Digital Correction Filter in Problems of Recovery of Input Signals and Observing Systems’ Data in Energy Objects

A. Verlan, Jo Sterten
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引用次数: 0

Abstract

The task of signal recovery is one of the most important for auto-mated diagnostics and control systems of an energy object. When solv-ing the inverse problems of recovering signals, images and other types of data, spectral distortions and losses occur (in some cases, very sig-nificant ones). They are primarily stipulated due to ill-posedness of these problems, which is the result of loss of information about the original signal due to strong (and even complete) suppression in the observed signal of a part of spectral components, which become indis-tinguishable against the background of errors and noise [1]. Besides, additionalspectral distortions may occur in the process of solving re-covery problems, which depend on specific methods used and their pa-rameters. A method for building a digital correcting filter for pro-cessing the results of solving incorrect inverse problems is proposed, which effectively improves the quality of the solution. The method is based on the use of a singular decomposition of the matrix (SVD) of a system of algebraic equations that approximates the integral operator.
数字校正滤波器在能量目标输入信号和观测系统数据恢复问题中的应用
信号恢复是能源目标自动诊断和控制系统的重要任务之一。在解决恢复信号、图像和其他类型数据的逆问题时,会出现频谱失真和损失(在某些情况下,是非常严重的)。它们主要是由于这些问题的病态性而规定的,这是由于观测信号中一部分频谱成分被强烈(甚至完全)抑制而导致原始信号信息的丢失,在误差和噪声的背景下变得难以区分[1]。此外,在解决恢复问题的过程中可能会出现额外的光谱畸变,这取决于所使用的具体方法及其参数。提出了一种构建数字校正滤波器对不正确逆问题求解结果进行处理的方法,有效地提高了解的质量。该方法是基于使用矩阵的奇异分解(SVD)的代数方程组的近似积分算子。
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