posted on 2024-01-31, 05:10authored byWerner
M. J. van Weerdenburg, Hermann Osterhage, Ruben Christianen, Kira Junghans, Eduardo Domínguez, Hilbert J. Kappen, Alexander Ako Khajetoorians
Stochastically fluctuating
multiwell systems are a promising route
toward physical implementations of energy-based machine learning and
neuromorphic hardware. One of the challenges is finding tunable material
platforms that exhibit such multiwell behavior and understanding how
complex dynamic input signals influence their stochastic response.
One such platform is the recently discovered atomic Boltzmann machine,
where each stochastic unit is represented by a binary orbital memory
state of an individual atom. Here, we investigate the stochastic response
of binary orbital memory states to sinusoidal input voltages. Using
scanning tunneling microscopy, we investigated orbital memory derived
from individual Fe and Co atoms on black phosphorus. We quantify the
state residence times as a function of various input parameters such
as frequency, amplitude, and offset voltage. The state residence times
for both species, when driven by a sinusoidal signal, exhibit synchronization
that can be quantitatively modeled by a Poisson process based on the
switching rates in the absence of a sinusoidal signal. For individual
Fe atoms, we also observe a frequency-dependent response of the state
favorability, which can be tuned by the input parameters. In contrast
to Fe, there is no significant frequency dependence in the state favorability
for individual Co atoms. Based on the Poisson model, the difference
in the response of the state favorability can be traced to the difference
in the voltage-dependent switching rates of the two different species.
This platform provides a tunable way to induce population changes
in stochastic systems and provides a foundation toward understanding
driven stochastic multiwell systems.