Learn R Programming

MSRDT (Multi-state Reliability Demonstration Tests)

Description

This package provides the Bayesian methods to get the optimal test sample size in binomial RDT design and multi-state RDT designs. Numerical estimation of consumer's risk can be obtained through Monte Carlo Simulation. The package provides three categories of methods.

  • Binomial RDT (b_.R): This is the conventional test design using failure count data and assuming binomial failure distributions over the testing period.
  • MSRDT-Multiple Periods (MP_.R) : This is the MSRDT design with multiple testing periods, which includes two scenarios depending on the test criteria over cumulative periods (Cum) or separate periods (Sep). For failure probabilities over multiple testing periods, the multinomial distribution is assumed.
  • MSRDT-Multiple Failure Modes (MFM_.R) : This is the MSRDT design with multiple failure modes. For each failure mode, the binomial failure probability is assumed.

Reference

This is the R package implementation for the design methods of multi-state reliabiltiy demonstration tests (MSRDTs) with failure count data. The original work is from one of the research projects listed on Suiyao Chen's Homepage.

The paper Multi-state Reliability Demonstration Tests has been published in Quality Engineering. To cite this paper, please use

Suiyao Chen, Lu Lu & Mingyang Li (2017) Multi-state reliability demonstration tests, Quality Engineering, 29:3, 431-445, DOI: 10.1080/08982112.2017.1314493

Installation

To install from Github:

devtools::install_github("ericchen12377/MSRDT")
#build vignettes if needed
devtools::install_github("ericchen12377/MSRDT", build_vignettes = TRUE, force = TRUE)
library(MSRDT)
#view vignettes
browseVignettes('MSRDT')

Examples

######Binomial RDT Design######
###Generate the prior distribution of failure probability
##Beta is conjugate prior to binomial distribution
#Get the non-informative prior Beta(1, 1)
pi <- pi_MCSim_beta(M = 5000, seed = 10, a = 1, b = 1)

#Get the consumer's risk
n = 10
R = 0.8
c = 2
b_CR <- bconsumerrisk(n = n, c = c, pi = pi, R = R)
print(b_CR)
#         [,1]
#>[1,] 0.3330482

##As n increases, CR decreases
#Get the optimal test sample size
thres_CR = 0.05 #CR < 0.05
b_n <- boptimal_n(c = c, pi = pi, R = R, thres_CR = thres_CR)
print(b_n)
#>[1,] 24
######MSRDT MPCum Design######
###Generate the prior distribution of failure probability
##Dirichlet is conjugate prior to multinomial distribution
#Get the non-informative prior Dirichlet(1, 1, 1)
pi <- pi_MCSim_dirichlet(M = 5000, seed = 10, par = c(1, 1, 1))

#Get the consumer's risk
n = 10
cvec = c(1, 1)
Rvec = c(0.8, 0.7)
MPCum_CR <- MPCum_consumerrisk(n = n, cvec = cvec, pivec = pi, Rvec = Rvec)
print(MPCum_CR)
#>[1] 0.3383538

##As n increases, CR decreases
#Get the optimal test sample size
thres_CR = 0.05 #CR < 0.05
MPCum_n <- MPCum_optimal_n(cvec = cvec, pivec = pi, Rvec = Rvec, thres_CR = thres_CR)
print(MPCum_n)
#>[1] 20

Updates

  • Version logs are provided.

Copy Link

Version

Install

install.packages('MSRDT')

Monthly Downloads

155

Version

0.1.0

License

GPL-3

Issues

Pull Requests

Stars

Forks

Maintainer

Suiyao Chen

Last Published

June 2nd, 2020

Functions in MSRDT (0.1.0)

MFM_optimal_n

Optimal Test Sample Size for Multi-state RDT with Multiple Failure Modes (MFM)
MPSep_consumerrisk

Consumer's Risk for Multi-state RDT with Multiple Periods and Criteria for Separate Periods
MFM_consumerrisk

Consumer's Risk for Multi-state RDT with Multiple Failure Modes (MFM)
MFM_Indicator

Binary Indicator for Multi-state RDT with Multiple Failure Modes (MFM)
MPCum_optimal_n

Optimal Test Sample Size for Multi-state RDT with Multiple Periods and Criteria for Cumulative Periods
MFM_core

Probability Core for Multi-state RDT with Multiple Failure Modes (MFM)
MPCum_core

Probability Core for Multi-state RDT with Multiple Periods and Criteria for Cumulative Periods
MPCum_consumerrisk

Consumer's Risk for Multi-state RDT with Multiple Periods and Criteria for Cumulative Periods
pi_MCSim_dirichlet

Dirichlet Prior Simulation for Multi-state RDT
MPSep_core

Probability Core for Multi-state RDT with Multiple Periods and Criteria for Separate Periods
MPSep_optimal_n

Optimal Test Sample Size for Multi-state RDT with Multiple Periods and Criteria for Separate Periods
bconsumerrisk

Consumer's Risk for Binomial RDT
bcore

Probability Core for Binomial RDT
MP_Indicator

Binary Indicator for Multi-state RDT with Multiple Periods
bIndicator

Binary Indicator for Binomial RDT
pi_MCSim_beta

Beta Prior Simulation for Binomial RDT
boptimal_n

Optimal Test Sample Size for Binomial RDT