24 research outputs found
Entropy production in full phase space for continuous stochastic dynamics
The total entropy production and its three constituent components are
described both as fluctuating trajectory-dependent quantities and as averaged
contributions in the context of the continuous Markovian dynamics, described by
stochastic differential equations with multiplicative noise, of systems with
both odd and even coordinates with respect to time reversal, such as dynamics
in full phase space. Two of these constituent quantities obey integral
fluctuation theorems and are thus rigorously positive in the mean by Jensen's
inequality. The third, however, is not and furthermore cannot be uniquely
associated with irreversibility arising from relaxation, nor with the breakage
of detailed balance brought about by non-equilibrium constraints. The
properties of the various contributions to total entropy production are
explored through the consideration of two examples: steady state heat
conduction due to a temperature gradient, and transitions between stationary
states of drift-diffusion on a ring, both in the context of the full phase
space dynamics of a single Brownian particle
Using nonequilibrium fluctuation theorems to understand and correct errors in equilibrium and nonequilibrium discrete Langevin dynamics simulations
Common algorithms for computationally simulating Langevin dynamics must
discretize the stochastic differential equations of motion. These resulting
finite time step integrators necessarily have several practical issues in
common: Microscopic reversibility is violated, the sampled stationary
distribution differs from the desired equilibrium distribution, and the work
accumulated in nonequilibrium simulations is not directly usable in estimators
based on nonequilibrium work theorems. Here, we show that even with a
time-independent Hamiltonian, finite time step Langevin integrators can be
thought of as a driven, nonequilibrium physical process. Once an appropriate
work-like quantity is defined -- here called the shadow work -- recently
developed nonequilibrium fluctuation theorems can be used to measure or correct
for the errors introduced by the use of finite time steps. In particular, we
demonstrate that amending estimators based on nonequilibrium work theorems to
include this shadow work removes the time step dependent error from estimates
of free energies. We also quantify, for the first time, the magnitude of
deviations between the sampled stationary distribution and the desired
equilibrium distribution for equilibrium Langevin simulations of solvated
systems of varying size. While these deviations can be large, they can be
eliminated altogether by Metropolization or greatly diminished by small
reductions in the time step. Through this connection with driven processes,
further developments in nonequilibrium fluctuation theorems can provide
additional analytical tools for dealing with errors in finite time step
integrators.Comment: 11 pages, 4 figure
A thermodynamically consistent model of finite state machines
Finite state machines (FSMs) are a theoretically and practically important model of computation. We propose a general, thermodynamically consistent model of FSMs and characterise the resource requirements of these machines. We model FSMs as time-inhomogeneous Markov chains. The computation is driven by instantaneous manipulations of the energy levels of the states. We calculate the entropy production of the machine, its error probability, and the time required to complete one update step. We find that a sequence of generalised bit-setting operations is sufficient to implement any FSM
Information ratchets exploiting spatially structured information reservoirs
Fully mechanized Maxwell's demons, also called information ratchets, are an important conceptual link between computation, information theory, and statistical physics. They exploit low-entropy information reservoirs to extract work from a heat reservoir. Previous models of such demons have either ignored the cost of delivering bits to the demon from the information reservoir or assumed random access or infinite-dimensional information reservoirs to avoid such an issue. In this work we account for this cost when exploiting information reservoirs with physical structure and show that the dimensionality of the reservoir has a significant impact on the performance and phase diagram of the demon. We find that for conventional one-dimensional tapes the scope for work extraction is greatly reduced. An expression for the net-extracted work by demons exploring information reservoirs by means of biased random walks on d-dimensional, , information reservoirs is presented. Furthermore, we derive exact probabilities of recurrence in these systems, generalizing previously known results. We find that the demon is characterized by two critical dimensions. First, to extract work at zero bias the dimensionality of the information reservoir must be larger than d=2, corresponding to the dimensions where a simple random walker is transient. Second, for integer dimensions d>4 the unbiased random walk optimizes work extraction corresponding to the dimensions where a simple random walker is strongly transient
Entropy production from stochastic dynamics in discrete full phase space
The stochastic entropy generated during the evolution of a system interacting
with an environment may be separated into three components, but only two of
these have a non-negative mean. The third component of entropy production is
associated with the relaxation of the system probability distribution towards a
stationary state and with nonequilibrium constraints within the dynamics that
break detailed balance. It exists when at least some of the coordinates of the
system phase space change sign under time reversal, and when the stationary
state is asymmetric in these coordinates. We illustrate the various components
of entropy production, both in detail for particular trajectories and in the
mean, using simple systems defined on a discrete phase space of spatial and
velocity coordinates. These models capture features of the drift and diffusion
of a particle in a physical system, including the processes of injection and
removal and the effect of a temperature gradient. The examples demonstrate how
entropy production in stochastic thermodynamics depends on the detail that is
included in a model of the dynamics of a process. Entropy production from such
a perspective is a measure of the failure of such models to meet Loschmidt's
expectation of dynamic reversibility