Identification of reflection coefficients from noisy data by means of extended minimum variance estimators: A critical examination

J. Mendel
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引用次数: 5

Abstract

Recently, a new class of time-domain state space models has been developed (Ref. 1) to describe layered media systems. When layers are uniform, the resulting state equations are referred to as uniform causal functional equations (UCFE). An example of a UCFE is: x (t + ¿) = Ax (t) + b [m(t) + w(t)] (1) where, for a K-layer system, x (t) is a 2K x 1 state vector comprised of K upgoing states and K downgoing states, m(t) is the source signature, w(t) is a random process which reflects uncertainty about our knowledge of m(t), and A and b are matrices (of appropriate dimensions) which are functions of reflection coefficients r0, r1,..., rK which characterize the system. Additionally, ¿ is the one-way travel time for each layer. A surface measurement (i.e., seismogram) y(t), where y(t) = h' x(t) + n(t) (2) is also assumed available. This measurement is corrupted by measurement noise, n(t) and is in terms of vector h which is also a function of some of the reflection coefficients.
用扩展最小方差估计器从噪声数据中识别反射系数:一个关键的检验
最近,一类新的时域状态空间模型被开发出来(参考文献1)来描述分层介质系统。当各层均匀时,产生的状态方程称为均匀因果泛函方程(UCFE)。UCFE的一个例子是:x (t +¿)= Ax (t) + b [m(t) + w(t)](1),其中,对于K层系统,x (t)是由K个上升状态和K个下降状态组成的2K x 1状态向量,m(t)是源签名,w(t)是反映我们对m(t)知识的不确定性的随机过程,a和b是矩阵(具有适当的维数),它们是反射系数r0, r1,…, rK表示系统的特征。此外,¿是每层的单程旅行时间。地面测量(即地震图)y(t),其中y(t) = h' x(t) + n(t)(2)也假定可用。这个测量被测量噪声n(t)所破坏,并且用向量h表示,它也是一些反射系数的函数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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