Role of Statistics in improving performance of Electrical Vehicles A Short Review

Authors

  • V. N. Rama Devi  Department of H&S, Department of H&S, GRIET, Hyderabad, India
  • Ramakrishna Prasad. Y  Department of H&S, Department of H&S, GRIET, Hyderabad, India

Keywords:

Statistical Modelling, Descriptive Statistics, Regression and Simulation

Abstract

This electronic document is a short review about the role of a Statistical Modelling in analyzing the performance and an efficiency of Electrical Vehicles(EVs). The area of statistics deals with the collection, classification, presentation and analysis of data to make decisions, solve problems and design products and processes. Because many engineering fields involve working with data, some acquaintance with statistics is necessary for any engineer. Statistical modelling is the method of applying statistical analysis to observed data set through mathematical depiction. In this paper, we have presented some of the important papers that are based on the statistical tools like Descriptive statistics, Multi variate statistical techniques, Time series etc. that are vividly used in improving the performance of EVs as a review work.

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Published

2017-12-27

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Section

Research Articles

How to Cite

[1]
V. N. Rama Devi, Ramakrishna Prasad. Y, " Role of Statistics in improving performance of Electrical Vehicles A Short Review , International Journal of Scientific Research in Science, Engineering and Technology(IJSRSET), Print ISSN : 2395-1990, Online ISSN : 2394-4099, Volume 3, Issue 8, pp.1404-1408, November-December-2017.