电化学噪声的数据模拟与趋势去除优化

V. MARTÍNEZ-LUACES, M. Ohanian
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引用次数: 2

摘要

电化学噪声分析(ENA)是一项众所周知的技术,用于测量电化学腐蚀过程中动力学变化所产生的潜在波动。这种做法需要应用不同的信号处理方法。因此,为了提出和评估新的方法,绝对有必要通过使用不同算法的计算机数据生成来模拟信号。在第一种方法中,通过将高斯噪声叠加到非平凡趋势线上来模拟数据。然后,利用这组计算机模拟数据对几种方法进行了评估。结果表明,基于移动区间中值和三次样条插值的新方法具有较好的性能。然而,相对误差对于趋势是可以接受的,但是对于噪声是不能接受的。在第二种方法中,我们使用人工智能进行趋势去除,将区间信号处理与反向传播神经网络相结合。最后,提出了一个模拟非平稳凹坑的非高斯噪声函数,并对所有去趋势化方法进行了重新评估,结果表明,当趋势与噪声之差增大时,人工神经网络的精度会降低。此外,当评估多项式拟合,移动平均去除(MAR)和移动中值去除(MMR)时,MMR产生了最好的结果,尽管它不是一个确定的解决方案。
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Data Simulation and Trend Removal Optimization Applied to Electrochemical Noise
A well-known technique, electrochemical noise analysis (ENA), measures the potential fluctuations produced by kinetic variations along the electrochemical corrosion process. This practice requires the application of diverse signal processing methods. Therefore, in order to propose and evaluate new methodologies, it is absolutely necessary to simulate signals by computer data generation using different algorithms. In the first approach, data were simulated by superimposing Gaussian noise to nontrivial trend lines. Then, several methods were assessed by using this set of computer-simulated data. These results indicate that a new methodology based on medians of moving intervals and cubic splines interpolation show the best performance. Nevertheless, relative errors are acceptable for the trend but not for noise. In the second approach, we used artificial intelligence for trend removal, combining an interval signal processing with backpropagation neural networks. Finally, a non-Gaussian noise function that simulates non-stationary pits was proposed and all detrending methods were re-evaluated, resulting that when increasing difference between trend and noise, the accuracy of the artificial neural networks (ANNs) was reduced. In addition, when polynomial fitting, moving average removal (MAR) and moving median removal (MMR) were evaluated, MMR yielded best results, though it is not a definitive solution.
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