Measurement-based Dynamical Decoupling for Fidelity Preservation on Large-scale Quantum Processors
- URL: http://arxiv.org/abs/2511.13532v1
- Date: Mon, 17 Nov 2025 16:05:49 GMT
- Title: Measurement-based Dynamical Decoupling for Fidelity Preservation on Large-scale Quantum Processors
- Authors: Jeongwoo Jae, Changwon Lee, Juzar Thingna, Yeong-Dae Kwon, Daniel K. Park,
- Abstract summary: Dynamical decoupling (DD) is a key technique for suppressing decoherence and preserving the performance of quantum algorithms.<n>We introduce a measurement-based DD protocol that determines control unitary gates from partial measurements of noisy subsystems.<n>We prove that, under local energy relaxation and dephasing noise, MDD achieves the maximum entanglement fidelity attainable by any DD scheme.
- Score: 3.5511705099857007
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Dynamical decoupling (DD) is a key technique for suppressing decoherence and preserving the performance of quantum algorithms. We introduce a measurement-based DD (MDD) protocol that determines control unitary gates from partial measurements of noisy subsystems, with measurement overhead scaling linearly with the number of subsystems. We prove that, under local energy relaxation and dephasing noise, MDD achieves the maximum entanglement fidelity attainable by any DD scheme based on bang-bang operations to first order in evolution time. On the IBM Eagle processor, MDD achieved up to a $450$-fold improvement in the success probability of a $14$-qubit quantum Fourier transform, and improved the accuracy of ground-state energy estimation for $N_2$ in the $56$-qubit sample-based quantum diagonalization compared with the standard XX-pulse DD. These results establish MDD as a scalable and effective approach for suppressing decoherence in large-scale quantum algorithms.
Related papers
- Continual Quantum Architecture Search with Tensor-Train Encoding: Theory and Applications to Signal Processing [68.35481158940401]
CL-QAS is a continual quantum architecture search framework.<n>It mitigates challenges of costly encoding amplitude and forgetting in variational quantum circuits.<n>It achieves controllable robustness expressivity, sample-efficient generalization, and smooth convergence without barren plateaus.
arXiv Detail & Related papers (2026-01-10T02:36:03Z) - Mitigating Barren plateaus in quantum denoising diffusion probabilistic models [49.90716699848553]
Quantum generative models leverage quantum superposition and entanglement to enhance learning efficiency for both classical and quantum data.<n>QuDDPM has been proposed as a promising framework for quantum generative learning.<n>We show that barren plateaus emerge in QuDDPMs due to the use of 2-design states as the input for the denoising process.<n>We introduce an improved QuDDPM that utilizes a distribution maintaining a certain distance from the Haar distribution, ensuring better trainability.
arXiv Detail & Related papers (2025-12-07T07:01:44Z) - DiffPace: Diffusion-based Plug-and-play Augmented Channel Estimation in mmWave and Terahertz Ultra-Massive MIMO Systems [42.56832361766872]
This paper introduces DiffPace, a diffusion-based plug-and-play method for channel estimation.<n>It provides high estimation precision and enhanced computational efficiency.
arXiv Detail & Related papers (2025-10-21T06:22:24Z) - Multi-Qubit Gates by Dynamical Decoupling Implemented with IBMQ and 15NV Center in Diamond [0.0]
We show a protocol for realizing fast high-fidelity multi-qubit gates, through dynamical decoupling (DD) pulse sequences applied to a central qubit coupled to target qubits.<n>This way, we are able to control the states of the target qubits by leveraging their intrinsic interaction with the central qubit.<n>This work provides a robust hardware-agnostic strategy for quantum control, which can be implemented with arbitrary systems that fit the central-target qubits description.
arXiv Detail & Related papers (2025-09-26T09:26:55Z) - Crosstalk-Robust Dynamical Decoupling for Bipartite-Topology Quantum Processors [5.764620964201464]
We introduce a protocol that modifies dynamical decoupling sequences to be robust to static $ZZ$ crosstalk.<n>We observe at least a $3times$ improvement in the fidelity decay rate via our approach when compared to non-robust DD variants.<n>We find that $ZZ$-robust sequences perform nearly equivalent to non-robust DD, affirming the reduced impact of such errors in a tunable-coupler architecture.
arXiv Detail & Related papers (2025-06-22T12:14:33Z) - Joint Transmit and Pinching Beamforming for Pinching Antenna Systems (PASS): Optimization-Based or Learning-Based? [89.05848771674773]
A novel antenna system ()-enabled downlink multi-user multiple-input single-output (MISO) framework is proposed.<n>It consists of multiple waveguides, which equip numerous low-cost antennas, named (PAs)<n>The positions of PAs can be reconfigured to both spanning large-scale path and space.
arXiv Detail & Related papers (2025-02-12T18:54:10Z) - Downlink MIMO Channel Estimation from Bits: Recoverability and Algorithm [30.586086257221382]
A major challenge lies in acquiring the downlink channel state information (CSI) at the base station (BS) from limited feedback sent by the user equipment (UE)<n>In this paper, a simple feedback framework is proposed, where a compression and Gaussian dithering-based quantization strategy is adopted at the UE side, and then a maximum likelihood estimator (MLE) is formulated at the BS side.<n>The algorithm is carefully designed to integrate a sophisticated harmonic retrieval (HR) solver as subroutine, which turns out to be the key of effectively tackling this hard MLE problem.
arXiv Detail & Related papers (2024-11-25T02:15:01Z) - Tensor-based quantum phase difference estimation for large-scale demonstration [1.46955585643264]
We develop an energy calculation algorithm leveraging quantum phase difference estimation (QPDE) scheme.<n>Alongside its efficient implementation, this algorithm reduces depolarization noise affections exponentially.<n>We demonstrate energy gap calculations for one-dimensional Hubbard models on IBM superconducting devices.
arXiv Detail & Related papers (2024-08-09T09:01:37Z) - Qudit Dynamical Decoupling on a Superconducting Quantum Processor [0.0]
We develop protocols for dynamical decoupling of qudit systems based on the Heisenberg-Weyl group.
We demonstrate single-qudit DD sequences to decouple qutrits and ququarts from system-bath-induced decoherence.
We also introduce two-qudit DD sequences designed to suppress the detrimental cross-Kerr couplings between coupled qudits.
arXiv Detail & Related papers (2024-07-05T23:37:29Z) - Empirical learning of dynamical decoupling on quantum processors [0.24578723416255752]
Dynamical decoupling (DD) is a low-overhead method for quantum error suppression.<n>We show how learning algorithms can empirically tailor DD strategies for any quantum circuit and device.
arXiv Detail & Related papers (2024-03-04T18:26:37Z) - Accelerating Diffusion Models via Early Stop of the Diffusion Process [114.48426684994179]
Denoising Diffusion Probabilistic Models (DDPMs) have achieved impressive performance on various generation tasks.
In practice DDPMs often need hundreds even thousands of denoising steps to obtain a high-quality sample.
We propose a principled acceleration strategy, referred to as Early-Stopped DDPM (ES-DDPM), for DDPMs.
arXiv Detail & Related papers (2022-05-25T06:40:09Z) - Effects of Dynamical Decoupling and Pulse-level Optimizations on IBM
Quantum Computers [0.0]
Dynamical decoupling (DD) is generally used to suppress the decoherence error.
pulse-level optimization can be improved by creating hardware-native pulse-efficient gates.
This paper implements all the popular DD sequences and evaluates their performances on IBM quantum chips.
arXiv Detail & Related papers (2022-04-04T13:37:24Z) - Preparation of excited states for nuclear dynamics on a quantum computer [117.44028458220427]
We study two different methods to prepare excited states on a quantum computer.
We benchmark these techniques on emulated and real quantum devices.
These findings show that quantum techniques designed to achieve good scaling on fault tolerant devices might also provide practical benefits on devices with limited connectivity and gate fidelity.
arXiv Detail & Related papers (2020-09-28T17:21:25Z) - Q-GADMM: Quantized Group ADMM for Communication Efficient Decentralized Machine Learning [66.18202188565922]
We propose a communication-efficient decentralized machine learning (ML) algorithm, coined QGADMM (QGADMM)<n>We develop a novel quantization method to adaptively adjust modelization levels and their probabilities, while proving the convergence of QGADMM for convex functions.
arXiv Detail & Related papers (2019-10-23T10:47:06Z)
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.