I am working on building a time series model.

However, I am having trouble understanding what the difference is between the `simulate`

function and the `forecast`

function in the `forecast`

package.

Suppose I built an arima model and want to use it to simulate future values as long as 10 years. The data is hourly and we have a year worth of data.

When using `forecast`

to predict the next 1000-step-ahead estimation, I got the following plot.

**Using forecast method**

Then I used the `simulate`

function to simulate the next 1000 simulated values and got the following plot.

**Using simulate method**

Data points after the red line are simulated data points.

In the latter example, I used the following codes to simulate the future values.

```
simulate(arima1, nsim=1000, future=TRUE, bootstrap=TRUE))
```

where `arima1`

is my trained arima model, bootstrap residuals are used because the model residuals are not very normal.

Per definition in the `forecast`

package, `future=TRUE`

means that we are simulating future values based on the historical data.

Can anyone tell me what the difference is between these two method? Why does `simulate()`

give me a much more realistic results but forecasted values from `forecast()`

just converge to a constant after several iterations (no much fluctuation to the results from `simulate()`

)?