# Phone Accelerometer Sensor parameters description for `[PHONE_ACCELEROMETER]`: |Key                              | Description | |----------------|----------------------------------------------------------------------------------------------------------------------------------- |`[CONTAINER]`| Data stream [container](../../datastreams/data-streams-introduction/) (database table, CSV file, etc.) where the accelerometer data is stored ## RAPIDS provider !!! info "Available time segments and platforms" - Available for all time segments - Available for Android and iOS !!! info "File Sequence" ```bash - data/raw/{pid}/phone_accelerometer_raw.csv - data/raw/{pid}/phone_accelerometer_with_datetime.csv - data/interim/{pid}/phone_accelerometer_features/phone_accelerometer_{language}_{provider_key}.csv - data/processed/features/{pid}/phone_accelerometer.csv ``` Parameters description for `[PHONE_ACCELEROMETER][PROVIDERS][RAPIDS]`: |Key                              | Description | |----------------|----------------------------------------------------------------------------------------------------------------------------------- |`[COMPUTE]`| Set to `True` to extract `PHONE_ACCELEROMETER` features from the `RAPIDS` provider| |`[FEATURES]` | Features to be computed, see table below Features description for `[PHONE_ACCELEROMETER][PROVIDERS][RAPIDS]`: |Feature |Units |Description| |-------------------------- |---------- |---------------------------| |maxmagnitude |m/s^2^ |The maximum magnitude of acceleration ($\|acceleration\| = \sqrt{x^2 + y^2 + z^2}$). |minmagnitude |m/s^2^ |The minimum magnitude of acceleration. |avgmagnitude |m/s^2^ |The average magnitude of acceleration. |medianmagnitude |m/s^2^ |The median magnitude of acceleration. |stdmagnitude |m/s^2^ |The standard deviation of acceleration. !!! note "Assumptions/Observations" 1. Analyzing accelerometer data is a memory intensive task. If RAPIDS crashes is likely because the accelerometer dataset for a participant is to big to fit in memory. We are considering different alternatives to overcome this problem. ## PANDA provider These features are based on the work by [Panda et al](../../citation#panda-accelerometer). !!! info "Available time segments and platforms" - Available for all time segments - Available for Android and iOS !!! info "File Sequence" ```bash - data/raw/{pid}/phone_accelerometer_raw.csv - data/raw/{pid}/phone_accelerometer_with_datetime.csv - data/interim/{pid}/phone_accelerometer_features/phone_accelerometer_{language}_{provider_key}.csv - data/processed/features/{pid}/phone_accelerometer.csv ``` Parameters description for `[PHONE_ACCELEROMETER][PROVIDERS][PANDA]`: |Key                              | Description | |----------------|----------------------------------------------------------------------------------------------------------------------------------- |`[COMPUTE]`| Set to `True` to extract `PHONE_ACCELEROMETER` features from the `PANDA` provider| |`[FEATURES]` | Features to be computed for exertional and non-exertional activity episodes, see table below Features description for `[PHONE_ACCELEROMETER][PROVIDERS][PANDA]`: |Feature |Units |Description| |-------------------------- |---------- |---------------------------| | sumduration | minutes | Total duration of all exertional or non-exertional activity episodes. | | maxduration | minutes | Longest duration of any exertional or non-exertional activity episode. | | minduration | minutes | Shortest duration of any exertional or non-exertional activity episode. | | avgduration | minutes | Average duration of any exertional or non-exertional activity episode. | | medianduration | minutes | Median duration of any exertional or non-exertional activity episode. | | stdduration | minutes | Standard deviation of the duration of all exertional or non-exertional activity episodes. | !!! note "Assumptions/Observations" 1. Analyzing accelerometer data is a memory intensive task. If RAPIDS crashes is likely because the accelerometer dataset for a participant is to big to fit in memory. We are considering different alternatives to overcome this problem. 2. See [Panda et al](../../citation#panda-accelerometer) for a definition of exertional and non-exertional activity episodes