Software House GSTAR-GCM cyber-hardened network door controller
Technical Specification
- Make: Software House
- Model code: GSTAR-GCM
- Series: iSTAR Ultra G2
- Controller Type: Networkable
- No of Cardholders: 1,000,000
GCM board Controls up to four ACMs (Access Control Modules) Trusted Execution Environment (TEE) provides advanced hardware-based cybersecurity protection Hardened Linux embedded OS for improved security and scalability Up to 1M cardholders in local memory Dual GigE network ports with IPv6, DHCP and 802.1X support Embedded lock power management lowers installation costs Advanced controller-to-controller communications for cluster-based antipassback and I/O logic Onboard 256-bit AES network encryption Supports OSDP Secure Channel for encrypted reader communications Supports Embedded High Assurance FICAM operation without third-party hardware
Read moreMake | Software House |
---|---|
Manufacturer | Software House |
Category | Access Control>Access control controllers |
Model code | GSTAR-GCM |
Series | iSTAR Ultra G2 |
Controller Type | Networkable |
No of Cardholders | 1,000,000 |
Offline Capabilities | Yes |
Networkable | Yes |
Communication Type | Eight RS-485 ports, four full duplex and four half duplex |
Universal / Wiegand Reader Interface | Yes |
Electrical Specifications | Voltage: 12 V DC / 24 V DC |
Physical Specifications | Dimensions mm: 155 x 266 x 27 |
Environmental Specifications |
Operating Temp oC: 0 ~ 50 C (32 ~ 122 F) Operating Humidity %: 5 ~ 95 |
Additional info |
|
Download PDF version Download PDF version |
You might be interested in these products
Related Whitepapers
The critical importance of Trusted Execution Environment in access control
Cybersecurity in keyless access management
Three essential reasons to upgrade your access control technology in 2022
Honeywell GARD USB threat report 2024
DownloadThe role of artificial intelligence to transform video imaging
DownloadAccess control system planning phase 1
DownloadKey Findings from the 2024 Thales Cloud Security Study
DownloadFacial recognition
Download