that this affects individual psychological outcomes such as motivation, work engagement, and job satisfaction and also team and organizational decisions and processes (Cummings &amp; Bruni, <span>2009</span>; Klumpp et al., <span>2019</span>; Lee et al., <span>2015</span>). However, this also impacts the cooperation among colleagues and with supervisors. Considering the different levels of change, we propose a conceptual framework for analyzing the relevance of the human factor for digital logistics work. The core topic of the structure is the question of HCI. For this area, we distinguish between four relevant levels as outlined below (see Figure 1).</p><p>As the human factor in digital logistics work is of outstanding relevance, we expect that this conceptual framework enables researchers to identify critical gaps and frame their individual research. In this context, it is especially relevant to focus not only on individuals in logistics contexts but to also consider that individuals and organizations operate in dynamic and complex interdependent systems and that thus (social) interactions matter for the implementation and success of digital transformation in business practice (D'Aleo &amp; Sergio, <span>2017</span>). Social interaction is an exchange between two or more individuals, which further influences the perspectives, positions, and actions of the interacting individuals. Through interactions, people design rules, institutions, and systems, which give further orientation and form perceptions (Weber, <span>1978</span>). Besides the examples to be seen in the papers included within this special topic forum, we can outline the importance of a differentiated analysis of such interactions for the implementation and success in digital logistics (Cerulo, <span>2009</span>). This can be exemplified regarding different professional groups, from driving professions to intralogistics personnel. Besides blue-collar workers, also white-collar logistics professions such as dispatchers or team leaders are susceptible to the mechanisms of social interaction with the four levels of HFI. This is even more relevant in the context of digitalization as transparency, communication, and interconnectedness are enabling closer connections and increased possibilities for social interaction.</p><p>Regarding the relevance of the human factor in digital logistics work, the call for a special topic forum attracted four profound and future-oriented contributions. They allow for a broad overview regarding the topic of “Artificial Intelligence, Robotics and Logistics Employment” based on a range of disciplines and applying various research methods. Moreover, and considering the wide range of logistics settings, the contributions address different functional sectors like ports, intralogistics, and internal marketing in supply chains. To provide a brief introduction to the papers connected, we refer to the conceptual framework developed.</p><p>The paper by Dominic Loske with the heading “<i>Empirical Evidence on Human Learning and Work Characteristics in the Transition to Automated Order Picking</i>” is discussing the important area of order picking in intralogistics. The paper is providing empirical data-based observations regarding learning curves when order pickers are introduced to new processes and technologies. It is recognized that there are specific influencing factors providing different individuals with different efficiency improvement rates in the analyzed setting. For example, it is recognized that the perception–cognition–motor–action cycle for learning-by-doing tasks can be accelerated through real-time feedback the order picking system provides. Furthermore, perceived work autonomy and feedback from the picking system are constant or perceived as greater when human decisions are accepted. Further research questions are spiked from this looking into the adaption to such individual differences of human logistics workers, leading to a “future picture” of an individualized support technology for workers. Also, logistics management in practice is inspired by these results as there might be dedicated instruments like training and support for different groups of logistics workers, enabling a more smooth and efficient transition to new digital technologies with logistics work. This paper puts a focus on the individual level but is also considering the team level as workers compare themselves and their performance also with regard to the support structures of using digital technologies.</p><p>The paper by Eric Grosse, Sven Winkelhaus, and Christoph Glock titled “<i>Job Satisfaction: An Explorative Study on Work Characteristics Changes of Employees in Intralogistics 4.0</i>” is analyzing the trend toward digitalization in logistics as a managerial challenge as it is changing the traditional, manual workplaces, for example, in intralogistics. They examine the influences of the transition toward Intralogistics 4.0 with a literature review on work characteristics and job satisfaction in a broader Logistics 4.0 context. Moreover, they apply different Intralogistics 4.0 maturity levels in a qualitative, explorative methodology to examine the perception of work characteristics that impact job outcomes such as job satisfaction, motivation, and performance with semi-structured interviews conducted across seven companies. Results highlight significant, heterogeneous changes of work characteristics related to the type of technology applied in Intralogistics 4.0—the development toward Intralogistics 4.0 workplaces does not have a simple or predefined impact on humans; instead, the individual design is relevant and can improve the workplaces with more opportunities for satisfying and motivating jobs. This positive evaluation might motivate and enable future intralogistics workplace design concepts for the benefit of workers and organizations alike. Consequently, this contribution with a focus on the individual level also shows connections to the organizational level highlighting the relevance of the human factor.</p><p>The subsequent paper by Andrea Bottalico with the title “<i>The Impact of Innovation on Labor in the Port Industry. A Comparison between Genoa and Antwerp</i>” is addressing ports and port workers as key hubs in international logistics and transportation networks. As technical and organizational innovation has been pervasive in the port industry in the last decades, work organization and employment relations were affected to a great extent. Innovation initiatives produced on specific occasions a reduction of jobs in the port segment. At the same time, new jobs were created and demanded new skills or organizational structures. As a consequence, professional and social status levels of port labor have changed. The paper describes the consequences of innovation initiatives regarding port labor and on employment relations by comparing two distinct interview-based case studies in Antwerp and Genoa as exemplary ports in the Netherlands and Italy. Results indicate aversions but also positive motivation elements regarding innovation projects from port workers. Results are also important for transfer into other logistics sectors such as road freight depots or railway operations. In this sense, this contribution addresses the individual, the team as well as the organizational level of analysis pointing to the interconnectedness of different levels.</p><p>The final paper by Abhinav Hasija titled “<i>In AI We Trust: An Internal Marketing Framework of AI Technology Acceptance</i>” is addressing a generalized question and model regarding technology acceptance in logistics and operations. This is relevant as industry reports and recent research indicate difficulties in implementing AI solutions. 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In addition, internal marketing and communication measures are outlined for managers to use in order to increase AI acceptance and use in supply chain processes. This paper is focused on the technical side of using digital technologies at work such as designing AI as trustworthy and thus addresses all levels of analysis starting with the individual level with resulting effects on the team, organizational and supply chain level.</p><p>Altogether, the four papers highlight the importance of the human factor in digital logistics processes from different perspectives but with the unified message that human workers are even more a crucial success factor due to their roles in using the full potentials and capabilities of AI, robotics, and automated systems in logistics. Further research is warranted regarding the highlighted role of social interaction as pivoting point in technology implementation and HFI in logistics. 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引用次数: 3

Abstract

With this editorial, we aim to shed light on the role of the human factor in digital logistics. This has been already established in general (Neumann et al., 2021; Schorsch et al., 2017) as well as regarding specific perspectives like, for example, addressing the important role of human intuition (Carter et al., 2017) or cost developments (Fager et al., 2021). For a detailed and comprehensive analysis, we apply an interdisciplinary perspective drawing on economic and social sciences. Starting from the observation of technological innovations such as AI, robotics, and digital technologies and their implementation into supply chains, it can be expected that this impacts work and employment in the field of logistics. It is also evident that a change in work content and job demands is expected, which also depends on the design of human–computer interaction (HCI). HCI is a broad field that covers any interaction between humans and machines such as operating computers, handheld scanners, and mobile devices (Grudin, 2012). Depending on the interaction with machines, humans will refrain more and more from operational tasks and have to migrate their capabilities and attention toward supervisory tasks. It is likely that this affects individual psychological outcomes such as motivation, work engagement, and job satisfaction and also team and organizational decisions and processes (Cummings & Bruni, 2009; Klumpp et al., 2019; Lee et al., 2015). However, this also impacts the cooperation among colleagues and with supervisors. Considering the different levels of change, we propose a conceptual framework for analyzing the relevance of the human factor for digital logistics work. The core topic of the structure is the question of HCI. For this area, we distinguish between four relevant levels as outlined below (see Figure 1).

As the human factor in digital logistics work is of outstanding relevance, we expect that this conceptual framework enables researchers to identify critical gaps and frame their individual research. In this context, it is especially relevant to focus not only on individuals in logistics contexts but to also consider that individuals and organizations operate in dynamic and complex interdependent systems and that thus (social) interactions matter for the implementation and success of digital transformation in business practice (D'Aleo & Sergio, 2017). Social interaction is an exchange between two or more individuals, which further influences the perspectives, positions, and actions of the interacting individuals. Through interactions, people design rules, institutions, and systems, which give further orientation and form perceptions (Weber, 1978). Besides the examples to be seen in the papers included within this special topic forum, we can outline the importance of a differentiated analysis of such interactions for the implementation and success in digital logistics (Cerulo, 2009). This can be exemplified regarding different professional groups, from driving professions to intralogistics personnel. Besides blue-collar workers, also white-collar logistics professions such as dispatchers or team leaders are susceptible to the mechanisms of social interaction with the four levels of HFI. This is even more relevant in the context of digitalization as transparency, communication, and interconnectedness are enabling closer connections and increased possibilities for social interaction.

Regarding the relevance of the human factor in digital logistics work, the call for a special topic forum attracted four profound and future-oriented contributions. They allow for a broad overview regarding the topic of “Artificial Intelligence, Robotics and Logistics Employment” based on a range of disciplines and applying various research methods. Moreover, and considering the wide range of logistics settings, the contributions address different functional sectors like ports, intralogistics, and internal marketing in supply chains. To provide a brief introduction to the papers connected, we refer to the conceptual framework developed.

The paper by Dominic Loske with the heading “Empirical Evidence on Human Learning and Work Characteristics in the Transition to Automated Order Picking” is discussing the important area of order picking in intralogistics. The paper is providing empirical data-based observations regarding learning curves when order pickers are introduced to new processes and technologies. It is recognized that there are specific influencing factors providing different individuals with different efficiency improvement rates in the analyzed setting. For example, it is recognized that the perception–cognition–motor–action cycle for learning-by-doing tasks can be accelerated through real-time feedback the order picking system provides. Furthermore, perceived work autonomy and feedback from the picking system are constant or perceived as greater when human decisions are accepted. Further research questions are spiked from this looking into the adaption to such individual differences of human logistics workers, leading to a “future picture” of an individualized support technology for workers. Also, logistics management in practice is inspired by these results as there might be dedicated instruments like training and support for different groups of logistics workers, enabling a more smooth and efficient transition to new digital technologies with logistics work. This paper puts a focus on the individual level but is also considering the team level as workers compare themselves and their performance also with regard to the support structures of using digital technologies.

The paper by Eric Grosse, Sven Winkelhaus, and Christoph Glock titled “Job Satisfaction: An Explorative Study on Work Characteristics Changes of Employees in Intralogistics 4.0” is analyzing the trend toward digitalization in logistics as a managerial challenge as it is changing the traditional, manual workplaces, for example, in intralogistics. They examine the influences of the transition toward Intralogistics 4.0 with a literature review on work characteristics and job satisfaction in a broader Logistics 4.0 context. Moreover, they apply different Intralogistics 4.0 maturity levels in a qualitative, explorative methodology to examine the perception of work characteristics that impact job outcomes such as job satisfaction, motivation, and performance with semi-structured interviews conducted across seven companies. Results highlight significant, heterogeneous changes of work characteristics related to the type of technology applied in Intralogistics 4.0—the development toward Intralogistics 4.0 workplaces does not have a simple or predefined impact on humans; instead, the individual design is relevant and can improve the workplaces with more opportunities for satisfying and motivating jobs. This positive evaluation might motivate and enable future intralogistics workplace design concepts for the benefit of workers and organizations alike. Consequently, this contribution with a focus on the individual level also shows connections to the organizational level highlighting the relevance of the human factor.

The subsequent paper by Andrea Bottalico with the title “The Impact of Innovation on Labor in the Port Industry. A Comparison between Genoa and Antwerp” is addressing ports and port workers as key hubs in international logistics and transportation networks. As technical and organizational innovation has been pervasive in the port industry in the last decades, work organization and employment relations were affected to a great extent. Innovation initiatives produced on specific occasions a reduction of jobs in the port segment. At the same time, new jobs were created and demanded new skills or organizational structures. As a consequence, professional and social status levels of port labor have changed. The paper describes the consequences of innovation initiatives regarding port labor and on employment relations by comparing two distinct interview-based case studies in Antwerp and Genoa as exemplary ports in the Netherlands and Italy. Results indicate aversions but also positive motivation elements regarding innovation projects from port workers. Results are also important for transfer into other logistics sectors such as road freight depots or railway operations. In this sense, this contribution addresses the individual, the team as well as the organizational level of analysis pointing to the interconnectedness of different levels.

The final paper by Abhinav Hasija titled “In AI We Trust: An Internal Marketing Framework of AI Technology Acceptance” is addressing a generalized question and model regarding technology acceptance in logistics and operations. This is relevant as industry reports and recent research indicate difficulties in implementing AI solutions. This paper addresses the documented difference between AI adoption and AI use by exploring how AI technologies can be marketed within an organization. Thematic analysis techniques are applied in order to explore the marketing messages of vendors of AI-enabled software. The emergent model from the implemented data analysis highlights the prevalence of marketing messages emphasizing AI trustworthiness and suggests several marketing tactics that could be used to market AI to supply chain workers internally, improving AI acceptance and use. Based on the findings, a middle-range model of AI trustworthiness and a subsequent call for research related to the effects of AI trustworthiness on internal, upstream, and downstream activities in the supply chain is proposed. The results contribute to academic conversations related to the acceptance and use of technology in supply chains. In addition, internal marketing and communication measures are outlined for managers to use in order to increase AI acceptance and use in supply chain processes. This paper is focused on the technical side of using digital technologies at work such as designing AI as trustworthy and thus addresses all levels of analysis starting with the individual level with resulting effects on the team, organizational and supply chain level.

Altogether, the four papers highlight the importance of the human factor in digital logistics processes from different perspectives but with the unified message that human workers are even more a crucial success factor due to their roles in using the full potentials and capabilities of AI, robotics, and automated systems in logistics. Further research is warranted regarding the highlighted role of social interaction as pivoting point in technology implementation and HFI in logistics. The outlined conceptual framework in at least four different levels where the human factor is relevant through social interaction and exerts this impact from the individual up to the supply chain level is also a core interest for future inquiries.

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人工智能、机器人和物流就业:数字物流中的人为因素
进一步的研究问题是通过对人类物流工人的这种个体差异的适应,从而导致工人个性化支持技术的“未来图景”。此外,实践中的物流管理也受到这些结果的启发,因为可能会有专门的工具,如培训和支持不同的物流工人群体,从而使物流工作更顺利、更有效地过渡到新的数字技术。本文将重点放在个人层面,但也考虑团队层面,因为工人比较自己和他们的表现,也考虑到使用数字技术的支持结构。Eric Grosse, Sven Winkelhaus和Christoph Glock的论文题为“工作满意度:内部物流4.0中员工工作特征变化的探索性研究”,分析了物流数字化的趋势,认为这是一项管理挑战,因为它正在改变传统的手工工作场所,例如,在内部物流中。他们通过对更广泛的物流4.0背景下的工作特征和工作满意度的文献综述,研究了向内部物流4.0过渡的影响。此外,他们采用定性的、探索性的方法,运用不同的内部物流4.0成熟度水平,通过对七家公司进行的半结构化访谈,研究了对影响工作结果(如工作满意度、动机和绩效)的工作特征的看法。结果显示,与内部物流4.0应用的技术类型相关的工作特征发生了显著的异质变化——内部物流4.0工作场所的发展对人类的影响并不简单或预先确定;相反,个人设计是相关的,可以改善工作场所,提供更多令人满意和激励的工作机会。这种积极的评价可能会激励和实现未来的内部物流工作场所设计概念,以造福员工和组织。因此,这个关注个人层面的贡献也显示了与组织层面的联系,突出了人的因素的相关性。Andrea Bottalico随后的论文题为“创新对港口行业劳动力的影响”。《热那亚和安特卫普的比较》将港口和港口工人作为国际物流和运输网络的关键枢纽。在过去的几十年里,随着技术和组织创新在港口行业的普及,工作组织和雇佣关系受到了很大程度的影响。创新举措在特定场合产生了港口部门工作岗位的减少。与此同时,新的工作岗位被创造出来,需要新的技能或组织结构。因此,港口劳工的专业和社会地位水平发生了变化。本文通过比较安特卫普和热那亚作为荷兰和意大利模范港口的两个不同的基于访谈的案例研究,描述了关于港口劳工和就业关系的创新举措的后果。结果表明,港口工人对创新项目有厌恶情绪,但也有积极的动机因素。结果对于转移到其他物流部门(如公路货站或铁路业务)也很重要。从这个意义上说,该贡献针对个人、团队以及组织层面的分析,指出了不同层面之间的相互联系。Abhinav Hasija的最后一篇论文题为“我们信任AI:人工智能技术接受的内部营销框架”,它解决了一个关于物流和运营中技术接受的普遍问题和模型。这是相关的,因为行业报告和最近的研究表明,实施人工智能解决方案存在困难。本文通过探索如何在组织内营销人工智能技术,解决了人工智能采用和人工智能使用之间的文献差异。应用主题分析技术,探索人工智能软件供应商的营销信息。从实施的数据分析中得出的新兴模型突出了强调人工智能可信度的营销信息的普遍性,并提出了几种营销策略,可用于向内部供应链工人推销人工智能,从而提高人工智能的接受度和使用。基于这些发现,本文提出了一个人工智能可信度的中间范围模型,并随后呼吁研究人工智能可信度对供应链内部、上游和下游活动的影响。研究结果有助于与供应链中技术的接受和使用相关的学术对话。此外,还概述了内部营销和沟通措施,供管理人员使用,以增加人工智能在供应链流程中的接受和使用。 本文侧重于在工作中使用数字技术的技术方面,例如将人工智能设计为可信赖的,从而解决从个人层面开始的所有层面的分析,从而对团队,组织和供应链层面产生影响。总之,这四篇论文从不同的角度强调了人的因素在数字物流过程中的重要性,但有一个统一的信息,即人类工人是一个更关键的成功因素,因为他们在利用人工智能、机器人和自动化系统在物流中的全部潜力和能力方面发挥了作用。社会互动作为技术实施和物流HFI的枢纽点的突出作用值得进一步研究。概述了至少四个不同层次的概念框架,其中人的因素通过社会互动相关,并从个人到供应链层面施加这种影响,这也是未来调查的核心兴趣。
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来源期刊
CiteScore
14.40
自引率
14.60%
发文量
34
期刊介绍: Supply chain management and logistics processes play a crucial role in the success of businesses, both in terms of operations, strategy, and finances. To gain a deep understanding of these processes, it is essential to explore academic literature such as The Journal of Business Logistics. This journal serves as a scholarly platform for sharing original ideas, research findings, and effective strategies in the field of logistics and supply chain management. By providing innovative insights and research-driven knowledge, it equips organizations with the necessary tools to navigate the ever-changing business environment.
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