File:UTILIZING ADAPTIVE DESIGN OF EXPERIMENTS WITH LOGISTICS BATTLE COMMAND TO DETERMINE THE MOST IMPORTANT FACTORS FOR A DECISION MAKER (IA utilizingadaptiv1094563507).pdf

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UTILIZING ADAPTIVE DESIGN OF EXPERIMENTS WITH LOGISTICS BATTLE COMMAND TO DETERMINE THE MOST IMPORTANT FACTORS FOR A DECISION MAKER   (Wikidata search (Cirrus search) Wikidata query (SPARQL)  Create new Wikidata item based on this file)
Author
Streams, James E., Jr.
image of artwork listed in title parameter on this page
Title
UTILIZING ADAPTIVE DESIGN OF EXPERIMENTS WITH LOGISTICS BATTLE COMMAND TO DETERMINE THE MOST IMPORTANT FACTORS FOR A DECISION MAKER
Publisher
Monterey, CA; Naval Postgraduate School
Description

The Army makes extensive use of simulation models to obtain data on the operational effectiveness of future capabilities to inform acquisition decisions. A key step in this process is understanding how the key performance parameters of a new system impact the system’s performance in the operational environment. This enables decision makers to set threshold and objective values of these parameters to provide to industry as system requirements. Another challenge faced with new technology is understanding how tactics are potentially impacted by the new capability. This requires the exploration of new methods of employment. Efficiently exploring the interaction between key performance parameters and tactics within its simulation models remains a challenge for the analytic community. The analytic community makes use of some methods from the design of experiments literature but continues to require more efficient methods of searching the design space. Methods from the adaptive sequential design of experiments community or the field of machine learning could potentially be leveraged to address this need. These methods make use of the results of previous experimentation to inform the subsequent trials, potentially resulting in fewer costly simulation experiments. TRAC has identified the Logistics Battle Command (LBC) model as a candidate for proof-of-principle work in this area. The end result is a metamodel of LBC for the selected factors with significant factors highlighted.


Subjects: Design of Experiments; TRAC; LBC; simulation; models
Language English
Publication date September 2019
Current location
IA Collections: navalpostgraduateschoollibrary; fedlink
Accession number
utilizingadaptiv1094563507
Source
Internet Archive identifier: utilizingadaptiv1094563507
https://archive.org/download/utilizingadaptiv1094563507/utilizingadaptiv1094563507.pdf
Permission
(Reusing this file)
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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Public domain
This work is in the public domain in the United States because it is a work prepared by an officer or employee of the United States Government as part of that person’s official duties under the terms of Title 17, Chapter 1, Section 105 of the US Code. Note: This only applies to original works of the Federal Government and not to the work of any individual U.S. state, territory, commonwealth, county, municipality, or any other subdivision. This template also does not apply to postage stamp designs published by the United States Postal Service since 1978. (See § 313.6(C)(1) of Compendium of U.S. Copyright Office Practices). It also does not apply to certain US coins; see The US Mint Terms of Use.

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current21:14, 25 July 2020Thumbnail for version as of 21:14, 25 July 20201,275 × 1,650, 88 pages (3.03 MB) (talk | contribs)FEDLINK - United States Federal Collection utilizingadaptiv1094563507 (User talk:Fæ/IA books#Fork8) (batch 1993-2020 #31851)

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