Artificial Intelligence and Industry 4.0? Validation of Challenges Considering the Context of an Emerging Economy Country Using Cronbach’s Alpha and the Lawshe Method

Paulliny Araújo Moreira, Reimison Moreira Fernandes, Lucas Veiga Avila, Leonardo dos Santos Lourenço Bastos, Vitor William Batista Martins
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Abstract

Background: Artificial Intelligence has been an area of great interest and investment in the industrial sector, offering numerous possibilities to enhance efficiency and accuracy in production processes. In this regard, this study aimed to identify the adoption challenges of Artificial Intelligence and determine which of these challenges apply to the industrial context of an emerging economy, considering the aspects of Industry 4.0. Methods: To achieve this objective, a literature review was conducted, and a survey was carried out among professionals in the industrial field operating within the Brazilian context. The collected data were analyzed using a quantitative approach through Cronbach’s alpha and the Lawshe method. Results: The results indicate that to enhance the adoption of Artificial Intelligence in the industrial context of an emerging economy, taking into account the needs of Industry 4.0, it is important to prioritize overcoming challenges such as “Lack of clarity in return on investment,” “Organizational culture,” “Acceptance of AI by workers,” “Quantity and quality of data,” and “Data protection”. Conclusions: Therefore, based on the achieved results, it can be concluded that they contribute to the development of strategies and practical actions aimed at successfully driving the adoption of Artificial Intelligence in the industrial sector of developing countries, aligning with the principles and needs of Industry 4.0.
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人工智能与工业4.0?基于Cronbach 's Alpha和Lawshe方法的新兴经济体背景下的挑战验证
背景:人工智能一直是工业部门非常感兴趣和投资的领域,为提高生产过程的效率和准确性提供了许多可能性。在这方面,本研究旨在确定人工智能的采用挑战,并考虑到工业4.0的各个方面,确定哪些挑战适用于新兴经济体的工业背景。方法:为了实现这一目标,进行了文献综述,并对巴西工业领域的专业人员进行了调查。收集的数据通过Cronbach’s alpha和Lawshe方法进行定量分析。结果:研究结果表明,考虑到工业4.0的需求,要在新兴经济体的工业背景下加强人工智能的采用,重要的是要优先克服诸如“投资回报缺乏明确性”、“组织文化”、“工人对人工智能的接受程度”、“数据的数量和质量”以及“数据保护”等挑战。因此,根据取得的成果,可以得出结论,它们有助于制定战略和实际行动,旨在成功推动发展中国家工业部门采用人工智能,与工业4.0的原则和需求保持一致。
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