--- title: "pacu: Precision Agriculture Computational Utilities - Weather data" author: "Caio dos Santos & Fernando Miguez" date: "`r Sys.Date()`" output: rmarkdown::html_vignette: toc: true vignette: > %\VignetteIndexEntry{pacu: Precision Agriculture Computational Utilities - Weather data} %\VignetteEngine{knitr::rmarkdown} \usepackage[utf8]{inputenc} --- # Specific vignettes 1. [Satellite data](pacu_sat.html) 2. [Weather data](pacu_weather.html) 3. [Yield monitor data](pacu_ym.html) 4. [Frequently asked questions](pacu_faq.html) # Weather data ## Obtaining weather data There are several packages and utilities that allow for downloading weather data. Here we use the **apsimx** package. This package has simple wrappers that 'get' weather from different sources: * Iowa Environmental Mesonet * NASA-POWER (via nasapower package) * DayMet (via daymetr package) * CHIRPS (via chirps package) For more details about getting and working with weather data see the **apsimx** package. ## Using apsimx and pacu packages ```{r setup, include=FALSE} knitr::opts_chunk$set(echo = TRUE) library(apsimx) library(pacu) ``` ### Gathering and summarizing weather data An alternative way of investigating the growing conditions experienced by crops in a given year would be to summarize the weather data and place it in a historical context. Let us download some weather data first. ```{r download-weather, eval = FALSE} weather.met <- pa_get_weather_sf(area.of.interest, '1990-01-01', '2020-12-31') ``` ```{r, include=FALSE} extd.dir <- system.file("extdata", package = "pacu") weather.met <- read_apsim_met('example-weather.met', extd.dir, verbose = FALSE) ``` We can make simple plots for precipitation or temperature. A filter is used to subset years 2017 to 2020 for easier interpretation. ```{r simple-met-plot, fig.width=6} ## Precipitation (or rain) plot(weather.met, met.var = "rain", cumulative = TRUE, climatology = TRUE, years = 2017:2020) ## Temperature plot(weather.met, cumulative = TRUE, climatology = TRUE, years = 2017:2020) ``` There is a summary function for simple display of statistics ```{r summary-weather-met} ## Selecting just a few columns (1, 6, 7, 10) for simplicity summary(weather.met, years = 2017:2020)[, c(1, 6, 7, 10)] ``` The apsimx package does not produce complex graphs for weather data. This was included here to allow more detailed interpretation of crop performance data for a given location. In the pacu package we include functions which can summarize data in a historical context. ```{r summarizing-weather-data, fig.width=6, fig.height=5} pa_plot(weather.met, plot.type = 'climate_normals', unit.system = 'int') pa_plot(weather.met, plot.type = 'monthly_distributions', unit.system = 'int', months = 5:10) ```