吉林大学学报(信息科学版) ›› 2026, Vol. 44 ›› Issue (2): 261-269.

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基于 CNN 的主动噪声控制算法优化及系统设计

霍佳雨, 刘锦松, 李官正, 段学宇, 包海风   

  1. 吉林大学 通信工程学院, 长春 130012
  • 收稿日期:2025-03-18 出版日期:2026-04-14 发布日期:2026-04-14
  • 作者简介:霍佳雨(1980— ), 女, 长春人, 吉林大学高级工程师, 主要从事光电子技术研究, (Tel)86-13180812310(E-mail) huojy@jlu.edu.cn。
  • 基金资助:
    吉林大学实验技术基金资助项目(SYXM2025a007)

Optimization and System Design of Active Noise Control Algorithm Based on Convolutional Neural Networks

HUO Jiayu, LIU Jinsong, LI Guanzheng, DUAN Xueyu, BAO Haifeng   

  1. College of Communication Engineering, Jilin University, Changchun 130012, China
  • Received:2025-03-18 Online:2026-04-14 Published:2026-04-14

摘要:

针对传统主动噪声控制算法存在收敛速度慢、 鲁棒性差及动态噪声处理能力不足的问题, 提出一种基于一维卷积神经网络结合固定系数滤波器和自适应算法的改进算法。通过提取噪声特征并动态选择预训练固定滤波器, 引入 Sigmoid 函数和量化误差补偿机制优化自适应步长参数、提升算法稳定性。 将算法部署于STM32H750 高性能嵌入式平台, 构建实时噪声控制系统。仿真实验结果表明, 该算法对低频噪声控制效果显著, 平均降噪量达 20 ~ 30 dB, 动态噪声环境下残余噪声的时域振幅与频域能量分布均被有效抑制, 降噪性能优于传统自适应算法。 完成了硬件实验, 实验结果符合预期目标。 验证了深度学习与嵌入式硬件协同在主动噪声控制中的高效性与实用性, 为复杂动态噪声场景下的实时控制提供了创新且可行的解决方案, 具有重要的理论意义和实际应用价值。

关键词:

Abstract:

To address the limitations of conventional active noise control algorithms, such as slow convergence speed, poor robustness, and insufficient dynamic noise handling capability, an improved algorithm is proposed by integrating a one-dimensional convolutional neural network with fixed-coefficient filters and adaptive algorithms. The methodology involves extracting noise characteristics and dynamically selecting pre-trained fixed filters, while a Sigmoid function and quantization error compensation mechanism are introduced to optimize adaptive step-size parameters and enhance algorithmic stability. The algorithm is implemented on an STM32H750 high-performance embedded platform, constructing a real-time noise control system. Simulation results
demonstrate significant effectiveness in suppressing low-frequency noise, achieving an average noise reduction of 20-30 dB. Both temporal amplitude and spectral energy distribution of residual noise under dynamic environments are effectively suppressed, showing superior performance compared to traditional adaptive algorithms. Hardware experiments confirm that the results meet expected objectives. The effectiveness of combining deep learning with embedded hardware for active noise control applications is verified, providing an innovative and practical solution for real-time control in complex dynamic noise scenarios. This integration demonstrates considerable theoretical significance and practical application value through its successful
coordination of intelligent learning mechanisms with adaptive control frameworks.

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中图分类号: 

  • TN912. 3