Model-Based Qubit Noise Spectroscopy
- URL: http://arxiv.org/abs/2405.11898v2
- Date: Wed, 22 May 2024 23:33:38 GMT
- Title: Model-Based Qubit Noise Spectroscopy
- Authors: Kevin Schultz, Christopher A. Watson, Andrew J. Murphy, Timothy M. Sweeney, Gregory Quiroz,
- Abstract summary: We derive model-based QNS approaches using inspiration from classical signal processing.
We show, through both simulation and experimental data, how these model-based QNS approaches maintain the statistical and computational benefits of their classical counterparts.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Qubit noise spectroscopy (QNS) is a valuable tool for both the characterization of a qubit's environment and as a precursor to more effective qubit control to improve qubit fidelities. Existing approaches to QNS are what the classical spectrum estimation literature would call "non-parametric" approaches, in that a series of probe sequences are used to estimate noise power at a set of points or bands. In contrast, model-based approaches to spectrum estimation assume additional structure in the form of the spectrum and leverage this for improved statistical accuracy or other capabilities, such as superresolution. Here, we derive model-based QNS approaches using inspiration from classical signal processing, primarily though the recently developed Schrodinger wave autoregressive moving-average (SchWARMA) formalism for modeling correlated noise. We show, through both simulation and experimental data, how these model-based QNS approaches maintain the statistical and computational benefits of their classical counterparts, resulting in powerful new estimation approaches. Beyond the direct application of these approaches to QNS and quantum sensing, we anticipate that the flexibility of the underlying models will find utility in adaptive feedback control for quantum systems, in analogy with their role in classical adaptive signal processing and control.
Related papers
- A Novel Noise-Aware Classical Optimizer for Variational Quantum Algorithms [1.4770642357768933]
A key component of variational quantum algorithms (VQAs) is the choice of classical solvers employed to update the parameterization of an ansatz.
It is well recognized that quantum algorithms will, for the foreseeable future, necessarily be run on noisy devices with limited fidelities.
We introduce the key defining characteristics of novel noise-aware derivative-free model-based methods that separate them from standard model-based methods.
arXiv Detail & Related papers (2024-01-18T16:51:02Z) - Domain Generalization Guided by Gradient Signal to Noise Ratio of
Parameters [69.24377241408851]
Overfitting to the source domain is a common issue in gradient-based training of deep neural networks.
We propose to base the selection on gradient-signal-to-noise ratio (GSNR) of network's parameters.
arXiv Detail & Related papers (2023-10-11T10:21:34Z) - An Optimization-based Deep Equilibrium Model for Hyperspectral Image
Deconvolution with Convergence Guarantees [71.57324258813675]
We propose a novel methodology for addressing the hyperspectral image deconvolution problem.
A new optimization problem is formulated, leveraging a learnable regularizer in the form of a neural network.
The derived iterative solver is then expressed as a fixed-point calculation problem within the Deep Equilibrium framework.
arXiv Detail & Related papers (2023-06-10T08:25:16Z) - Capturing dynamical correlations using implicit neural representations [85.66456606776552]
We develop an artificial intelligence framework which combines a neural network trained to mimic simulated data from a model Hamiltonian with automatic differentiation to recover unknown parameters from experimental data.
In doing so, we illustrate the ability to build and train a differentiable model only once, which then can be applied in real-time to multi-dimensional scattering data.
arXiv Detail & Related papers (2023-04-08T07:55:36Z) - Resource-efficient digital characterization and control of classical
non-Gaussian noise [0.0]
We show the usefulness of frame-based characterization and control [PRX Quantum 2, 030315 (2021)] for non-Markovian open quantum systems subject to classical non-Gaussian dephasing.
arXiv Detail & Related papers (2023-04-07T17:05:03Z) - Bayesian NVH metamodels to assess interior cabin noise using measurement
databases [0.0]
This research work proposes a global NVH metamodeling technique for broadband noises such as aerodynamic and rolling noises.
Generalized additive models (GAMs) with bootstraps and Gaussian basis functions are used to model the dependency of sound pressure level (SPL) on predictor variables.
Probabilistic modelling is carried out using an open-source library PyMC3.
arXiv Detail & Related papers (2022-06-12T19:48:24Z) - Investigation of Different Calibration Methods for Deep Speaker
Embedding based Verification Systems [66.61691401921296]
This paper presents an investigation over several methods of score calibration for deep speaker embedding extractors.
An additional focus of this research is to estimate the impact of score normalization on the calibration performance of the system.
arXiv Detail & Related papers (2022-03-28T21:22:22Z) - Quantum algorithms for quantum dynamics: A performance study on the
spin-boson model [68.8204255655161]
Quantum algorithms for quantum dynamics simulations are traditionally based on implementing a Trotter-approximation of the time-evolution operator.
variational quantum algorithms have become an indispensable alternative, enabling small-scale simulations on present-day hardware.
We show that, despite providing a clear reduction of quantum gate cost, the variational method in its current implementation is unlikely to lead to a quantum advantage.
arXiv Detail & Related papers (2021-08-09T18:00:05Z) - Leveraging Global Parameters for Flow-based Neural Posterior Estimation [90.21090932619695]
Inferring the parameters of a model based on experimental observations is central to the scientific method.
A particularly challenging setting is when the model is strongly indeterminate, i.e., when distinct sets of parameters yield identical observations.
We present a method for cracking such indeterminacy by exploiting additional information conveyed by an auxiliary set of observations sharing global parameters.
arXiv Detail & Related papers (2021-02-12T12:23:13Z) - Anomaly detection with variational quantum generative adversarial
networks [0.0]
Generative adversarial networks (GANs) are a machine learning framework comprising a generative model for sampling from a target distribution.
We introduce variational quantum-classical Wasserstein GANs to address these issues and embed this model in a classical machine learning framework for anomaly detection.
Our model replaces the generator of Wasserstein GANs with a hybrid quantum-classical neural net and leaves the classical discriminative model unchanged.
arXiv Detail & Related papers (2020-10-20T17:48:04Z) - Accurate Parameter Estimation for Risk-aware Autonomous Systems [0.0]
This paper addresses the use of a spectral lines-based approach for estimating parameters of the dynamic model of an autonomous system.
Existing literature has treated all unmodeled components of the dynamic system as sub-Gaussian noise.
We show that the proposed approach can ensure a $tildeO(sqrtT)$ regret, matching existing literature.
arXiv Detail & Related papers (2020-06-23T01:20:44Z)
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.