Parameters |
Factory Lead Time |
1 Week |
Package / Case |
900-BBGA, FCBGA |
Operating Temperature |
0°C~100°C TJ |
Packaging |
Tray |
Published |
2016 |
Series |
Zynq® UltraScale+™ MPSoC EG |
Pbfree Code |
yes |
Part Status |
Active |
Moisture Sensitivity Level (MSL) |
4 (72 Hours) |
HTS Code |
8542.31.00.01 |
Peak Reflow Temperature (Cel) |
NOT SPECIFIED |
Time@Peak Reflow Temperature-Max (s) |
NOT SPECIFIED |
Number of I/O |
204 |
Speed |
533MHz, 600MHz, 1.3GHz |
RAM Size |
256KB |
Core Processor |
Quad ARM® Cortex®-A53 MPCore™ with CoreSight™, Dual ARM®Cortex™-R5 with CoreSight™, ARM Mali™-400 MP2 |
Peripherals |
DMA, WDT |
Connectivity |
CANbus, EBI/EMI, Ethernet, I2C, MMC/SD/SDIO, SPI, UART/USART, USB OTG |
Architecture |
MCU, FPGA |
Primary Attributes |
Zynq®UltraScale+™ FPGA, 192K+ Logic Cells |
RoHS Status |
ROHS3 Compliant |
This SoC is built on Quad ARM? Cortex?-A53 MPCore? with CoreSight?, Dual ARM?Cortex?-R5 with CoreSight?, ARM Mali?-400 MP2 core processor(s).
A core processor Quad ARM? Cortex?-A53 MPCore? with CoreSight?, Dual ARM?Cortex?-R5 with CoreSight?, ARM Mali?-400 MP2 is used to build this SoC.Its package is 900-BBGA, FCBGA.A SoC chip with 256KB RAM is provided for users to enjoy reliable performance.Internally, this SoC design uses the MCU, FPGA technique.Zynq? UltraScale+? MPSoC EG is the series number of this system on chip SoC.This SoC meaning should have an average operating temperature of 0°C~100°C TJ when it is operating normally.In addition, this SoC security combines Zynq?UltraScale+? FPGA, 192K+ Logic Cells.This SoC system on a chip has been designed in a state-of-the-art Tray package.204 I/Os in total are included in this SoC part.
Quad ARM? Cortex?-A53 MPCore? with CoreSight?, Dual ARM?Cortex?-R5 with CoreSight?, ARM Mali?-400 MP2 processor.
256KB RAM.
Built on MCU, FPGA.
There are a lot of Xilinx Inc.
XCZU4EG-2FBVB900E System On Chip (SoC) applications.
- Functional safety for critical applications in the automotive
- String inverter
- Industrial sectors
- Mobile market
- Industrial
- Efficient hardware for training of neural networks
- Medical Pressure
- Flow Sensors
- Body control module
- Networked sensors