Accelerating Quantum Emitter Characterization with Latent Neural Ordinary Differential Equations
- URL: http://arxiv.org/abs/2411.11191v1
- Date: Sun, 17 Nov 2024 22:46:31 GMT
- Title: Accelerating Quantum Emitter Characterization with Latent Neural Ordinary Differential Equations
- Authors: Andrew H. Proppe, Kin Long Kelvin Lee, Weiwei Sun, Chantalle J. Krajewska, Oliver Tye, Moungi G. Bawendi,
- Abstract summary: We show that a latent neural ordinary differential equation model can forecast a complete and noise-free PCFS experiment from a small subset of noisy correlation functions.
We demonstrate this with 10 noisy photon correlation functions that are used to extrapolate an entire de-noised interferograms of up to 200 stage positions.
Our work presents a new approach to greatly accelerate the experimental characterization of novel quantum emitter materials using deep learning.
- Score: 2.3547604247645046
- License:
- Abstract: Deep neural network models can be used to learn complex dynamics from data and reconstruct sparse or noisy signals, thereby accelerating and augmenting experimental measurements. Evaluating the quantum optical properties of solid-state single-photon emitters is a time-consuming task that typically requires interferometric photon correlation experiments, such as Photon correlation Fourier spectroscopy (PCFS) which measures time-resolved single emitter lineshapes. Here, we demonstrate a latent neural ordinary differential equation model that can forecast a complete and noise-free PCFS experiment from a small subset of noisy correlation functions. By encoding measured photon correlations into an initial value problem, the NODE can be propagated to an arbitrary number of interferometer delay times. We demonstrate this with 10 noisy photon correlation functions that are used to extrapolate an entire de-noised interferograms of up to 200 stage positions, enabling up to a 20-fold speedup in experimental acquisition time from $\sim$3 hours to 10 minutes. Our work presents a new approach to greatly accelerate the experimental characterization of novel quantum emitter materials using deep learning.
Related papers
- Measurement of ultrashort bi-photon correlation times with an integrated
two-colour broadband SU(1,1)-interferometer [0.0]
The bi-photon correlation time is a key performance identifier for many quantum spectroscopy applications.
Here, we retrieve ultrashort bi-photon correlation times of around $100,mathrmfs$ by measuring simultaneously spectral and temporal interferograms.
arXiv Detail & Related papers (2023-10-06T14:51:30Z) - High-speed photon correlation monitoring of amplified quantum noise by
chaos using deep-learning balanced homodyne detection [0.0]
Precision experimental determination of photon correlation requires massive amounts of data and extensive measurement time.
We present a technique to monitor second-order photon correlation $g(2)(0)$ of amplified quantum noise based on wideband balanced homodyne detection and deep-learning acceleration.
The quantum noise is effectively amplified by an injection of weak chaotic laser and the $g(2)(0)$ of the amplified quantum noise is measured with a real-time sample rate of 1.4 GHz.
arXiv Detail & Related papers (2023-07-06T09:11:25Z) - Digital noise spectroscopy with a quantum sensor [57.53000001488777]
We introduce and experimentally demonstrate a quantum sensing protocol to sample and reconstruct the auto-correlation of a noise process.
Walsh noise spectroscopy method exploits simple sequences of spin-flip pulses to generate a complete basis of digital filters.
We experimentally reconstruct the auto-correlation function of the effective magnetic field produced by the nuclear-spin bath on the electronic spin of a single nitrogen-vacancy center in diamond.
arXiv Detail & Related papers (2022-12-19T02:19:35Z) - On-chip quantum information processing with distinguishable photons [55.41644538483948]
Multi-photon interference is at the heart of photonic quantum technologies.
Here, we experimentally demonstrate that detection can be implemented with a temporal resolution sufficient to interfere photons detuned on the scales necessary for cavity-based integrated photon sources.
We show how time-resolved detection of non-ideal photons can be used to improve the fidelity of an entangling operation and to mitigate the reduction of computational complexity in boson sampling experiments.
arXiv Detail & Related papers (2022-10-14T18:16:49Z) - Momentum Diminishes the Effect of Spectral Bias in Physics-Informed
Neural Networks [72.09574528342732]
Physics-informed neural network (PINN) algorithms have shown promising results in solving a wide range of problems involving partial differential equations (PDEs)
They often fail to converge to desirable solutions when the target function contains high-frequency features, due to a phenomenon known as spectral bias.
In the present work, we exploit neural tangent kernels (NTKs) to investigate the training dynamics of PINNs evolving under gradient descent with momentum (SGDM)
arXiv Detail & Related papers (2022-06-29T19:03:10Z) - Distinguishability and "which pathway" information in multidimensional
interferometric spectroscopy with a single entangled photon-pair [0.0]
Photon exchange-phase and degree of distinguishability have not been widely utilized in quantum-enhanced applications.
We show that even at low degree entanglement, when a two-photon wave-function is coupled to matter, it is encoded with a reliable "which pathway?" information.
We find that quantum-light interferometry facilitates utterly different set of time-delay variables, which are unbound by uncertainty to the inverse bandwidth of the wave-packet.
arXiv Detail & Related papers (2021-07-12T07:19:58Z) - Visualizing spinon Fermi surfaces with time-dependent spectroscopy [62.997667081978825]
We propose applying time-dependent photo-emission spectroscopy, an established tool in solid state systems, in cold atom quantum simulators.
We show in exact diagonalization simulations of the one-dimensional $t-J$ model that the spinons start to populate previously unoccupied states in an effective band structure.
The dependence of the spectral function on the time after the pump pulse reveals collective interactions among spinons.
arXiv Detail & Related papers (2021-05-27T18:00:02Z) - Tunable Anderson Localization of Dark States [146.2730735143614]
We experimentally study Anderson localization in a superconducting waveguide quantum electrodynamics system.
We observe an exponential suppression of the transmission coefficient in the vicinity of its subradiant dark modes.
The experiment opens the door to the study of various localization phenomena on a new platform.
arXiv Detail & Related papers (2021-05-25T07:52:52Z) - Spectrally-resolved four-photon interference of time-frequency entangled
photons [0.0]
We analyze the behavior of phase-insensitive spectrally-resolved interferences arising from two pairs of time-frequency entangled photons.
Our analysis is a thorough exploration of what can be achieved using time-frequency entanglement and spectrally-resolved Bell-state measurements.
arXiv Detail & Related papers (2021-04-12T17:25:07Z) - Regularization by Denoising Sub-sampled Newton Method for Spectral CT
Multi-Material Decomposition [78.37855832568569]
We propose to solve a model-based maximum-a-posterior problem to reconstruct multi-materials images with application to spectral CT.
In particular, we propose to solve a regularized optimization problem based on a plug-in image-denoising function.
We show numerical and experimental results for spectral CT materials decomposition.
arXiv Detail & Related papers (2021-03-25T15:20:10Z) - General and complete description of temporal photon correlations in
cavity-enhanced spontaneous parametric down-conversion [0.0]
We present a theoretical description of the temporal correlation of a signal-idler, signal-signal and signal-signal-idler coincidences of photons generated by continuous wave pumped cavity-enhanced spontaneous parametric down-conversion.
This enables us to resolve and analyze the multi-photon correlation functions in great detail.
arXiv Detail & Related papers (2020-07-23T12:34:44Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.