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人工智能与无线网络在钢琴音乐教学中的融合与应用研究。

Study on Integration and Application of Artificial Intelligence and Wireless Network in Piano Music Teaching.

机构信息

School of Art, Zhengzhou Railway Vocational and Technical College, Zhengzhou 451460, Henan, China.

出版信息

Comput Intell Neurosci. 2022 May 14;2022:8745833. doi: 10.1155/2022/8745833. eCollection 2022.

Abstract

Until 2019, most people had never faced the situation that would be their life-changing moment. Most universities are conducting classes for their students with the help of virtual classrooms indicating massive technological growth. However, this development does not take enough time to reach the students and the teaching person. Within five to six months of successful projects, most application producers have launched their official sites to conduct online classes and test ways for students. The introduction of virtual classes is not the only example of technological advancement; cloud computing, artificial intelligence, and deep learning have collaborated to produce appropriate, fine, and less error-prone results in all such fields of teaching. These technological advancements have given way to design models created with the wireless networks that are being made, particularly for music-related courses. The Quality-Learning (Q-Learning) Algorithm (QLA) is a pillar study for improving the implementation of artificial intelligence in music teaching in this research. The proposed algorithm aids in improving the accuracy of music, its frequency, and its wavelength when it passes. The proposed QLA is compared with the existing K-Nearest Neighbour (KNN) algorithm, and the results show that QLA has achieved 99.23% accuracy in intelligent piano music teaching through wireless network mode.

摘要

截至 2019 年,大多数人从未面临过可能改变他们一生的情况。大多数大学都在借助虚拟教室为学生上课,这表明技术正在大规模发展。然而,这种发展并没有足够的时间惠及学生和教学人员。在成功开展项目后的五到六个月内,大多数应用程序的开发者已经推出了他们的官方网站,以开展在线课程并测试学生的学习方式。虚拟课堂的引入并不是唯一的技术进步的例子;云计算、人工智能和深度学习已经合作,在所有这些教学领域产生了合适、精细和出错率更低的结果。这些技术进步为正在开发的无线网络设计模型提供了可能,尤其是对于音乐相关课程。在这项研究中,质量学习(Q-Learning)算法(QLA)是改进人工智能在音乐教学中实施的主要研究方法。所提出的算法有助于提高音乐的准确性、频率和传播时的波长。所提出的 QLA 与现有的 K-最近邻(KNN)算法进行了比较,结果表明,通过无线网络模式,QLA 在智能钢琴音乐教学中实现了 99.23%的准确率。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/baf5/9124084/40f65e85de55/CIN2022-8745833.001.jpg

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