I'm trying to figure out a way I can filter out data in my cube so that I can perform time-series calculations such as a moving average using only that subset.

For example, let's say that I have a fact table with the following columns:

- DayId (Key)
- HourId (Key)
- Value

I also have a Time dimension with a composite key of **DayId** and **HourId**. This dimension has a key for every hour over the span of 100 days, so the keys go from (1,1) to (100,24).

In the fact table there is a value for every point in time so it looks like

```
DayId HourId Value
1 1 50
1 2 60
1 3 75.2
... ... ...
100 23 87
100 24 89
```

Now, suppose I want to calculate a daily moving average from the beginning of time through some arbitrary point in the middle of the day. Basically, I would want to calculate the average using the last point of every day except the last one, which would use a different point in time in the middle of the day. If I was to do a moving average from day 1 to day 10, ending at noon of the 10th day (HourId 12), the data I would use for my calculation would look like:

```
DayId HourId Value
1 24 80
2 24 90
3 24 39
4 24 60
... ... ...
9 24 10
10 12 30
```

In SQL, I could retrieve a set like this pretty easily:

```
SELECT
*
FROM
[FactTable]
WHERE
((DayId BETWEEN 1 AND 9) AND (HourId = 24))
OR ((DayId = 10) AND (HourId = 12))
```

I'm pretty new to OLAP and MDX, so I've really been struggling with the right way to do this. So far, the best I've been able to do is to perform a sub-select in my `FROM`

clause, and essentially construct a tuple set of only the rows I want:

```
WITH
MEMBER [SMA 10 Value] AS
AVG (
([Time].[DayId].Lag(9):[Time].[DayId], [Time].[HourId])
, [Value]
)
SELECT
{
[Value]
, [SMA 10 Value]
} ON COLUMNS
, ([Time].[DayId], [Time].[HourId]) ON ROWS
FROM
(
SELECT
[Measures] ON COLUMNS
, {
([Time].[DayId].[1]:[Time].[DayId].[9], [Time].[HourId].[24])
, ([Time].[DayId].[10], [Time].[HourId].[12])
} ON ROWS
FROM
[Cube]
)
```

However, it doesn't seem to quite work right for my calculations. The moving average seems to be correct over the first 9 days, because their tuples all have the same hour ID, but when I get to the final day, instead of using the values from the previous 9 tuples, it performs the average over the previous 9 days with the 12 Hour ID.

What am I doing wrong here, is there a better way that I can filter my time dimension down to eliminate unwanted rows from my calculations?