Artificial Neural Networks as a tool for ergonomic evaluations of vehicle control panels

IF 0.2 Q4 ENGINEERING, GEOLOGICAL
Joanna Hałacz, Maciej Neugebauer
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引用次数: 0

Abstract

Unreadable and inconveniently arranged instruments make it difficult for the driver to accurately read signals and understand the relayed information. They can distract the driver and prolong response times, thus posing a risk to traffic safety. Designers also have to account for customer expectations, including a demand for esthetically appealing dashboards that incorporate vast amounts of data in limited space since such dashboards appear to be maximally adapted to the driver’s needs. However, attractive dashboards are not always adapted to human perceptual abilities. A neural model was developed in the study to objectively assess dashboard ergonomics in passenger cars. The data were used to determine the correlations between subjective driver impressions and the functionality and ergonomics of dashboards evaluated objectively based on the adopted criteria. With the best-learned networks, 3 conformance classes were obtained for the predicted cases. However, taking into account the ± 1 class, as many as 3 of the preserved ANN gave correct answers in all 6 cases.
人工神经网络在汽车控制板人机工程学评价中的应用
不可读和不方便安排的仪器使司机难以准确读取信号和理解中继信息。它们会分散司机的注意力,延长反应时间,从而对交通安全构成威胁。设计师还必须考虑到客户的期望,包括对美观的仪表盘的需求,这种仪表盘在有限的空间内包含大量数据,因为这样的仪表盘似乎可以最大限度地适应驾驶员的需求。然而,吸引人的仪表盘并不总是适应人类的感知能力。为客观评价乘用车仪表盘人机工程学,建立了一种神经网络模型。这些数据用于确定主观驾驶员印象与仪表板的功能和人体工程学之间的相关性,并根据采用的标准进行客观评估。利用最优学习网络,得到了3个预测案例的一致性类。然而,考虑到±1类,在所有6个案例中,保留的ANN中有多达3个给出了正确的答案。
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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来源期刊
Archives for Technical Sciences
Archives for Technical Sciences ENGINEERING, GEOLOGICAL-
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