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Accurate ride comfort estimation combining accelerometer measurements, anthropometric data and neural networks

机译:准确的乘坐舒适度估计相结合加速度计测量,人体测量数据和神经网络

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摘要

Ride comfort can heavily influence user experience and therefore comprises one of the most important vehicle design targets. Although ride comfort has been heavily researched, there is still no definite solution to its accurate estimation. This can be attributed, to a large extent, to the subjective nature of the problem. Aim of this study was to explore the use of neural networks for the accurate estimation of ride comfort by combining anthropometric data and acceleration measurements. Different acceleration inputs, neural network architectures, training algorithms and objective functions were systematically investigated, and optimal parameters were derived. New insight into the influence of anthropometric data on ride comfort has been gained. The results indicate that the proposed method improves the accuracy of subjective ride comfort estimation compared to current standards. Neural networks were trained using data derived from a range of field trials involving ten participants, on public roads and controlled environment. A clustering and sensitivity analysis complements the study and identifies the most important factors influencing subjective ride comfort evaluation.
机译:骑行舒适性可以严重影响用户体验,因此包括最重要的车辆设计目标之一。虽然Ride Comfort已经大量研究,但仍然没有明确的估算解决方案。这可以在很大程度上归因于问题的主观性质。本研究的目的是探讨神经网络通过组合人类测量数据和加速度测量来准确地估算乘坐舒适度。系统地研究了不同的加速度输入,神经网络架构,培训算法和客观功能,得到了最佳参数。获得了对人体测量数据对乘坐舒适性的影响的新洞察力。结果表明,与当前标准相比,该方法提高了主观乘坐舒适估计的准确性。在公共道路和受控环境下,使用来自一系列现场试验的数据培训了神经网络。聚类和敏感性分析补充了研究,并确定了影响主观乘坐舒适评价的最重要因素。

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