I have a network of data acquisition systems deployed around the country. Each system is measuring the performance of a different building. Each system makes temperature, flow, speed, energy, and other types of measurements. The sampling rate varies from system to system; it can be as low as 5 seconds and as high as 15 minutes.
My objective is to store all the data in a SSAS databases for analysis purposes. However, I'm struggling to identify the appropriate grain and associated fact table and SSAS measure/measure group design.
My first question is, do any of the following have the same grain?:
- Data values with different units, such as temperature and energy values
- Data values with different sampling rates, such as temperature values sampled every minute and temperatures sampled every 15 minutes
- Data values recorded from different buildings, such as the indoor temperature at Building #1 and the indoor temperature recorded at Building #2
- Additive data values (such as energy) and non-additive data values (such as temperature)
- Two different measurements with the same units at a particular building, such as first floor temperature and second floor temperature.
If most or all of these examples do not have same grain, does this mean that each building's measurement should have a separate fact table in the relational data warehouse and a separate measure in the SSAS database? If yes, then I'd be looking at 1000 measures if we assume that I am studying 10 buildings with 100 measurements each. This doesn't seem right, but it also seems that I'm dealing with a data model that has many different measure grains.
Almost all of the examples I have found are related to finance or retail, which consist of measures that are obviously additive or countable, such dollar amounts or items. Therefore, the examples haven't been helping much.