Technical State Assessment of Charge Exchange System of Self-Ignition Engine, Based On the Exhaust Gas Composition Testing
This paper presents possible use of results of exhaust gas composition testing of self - ignition engine for technical state assessment of its charge exchange system under assumption that there is strong correlation between considered structure parameters and output signals in the form of concentrat...
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Online Access: | https://doi.org/10.1515/pomr-2017-0040 |
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doaj-da90dc030f5e4ec1bbf2e1b922b0ee662021-09-05T13:59:50ZengSciendoPolish Maritime Research2083-74292017-04-0124s120321210.1515/pomr-2017-0040pomr-2017-0040Technical State Assessment of Charge Exchange System of Self-Ignition Engine, Based On the Exhaust Gas Composition TestingRudnicki Jacek0Zadrąg Ryszard1Gdansk University of Technology, Gdansk, PolandGdansk University of Technology, Gdansk, PolandThis paper presents possible use of results of exhaust gas composition testing of self - ignition engine for technical state assessment of its charge exchange system under assumption that there is strong correlation between considered structure parameters and output signals in the form of concentration of toxic compounds (ZT) as well as unambiguous character of their changes. Concentration of the analyzed ZT may be hence considered to be symptoms of engine technical state. At given values of the signals and their estimates it is also possible to determine values of residues which may indicate a type of failure. Available tool programs aimed at analysis of experimental data commonly make use of multiple regression model which allows to investigate effects and interaction between model input quantities and one output variable. Application of multi-equation models provides great freedom during analysis of measurement data as it makes it possible to simultaneously analyze effects and interaction of many output variables. It may be also implemented as a tool for preparation of experimental material for other advanced diagnostic tools such as neural networks which, in contrast to multi-equation models, make it possible to recognize a state at multistate classification and - in consequence - to do diagnostic inference. Here , these authors present merits of application of the above mentioned analytical tools on the example of tests conducted on an experimental engine test stand.https://doi.org/10.1515/pomr-2017-0040diagnostic modelself-ignition engineexhaust gas componentsartificial neural networks |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Rudnicki Jacek Zadrąg Ryszard |
spellingShingle |
Rudnicki Jacek Zadrąg Ryszard Technical State Assessment of Charge Exchange System of Self-Ignition Engine, Based On the Exhaust Gas Composition Testing Polish Maritime Research diagnostic model self-ignition engine exhaust gas components artificial neural networks |
author_facet |
Rudnicki Jacek Zadrąg Ryszard |
author_sort |
Rudnicki Jacek |
title |
Technical State Assessment of Charge Exchange System of Self-Ignition Engine, Based On the Exhaust Gas Composition Testing |
title_short |
Technical State Assessment of Charge Exchange System of Self-Ignition Engine, Based On the Exhaust Gas Composition Testing |
title_full |
Technical State Assessment of Charge Exchange System of Self-Ignition Engine, Based On the Exhaust Gas Composition Testing |
title_fullStr |
Technical State Assessment of Charge Exchange System of Self-Ignition Engine, Based On the Exhaust Gas Composition Testing |
title_full_unstemmed |
Technical State Assessment of Charge Exchange System of Self-Ignition Engine, Based On the Exhaust Gas Composition Testing |
title_sort |
technical state assessment of charge exchange system of self-ignition engine, based on the exhaust gas composition testing |
publisher |
Sciendo |
series |
Polish Maritime Research |
issn |
2083-7429 |
publishDate |
2017-04-01 |
description |
This paper presents possible use of results of exhaust gas composition testing of self - ignition engine for technical state assessment of its charge exchange system under assumption that there is strong correlation between considered structure parameters and output signals in the form of concentration of toxic compounds (ZT) as well as unambiguous character of their changes. Concentration of the analyzed ZT may be hence considered to be symptoms of engine technical state. At given values of the signals and their estimates it is also possible to determine values of residues which may indicate a type of failure. Available tool programs aimed at analysis of experimental data commonly make use of multiple regression model which allows to investigate effects and interaction between model input quantities and one output variable. Application of multi-equation models provides great freedom during analysis of measurement data as it makes it possible to simultaneously analyze effects and interaction of many output variables. It may be also implemented as a tool for preparation of experimental material for other advanced diagnostic tools such as neural networks which, in contrast to multi-equation models, make it possible to recognize a state at multistate classification and - in consequence - to do diagnostic inference. Here , these authors present merits of application of the above mentioned analytical tools on the example of tests conducted on an experimental engine test stand. |
topic |
diagnostic model self-ignition engine exhaust gas components artificial neural networks |
url |
https://doi.org/10.1515/pomr-2017-0040 |
work_keys_str_mv |
AT rudnickijacek technicalstateassessmentofchargeexchangesystemofselfignitionenginebasedontheexhaustgascompositiontesting AT zadragryszard technicalstateassessmentofchargeexchangesystemofselfignitionenginebasedontheexhaustgascompositiontesting |
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1717812904181366784 |