#' Hotelling T2 Statistic for Phase I. #' #' Calculate the Hotelling T2 statistic for multivariate observations at phase #' I , to be used to build the corresponding control chart. #' #' Before using this function it is necessary to execute the function #' "stats"(that calculate the auxiliary statistics involved in the T2 formula) #' and the function "data.1" (or other way to supply the data). #' #' @param estat The values of the auxiliary statistics. Should be a list with a #' matrix with the means, mean of the means and mean of the standard deviation. #' @param m The number of samples generated previously in data.1. #' @param n The size of each samples used previously in data.1. #' @return Return a vector with the Hotelling T2 statistics. #' @importFrom miscTools symMatrix #' @export #' @author Daniela R. Recchia, Emanuel P. Barbosa #' @seealso \link{stats}, \link{data.1}, \link{cchart.T2.1} #' @references Montgomery, D.C.,(2008)."Introduction to Statistical Quality #' Control". Chapter 11. Wiley. #' @examples #' #' mu <- c(5.682, 88.22) #' Sigma <- symMatrix(c(3.770, -5.495, 13.53), 2) #' #Example with individual observations #' datum <- data.1(50, 1, mu, Sigma) #' estat <- stats(datum, 50, 1, 2) #' T2.1(estat, 50, 1) #' #Example with sub group observations #' datum <- data.1(20, 10, mu, Sigma) #' estat <- stats(datum, 20, 10, 2) #' T2.1(estat, 20, 10) #' T2.1 <- function(estat, m, n) { t2 <- vector() if(n == 1) { for (i in 1:m) { T2 <- (t(estat[[3]][i, ]) %*% solve(estat[[2]]) %*% (estat[[3]][i, ])) t2 <- c(t2, T2) } } if(n > 1) { for (i in 1:m) { T2 <- n * (t(estat[[3]][i, ] - estat[[1]]) %*% solve(estat[[2]]) %*% (estat[[3]][i, ] - estat[[1]])) t2 <- c(t2, T2) } } return(t2) }