Control of Stochastic Quantum Dynamics with Differentiable Programming
- URL: http://arxiv.org/abs/2101.01190v1
- Date: Mon, 4 Jan 2021 19:00:03 GMT
- Title: Control of Stochastic Quantum Dynamics with Differentiable Programming
- Authors: Frank Sch\"afer, Pavel Sekatski, Martin Koppenh\"ofer, Christoph
Bruder, Michal Kloc
- Abstract summary: We propose a framework for the automated design of control schemes based on differentiable programming.
We apply this approach to state preparation and stabilization of a qubit subjected to homodyne detection.
Despite the resulting poor signal-to-noise ratio, we can train our controller to prepare and stabilize the qubit to a target state with a mean fidelity around 85%.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Controlling stochastic dynamics of a quantum system is an indispensable task
in fields such as quantum information processing and metrology. Yet, there is
no general ready-made approach to design efficient control strategies. Here, we
propose a framework for the automated design of control schemes based on
differentiable programming ($\partial \mathrm{P}$). We apply this approach to
state preparation and stabilization of a qubit subjected to homodyne detection.
To this end, we formulate the control task as an optimization problem where the
loss function quantifies the distance from the target state and we employ
neural networks (NNs) as controllers. The system's time evolution is governed
by a stochastic differential equation (SDE). To implement efficient training,
we backpropagate the gradient information from the loss function through the
SDE solver using adjoint sensitivity methods. As a first example, we feed the
quantum state to the controller and focus on different methods to obtain
gradients. As a second example, we directly feed the homodyne detection signal
to the controller. The instantaneous value of the homodyne current contains
only very limited information on the actual state of the system, covered in
unavoidable photon-number fluctuations. Despite the resulting poor
signal-to-noise ratio, we can train our controller to prepare and stabilize the
qubit to a target state with a mean fidelity around 85%. We also compare the
solutions found by the NN to a hand-crafted control strategy.
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