Seismic noise attenuation is very important for seismic data analysis and
interpretation, especially for 3D seismic data. In this paper, we propose
a novel method for 3D seismic random noise attenuation by applying noncausal
regularized nonstationary autoregression (NRNA) in

-

-

domain. The proposed
method, 3D NRNA (f-x-y domain) is the extended version of 2D NRNA (f-x domain).
f-x-y NRNA can adaptively estimate seismic events of which slopes vary in 3D space.
The key idea of this paper is to consider that the central trace can be predicted
by all around this trace from all directions in 3D seismic cube, while the 2D
f-x NRNA just considers the middle trace can be predicted by adjacent traces
along one space direction. 3D

-

-

NRNA uses more information from circumjacent
traces than 2D

-

NRNA to estimate signals. Shaping regularization technology
guarantees the nonstationary autoregression problem can be realizable in mathematics
with high computational efficiency. Synthetic and field data examples demonstrate
that, compared with

-

NRNA method,

-

-

NRNA can be more effective in suppressing
random noise and improve trace-by-trace consistency, which are useful in conjunction
with interactive interpretation and auto-picking tools such as automatic event tracking.