Abstract

For the past year, everyone has been facing difficulties due to the fast spreading of the Corona Virus. As an extension, students, parents, and teachers are handling the challenges in the education sector. Since the COVID days, the schools and colleges were closed, and hence, the students were lagging in their subjects. As an alternative to this scenario, offline classes are converted to online courses, otherwise called virtual classes with virtual classrooms. Due to this conversion, the teaching has become a little more advanced by incorporating various computer‐based technologies. The technologies like artificial intelligence, cloud computing, and machine learning paved the way for exploring concepts in data transmission in terms of timely delivery of content, less error rate, and nontechnical terms like making the classes interactive and understanding the subject concepts. In this research work, the online teaching class on music is considered. To be specific, traditional Chinese music is taken for the study. An artificial intelligence model is designed with the aid of wireless sensor networks for the online class on the musical subject. Q‐learning algorithm, which is an artificial intelligence‐based reinforcement learning algorithm, is implemented. The aim of the Q‐learning algorithm in this online teaching of classical music is to check the frequency level of the music that aids in the automatic transfer of another wavelength inside the dataset.

Highlights

  • As modern science and technology progresses, the neural network is being more frequently employed in music education, which is beneficial to the growth of music education in China

  • With the advancement of computer technology, a plethora of intelligent music software related to computer technology has emerged, allowing original music tasks that rely on synthesizers or music workers to process as well as edit to be completed entirely by computer, thereby trying to improve the processing ability of songs data and expanding the range of music information [5]

  • The present study focused on developing an effective teaching model for students and analyzed the quality of music using wireless sensor networks

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Summary

Introduction

As modern science and technology progresses, the neural network is being more frequently employed in music education, which is beneficial to the growth of music education in China. With the advancement of computer technology, a plethora of intelligent music software related to computer technology has emerged, allowing original music tasks that rely on synthesizers or music workers to process as well as edit to be completed entirely by computer, thereby trying to improve the processing ability of songs data and expanding the range of music information [5]. This type of multitrack audio is extremely powerful. The users may edit, change, record, and play all types of music elements, as well as process them using

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