library(lubridate) library(ggplot2) library(StreamMetabolism) library(xts) library(reshape) library(scales) DE_25335 <- sunrise.set(53.75586651152996,9.663248062133789, "2023/01/01", timezone="MET", num.days=370) sunrise <- DE_25335$sunrise sunset <- DE_25335$sunset sunrise <- strftime(sunrise, format="%R", tz="MET") sunset <- strftime(sunset, format="%R", tz="MET") DE_25335["sr"] <- as.POSIXct(sunrise, format = "%H:%M") DE_25335["ss"] <- as.POSIXct(sunset, format = "%H:%M") DE_25335["timestamp"] <- align.time(DE_25335$sunrise, 60*10) DE_25335 <- DE_25335[c("timestamp", "sr", "ss")] locsrss <- ggplot(DE_25335, aes(x=DE_25335$timestamp)) + geom_line(aes(y=DE_25335$sr)) + geom_line(aes(y=DE_25335$ss)) + labs(title = " Sonnenauf-/Sonnenuntergang - DE_25335 2023", x = "Datum", y = "Zeit") pdf("DE_25335_SA_SU.pdf", paper="a4r", width=11) locsrss dev.off() png(filename="DE_25335_SA_SU.png", width = 1400, height = 800, units = "px") locsrss dev.off() DE_25335["Sonnenaufgang"] <- strftime(DE_25335$sr, format="%H:%M") DE_25335["Sonnenuntergang"] <- strftime(DE_25335$ss, format="%H:%M") write.table(DE_25335, file="DE_25335_SaSu.csv", dec=',', sep=';', row.names=FALSE)