File:Modeling of engine parameters for condition-based maintenance of the MTU series 2000 diesel engine (IA modelingofengine1094550512).pdf

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Modeling of engine parameters for condition-based maintenance of the MTU series 2000 diesel engine   (Wikidata search (Cirrus search) Wikidata query (SPARQL)  Create new Wikidata item based on this file)
Author
Yue, Siew Peng
image of artwork listed in title parameter on this page
Title
Modeling of engine parameters for condition-based maintenance of the MTU series 2000 diesel engine
Publisher
Monterey, California: Naval Postgraduate School
Description

Condition-based maintenance (CBM) entails performing maintenance only when needed to save on resources and cost. Formulating a model that reflects the behavior of the marine diesel engine in its normal operating conditions would aid in making predictions of the behavior of a condition monitoring parameter. Modeling for CBM is a data-dependent process. Data acquisition, processing, and analysis are required for modeling the behavior of the normal operating conditions of the diesel engine. This thesis leverages on existing data collected through sensors on a diesel engine to describe these conditions using regression analysis. The proposed data selection criteria ensure that data used for modeling are suitable. To model the behavior of the engine, an autoregressive distributed lag (ARDL) time series model of engine speed and exhaust gas temperature is derived. The lag length for ARDL is determined by whitening of residuals using the autocorrelation function. Due to non-normality of the residuals, a nonparametric quantile regression approach is adopted, and the derived model allows us to predict the parameter (exhaust gas temperature) that we consider.


Subjects: condition-based maintenance; regression; autoregressive distributed lag; marine diesel engine; modeling; prediction; nonparametric
Language English
Publication date September 2016
Current location
IA Collections: navalpostgraduateschoollibrary; fedlink
Accession number
modelingofengine1094550512
Source
Internet Archive identifier: modelingofengine1094550512
https://archive.org/download/modelingofengine1094550512/modelingofengine1094550512.pdf
Permission
(Reusing this file)
Copyright is reserved by the copyright owner.

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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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current01:50, 23 July 2020Thumbnail for version as of 01:50, 23 July 20201,275 × 1,650, 90 pages (1.82 MB) (talk | contribs)FEDLINK - United States Federal Collection modelingofengine1094550512 (User talk:Fæ/IA books#Fork8) (batch 1993-2020 #22207)

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