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The premise is simple: In the datacenter, AI is a software problem. At the edge, it is strictly a physics problem.
The transition from a controlled server room to a factory floor or an autonomous vehicle introduces a hostile gap that standard Industrial PCs (IPCs) cannot bridge. When you integrate a high-wattage accelerator (like an NVIDIA RTX or L4) into a sealed enclosure, you are effectively creating a thermal runaway chamber—unless you fundamentally alter the system architecture.
This brief analyzes the three specific failure modes that occur when datacenter compute meets the real world, and the architectural changes required to survive them.
The most immediate enemy is heat density. A CPU might generate 35W, but an AI inference card can easily output 75W to 250W. In a standard IPC, these components share a thermal chamber.
The Narrative of Failure:When you seal a high-TDP GPU inside a fanless box to protect it from dust, the internal air temperature rises rapidly. Without active airflow, the heat saturates the chassis faster than the external fins can dissipate it. The result is Thermal Throttling: the GPU downclocks to protect itself, destroying the real-time latency determinism required for autonomy.
The solution is not just "more fins"—it is thermal segregation. Neousys engineers decoupled the thermal zones.
In a server rack, gravity is static. In an autonomous vehicle or AGV, gravity is dynamic. A modern GPU is a dense block of copper and silicon with significant mass.
The Narrative of Failure: As a vehicle hits a bump (shock) or runs a diesel engine (vibration), that heavy GPU creates a pendulum effect on the PCIe slot. Standard retention screws cannot stop the micro-movements. Over time, this leads to Fretting Corrosion on the gold finger contacts or, in extreme cases, the card physically "backing out" of the slot, causing an instant system halt.
To counter this, the chassis must act as an exoskeleton. Neousys implemented a patented Damping Cassette Module.
The final barrier is invisible: electrical instability.
The Narrative of Failure:Deep learning inference is "bursty"; power draw spikes instantly when the model runs. If this coincides with a voltage sag on the vehicle bus (e.g., during engine cranking, where 24V can drop to 6V), the system faces a brownout. Standard power supplies interpret this as a fault and reset, corrupting the file system.
The system requires a Wide-Range DC Input (8V–48V) coupled with Intelligent Ignition Control.
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