Use `geom_smooth(aes(color=..y..))`

to add a color aesthetic to `geom_smooth`

. `..y..`

is the vector of y-values internally calculated by `geom_smooth`

to create the regression curve. In general, when you want to add an aesthetic to a summary value that's calculated internally, you need to map the aesthetic to that internal value. Here, the internal value is the `..y..`

value of the smoothing function. In other cases it might be `..count..`

for histograms or bar plots, or `..density..`

for density plots.

Here's an example using your data. Note that I've tweaked a few of the plot parameters for illustration.

```
set.seed(48)
a <- data.frame(year = 1:100, values = sin(1:100)*1000 + runif(100))
ggplot(a, aes(x = year, y = values, color = values )) +
geom_line(size = 0.5) +
geom_smooth(aes(color=..y..), size=1.5, se=FALSE) +
scale_colour_gradient2(low = "blue", mid = "yellow" , high = "red",
midpoint=10) +
theme_bw()
```

Note that the color of the regression line does not change much because its y-values span a small range relative to the data. Here's another example with fake data that generates a more wide-ranging regression curve.

```
set.seed(1938)
a2 <- data.frame(year = seq(0,100,length.out=1000), values = cumsum(rnorm(1000)))
ggplot(a2, aes(x = year, y = values, color = values )) +
geom_line(size = 0.5) +
geom_smooth(aes(color=..y..), size=1.5, se=FALSE) +
scale_colour_gradient2(low = "blue", mid = "yellow" , high = "red",
midpoint=median(a2$values)) +
theme_bw()
```