## ----setup, include = FALSE--------------------------------------------------- knitr::opts_chunk$set( collapse = TRUE, comment = "#>", fig.width = 6, fig.height = 4 ) ## ----------------------------------------------------------------------------- # after released in CRAN # install.packages("SSReliabilityClaytonMWD") ## ----------------------------------------------------------------------------- # install.packages("remotes") # remotes::install_github("fatihki/SSReliabilityClaytonMWD") ## ----------------------------------------------------------------------------- # Load the package library(SSReliabilityClaytonMWD) # set seed set.seed(123) n <- 50 a1 <- 0.75; b1 <- 1.5; lambda1 <- 0.6 a2 <- 1.2; b2 <- 0.5; lambda2 <- 0.9 theta <- 3 # simulate data dat <- rMweibull_Clayton(n, a1, b1, lambda1, a2, b2, lambda2, theta) ## ----------------------------------------------------------------------------- # true stress-strength reliability value R_true <- Reliability_Clayton_MWD(a1, b1, lambda1, a2, b2, lambda2, theta) R_true$value ## ----------------------------------------------------------------------------- fit <- fit.SSR.ClaytonMWD( data = dat, ACI = TRUE, bootstrap = TRUE, B = 10, seed = 2026, one.step = TRUE, alpha = 0.05 ) ## ----------------------------------------------------------------------------- print(fit) ## ----------------------------------------------------------------------------- # Load example data from the package data(TerkosDam) data(OmerliDam) real_data <- list(X = TerkosDam, Y = OmerliDam) ## ----------------------------------------------------------------------------- fit_ssr <- fit.SSR.ClaytonMWD( data = real_data, ACI = TRUE, bootstrap = TRUE, B = 10, seed = 2026, one.step = TRUE, alpha = 0.05 ) ## ----------------------------------------------------------------------------- print(fit_ssr)