Effect of Rim Size on Brake System and Engine Performance using Statistical Analysis

Author(s):  
Nurul Na’imy Wan ◽  
Che Hayati Abdullah ◽  
Norzalina Othman ◽  
Zuraidah Md Noor ◽  
Izzat Farid Sakijan
2013 ◽  
Author(s):  
Nurul Na'imy Wan ◽  
Che Hayati Abdullah ◽  
Norzalina Othman ◽  
Zuraidah Md Noor ◽  
Izzat Farid Sakijan

Energies ◽  
2015 ◽  
Vol 8 (12) ◽  
pp. 14136-14150 ◽  
Author(s):  
Obed Ali ◽  
Rizalman Mamat ◽  
Gholamhassan Najafi ◽  
Talal Yusaf ◽  
Seyed Safieddin Ardebili

Fuel ◽  
2019 ◽  
Vol 254 ◽  
pp. 115618 ◽  
Author(s):  
Mohsen Valihesari ◽  
Vahid Pirouzfar ◽  
Fathollah Ommi ◽  
Farzin Zamankhan

2021 ◽  
Vol 163 (A1) ◽  
pp. 139-147
Author(s):  
M Garvin ◽  
T Harris

A set of field trials were carried out aboard a Canadian Coast Guard fast rescue Rigid Hull Inflatable Boat. The vessel was outfitted with a data acquisition system to collect vessel and engine performance data and trialled in three wave conditions (approx. Beaufort 2 to 7). This paper focusses on the methodologies and results for calculating and investigating Motion-Induced Interruptions (MIIs). MIIs due to lateral and longitudinal overbalancing and sliding were investigated using the counting of motion events which are expected to cause an interruption, supported by a statistical analysis and examination of the distribution of the MII data. We conclude that MII assessments of small, light, high-speed craft such as the one studied should include longitudinal acceleration and pitch angle, typically assumed to be non-influential in MII assessments. Statistical treatments have promise for analysis of field-acquired MII data.


1966 ◽  
Vol 24 ◽  
pp. 188-189
Author(s):  
T. J. Deeming

If we make a set of measurements, such as narrow-band or multicolour photo-electric measurements, which are designed to improve a scheme of classification, and in particular if they are designed to extend the number of dimensions of classification, i.e. the number of classification parameters, then some important problems of analytical procedure arise. First, it is important not to reproduce the errors of the classification scheme which we are trying to improve. Second, when trying to extend the number of dimensions of classification we have little or nothing with which to test the validity of the new parameters.Problems similar to these have occurred in other areas of scientific research (notably psychology and education) and the branch of Statistics called Multivariate Analysis has been developed to deal with them. The techniques of this subject are largely unknown to astronomers, but, if carefully applied, they should at the very least ensure that the astronomer gets the maximum amount of information out of his data and does not waste his time looking for information which is not there. More optimistically, these techniques are potentially capable of indicating the number of classification parameters necessary and giving specific formulas for computing them, as well as pinpointing those particular measurements which are most crucial for determining the classification parameters.


Author(s):  
Gianluigi Botton ◽  
Gilles L'espérance

As interest for parallel EELS spectrum imaging grows in laboratories equipped with commercial spectrometers, different approaches were used in recent years by a few research groups in the development of the technique of spectrum imaging as reported in the literature. Either by controlling, with a personal computer both the microsope and the spectrometer or using more powerful workstations interfaced to conventional multichannel analysers with commercially available programs to control the microscope and the spectrometer, spectrum images can now be obtained. Work on the limits of the technique, in terms of the quantitative performance was reported, however, by the present author where a systematic study of artifacts detection limits, statistical errors as a function of desired spatial resolution and range of chemical elements to be studied in a map was carried out The aim of the present paper is to show an application of quantitative parallel EELS spectrum imaging where statistical analysis is performed at each pixel and interpretation is carried out using criteria established from the statistical analysis and variations in composition are analyzed with the help of information retreived from t/γ maps so that artifacts are avoided.


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