May 18, 2017
Journal Article

An Architecture for Consolidating Multidimensional Time-Series Data onto a Common Coordinate Grid

Abstract

Consolidating measurement data for use by data models or in inter-comparison studies frequently requires transforming the data onto a common grid. Standard methods for interpolating multidimensional data are often not appropriate for data with non-homogenous dimensionality, and are hard to implement in a consistent manner for different datastreams. These challenges are increased when dealing with the automated procedures necessary for use with continuous, operational datastreams. In this paper we introduce a method of applying a series of one-dimensional transformations to merge data onto a common grid, examine the challenges of ensuring consistent application of data consolidation methods, present a framework for addressing those challenges, and describe the implementation of such a framework for the Atmospheric Radiation Measurement (ARM) program.

Revised: August 31, 2017 | Published: May 18, 2017

Citation

Shippert T.R., and K.L. Gaustad. 2017. An Architecture for Consolidating Multidimensional Time-Series Data onto a Common Coordinate Grid. Earth Science Informatics 10, no. 2:247–256. PNNL-SA-126775. doi:10.1007/s12145-016-0285-z