Agricultural Tractor Test: A Bibliometric Review

K. P. Lanças, A. C. Marques Filho, Lucas Santos Santana, G. Ferraz, R. O. Faria, Murilo Ba tt istuzzi Martins
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Abstract

Agricultural tractors are an essential agricultural power source. Therefore, the scientific literature tests have described agricultural tractors’ evolution over time and determined future trends. This paper uses bibliometric tools to assess the agricultural evolution of tractor testing from 1969 to 2022 to ascertain the publication’s scientific perspective on operational, ergonomic, and energy performance. We searched for relevant research in the Scopus and Web of Science (WOS) databases. The data were processed in RStudio software version 4.4.1, and we used elaborated bibliometric maps to research evolution, major journals, studies, countries, and keywords. The first research mainly concerned the development of new wheelsets, more efficient engines, and fuel consumption prediction models. After the 2000s, environmental protocols contributed to increasing publications on biofuels and renewable energies. Recently, an intense process of robotization in autonomous vehicles has improved to allow the replacement of combustion engines. Ergonomics and safety have been less recurrent topics in recent years, indicating a stable level in the actual research. New machine control models involving artificial intelligence are currently applied to obtain test results without using the machine in the field. These virtual models reduce costs and optimize resources. The most common terms were “tractor” and “agricultural machinery”. The terms “Electric tractor”, “agricultural robots”, and “Matlab” indicate solid trends for future research.
农用拖拉机测试:文献计量学综述
农用拖拉机是必不可少的农业动力源。因此,科学文献测试描述了农用拖拉机随时间的演变,并确定了未来的发展趋势。本文利用文献计量学工具评估了从 1969 年到 2022 年拖拉机测试的农业演变,以确定出版物在操作、人体工程学和能源性能方面的科学视角。我们在 Scopus 和 Web of Science (WOS) 数据库中搜索了相关研究。我们使用 RStudio 软件 4.4.1 版对数据进行了处理,并使用精心制作的文献计量图对研究演变、主要期刊、研究、国家和关键词进行了分析。最初的研究主要涉及开发新的轮组、更高效的发动机和油耗预测模型。2000 年代后,环境协议促使有关生物燃料和可再生能源的出版物不断增加。最近,自动驾驶汽车的机器人化进程不断加快,从而可以取代内燃机。近年来,人体工程学和安全性已不再是经常出现的话题,这表明实际研究水平趋于稳定。目前,涉及人工智能的新型机器控制模型已得到应用,可以在不使用现场机器的情况下获得测试结果。这些虚拟模型降低了成本,优化了资源。最常见的术语是 "拖拉机 "和 "农业机械"。而 "电动拖拉机"、"农业机器人 "和 "Matlab "则预示着未来研究的坚实趋势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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