一种基于高斯白噪声估计的模拟电路预测方法

Jingyu Zhou, Shulin Tian, B. Long, Chenglin Yang
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引用次数: 0

摘要

对模拟电路的预测研究很少,只能从输出中提取少量的特殊特征进行预测,无法保证预测信息的完整性和合理性,从而影响预测精度。本文提出了一种新的模拟电路预测方法。该方法首先提取初始状态和部件退化状态下的时域输出波形,然后根据基于卡尔曼滤波的噪声估计原理进行白噪声估计,估计波形之间的变化,从而从更完整的信息中获得更合理的故障指标,然后根据新获得的故障指标构建新的模拟电路退化趋势模型。通过粒子滤波对新模型进行模型自适应,并对模拟电路的剩余有用性能进行预测。最后,对上述结论进行了实验验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Novel Prediction Method for Analog Circuits Based on Gaussian White Noise Estimation
Research on prediction about analog circuits is rarely conducted, and the only methods are prognosis of few special features extracted from output without guarantee of integrity and rationality of prognostic information, which hence influences prognostic precision. In this paper, a novel prediction method for analog circuits is proposed. In this method, time domain output waveforms in initial state and components degradation state are extracted at first, then white noise estimation is conducted to estimate the change between waveforms according to principles of noise estimation based on Kalman filter so as to obtain more reasonable fault indicators from more complete information, thereafter, a novel degradation tendency model of analog circuits is constructed according to newly obtained fault indicators, model adaption is conducted to the new model through particle filter, and prognostic method is conducted to remaining useful performance of analog circuits. Finally, experimental verification is conducted to the above conclusion.
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