Type: | Package |
Title: | Data and Functions for "An Intro. to Accept. Samp. & SPC/R" |
Version: | 1.2.1 |
Author: | John Lawson |
Maintainer: | John Lawson <lawsonjsl7net@gmail.com> |
Description: | Contains data frames and functions used in the book "An Introduction to Acceptance Sampling and SPC with R". This book is available electronically at https://bookdown.org/. A physical copy will be published by CRC Press. |
License: | GPL-2 |
Imports: | lattice, FrF2, graphics, grDevices, stats, stringi, abind |
Encoding: | UTF-8 |
LazyData: | yes |
Repository: | CRAN |
Repository/R-Forge/Project: | daewr |
Repository/R-Forge/Revision: | 213 |
Repository/R-Forge/DateTimeStamp: | 2020-11-18 16:17:41 |
Date/Publication: | 2020-11-23 09:30:13 UTC |
NeedsCompilation: | no |
Packaged: | 2020-11-18 16:27:21 UTC; rforge |
Depends: | R (≥ 3.5.0) |
Drug Impurities data - Phase I
Description
Data from M. Gonzales-de la Parra & P. Rodriguez-Loaiza "Application of the Multivariate T2 Chart and the Mason-Tracy-Young Decomposition Procedure to Study the Consistency of Impurity profiles of Drug Substances"
Usage
data(DrugI)
Format
A data frame with 30 observations on the following 6 variables.
observation
a numeric vector containing observation numbers from 1 to 30
A
a numeric vector containing values of impurity A in ppm
B
a numeric vector containing values of impurity B in ppm
D
a numeric vector containing values of impurity D in ppm
E
a numeric vector containing values of impurity E in ppm
G
a numeric vector containing values of impurity G in ppm
Examples
data(DrugI)
Drug Impurities data - Phase II
Description
Data from M. Gonzales-de la Parra & P. Rodriguez-Loaiza "Application of the Multivariate T2 Chart and the Mason-Tracy-Young Decomposition Procedure to Study the Consistency of Impurity profiles of Drug Substances"
Usage
data(DrugIn)
Format
A data frame with 10 observations on the following 6 variables.
observation
a numeric vector containing observation numbers from 1 to 10
A
a numeric vector containing values of impurity A in ppm
B
a numeric vector containing values of impurity B in ppm
D
a numeric vector containing values of impurity D in ppm
E
a numeric vector containing values of impurity E in ppm
G
a numeric vector containing values of impurity G in ppm
Examples
data(DrugIn)
Example multivariate data
Description
Generated data
Usage
data(Frame)
Format
A data frame with 100 observations on the following 4 variables.
subgroup
a numeric vector containing subgroup numbers from 1 to 10
V2
a numeric vector containing values of quality characteristic x1
V3
a numeric vector containing values of quality characteristic x2
V4
a numeric vector containing values of quality characteristic x3
Examples
data(Frame)
Control Chart for the generalized variance |S|
Description
This function makes a control chart of the generalized variance, |S|.
Usage
GVcontrol(DF,m,n,p)
Arguments
DF |
input - this is dataframe containing the subgrouped multivariate data. One line for each observation and one column for each variable or quality characteristic being monitored. The first column is a subgroup indicator numbered from 1 to m, with n repeats of each. There should be m x n rows and p + 1 columns. |
m |
input this is the number of observations in each subgroup |
n |
input this is the known (or estimate from a Phase I study) mean vector of the variables |
p |
input this is the number of quality characteristics |
Value
returned list containing the upper control limit, the covariance matrix (S), the generalized variance (|S|), the mean vector (mu), and a vector of the generalized variances (|Si|, i=1,2,...m) within each subgroup.
Author(s)
John Lawson
References
Alt, F. B. (1985) "Multivariate Quality Control", Encyclopedia of Statistical Sciences, Vol. 6 Editors N. L. Johnson and S. Kotz, John Wiley and Sons, N. Y.
Examples
library(IAcsSPCR)
data(Ryan92)
GVcontrol(Ryan92,20,4,2)
{
}
Phase I multivariate data from Lowry, Woodall, Champ and Rigdon
Description
Data from the Phase I multivariate data from Lowry, Woodall, Champ, and Rigdon
Usage
data(Lowry)
Format
A data frame with 10 observations on the following 2 variables.
x1
a numeric vector containing values of quality characteristic x1
x2
a numeric vector containing values of quality characteristic x2
Source
C. Lowry, W. Woodall, C. Champ, and S. Rigdon, "A Multivariate Exponentially Weighted Moving Average Control Chart", Technometrics (34),pp 46-53, 1992.
Examples
data(Lowry)
Multivariate EWMA Control Chart
Description
Computes a MEWMA using the method of Lowry, Woodall, Champ and Rigdon. The number of variables p must be between 2 and 10, r is fixed at .1
Usage
MEWMA(X,Sigma=NULL,mu=NULL,Sigma.known=TRUE)
Arguments
X |
input - this is a matrix or data frame containing the multivariate data. One line for each observation and one column for each variable or quality characteristic being monitored. |
Sigma |
input this is the known (or estimate from a Phase I study) covariance matrix of the variables |
mu |
input this is the known (or estimate from a Phase I study) mean vector of the variables |
Sigma.known |
input this is a logical variable, if TRUE, Sigma, and mu must be supplied, if FALSE the function will estimate them from the data in X |
Value
returned list containing the upper control limit, the covariance matrix and the mean vector.
Author(s)
John Lawson
References
Lowry, Woodall, Champ and Rigdon(1992)<https://www.tandfonline.com/doi/abs/10.1080/00401706.1992.10485232.>
Examples
data(Lowry)
Sigma<-matrix(c(1, .5, .5, 1), nrow=2, ncol=2)
mu<-c(0,0)
MEWMA(Lowry,Sigma,mu,Sigma.known=TRUE)
MEWMA(Lowry,Sigma.known=FALSE)
mu5<-c(-.314,.32)
Sig5<-matrix(c(1.16893, -.3243, -.3243, 1.16893), nrow=2, ncol=2)
MEWMA(Lowry,Sig5,mu5,Sigma.known=TRUE)
Phase I multivariate data from Ryan's Table 9.2
Description
Data from the Phase I multivariate data from Ryan's Table 9.2 used in chapter 7 of An Introduction to Acceptance Sampling and SPC with R
Usage
data(Ryan92)
Format
A data frame with 80 observations on the following 2 variables.
subgroup
a numeric vector containing subgroup numbers from 1 to 20
x1
a numeric vector containing values of quality characteristic x1
x2
a numeric vector containing values of quality characteristic x2
Source
Statistical Methods for Quality Improvement, by Thomas P. Ryan, John Wiley and Sons Inc.
Examples
data(Ryan92)
Phase I multivariate data from Ryan's Table 9.2
Description
Data for Exercise 2 Chapter 7 of An Introduction to Acceptance Sampling and SPC with R
Usage
data(Sample)
Format
A data frame with 125 observations on the following 5 variables.
subgroup
a numeric vector containing subgroup numbers from 1 to 25
V1
a numeric vector containing values of quality characteristic V1
V2
a numeric vector containing values of quality characteristic V2
V3
a numeric vector containing values of quality characteristic V3
V4
a numeric vector containing values of quality characteristic V4
Examples
data(Sample)
Phase II for Ryan's Table 9.2
Description
Data from the Phase II multivariate data for Ryan's Table 9.2 used in chapter 7 of An Introduction to Acceptance Sampling and SPC with R
Usage
data(Xnew)
Format
A data frame with 80 observations on the following 2 variables.
subgroup
a numeric vector containing subgroup numbers from 1 to 20
x1
a numeric vector containing values of quality characteristic x1
x2
a numeric vector containing values of quality characteristic x2
Examples
data(Xnew)
ARL for Lucas's Cusum Chart for Attribute Data
Description
Calculates ARL for Lucas's Cusum Chart for Attribute Data
Usage
arl(h=2,k=2,lambda=1,shift=.5)
Arguments
h |
input - this is the decision limit. It should be an even number, so that h/2 for the FIR feature will also be an integer. |
k |
input - this is the reference value. It should be calculated as (mu_d-mu_a)/ln(mu_d-mu_a), where mu_a is the in-control Poisson mean and mu_d mean to detect. k should be rounded to an integer. |
lambda |
input - this is the in-control Poisson mean. |
shift |
input - this is the number of standard deviation shift from the in-control mean to the mean to detect , i.e., lambda+shift*sqrt(lambda)=mu_d. |
Value
returned list containing the ARL and the ARL with FIR.
Author(s)
John Lawson
References
Lucas, J.M.(1985) "Counted data cusums", Technometrics, Vol. 27, No. 2, pp129-143.
Examples
library(IAcsSPCR)
arl(h=6,k=2,lambda=1.88,shift=0)
arl(h=6,k=2,lambda=1.88,shift=.9627)
{
}
Phase I data for exercise 7 Chapt 6
Description
Data from Phase I
Usage
data(x2)
Format
A numeric vector of length 50.
x1
a numeric vector
Examples
data(x1)
Phase II data for exercise 7 Chapt 6
Description
Data from Phase II
Usage
data(x2)
Format
A numeric vector of length 50.
x2
a numeric vector
Examples
data(x2)