Working towards a revised MPD standard (ISO 13473-1) a sneak-peek on the current mind set Bo Söderling; LMI Technologies Ltd.

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Presentation transcript:

Working towards a revised MPD standard (ISO ) a sneak-peek on the current mind set Bo Söderling; LMI Technologies Ltd

A look back – laser sensors are established as THE TOOL for road measurements – Selcom introduces the first generation of laser sensors dedicated to texture measurements – ISO is issued as a result of research and industry requirements to provide continuation and improvement from previous generation technologies and comparability – Industry demands drives technology towards higher sampling rates, larger MR’s and smaller laser spots – Selcom (now LMI Technologies) are invited to contribute as observers at WG39 to the revision of ISO – LMI participates in quarterly WG39 meetings to review the standard, identify weak points and establish improvements.

So what’s it all about?

And how do we get there? MSD/MPD; the process to get to the numbers Sensor Basic model (Optocator 2008, 2207) Sample rate (32, 62,5, 78 kHz) Measurement Range (64, 128, 155, 180mm) Data collection & preprocessing Invalid points & interpolation Re-sampling to spatial domain Sharpness normalization (low pass filter) MSD calculation Slope suppression 2 Peaks & average of segment MSD = average of peaks – average of segment

Sensor Basic type (Optocator 2008, 2207) Sample rate (32, 62,5, 78 kHz) Measurement Range (64, 128, 155, 180mm)

From the sensor stand-point... The task: measure profiles to enable MPD data Faster sampling Measure fresh asphalts Allow more vertical movement Higher precision Less weight & size Defined laser spots Accurate detection of Invalid conditions

Sensor optimization and verification ”The LMI approach” Establish methods to reproduce road sample discs with controlled properties. Develop a test system and software capable of evaluating MSD,MPD, ETD, RMS. Enable real road data collection from representative LMI ”test tracks”. Investigate the influence from various types of profile filtering. Benchmark, optimize and qualify products on an individual level by using results from all above. Improve designs based on experience from all above.

Sample disk reproduction procedure OriginalSilicone mold Clones with varying properties

software tool for data collection & analysis

Site 1- MPD: 0,8 mmSite 2 – MPD: 1,45 mm Test tracks of varying character

New ”High Power/Low Noise” option Higher power laser diodes enable higher data precision and reduced noise. Similar performance at 3 x speed. 32 kHz 20 kph78 kHz High Power/Low Noise 60 kph

Lab and ”live” ; LMI sensors are verified!

WG 39 proposes: To be continued......

Data collection & preprocessing Invalid points & interpolation Re-sampling to spatial domain Sharpness normalization (low pass filter)

Optical phenomena may blind the sensor Profile points labelled ”Invalid” by the sensor profile points interpolated by pre-processing occlussions ”impossible” slopes fresh asphalt

Drop-out identification and interpolation WG 39 proposes: Mandatory sensor detection of ”not enough light received” situations. Mandatory inclusion of bordering samples in Invalid data sections. Mandatory linear interpolation to fill in data in in Invalid data sections.

Data collection & preprocessing Invalid points & interpolation Re-sampling to spatial domain Sharpness normalization (low pass filter)

Re-sampling data; does it matter how you do it? Yes, it does! MSD=1,7 mm MSD=1,2 mm

WG39 proposes: Mandatory re-sampling to 1 mm point spacing with a (new) option for 0,5 mm point spacing when sensor data is sampled at higher than 0,5 mm density Mandatory usage of available valid sensor data in re- sampled profile points at 1 mm or 0,5 mm spacing.

Data collection & preprocessing Invalid points & interpolation Re-sampling to spatial domain Sharpness normalization (low pass filter)

The standard demands: ”The response shall be basically flat within 5 mm to 50 mm texture wavelength, and spectral components with wavelengths greater than 100 mm and lower than 2,5 mm shall be significantly reduced” ”the process shall remove spatial frequency components which are above 400 m -1 (cycles/m), corresponding to a wavelength of 2,5 mm, but not affect spatial frequencies below 200 m -1, corresponding to a wavelength of 5 mm (at least -3 dB at 2,5 mm and at most -1 dB at 5 mm with a slope of at least -6 dB/octave)”

So what are the properties that may vary? Type of filter – Butterworth, Bessel, Moving average, Median, complex FIR...? Cut-off wavelength – 1mm, 2 mm, 3 mm...? Steepness – 6 dB/oktave, 12 dB/oktave...?

And how do they influence MPD? Data from 10+ sensor models. Data recorded on known test tracks. Data recorded over a relevant speed span. Sensor data recorded by LMI and analyzed by Alejandro Amirola Sanz (Acciona) & Bo Söderling (LMI Technologies)

No filtering vs. a ”simple” filter Average MPD : 1,14 mm Std. Dev : 0,21 mm Average MPD: 1,80 mm Std. Dev = 0,16 mm

A Butterworth 2nd order, 3 mm Cut-off Average MPD: 0,83 mm Std. Dev = 0,05 mm Average MPD: 1,47 mm Std. Dev = 0,08 mm

Filter cut-off: 0 – 5 mm MSD: 1,64 mm1,66 mm1,54 mm 1,47 mm 1,42 mm 1,38 mm /390 High Power/Low Noise 78 kHz Sampling 90 km/hour Newly laid asphalt Raw data 1 mm 2 mm 3 mm 4 mm 5 mm

And the filter order /390 High Power/Low Noise (N2154) 78 kHz Sampling 90 km/hour Newly laid asphalt MPD (mm)

Filter cut-off: 0 – 5 mm MSD: 2,02 mm1,81 mm1,6 mm 1,48 mm 1,41 mm1,35 mm /390 (N2138) 62,5 kHz Sampling 40 km/hour Test site 2 Raw data 1 mm 2 mm 3 mm 4 mm 5 mm

And the filter order... MPD (mm)

Conclusions: Profile filtering normalizes results between sensor models. Filter cut-off definition has significant impact on MPD data Filter order has less impact Equal weight FIR (averaging) and Median filters to be treated with care

A mandatory and well defined filter implementation to be included in the standard Details TBD but simple (low order) rather than complex preferred. WG39 proposes:

MSD calculation Slope suppression 2 Peaks & average of segment MSD = average of peaks – average of segment

Slope suppression; a recent improvement

Slope suppression to become a mandatory procedure. WG39 proposes:

Thank you!