基于音乐核心素养观的高校器乐元素与声乐教学整合

IF 3.1 Q1 Mathematics
Juan Du
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引用次数: 0

摘要

摘要本文利用大数据技术中的傅立叶变换,实现了声乐信号从模拟信号到数字信号的数据预处理过程,探讨了高校声乐教学中各种音乐风格的识别规律。根据卷积神经网络在声乐教学中的应用,利用灵敏度准确、特征值训练速度快的卷积神经网络,构建了基于卷积神经网络的声乐教学评价模型。从相关变量的设计和评价工具的选择出发,设计了情绪疗法对打击乐器与声乐教学融合的实验研究,并运用统计分析和模拟分析对音乐核心素养背景下的乐器与声乐教学融合进行了分析。结果表明,递归神经网络方法的评价误差为10.07%,最小值为0.24%。卷积神经网络方法的最大评价误差为8.22%,最小评价误差为0.22%。本文模型对打击乐器与声乐综合教学质量的评价结果优于递归神经网络评价方法。在维持期,当受试者3每周进行打击乐器教学和声乐融合的情绪治疗时,发现受试者的情绪行为问题也完全消退。本研究发现,在乐器元素和大学声乐教学中消除负面情绪对学生核心音乐素养观的形成具有促进作用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Integration of Instrumental Elements and Vocal Music Teaching in Colleges and Universities Based on the Core Literacy View of Music
Abstract In this paper, Fourier transforms in big data technology is used to realize the data preprocessing process of vocal signals from analog signals to digital signals and to explore the identification law of various music styles in vocal teaching in colleges and universities. According to the application of a convolutional neural network in vocal music teaching, the evaluation model of vocal music teaching based on a convolutional neural network is constructed by utilizing a convolutional neural network with accurate sensitivity and high-speed eigenvalue training speed. Starting from the design of relevant variables and the selection of evaluation tools, the experimental study of emotional therapy for the integration of percussion instruments and vocal music teaching is designed, and statistical analysis and simulation analysis are used to analyze the integration of musical instruments and vocal music teaching in the context of music core literacy. The results show that the evaluation error of the recurrent neural network method is 10.07%, while the minimum value is 0.24%. The maximum evaluation error of the convolutional neural network method is 8.22%, and the minimum evaluation error is 0.22%. The evaluation results of the quality of the integrated teaching of percussion instruments and vocal music of the model in this paper are better than the evaluation method of recurrent neural networks. During the maintenance period, when subject three was given weekly emotional therapy for teaching percussion instruments and vocal fusion, it was found that the subject’s emotional behavioral problems also completely subsided. This study realizes that the elimination of negative emotions in the teaching of musical instrument elements and college vocal music has a facilitating effect on the formation of students’ core musical literacy perspective.
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来源期刊
Applied Mathematics and Nonlinear Sciences
Applied Mathematics and Nonlinear Sciences Engineering-Engineering (miscellaneous)
CiteScore
2.90
自引率
25.80%
发文量
203
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