

Silicon Labs
EFM32GG840F512-QFN64T
Why Choose Us?
Professional Platform
B2B & B2C purchasingDelivery at full speed
1-2 days deliveryWide variety
Original manufacturers365 days guarantee
Responsible qualityTech Specifications
EFM32GG840F512-QFN64T Description
EFM32GG840F512-QFN64T is a microcontroller unit (MCU) from Silicon Labs' EFM32 Giant Gecko with Gesture Control (GG) series. It is a high-performance, low-power MCU designed for a wide range of applications, including industrial control, medical devices, and smart home appliances.
Description:
The EFM32GG840F512-QFN64T is a 32-bit ARM Cortex-M3 processor-based MCU that operates at a maximum frequency of 48 MHz. It is available in a 64-pin Quad Flat No-Lead (QFN) package. The MCU features 512 KB of flash memory, 160 KB of RAM, and a variety of communication interfaces, including USB, UART, SPI, and I2C.
Features:
- ARM Cortex-M3 processor with DSP instructions and FPU
- 512 KB Flash memory
- 160 KB RAM
- Core Coupled Memory (CCM) for high-speed data access
- Peripheral Reflex System (PRS) for fast, low-overhead communication between peripherals
- Low-energy modes for extended battery life in portable devices
- Integrated 10-bit ADC with 2.5 million samples per second (MSPS) capability
- Integrated 12-bit DAC
- High-resolution PWM with dead-time control
- USB 2.0 high-speed device interface
- UART, SPI, and I2C communication interfaces
- Gesture control sensor
- CapTouch™ capacitive touch sensing
- AES-128/256 encryption
- True Random Number Generator (TRNG)
Applications:
- Industrial control systems
- Medical devices and equipment
- Smart home appliances and IoT devices
- Energy management and smart grid systems
- Lighting control systems
- HVAC control systems
- Robotics and automation
- Wearable devices
- Touch-based user interfaces
- Battery-powered devices requiring low power consumption
The EFM32GG840F512-QFN64T is a versatile and powerful MCU that offers a wide range of features and capabilities, making it suitable for various applications requiring high performance, low power consumption, and advanced sensing capabilities.



.png)








.png?x-oss-process=image/format,webp/resize,h_32)










