BLK-POL-0001

BlackIoT
392-BLK-POL-0001
BLK-POL-0001

Mfr.:

Description:
Multiple Function Sensor Development Tools A mikroBUS compatible board equipped with BMV080 PM2.5 and BME690 gas sensor. It is powered by Espressif ESP32-S3-Mini-1 dual core microcontroller.

Lifecycle:
New Product:
New from this manufacturer.

In Stock: 199

Stock:
199 Can Dispatch Immediately
Factory Lead Time:
12 Weeks Estimated factory production time for quantities greater than shown.
Minimum: 1   Multiples: 1
Unit Price:
£-.--
Ext. Price:
£-.--
Est. Tariff:
This Product Ships FREE

Pricing (GBP)

Qty. Unit Price
Ext. Price
£46.85 £46.85

Product Attribute Attribute Value Select Attribute
BlackIoT
Product Category: Multiple Function Sensor Development Tools
RoHS:  
Add-On Boards
Humidity, Particulate Matter, Pressure, Temperature Sensor
BME690, BMV080
Bulk
Brand: BlackIoT
Dimensions: 28.6 mm x 25.4 mm
Interface Type: GPIO, I2C, JTAG, PWM, SPI, UART, USB
Product Type: Multiple Function Sensor Development Tools
Series: Polverine
Factory Pack Quantity: 1
Subcategory: Development Tools
Tradename: Polverine
Unit Weight: 100 g
Products found:
To show similar products, select at least one checkbox
Select at least one checkbox above to show similar products in this category.
Attributes selected: 0

USHTS:
9027102000
ECCN:
EAR99

Polverine mikroBUS™ Board

BlackIoT Polverine mikroBUS™ Board is a compatible board equipped with Bosch Sensortec’s BMV080 PM2.5 sensor and BME690 gas sensor. This add-on board can be programmed with Arduino, Eclipse, or PlatformIO/Visual Studio IDEs, enabling rapid application development. The Polverine features a high-performance ESP32-S3-MINI-1 microcontroller, which offers dual-core processing, Wi-Fi® (802.11 b/g/n), and BLUETOOTH® 5 (LE). This board is complemented with demo firmware for rapid sensor evaluation. The Polverine mikroBUS™ board (BLK-POL-0001) is designed for efficient edge processing in IoT applications. This board is ideal for environmental monitoring, smart homes and buildings, HVAC systems, industrial monitoring, wearables, health and wellness monitoring, and anomaly detection.