基于人工智能的工科一年级学生智能远程辅助技术

Monica Racha, S. Chandrasekaran, A. Stojcevski
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引用次数: 0

摘要

工程专业强调学生的职业发展,确保工程专业学生在四年的学习中获得技术和专业能力。在传统的工程实验室中,学生“边做边学”,实验室设备有助于他们获得学科特定的知识。不幸的是,由于新冠肺炎等重大教育不确定性,实验室活动暂停了很长一段时间,给学生在校园进行和获得实际实验带来了挑战。为了克服这些挑战,本研究提出并开发了一种基于人工智能的智能远程辅助技术应用程序,通过使用HoloLens 2结合增强现实(AR)和机器学习(ML)算法,将一年级工程专业学生的实践经验数字化。该应用程序改进了虚拟程序演示,并帮助一年级工程学生远程进行实践活动。本研究还应用了各种机器学习算法来识别和分类电子元件的不同图像,并检测每个组件在面包板上的位置(使用HoloLens 2)。基于机器学习算法的比较分析,开发了一种混合CNN-SVM(卷积神经网络-支持向量机)模型,并观察到与其他机器学习算法相比,混合模型提供了最高的平均预测精度。借助AR (HoloLens 2)和混合CNN-SVM模型,本研究使学生能够减少面包板上组件放置错误,并提高学生的能力,决策能力和技术技能,以便远程进行简单的实验室实践。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Artificial Intelligence-Based Smart Tele-Assisting Technology for First-Year Engineering Students
Engineering programs emphasize students career advancement by ensuring that engineering students gain technical and professional capabilities during their four-year study. In a traditional engineering laboratory, students "learn by doing", and laboratory equipment facilitates their discipline-specific knowledge acquisition. Unfortunately, there were significant educational uncertainties, such as COVID-19, which halted laboratory activities for an extended period, causing challenges for students to perform and obtain practical experiments on campus. To overcome these challenges, this research proposes and develops an Artificial Intelligence-based smart tele-assisting technology application to digitalize first-year engineering students practical experience by incorporating Augmented Reality (AR) and Machine Learning (ML) algorithms using the HoloLens 2. This application improves virtual procedural demonstrations and assists first-year engineering students in conducting practical activities remotely. This research also applies various machine learning algorithms to identify and classify different images of electronic components and detect the positions of each component on the breadboard (using the HoloLens 2). Based on a comparative analysis of machine learning algorithms, a hybrid CNN-SVM (Convolutional Neural Network - Support Vector Machine) model is developed and is observed that a hybrid model provides the highest average prediction accuracy compared to other machine learning algorithms. With the help of AR (HoloLens 2) and the hybrid CNN-SVM model, this research allows students to reduce component placement errors on a breadboard and increases students competencies, decision-making abilities, and technical skills to conduct simple laboratory practices remotely.
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