CVAug 27, 2025

Hardware-aware vs. Hardware-agnostic Energy Estimation for SNN in Space Applications

arXiv:2508.19654v1
Originality Incremental advance
AI Analysis

This addresses the need for transparent energy evaluation methods for neural networks in resource-constrained domains like space, but it is incremental as it builds on existing comparative studies.

This work tackles the problem of accurately estimating energy efficiency for Spiking Neural Networks (SNNs) in space applications, specifically for 3-D satellite position estimation, and finds that hardware-aware analysis reveals SNNs only achieve significant energy savings over CNNs on neuromorphic hardware with high input sparsity, unlike hardware-agnostic methods that predict a consistent 50-60% advantage.

Spiking Neural Networks (SNNs), inspired by biological intelligence, have long been considered inherently energy-efficient, making them attractive for resource-constrained domains such as space applications. However, recent comparative studies with conventional Artificial Neural Networks (ANNs) have begun to question this reputation, especially for digital implementations. This work investigates SNNs for multi-output regression, specifically 3-D satellite position estimation from monocular images, and compares hardware-aware and hardware-agnostic energy estimation methods. The proposed SNN, trained using the membrane potential of the Leaky Integrate-and-Fire (LIF) neuron in the final layer, achieves comparable Mean Squared Error (MSE) to a reference Convolutional Neural Network (CNN) on a photorealistic satellite dataset. Energy analysis shows that while hardware-agnostic methods predict a consistent 50-60% energy advantage for SNNs over CNNs, hardware-aware analysis reveals that significant energy savings are realized only on neuromorphic hardware and with high input sparsity. The influence of dark pixel ratio on energy consumption is quantified, emphasizing the impact of data characteristics and hardware assumptions. These findings highlight the need for transparent evaluation methods and explicit disclosure of underlying assumptions to ensure fair comparisons of neural network energy efficiency.

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