“General Analysis of Directional Ocean Wave Data from Heave Pitch Roll Buoys”

Authors: Donald M. Wiberg, Fred Baskin and R.D. Lindsay,
Affiliation: NTNU, Department of Engineering Cybernetics and The Aerospace Corporation, California
Reference: 1984, Vol 5, No 2, pp. 71-101.

Keywords: Lattices, least squares, recursive estimation, digital filtering, signal processing, communications, control systems, noise cancelling, spectral estimation, signal identification, channel equalization, adaptive arrays

Abstract: There are many practical applications of lattice form recursive linear least square algorithms (called lattices for short) in signal processing, communications, and control systems. The goal of this tutorial is to help practicing engineers to decide if lattices are appropriate for their particular projects.

PDF PDF (6154 Kb)        DOI: 10.4173/mic.1984.2.1

DOI forward links to this article:
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  title={{General Analysis of Directional Ocean Wave Data from Heave Pitch Roll Buoys}},
  author={Wiberg, Donald M. and Baskin, Fred and Lindsay, R.D.},
  journal={Modeling, Identification and Control},
  publisher={Norwegian Society of Automatic Control}