--- title: "Using BCPA on a one-dimensional variable" author: "Elie Gurarie" date: "November 14, 2018" output: rmarkdown::html_vignette vignette: > %\VignetteIndexEntry{Using BCPA on a one-dimensional variable} %\VignetteEngine{knitr::rmarkdown} %\VignetteEncoding{UTF-8} --- ```{r setup, include=FALSE} knitr::opts_chunk$set(echo = TRUE, message = FALSE, fig.width = 6, fig.height = 4) ``` # Comments The BCPA was originally formulated to analyze irregular movement data collected on marine mammals, but in essence it simply reduced movement data (X-Y-Time) to a univariate time-series. There are - in my opinion - better (i.e. more informative and more robust) tools for dealing with movement data specifically, (e.g. at https://github.com/EliGurarie/smoove), but the BCPA might still be useful for irregular univariate time series. An example (again from marine mammals) is depth data. A recent update to BCPA makes this analysis somewhat smoother. Here is an example on simulated data. Note - to date this is available only on the GitHub version of BCPA, i.e. the first step is: ```{r, eval = FALSE} require(devtools) install_github("EliGurarie/bcpa") ``` The code for this example can also be found in the help file for the `WindowSweep()` function. # Analysis ## Depth data simulation Load `bcpa`, and a few other handy packages: ```{r} require(magrittr) require(lubridate) require(bcpa) ``` We simulate some data with four phases / three change points: surface to medium to deep to surface, that occur at fixed times. ```{r, echo = -1} set.seed(42) n.obs <- 100 time = (Sys.time() - dhours(runif(n.obs, 0, n.obs))) %>% sort d1 <- 50; d2 <- 100 t1 <- 25; t2 <- 65; t3 <- 85 sd1 <- 1; sd2 <- 5; sd3 <- 10 dtime <- difftime(time, min(time), units="hours") %>% as.numeric phases <- cut(dtime, c(-1, t1, t2, t3, 200), labels = c("P1","P2","P3","P4")) means <- c(0,d1,d2,0)[phases] sds <- c(sd1,sd2,sd3,sd1)[phases] depth <- rnorm(n.obs,means, sds) # make all depths positive! depth <- abs(depth) mydata <- data.frame(time, depth) ``` The structure of the data is very simple: ```{r} head(mydata) ``` Plot simulated depth data ```{r} with(mydata, plot(time, depth, type = "o")) ``` Perform the window sweep. Note that you specify the response variable (`depth`) and the time variable (`time`): ```{r} depth.ws <- WindowSweep(mydata, variable = "depth", time.var = "time", windowsize = 25, windowstep = 1, progress=FALSE) ``` Here are some plots and the summary of the change point analysis: ```{r} plot(depth.ws, ylab = "Depth (m)") plot(depth.ws, type = "flat", cluster = 8, ylab = "Depth (m)") ChangePointSummary(depth.ws, cluster = 8) ``` This is a pretty artificial example, but it works well.