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Gravity: Analog pH Sensor / Meter Pro Kit For Arduino

SKU TPX00017 Barcode 6959420908417 Show more
Original price €0
Original price €63,80 - Original price €63,80
Original price
Current price €63,80
€63,80 - €63,80
Current price €63,80
VAT included

Professional pH Sensor Meter Kit for Arduino. 

Overview

Professional pH Sensor Meter Kit with industrial electrode. It has built-in simple, convenient, practical connection and long life (up to 1 year), which makes it very suitable for long term online monitoring. It has an LED which works as the Power Indicator, a BNC connector and PH2.0 sensor interface. To use it, just connect the pH sensor with BND connector, then plug the PH2.0 interface into the analog input port of any Arduino controller. If programmed, you will get the pH value easily.
 
This industrial pH electrode is made of sensitive glass membrane with low impedance. It can be used in a variety of PH measurements with fast response and excellent thermal stability. It has good reproducibility, is difficult to hydrolysis, and can eliminate basic alkali error.
In 0pH to 14pH range, the output voltage is linear.The reference system which consist of the Ag/AgCl gel electrolyte salt bridge has a stable half-cell potential and excellent anti-pollution performance.
The ring PTFE membrane is not easy to be clogged, so the electrode is suitable for long-term online detection.

Tech specs

  • Module Power : 5.00V
  • Module Size : 43mmx32mm(1.70"x1.26")
  • Measuring Range: 0-14PH
  • Measuring Temperature :0-60 ℃
  • Accuracy : ± 0.1pH (25 ℃)
  • Response Time: ≤ 1min
  • Industry pH Electrode with BNC Connector
  • PH2.0 Interface ( 3 foot patch )
  • Gain Adjustment Potentiometer
  • Power Indicator LED

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