||RIP Sensor - Unit Conversion|
The OpenSignals outputted file formats contain raw data, so each sample has a digital unit.
In scientific terms it is recommended the use of specific units, like electric tension (V) or electric current (A). Each sensor that PLUX commercialise has a datasheet where a transfer function is mentioned for unit conversion be done.
The next lines are intended to explain how this conversion can be programmatically implemented.
In spite of the unit conversion procedure has some common steps applicable to all sensors, the current Jupyter Notebook is dedicated to the unit conversion procedure of signals acquired with Inductive Respiration (RIP) sensor.
1 - Importation of the needed packages
# biosignalsnotebooks Python package with useful functions that support and complement the available Notebooks import biosignalsnotebooks as bsnb # Function used for creating a numpy array, where a mathematical operation can be applied to each entry in an easy and automatic way. On the other side, linspace, here will be used for generation of a time-axis. from numpy import array, linspace
2 - Download of the sensor datasheet (from
). In this case we are working with RIP, being our file located at:
# Embedding of .pdf file from IPython.display import IFrame IFrame(src="../../images/pre-process/unit_conversion_rip/RIP_Sensor_Datasheet.pdf#page=2", width="100%", height="350")
3 - Extraction of the transfer function from the beginning of the second page
|$RIP(\%)$ â€“ Displacement value in percentage(%) of full scale||$ADC$ - Value sampled from the channel||$n$ - Number of bits of the channel (dependent on the chosen resolution specified on OpenSignals previously to the acquisition stage [8, 12 or 16 bits])|
4 - Loading of data stored in biosignalsnotebooks own signal library
# Data loading data, header = bsnb.load_signal("https://drive.google.com/open?id=19NTqwXupijgIHXmIbtixnUcUagIjl7Ms", get_header=True)
In the following cell, some relevant information is stored inside variables. This relevant information includes the mac-address of the device, channel number and signal acquisition parameters such as resolution and sampling rate.
For a detailed explanation of how to access this info, the "Signal Loading - Working with File Header" Notebook should be consulted.
mac = "00:07:80:79:6F:DB" # Mac-address ch = "CH1" # Channel sr = 1000 # Sampling rate resolution = 16 # Resolution (number of available bits)
Access to acquired signal samples and storage inside a new variable.
signal = data[ch]
5 - Final unit conversion (to Relative Displacement - % ) by applying the transfer function sample by sample
signal_perc = ((array(signal) / 2**resolution) - 0.5)*100
6 - Time axis generation
time = bsnb.generate_time(signal_perc, sr)
Comparison between RAW and mV signal.
bsnb.plot([time, time], [signal, signal_perc], y_axis_label=["Raw Data", "Relative Displacement (%)"], grid_lines=1, grid_columns=2, grid_plot=True)