Varunummer: 2760002

Elma Instruments Elma dt-128m moist meter

Elma DT-128M provides a very fast way to non destructive measurement of moist in building materials and moist distribution in e.g. walls, ceilings and floors. The instrument injects a high frequency signal in the material and measures the moist 20-40mm n the material. Just hold the ball-tip against the surface and the moist is immediately shown in the large, backlit display. Elma DT-128M is equipped with 2 adjustable alarm limits, auto zero adjustment, min/max, auto power off and display hold. The instrument is provided ready to use incl batteries and manual. Note: The material to be measured should be at least 20-40mm (depending on the material) to provide a reading.

I lager
1 883,00 kr 1 506,40 kr exkl. moms
Gratis frakt
4 st. I lager, 1-2 vardagars förväntad leveranstid

Elma DT128M Moisture Meter Product Description: Elma DT-128M is a smart instrument for non-destructive measurement of moisture in building materials, as well as detection of moisture distribution in walls, ceilings and floors. The instrument works with high frequency and measures material moisture depth of 20-40mm. Elma DT-128M is suitable for measuring building materials such as plaster, cement and wood. The measuring ball is held perpendicular to the subject and the moisture is displayed directly on the large illuminated display. Elma DT-128M comes with 2 adjustable alarm limits, automatic calibration, min/max, auto shut-off and data hold. Supplied with batteries and operating instructions. Note: To perform a measurement, the material thickness must be at least 20 mm.Technical specifications:HxWxD (mm): 235x60x25Measurement range: 0 - 100% material moistureDepth: 20 -40 mmWeight (grams):250

Producent
Varunummer
2760002
Modell
5706445840151
EAN
5706445840151

Ovanstående information och specifikationer är vägledande och kan utan förvarning ändras av producenten. Alla uppgifter lämnas med reservation för tryckfel, och bilder är vägledande. Vissa texter kan vara autogenererade eller maskinöversatta och kan därför ge texter som kan vara missvisande.