Tangshan Normal University, Tangshan 063000, China.
Comput Math Methods Med. 2022 Jul 19;2022:2411811. doi: 10.1155/2022/2411811. eCollection 2022.
The turn of contemporary visual culture has led to the expansion of the connotation and scope of visual communication design (VCD) education, the generation of new artistic concepts and forms, and the great changes in the subject education system. VCD instruction now has an enhanced teaching environment and operational platform because of the rapid advancement of digital technology. Digital technology is expected to break through traditional learning methods in the future and will be more widely integrated into VCD courses. A topic that must be addressed and explored in the reform and growth of VCD education is how to build a fairer and more inclusive college art education subject system. Therefore, it is particularly important to design a complete VCD teaching evaluation system. In this paper, artificial intelligence technology is applied to the teaching quality evaluation (TQE) system, and a scientific and reliable TQE model is obtained. The main works of this paper are as follows: (1) analyze the background and significance of TQE research, and systematically expound the domestic and foreign research status of TQE, genetic algorithm, and neural network. (2) Using an adaptive mutation evolutionary method, this research builds a TQE system for the VCD course and produces a BPNN model. The adaptive mutation genetic algorithm's convergence speed is considerably faster than the regular genetic algorithms, the optimized neural network's performance is also superior, and the model has a faster convergence time and better prediction accuracy.
当代视觉文化的转向,导致视觉传达设计(VCD)教育的内涵和范畴不断扩大,新的艺术观念和形式不断产生,主体教育体系也发生了重大变化。由于数字技术的飞速发展,VCD 教学现在拥有了更加优越的教学环境和操作平台。未来,数字技术有望突破传统的学习方式,更广泛地融入 VCD 课程中。VCD 教育改革和发展中必须解决和探索的一个课题是如何构建一个更加公平、包容的高校艺术教育学科体系。因此,设计一个完整的 VCD 教学评价体系尤为重要。本文将人工智能技术应用于教学质量评价(TQE)系统,得到了一个科学可靠的 TQE 模型。本文的主要工作如下:(1)分析 TQE 研究的背景和意义,系统阐述了国内外 TQE、遗传算法和神经网络的研究现状。(2)利用自适应变异进化方法,为 VCD 课程构建了一个 TQE 系统,并生成了一个 BPNN 模型。自适应变异遗传算法的收敛速度明显快于常规遗传算法,优化后的神经网络性能也更优,模型具有更快的收敛时间和更好的预测精度。