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Uncertainty Analysis of Experimental Data with R

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Title: Uncertainty Analysis of Experimental Data with R
Author: Benjamin David Shaw
ISBN: 1498797326 / 9781498797320
Format: Hard Cover
Pages: 196
Publisher: CHAPMAN & HALL
Year: 2017
Availability: Out of Stock
Special Indian Edition.
     
 
  • Description
  • Contents

"This would be an excellent book for undergraduate, graduate and beyond….The style of writing is easy to read and the author does a good job of adding humor in places. The integration of basic programming in R with the data that is collected for any experiment provides a powerful platform for analysis of data…. having the understanding of data analysis that this book offers will really help researchers examine their data and consider its value from multiple perspectives – and this applies to people who have small AND large data sets alike! This book also helps people use a free and basic software system for processing and plotting simple to complex functions." Michelle Pantoya, Texas Tech University

Measurements of quantities that vary in a continuous fashion, e.g., the pressure of a gas, cannot be measured exactly and there will always be some uncertainty with these measured values, so it is vital for researchers to be able to quantify this data. Uncertainty Analysis of Experimental Data with R covers methods for evaluation of uncertainties in experimental data, as well as predictions made using these data, with implementation in R.

The books discusses both basic and more complex methods including linear regression, nonlinear regression, and kernel smoothing curve fits, as well as Taylor Series, Monte Carlo and Bayesian approaches.

Features:
1. Extensive use of modern open source software (R).
2. Many code examples are provided.
3. The uncertainty analyses conform to accepted professional standards (ASME).
4. The book is self-contained and includes all necessary material including chapters on statistics and programming in R.

Preface

Chapter 1 : Introduction
Chapter 2 : Aspects of R
Chapter 3 : Statistics
Chapter 4 : Curve Fits
Chapter 5 : Uncertainty of a Measured Quantity
Chapter 6 : Uncertainty of a Result Calculated Using Experimental Data
Chapter 7 : Taylor Series Uncertainty of a Linear Regression Curve Fit
Chapter 8 : Monte Carlo Methods
Chapter 9 : The Bayesian Approach

Appendix : Probability Density Functions
Index

 
 
 
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