I have a system composed of two main components, sensors and triggers.
The system is responsible for recording information sent from the sensors, and reporting to users the times when certain triggers went active or inactive.
A few pieces of information about sensors:
- All sensors record the same set of fields
- Sensors send their recordings with a timestamp of when they were recorded
- Triggers are user defined
- input is only one reading for one sensor (ie, not readings over time or multiple sensors)
- only have active / inactive states
Sensors are assigned to triggers on a many to many basis.
The problem I have relates to tracking "when" the triggers went active or inactive.
for example, for a trigger checking value > 1
sensor_id | reading | value | trigger_value 1 2011-04-25T20:09:00 0 false 1 2011-04-25T20:11:00 1 false 1 2011-04-25T20:13:00 4 true 1 2011-04-25T20:15:00 5 true 1 2011-04-25T20:17:00 3 true 1 2011-04-25T20:19:00 6 true 1 2011-04-25T20:21:00 1 false
it might return:
sensor_id | reading | event 1 2011-04-25T20:13:00 1 -- 'went active' 1 2011-04-25T20:21:00 0 -- 'went in-active'
My current approach involves recording the current state of the set of triggers for each sensor. When the next input comes in for a sensor, and the triggers are evaluated, it compares this with the list of current trigger states for that sensor. For each change in state the 'activation' or 'de-activation' is recorded.
This approach is quite simple, but it generates data about state changes that is "already there" in the database; however the data isn't in a single tuple, it resides in the relationship between tuples (in the same table).
So, the question is:
Do I change my approach because the data is 'already there'; by changing the schema to make it less dependent on the relationship between tuples, or creating views / stored procs to analyse it apon request
Do I keep with this system because it solves the problem and hides the fact there is a temporal relationship between tuples in the same table (which I know is bad).
In a more general form:
How do you store time based statistics / data in tables, and analyse the differences between consecutive statistics without bastardising RDBMS.
Example of current implementation structure:
-- log incoming sensor data, keyed by sensor and when it was recorded create table sensor_log ( sensor_id integer references sensors (sensor_id), reading timestamp, data_point_a integer NOT NULL, -- example name only data_point_b integer NOT NULL, -- ... various other data points primary key(sensor_id, reading) ); -- data storage for trigger configuration create table triggers ( trigger_id integer, -- ... configuration for the triggers primary key(trigger_id) ); -- associate triggers with particular sensors on a many to many basis create table sensor_triggers ( sensor_id integer references sensors (sensor_id), trigger_id integer references triggers (trigger_id), -- ... configuration for the triggers primary key(sensor_id, trigger_id) ); -- record which triggers were active for a particular sensor input -- not necessary, unless to save on recomputing past trigger activations create table sensor_trigger_activations ( sensor_id integer, reading timestamp, trigger_id integer references triggers (trigger_id), primary key (sensor_id, reading, trigger_id), foreign key (sensor_id, reading) references sensor_log (sensor_id, reading) ); -- record trigger 'activations' & 'deactivations' -- activation: active state preceded by in-active state (for a particular trigger) -- deactivation: in-active state preceded by an active state "" -- absense create table sensor_trigger_events ( sensor_id integer, reading timestamp, trigger_id integer, event_type smallint CHECK (event_type = 0 OR event_type = 1), -- 0 = deactivation, 1 = activation primary_key (sensor_id, reading, trigger_id), foreign key (sensor_id, reading) references sensor_log (sensor_id, reading) );