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I have a data frame with evaluation sites, the calculation of different vegetation indices and different dates. I need join all information in a new data.frame where the date information that is embedded in the vegetation indices is contained in a separate column in the output data frame.

My data frame has the following structure:

df.16 <- data.frame(ID=c("a","b","c"),
                    SUGAR=c(152232.92, 117937.06, 72080.81), 
                    EVI_20160616_re=c(0.51, 0.59, 0.37), # The date is included in the column name.
                    EVI_20161006_re=c(0.59, 0.34, 0.46),
                    GNDVI_20160616_re=c(0.51, 0.59, 0.37),
                    GNDVI_20161006_re=c(0.59, 0.34, 0.46),
                    NDVI_20160616_re=c(0.51, 0.59, 0.37),
                    NDVI_20161006_re=c(0.59, 0.34, 0.46),
                    stringsAsFactors=FALSE)

I would like to get a new data.frame with the following structure, such that each observation (row) lists the vegetation indices (EVI, GNDVI, and NDVI) and the SUGAR column for a given date and evaluation site.

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3
  • Welcome to Stackoverflow! When you join dataframes, you need (at least) two dataframes. Your code only shows one dataframe. Where is the other dataframe?
    – wwl
    Jul 4, 2020 at 20:54
  • I Sorry the title of question was incorrect Jul 4, 2020 at 21:34
  • Welcome to Stackoverflow, Bryan. It appears that the intent of your question is to extract the dates from the column names for the vegetation indices, so I edited your question accordingly. Please review & confirm that I understand your question accurately.
    – Len Greski
    Jul 4, 2020 at 22:29

3 Answers 3

1

Using R 4.0 and the latest versions of tidyr (1.1.0) and dplyr (1.0.0), pivot_longer() supports splitting column names into multiple variables in the narrow format data set. Once split, we can then use pivot_wider() to create columns for EVI, GNDVI and NDVI. Since the _re part of the variable names in the input data frame appear to be irrelevant, we use select() to remove them from the output.

df.16 <- data.frame(ID=c("a","b","c"),
                    SUGAR=c(152232.92, 117937.06, 72080.81), 
                    EVI_20160616_re=c(0.51, 0.59, 0.37), # The date is included in the column name.
                    EVI_20161006_re=c(0.59, 0.34, 0.46),
                    GNDVI_20160616_re=c(0.51, 0.59, 0.37),
                    GNDVI_20161006_re=c(0.59, 0.34, 0.46),
                    NDVI_20160616_re=c(0.51, 0.59, 0.37),
                    NDVI_20161006_re=c(0.59, 0.34, 0.46),
                    stringsAsFactors=FALSE) 
library(tidyr)
library(dplyr)
df.16 %>% 
     pivot_longer(.,-c(ID,SUGAR),names_to=c("variable","DATE","RE"),
                  names_sep = "_",values_to = "value") %>%
     select(-RE) %>% 
     pivot_wider(.,c(ID,DATE,SUGAR),names_from=variable,values_from=value)

...and the output:

# A tibble: 6 x 6
  ID    DATE       SUGAR   EVI GNDVI  NDVI
  <chr> <chr>      <dbl> <dbl> <dbl> <dbl>
1 a     20160616 152233.  0.51  0.51  0.51
2 a     20161006 152233.  0.59  0.59  0.59
3 b     20160616 117937.  0.59  0.59  0.59
4 b     20161006 117937.  0.34  0.34  0.34
5 c     20160616  72081.  0.37  0.37  0.37
6 c     20161006  72081.  0.46  0.46  0.46

NOTE: although the data to the right of the decimal point for SUGAR isn't printed in the output, by casting the result with as.data.frame() one can see that the data is accurate.

If we need to convert the date value to a Date object in R, we can add mutate() to make the conversion:

df.16 %>% group_by(ID,SUGAR) %>% 
     pivot_longer(.,-c(ID,SUGAR),names_to=c("variable","DATE","RE"),
                  names_sep = "_",values_to = "value") %>%
     select(-RE) %>% 
     pivot_wider(.,c(ID,DATE,SUGAR),names_from=variable,values_from=value) %>%
     mutate(DATE = as.Date(DATE,"%Y%m%d"))

...and the output:

# A tibble: 6 x 6
# Groups:   ID, SUGAR [3]
  ID    DATE         SUGAR   EVI GNDVI  NDVI
  <chr> <date>       <dbl> <dbl> <dbl> <dbl>
1 a     2016-06-16 152233.  0.51  0.51  0.51
2 a     2016-10-06 152233.  0.59  0.59  0.59
3 b     2016-06-16 117937.  0.59  0.59  0.59
4 b     2016-10-06 117937.  0.34  0.34  0.34
5 c     2016-06-16  72081.  0.37  0.37  0.37
6 c     2016-10-06  72081.  0.46  0.46  0.46
0
0

Using tidyr and dplyr:

library(dplyr)
library(tidyr)

df.16 %>% 
  gather(key = measurement_date, value = value, -ID, -SUGAR) %>% 
  mutate(measurement = gsub("[^A-Z.]", "",  measurement_date), 
         DATE = gsub("[^0-9.]", "",  measurement_date) %>%
             as.Date(format = "%Y%m%d")) %>%
  select(-measurement_date) %>%
  spread(key = measurement, value = value)

#   ID     SUGAR       DATE  EVI GNDVI NDVI
# 1  a 152232.92 2016-06-16 0.51  0.51 0.51
# 2  a 152232.92 2016-10-06 0.59  0.59 0.59
# 3  b 117937.06 2016-06-16 0.59  0.59 0.59
# 4  b 117937.06 2016-10-06 0.34  0.34 0.34
# 5  c  72080.81 2016-06-16 0.37  0.37 0.37
# 6  c  72080.81 2016-10-06 0.46  0.46 0.46
0
0

In addition to @LenGreski answer with pivot_longer/pivot_wider, it could be also done with pivot_longer alone by making use of the names_pattern to capture groups of characters as regex pattern ((...)) based on the patterns in column name. Here, the regex used is to capture the first set of characters that are not a _ (([^_]+)) from the start (^) of the string, followed by a _, then second set of characters not an underscore, followed by the _re and if needed, convert the 'DATE' to Date class (ymd from lubridate). Also, note the sequence specifying the vector in names_to. Here, the value part specifies the columns to which value should go into and the 'DATE' the second part of the column name

library(dplyr) # 1.0.0
library(tidyr)
library(lubridate)
df.16 %>%
  pivot_longer(cols = contains("_"), names_to = c(".value", "DATE"), 
         names_pattern= "^([^_]+)_([^_]+)_re") %>%
  mutate(DATE = ymd(DATE))
# A tibble: 6 x 6
#  ID      SUGAR DATE         EVI GNDVI  NDVI
#  <chr>   <dbl> <date>     <dbl> <dbl> <dbl>
#1 a     152233. 2016-06-16  0.51  0.51  0.51
#2 a     152233. 2016-10-06  0.59  0.59  0.59
#3 b     117937. 2016-06-16  0.59  0.59  0.59
#4 b     117937. 2016-10-06  0.34  0.34  0.34
#5 c      72081. 2016-06-16  0.37  0.37  0.37
#6 c      72081. 2016-10-06  0.46  0.46  0.46

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