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Tony Wells with EMU
The late Tony Wells with EMU

Vigil equipment pages
Vigil equipment
Instrument baselines
Investigation techniques
Witnesses versus instruments
Paranormal equipment failures
EMF meters - what they do
What EMF meters measure
EMF meters - cause of readings
Analysing vigil data
Sound and radiation detectors
Negative ion detectors
Using still cameras on vigils
Static electricity and paranormal
Data loggers on vigils
Humidity and lighting
EVP infrasound IR thermometer

Logging history

The idea of collecting several channels of data simultaneously at haunted locations is not new. Back in the 1980s, Tony Cornell of the SPR, built SPIDER (Spontaneous Psychophysical Incident Data Electronic Recorder) which contained an array of sensors and cameras triggered by infra-red. In 1992, ASSAP's Tony Wells constructed EMU1 (Environmental Monitoring Unit). This, too, took the output from several different sensors but only after it was triggered by some event (a change in readings from a sensor). Sadly, both machines recorded very few 'events' despite being deployed for long periods of time. These efforts were before the days of cheap, powerful, easy to use computers.

Since then, several groups have built similar devices. With the advent of fast computers it has become easier to continuously monitor sensor data rather than wait for trigger events. Computers now generally form the heart of such sensor arrays.

   

Spectrum analysis

Many data loggers include spectrum analysis software. Indeed, you can get 'spectrum analysers' which are similar to data loggers but are single instruments that analyse just one physical quantity.

Spectrum analysis is a way of seeing the frequency contributions that make up a signal. For instance, if you get a reading of 50nT magnetic field on an EMF meter, which usually means 50nT at mains frequency (see here). However, because of the frequency response of the meter, it could equally be 5nT at 1000 Hz! Or it could be a combination of two or more frequencies. With spectrum analysis we can see what is really happening.

Spectrum analysis is not as straightforward as it may seem, owing to some issues that arise from DSP - digital signal processing (ie. turning analogue outputs from instruments into digital signals for computer processing).

For a start, your sensor, as well as the logger and computer, must all sample at twice the rate of the highest frequency you want to measure. This is defined by the Nyquist criterion.

Secondly, unless your sensor has a flat frequency response, you may get exaggerated or diminished results for particular frequencies. As illustrated above, EMF meters, for instance, rarely have a flat frequency response.

Then there is aliasing to consider. If you are sampling up to frequency 'N' Hz, you can get frequency spectrums up to 'N/2' Hz. However, your instrument may still pick up higher frequencies, which can affect readings in the range you are sampling. This is aliasing.

To stop aliasing, you need to insert a frequency filter (set at your highest sample rate) in the sensor (ie. before it is converted to digital data). Aliasing cannot be removed once the signal has been converted to digital.
© Maurice Townsend 2007