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Grove - Temperature & Humidity Sensor Pro

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SKU C000178 Barcode 101020019 Show more
Original price €0
Original price €8,69 - Original price €8,69
Original price
Current price €8,69
€8,69 - €8,69
Current price €8,69
VAT included

This is a powerful sister version of our Grove - Temperature and Humidity Sensor.

Overview

Grove-Temperature & Humidity Sensor Pro is a high accuracy temperature and humidity sensor based on the DHT22 module (also known as AM2302 or RHT03). High-cost performance and high precision make it ideal for temperature and humidity monitoring of Arduino and Raspberry Pi, you can also use it to make a thermometer and hygrometer.

The DHT22 includes a capacitive humidity sensor and a high precision temperature sensor. The range of humidity sensor is 0 to 99.9 %RH with ±2% accuracy while the temperature sensor ranges from -40 to 80℃ with ±0.5℃ accuracy. With the help of a built-in 8-bit microcontroller, the DHT22 converts the analog output of those two sensors to the digital signal, and output both temperature and humidity data via a single pin.

Compared with the DHT11, this product has higher precision and wider measurement range, but the usage and code are almost the same. Simply put, if you need higher measurement accuracy, this product will be a better choice.


Tech specs

 

Item

Min

Norm

Max

Unit

VCC

3.3

-

6

V

Measuring Current Supply

1

-

1.5

mA

Standby Current Supply

40

-

50

uA

Measuring range (Humidity)

5%

-

99%

RH

Measuring range (Temperature)

-40

-

80

°C

Accuracy(Humidity)

-

-

±2%

RH

Accuracy (Temperature)

-

-

±0.5

°C

Resolution (Humidity)

-

-

0.1%

RH

Resolution (Temperature)

-

-

0.1

°C

Repeatability(Humidity)

-

-

±0.3%

RH

Repeatability (Temperature)

-

-

±0.2

°C

Long-term Stability

-

-

±0.5%

RH/year

Signal Collecting Period

-

2

-

S

Respond Time 1/e(63%)

6

-

20

S

Get Inspired

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