Lorentzian Switching Dynamics in HZO-based FeMEMS Synapses for Neuromorphic Weight Storage
This work provides a novel synaptic device for neuromorphic computing that overcomes endurance and reliability issues of conventional ferroelectric synapses by using mechanical readout.
The authors demonstrate a ferroelectric MEMS synapse using HZO that stores analog weights in the piezoelectric coefficient, achieving over 7-bit programming levels with non-destructive readout and no read-disturb. The switching dynamics follow a Lorentzian distribution and Merz-type law, enabling high-precision neuromorphic weight storage.
Neuromorphic computing demands synaptic elements that can store and update weights with high precision while being read non-destructively. Conventional ferroelectric synapses store weights in remnant polarization states and might require destructive electrical readout, limiting endurance and reliability. We demonstrate a ferroelectric MEMS (FeMEMS) based synapse in which analog weights are stored in the piezoelectric coefficient $d_{31,eff}$ of a released Hf$_{0.5}$Zr$_{0.5}$O$_2$ (HZO) MEMS unimorph. Partial switching of ferroelectric domains modulates $d_{31,eff}$, and a low-amplitude mechanical drive reads out the weight without read-disturb in the device yielding more than 7-bit of programming levels. The mechanical switching distribution function follows a Lorentzian distribution as a logarithmic function of partial poling voltage ($V_p$) consistent with nucleation-limited switching (NLS), and the median threshold extracted from electromechanical data obeys a Merz-type field-time law with a dimensionless exponent $α= 3.62$. These relationships establish a quantitative link between mechanical weights and electrical switching kinetics. This mechanically read synapse avoids depolarization and charge-injection effects, provides bipolar weights (well suited for excitatory and inhibitory synapses), directly reveals partial domain populations, and offers a robust, energy-efficient route toward high-bit neuromorphic hardware.