Visualization of big data through ship maintenance metrics analysis for fleet maintenance and revitalization

Approved for public release; distribution is unlimited. === There are between 150 and 200 parameters for measuring the performance of ship maintenance processes in the U.S. Navy. Despite this level of detail, budgets and timelines for performing maintenance on the Navy's fleet appear to be prob...

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Main Author: Donaldson, Isaac J.
Other Authors: Housel, Thomas
Published: Monterey, California: Naval Postgraduate School 2014
Online Access:http://hdl.handle.net/10945/41370
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spelling ndltd-nps.edu-oai-calhoun.nps.edu-10945-413702014-11-27T16:19:44Z Visualization of big data through ship maintenance metrics analysis for fleet maintenance and revitalization Donaldson, Isaac J. Housel, Thomas Mun, Johnathan Information Sciences Approved for public release; distribution is unlimited. There are between 150 and 200 parameters for measuring the performance of ship maintenance processes in the U.S. Navy. Despite this level of detail, budgets and timelines for performing maintenance on the Navy's fleet appear to be problematic. Making sense of what these parameters mean in terms of the overall performance of ship maintenance processes is clearly a big data problem. The current process for presenting data on the more than 150 parameters measuring ship maintenance performance costs and processes, containing billions of data points, is still done by static, cumbersome spreadsheets. The central goal of this thesis is to provide a means to aggregate voluminous maintenance data in such a way that the causal factors contributing to cost and schedule overruns can be better understood by ship maintenance leadership. Big data visualization software was examined to determine if visualization tools could improve the understanding of U.S. Navy ship maintenance by its leaders. This thesis concludes that the visualization of big data supports decision making by enabling leaders to quickly identify trends, develop a better understanding of the problem space, establish defensible baselines for monitoring activities, perform forecasting, and evaluate metrics for use. 2014-05-23T15:19:20Z 2014-05-23T15:19:20Z 2014-03 Thesis http://hdl.handle.net/10945/41370 This publication is a work of the U.S. Government as defined in Title 17, United States Code, Section 101. As such, it is in the public domain, and under the provisions of Title 17, United States Code, Section 105, it may not be copyrighted. Monterey, California: Naval Postgraduate School
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description Approved for public release; distribution is unlimited. === There are between 150 and 200 parameters for measuring the performance of ship maintenance processes in the U.S. Navy. Despite this level of detail, budgets and timelines for performing maintenance on the Navy's fleet appear to be problematic. Making sense of what these parameters mean in terms of the overall performance of ship maintenance processes is clearly a big data problem. The current process for presenting data on the more than 150 parameters measuring ship maintenance performance costs and processes, containing billions of data points, is still done by static, cumbersome spreadsheets. The central goal of this thesis is to provide a means to aggregate voluminous maintenance data in such a way that the causal factors contributing to cost and schedule overruns can be better understood by ship maintenance leadership. Big data visualization software was examined to determine if visualization tools could improve the understanding of U.S. Navy ship maintenance by its leaders. This thesis concludes that the visualization of big data supports decision making by enabling leaders to quickly identify trends, develop a better understanding of the problem space, establish defensible baselines for monitoring activities, perform forecasting, and evaluate metrics for use.
author2 Housel, Thomas
author_facet Housel, Thomas
Donaldson, Isaac J.
author Donaldson, Isaac J.
spellingShingle Donaldson, Isaac J.
Visualization of big data through ship maintenance metrics analysis for fleet maintenance and revitalization
author_sort Donaldson, Isaac J.
title Visualization of big data through ship maintenance metrics analysis for fleet maintenance and revitalization
title_short Visualization of big data through ship maintenance metrics analysis for fleet maintenance and revitalization
title_full Visualization of big data through ship maintenance metrics analysis for fleet maintenance and revitalization
title_fullStr Visualization of big data through ship maintenance metrics analysis for fleet maintenance and revitalization
title_full_unstemmed Visualization of big data through ship maintenance metrics analysis for fleet maintenance and revitalization
title_sort visualization of big data through ship maintenance metrics analysis for fleet maintenance and revitalization
publisher Monterey, California: Naval Postgraduate School
publishDate 2014
url http://hdl.handle.net/10945/41370
work_keys_str_mv AT donaldsonisaacj visualizationofbigdatathroughshipmaintenancemetricsanalysisforfleetmaintenanceandrevitalization
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