Abstract
A systematic literature review, or SLR, seeks to structure the review carried out in the defined areas in a replicable and auditable method, in order to facilitate and objectify both the search for answers to research questions and their accessibility by peers. In this study, we present an SLR carried out in November 2021 by the PRISMA method, on interaction and interface design focused on the automotive User Experience, having these three research questions: (RQ1) What are the objects of study of the articles? (RQ2) Which methods are used to analyze the object of study? (RQ3) What are the samples size of the surveys carried out? At the end of the Screening, 20 articles were selected to answer the research questions, and some data deserve attention, such as the 60% that didn't identify the use of UX assessment questionnaires or the 35% that had incomplete demographic data. We also saw that the objects of study are concentrated in 3 major areas and that the methodology used is, for the most part, similar in structure. The lack of studies carried out in South America prompted us to develop a research project focused on the Brazilian User.
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Gabriele, F., Martins, L. (2023). Human-Car Interface: A Systematic Literature Review. In: Arezes, P.M., et al. Occupational and Environmental Safety and Health IV. Studies in Systems, Decision and Control, vol 449. Springer, Cham. https://doi.org/10.1007/978-3-031-12547-8_50
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