Overview
Designed for industrial and smart agriculture applications, the Arduino Edge Control Enclosure Kit is the perfect companion for Arduino Edge Control. It provides the module with a sturdy case that protects it from the elements, dust, and accidental blows. It is IP40-certified and compatible with DIN rails, making it safe and easy to fit in any standard rack or cabinet.
On top of this, the Arduino Edge Control Enclosure Kit features a 2-row/16-character LCD display with white backlight and a programmable push button, so it can be customized by users to instantly visualize sensor data, such as weather conditions and soil parameters. Different data can be displayed at every push of the button, on the spot and in real time, without requiring connectivity.
Key benefits include:
- Sturdy and compact protective case for outdoor/industrial use
- Easy installation and organization in racks or cabinets
- IP40-certified protection
- LCD display to instantly check sensor data on location
- Customizable push button to view different data in rotation
- Monitor data even when the connection is unavailable or unreliable
Ready to get started with the Edge Control Enclosure Kit? Read the product datasheet, tutorials and documentation on Arduino Docs.
*The boards/shields are not included in the product: Pictures shown are for illustration purposes only.
Arduino Edge Control
The Edge Control is Arduino Pro’s remote monitoring and control solution, optimized for outdoor environments. Find out more.
Arduino IoT Cloud
Integrating with Arduino’s IoT Cloud is a simple and fast way to ensure secure communication for all of your connected Things.
TRY THE ARDUINO IOT CLOUD FOR FREE
Need Help?
Check the Arduino Forum for questions about the Arduino Language, or how to make your own Projects with Arduino. If you need any help with your board, please get in touch with the official Arduino User Support as explained in our Contact Us page.
Warranty
You can find your board warranty information here.
Tech specs
Interfaces |
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Included components |
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Dimensions | 110x90x60 mm |
Weight | 165 g |
Ingress Protection | IP40 |
Operating Temperatures | -40° C to +85° C (-40° F to 185°F) |
Resources for Safety and Products
Manufacturer Information
The production information includes the address and related details of the product manufacturer.
Arduino S.r.l.
Via Andrea Appiani, 25
Monza, MB, IT, 20900
https://www.arduino.cc/
Responsible Person in the EU
An EU-based economic operator who ensures the product's compliance with the required regulations.
Arduino S.r.l.
Via Andrea Appiani, 25
Monza, MB, IT, 20900
Phone: +39 0113157477
Email: support@arduino.cc
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