SPIKE-Dx : A Low-Power High-Throughput Fault Diagnostics Tool using Spiking Neural Networks for Constrained SystemsDiagnostic systems are important for many aerospace systems, which are severely limited in available power, like cubesats or UAVs. Therefore, traditional diagnostics systems cannot be used due to their substantial footprint and constraints. In this paper, we present our very low power diagnostic tool SPIKE-DX to monitor critical systems with constrained computational and energy resources. This is made possible through spiking neural networks (SNNs), which are executable within optimized simulation environments and further implemented on on cutting-edge neuromorphic hardware.
Based upon FMEA (Failure Mode and Effect Analysis) framework, Diagnostic Bayesian Networks (DBNs) can be constructed that provide powerful means for diagnostic reasoning. In this paper, we describe such DBNs and a method to automatically translate the DBN into highly structured networks of spiking neurons for execution in SPIKE-DX.
Document ID
20240012273
Acquisition Source
Ames Research Center
Document Type
Conference Paper
Authors
Chetan Kulkarni (Wyle (United States) El Segundo, California, United States)
Johann Schumann (KBR (United States) Houston, Texas, United States)
Anupa Bajwa (Ames Research Center Mountain View, United States)
Date Acquired
September 24, 2024
Subject Category
Mathematical and Computer Sciences (General)
Meeting Information
Meeting: 16th Annual Conference of the Prognostics and Health Management Society
Location: Nashville, TN
Country: US
Start Date: November 10, 2024
End Date: November 15, 2024
Sponsors: Prognostics and Health Management Society