Over-the-Air Multi-Sensor Inference with Neural Networks Using Memristor-Based Analog Computing
Busra Tegin, Muhammad Atif Ali, Tolga M Duman

TL;DR
This paper introduces an energy-efficient multi-sensor wireless inference system using memristor-based analog computing and $L_p$-norm inspired sensor fusion, enabling real-time, low-power neural network inference in sensor networks.
Contribution
It proposes a novel over-the-air inference framework combining memristor-based analog computing with adaptive $L_p$-norm sensor fusion for energy-efficient wireless neural network applications.
Findings
Reduced energy consumption through memristor-based in-memory computing.
Enhanced sensor fusion adaptability with trainable $L_p$-norm inspired method.
Maintained high inference accuracy with minimal performance loss.
Abstract
Deep neural networks provide reliable solutions for many classification and regression tasks; however, their application in real-time wireless systems with simple sensor networks is limited due to high energy consumption and significant bandwidth needs. This study proposes a multi-sensor wireless inference system with memristor-based analog computing. Given the sensors' limited computational capabilities, the features from the network's front end are transmitted to a central device where an -norm inspired approximation of the maximum operation is employed to achieve transformation-invariant features, enabling efficient over-the-air transmission. We also introduce a trainable over-the-air sensor fusion method based on -norm inspired combining function that customizes sensor fusion to match the network and sensor distribution characteristics, enhancing adaptability. To address…
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Taxonomy
TopicsAdvanced Memory and Neural Computing · Neural Networks and Applications · Neural Networks and Reservoir Computing
