Affiliation:
1. Aerospace Information Research Institute, Chinese Academy of Sciences, Beijing, China
2. Aerospace Information Research Institute, Chinese Academy of Sciences, Beijing
Abstract
Abstract
Reservoir computing (RC) is a bio-inspired neural network structure which can be implemented in hardware with ease. It has been applied across various fields such as memristors, and electrochemical reactions, among which the micro-electro-mechanical systems (MEMS) is supposed to be the closest to integrate sensing and computing. This paper introduces a novel MEMS reservoir computing system based on stiffness modulation, where natural signals directly influence the system stiffness as input. Under this innovative concept, information can be processed locally without the need for advanced data collection and pre-processing. We present an integrated RC system characterized by small volume and low power consumption, eliminating complicated setups in traditional MEMS RC for data discretization and transduction. We performed nonlinearity tuning for the resonator and optimized the post-processing algorithm by introducing a digital mask operator. Consequently, our MEMS RC is capable of both classification and forecasting, surpassing the capabilities of our previous non-delay-based architecture. The system successfully processed word classification and chaos forecasting with high accuracy, demonstrating its adaptability for multi-scene data processing. Our approach has initiated edge computing, enabling emergent applications in MEMS for local computations.
Publisher
Research Square Platform LLC