RE-BAR弯曲训练模拟器性能参数辨识与评价

Balu M. Menon, P. Aswathi, S. Deepu, R. R. Bhavani
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引用次数: 4

摘要

建筑钢筋(钢-混凝土钢筋)用于为混凝土结构提供结构强度和配筋。这就需要将钢筋弯曲和切割到合适的尺寸,然后才能用于施工。设计了一种新型的基于触觉的钢筋弯曲模拟器,使学员能够在安全可控的情况下学习和提高钢筋弯曲技术。尽管计算机化虚拟训练模拟器的评估和报告功能有限,但它在训练中被证明是有效的。添加个性化技能跟踪和预测性能建模等功能,在支持培训计划方面具有更大的潜力。为此,需要进行用户性能建模,包括对性能参数、评估标准和数据收集的初步研究,然后再对模拟器进行改造。本文对棒材弯曲模拟器的性能参数进行了研究,并对其在模拟专家和新手性能方面的有效性进行了评价。在本研究中,我们还假设了能够区分专家和新手性能的参数,并使用支持向量机和J48决策树两种分类技术进行了验证。在揭示分类规则的同时,J48算法的准确率为78.94%,SVM的准确率为94.737%。研究还表明,施加力随时间的变化和弯曲角度精度这两个性能参数是区分施工钢筋弯曲技术专家和新手水平的有效指标。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Identification and evaluation of performance parameters for RE-BAR bending training simulator
Construction rebars (steel concrete reinforcing bars) are used to provide structural strength and reinforcement for the concrete structure. This requires the bending and cutting of the rebar to proper size before they can be used for construction. A novel haptic based barbending simulator has been devised which enables the trainees to learn and improve the construction rebar bending skill in a safe and controlled way. With its limited assessment and reporting features, the computerised virtual training simulator proves to be effective in training. Adding the features like personalized skill tracking and predictive performance modeling holds even more potential in supporting the training program. Towards this goal, a user performance modeling needs to be done which includes an initial study on performance parameters, assessment criteria and data collection before remodeling the simulator. This paper presents a study on the performance parameters for the bar bending simulator and also evaluates its effectiveness in modeling expert and novice performances. During this study we also hypothesize the parameters that can distinguish an expert and novice performances which was validated with 2 classification techniques — Support vector machine and J48 Decision tree. While revealing the classification rules J48 algorithm provides 78.94% accuracy where as SVM provides 94.737% accuracy. The study also shows that the 2 performance parameters force applied over time and bend angle accuracy are effective to distinguish expert and novice level of expertize for the construction rebar bending skill.
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