ADVANCED TECHNOLOGIES TO ENABLE OPTIMIZED MAINTENANCE PROCESSES IN EXTREME CONDITIONS: MACHINE LEARNING, ADDITIVE MANUFACTURING, AND CLOUD TECHNOLOGY

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Authors
Miller, Kasey C.
Advisors
Brutzman, Don
Housel, Thomas J.
Mun, Johnathan C.
Gera, Ralucca
Lancaster, Roy, NAVAIR
Second Readers
Subjects
machine learning
ML
additive manufacturing
cloud technology
information sciences
economics of IT
decision support systems
process optimization
Date of Issue
2024-03
Date
Publisher
Monterey, CA; Naval Postgraduate School
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Abstract
The way routine maintenance is conducted is not an optimal way to handle maintenance in extreme battlefield conditions. This is a common maintenance problem across various domains, such as repairing battle damage to aircraft or ships without access to a port or depot. The extreme conditions context can also include repairing the Alaska pipeline in the extreme cold, or handling repairs during COVID-19. The researcher examined how modern technology can optimize productivity and reduce the cycle time of the extreme maintenance process. The results of this research found that three emerging technologies, additive manufacturing, cloud in a box, and machine learning (ML), could improve process value, save labor costs, and reduce cycle time. ML had the most significant impact on improving productivity and cycle time. When all technologies were utilized together, productivity and cycle time improvement were more significant and consistent. The research accounted for the riskiness of these technologies, which is necessary to accurately forecast the value added for this extreme maintenance process context. This research is vital because getting correct valued repairs done quickly for the Department of Defense can make the difference between winning and losing a conflict.
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Thesis
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Information Sciences (IS)
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Distribution Statement
Distribution Statement A. Approved for public release: Distribution is unlimited.
Rights
This publication is a work of the U.S. Government as defined in Title 17, United States Code, Section 101. Copyright protection is not available for this work in the United States.
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