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Grove - Hall Sensor

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SKU C000152 Barcode 101020046 Show more
Original price €0
Original price €7,72 - Original price €7,72
Original price
Current price €7,72
€7,72 - €7,72
Current price €7,72
VAT included

The Hall sensor uses the Hall Effect, which is the production of a voltage difference across an electrical conductor, transverse to an electric current in the conductor and a magnetic field perpendicular to the current.

Overview

There is a continuous-time switch on this Grove module. The output from the module switches from low (turns on) when a magnetic field (south polarity) is perpendicular to the Hall sensor and when it passes the operate point threshold BOP it switches to high (turns off) when the magnetic field disappears.

The twig can for example be used to measure RPM of a wheel or a motor.

Features

  • Grove Compatible Interface
  • 400ns transition period for rise and fall.
  • Continuous-time hall effect sensor
  • Reverse current protection

Tech specs

Specifications

Item

Min

Typical

Max

Unit

Supply Voltage

3.8

5.0

24

V

Supply Current

4.1

-

24

mA

Operating Temperature

-40

-

85

ºC

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