This paper introduces a reduced Gaussian kernel filtered-x least mean square (RGKxLMS) algorithm for a nonlinear active noise control (NANC) system. This algorithm addresses the computational and storage challenges posed by the traditional kernel (i.e., KFxLMS) algorithm. Then, we analyze the mean weight behavior and computational complexity of the RGKxLMS, demonstrating its reduced complexity compared to existing kernel filtering methods and its mean stable performance. To further enhance noise reduction, we also develop the historical error correction RGKxLMS (HECRGKxLMS) algorithm, incorporating historical error information. Finally, the effectiveness of the proposed algorithms is validated, using Lorenz chaotic noise, non-stationary noise environments, and factory noise.
Reduced Gaussian Kernel Filtered-x LMS Algorithm with Historical Error Correction for Nonlinear Active Noise Control.
具有历史误差校正的简化高斯核滤波-x LMS算法用于非线性主动噪声控制
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作者:Ku Jinhua, Han Hongyu, Zhou Weixi, Wang Hong, Zhang Sheng
| 期刊: | Entropy | 影响因子: | 2.000 |
| 时间: | 2024 | 起止号: | 2024 Nov 22; 26(12):1010 |
| doi: | 10.3390/e26121010 | ||
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