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Grove - Water Sensor

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SKU C000185 Barcode 101020018 Show more
Original price €0
Original price €4,23 - Original price €4,23
Original price
Current price €4,23
€4,23 - €4,23
Current price €4,23
VAT included

The Water Sensor module indicates whether the sensor is dry, damp or completely immersed in water by measuring conductivity

Overview

The sensor traces have a weak pull-up resistor of 1 MΩ.
The resistor will pull the sensor trace value high until a drop of water shorts the sensor trace to the grounded trace.
Believe it or not this circuit will work with the digital I/O pins of your Arduino or you can use it with the analog pins to detect the amount of water induced contact between the grounded and sensor traces.

Features:

  • Grove compatible interface
  • Low power consumption
  • 2.0cm x 2.0cm Grove module
  • High sensitivity

Application Ideas:

  • Rainfall detecting
  • Liquid leakage
  • Tank overflow detector

Tech specs

 

Item

Min

Typical

Max

Unit

Working Voltage

4.75

5.0

5.25

V

Current

<20

mA

Working Temperature

10

-

30

Working Humidity (without condensation)

10

-

90

%

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