I have a time series data that has been imported as zoo class. and my data looks like this:

# you can recreate my problem using the code below
library(rjson)
library(plyr)
library(zoo)
value <- '[["2013-08-08", 7944, 0.37], ["2013-08-09", 7924, 0.37], ["2013-08-09", 7924, 0.37], ["2013-08-10", 7895, 0.37], ["2013-08-10", 7895, 0.37], ["2013-08-11", 7895, 0.37], ["2013-08-12", 7895, 0.37], ["2013-08-12", 7895, 0.37], ["2013-08-13", 8087, 0.37], ["2013-08-13", 8087, 0.37], ["2013-08-14", 8081, 0.37], ["2013-08-14", 8081, 0.37], ["2013-08-15", 8016, 0.37], ["2013-08-15", 8016, 0.37], ["2013-08-16", 7991, 0.37], ["2013-08-16", 7991, 0.37], ["2013-08-17", 7969, 0.37], ["2013-08-17", 7969, 0.37], ["2013-08-18", 7969, 0.37], ["2013-08-18", 7969, 0.37], ["2013-08-19", 7969, 0.37], ["2013-08-19", 7969, 0.37], ["2013-08-20", 3931, 0.37], ["2013-08-20", 3931, 0.37], ["2013-08-21", 3829, 0.37], ["2013-08-21", 3829, 0.37], ["2013-08-22", 3729, 0.37], ["2013-08-22", 3729, 0.37], ["2013-08-23", 3729, 0.37], ["2013-08-23", 3729, 0.37], ["2013-08-24", 3719, 0.37], ["2013-08-24", 3719, 0.37], ["2013-08-25", 3719, 0.37], ["2013-08-25", 3719, 0.37], ["2013-08-26", 3719, 0.37], ["2013-08-26", 3719, 0.37], ["2013-08-27", 7569, 0.37], ["2013-08-27", 7569, 0.37], ["2013-08-28", 7444, 0.37], ["2013-08-28", 7444, 0.37], ["2013-08-29", 7444, 0.37], ["2013-08-29", 7444, 0.37], ["2013-08-30", 7439, 0.37], ["2013-08-30", 7439, 0.37], ["2013-08-31", 7419, 0.37], ["2013-08-31", 7419, 0.37], ["2013-09-01", 7419, 0.37], ["2013-09-01", 7419, 0.37], ["2013-09-02", 7419, 0.37], ["2013-09-02", 7419, 0.37], ["2013-09-03", 7219, 0.37], ["2013-09-03", 7219, 0.37], ["2013-09-05", 7001, 0.37], ["2013-09-06", 6999, 0.37], ["2013-09-07", 2749, 0.37], ["2013-09-08", 2749, 0.37], ["2013-09-08", 2749, 0.37], ["2013-09-09", 2749, 0.37]]'
content <- as.data.frame(matrix(unlist(fromJSON(json_str=.value)),ncol=3,byrow=TRUE))
names(content) <- c('date', 'inStock', 'unitPrice')
content$date <- as.POSIXct(content$date, format="%Y-%m-%d")
content$inStock <- as.integer(levels(content$inStock))[content$inStock]
content$unitPrice <- as.numeric(levels(content$unitPrice))[content$unitPrice]
content <- ddply(content, .(date), summarise, inventoryValue = max(inStock) * min(unitPrice), inStock = max(inStock), unitPrice = min(unitPrice))
content.zoo <- zoo(content[-1], content$date)
content.complete <- na.approx(content.zoo, xout=seq(start(content.zoo), end(content.zoo), by="day"))
plot(content.complete[,1])

enter image description here

You can easily see the movement of the inventory drop to 1500 at Aug 20 and the inventory got replenished at Aug 25.

How to use diff function to calculate sales, which is only the negative delta or assign all the positive delta(replenishment) to be 0

# the plot below shows all the delta but I only want the negative delta
plot(-diff(content.complete[,1]))

enter image description here

In a simple way. You have a vector:

a <- c(1,2,3,4,-1,-2,4,5, 0)
# how can I get 
c(1,2,3,4,0,0,4,5,0)

UPDATE:

#Inspired by pmax answer, this is my final solution:
plot(zoo(pmax(0, as.vector(-diff(content.complete[,1]))), seq(start(content.complete), end(content.complete), by="day")))
有帮助吗?

解决方案

One way is to use pmax:

> pmax(0,a)
[1] 1 2 3 4 0 0 4 5 0

其他提示

Given that I understand your question correctly: Can't you use the which() function so that

index <- which(-diff(content.complete[,1]) < 0.0)

returns the indices where diff gives a negative result?

a <- rnorm(10)
[1]  0.79466221 -0.02602763 -0.08978353  2.66642150  0.10041665 -1.57871469
[7] -0.33173812 -0.70527085  0.01021448 -0.43410244

index <- which(diff(a) < 0)
[1] 1 2 4 5 7 9
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