Arrow Development ToolsBEMICROMAX10Programmierbare-Logik-Entwicklungsplatinen und -kits
Evaluation kit for the Intel MAX10M08DAF484C8G FPGA with a program size of 32-KB, 8-MB RAM, 250 GPIO, USB, and built-in 50-MHz crystal oscillator
The BRMICROMAX10 is an evaluation kit for the MAX10M08DAF484C8G FPGA developed by Intel. The FPGA has 8,000 logic elements, 414 Kbits of memory with 256-Kbit flash memory. The FPGA also integrates two PLLs, 24 18 × 18 multipliers, one ADC block, 17 analog inputs, and 250 GPIO. The evaluation board has 8-MB SDRAM, an ADXL362 three-axis accelerometer, an AD5681 12-bit DAC, a temperature sensor (ADT7420), a thermal resistor, and a photo resistor. Various I/O is included on the board with eight general-purpose LEDs and two pushbuttons, while multiple connectors provide access to the GPIO.
Drawings/Package
Key Features
- MAX10M08DAF484C8G FPGA
- 250 GPIO
- Three-axis accelerometer
- 12-bit DAC
- Eight user LEDs and two pushbuttons
- Various I/O connectors
General Applications
- FPGA evaluations
- Prototyping custom hardware
- FPGA development
| Supplier Unconfirmed | |
| EAR99 | |
| Unconfirmed | |
| 8473.30.11.80 | |
| Automotive | Unknown |
| PPAP | Unknown |
| Evaluation Kit | |
| 10M08DAF484C8G | |
| FPGA | |
| 32KB | |
| Flash | |
| Flash | |
| 8MB | |
| 1 | |
| No | |
| 250 | |
| 1 | |
| No | |
| 2 | |
| 8 | |
| Quartus II |
Entwicklungskit-Beschreibung
BeMicro MAX 10 adopts non-volatile MAX 10 FPGA built on 55-nm flash process. The kit retains the 80-pin edge connector interface used on previous BeMicro kits. Users can migrate their designs from BeMicro SDK or BeMicro CV easily and take advantages of the new features offered in the MAX 10 device, such as an ADC block, temperature sense diode and flash memory.
BeMicro MAX 10 includes a variety of peripherals such as 8MB SDRAM, accelerometer, digital-to-analog converter (DAC), temperature sensor, thermal resistor, photo resistor, LEDs, pushbuttons and several different options for expansion connectivity.
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