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ORIGINAL RESEARCH article

Front. Quantum Sci. Technol., 25 October 2022
Sec. Quantum Engineering

Experimental validation of the Kibble-Zurek mechanism on a digital quantum computer

  • 1Departamento de Física, Universidad de los Andes, Bogotá, Colombia
  • 2Instituto de Física Fundamental IFF-CSIC, Madrid, Spain

The Kibble-Zurek mechanism (KZM) captures the essential physics of nonequilibrium quantum phase transitions with symmetry breaking. KZM predicts a universal scaling power law for the defect density which is fully determined by the system’s critical exponents at equilibrium and the quenching rate. We experimentally tested the KZM for the simplest quantum case, a single qubit under the Landau-Zener evolution, on an open access IBM quantum computer (IBM-Q). We find that for this simple one-qubit model, experimental data validates the central KZM assumption of the adiabatic-impulse approximation for a well isolated qubit. Furthermore, we report on extensive IBM-Q experiments on individual qubits embedded in different circuit environments and topologies, separately elucidating the role of crosstalk between qubits and the increasing decoherence effects associated with the quantum circuit depth on the KZM predictions. Our results strongly suggest that increasing circuit depth acts as a decoherence source, producing a rapid deviation of experimental data from theoretical unitary predictions.

Characterizing the non-equilibrium dynamics in noisy intermediate-scale quantum (NISQ) devices plays an important role in developing both hardware and architecture designs in the search for scalable quantum computers. NISQ devices have recently attracted tremendous interest, resulting in rapid progress in fundamental studies of novel hardware and architecture together with promising potential for quantum computing (Preskill, 2018; Bharti et al., 2022). For example, advancements in NISQ devices demonstrate a “quantum advantage” in solving sampling problems (Arute et al., 2019; Zhong et al., 2020; Mooney et al., 2021). To further improve quantum advantage, it is desirable that devices show important features such as high-fidelity gates, qubits with long coherence times, control of state preparation and measurement. (Flammia and Liu, 2011; da Silva et al., 2011; Proctor et al., 2019). Open-access/online NISQ devices have recently become readily available, such as those provided publicly by the IBM Quantum Experience platform (IBM-Corporation, 2022), showing a significant improvement in the last few years. Despite suffering from noise and scalability limitations, this platform offers a unique possibility to experiment with actual few qubit quantum devices in order to carry out a rigorous study of dynamical quantum properties in different settings along the real time-dynamics of quantum hardware. A key feature of merit in the current NISQ regime is the ability to simulate non-equilibrium quantum dynamics. The Kibble-Zurek mechanism (KZM) (Kibble, 1976; Kibble, 1980; Zurek, 1985; Zurek, 1993) is a prominent paradigm to unravel signatures of universal dynamics in the scenario of a finite-rate spontaneous symmetry breaking. The KZM predicts the production of topological defects (kinks, vortices, strings) or in general, non-equilibrium excitations (in both short- and large-ranged interacting systems) in the course of either quantum (Dziarmaga, 2005; Zurek et al., 2005; Acevedo et al., 2014) or classical (Kibble, 1980; Zurek, 1985) phase transitions. The key result of KZM is concerned with the fact that the mean value of density of topological defects scales as a power law of the quench rate. Furthermore, new evidence of scaling in the high-order cumulants has also been recently shown (Del Campo, 2018; Gómez-Ruiz et al., 2020). These theoretical predictions have been observed in various experimental platforms such as Bose Gas (Goo et al., 2021), trapped ions (Cui et al., 2020), quantum annealer (Bando et al., 2020; King et al., 2022), Bose-Einstein Condensate (Damski and Zurek, 2007; Anquez et al., 2016) and Rydberg atoms (Keesling et al., 2019).

Damski et al. (Damski, 2005; Damski and Zurek, 2006; Cucchietti et al., 2007) established a close relationship between second order quantum phase transitions and avoided level crossing evolutions, thus establishing the Landau-Zener (LZ) model itself as the simplest paradigmatic scenario for probing KZM (Landau, 1932a; Landau, 1932b; Majorana, 1932; Stückelberg, 1932; Zener and Fowler, 1932). The density of topological defects can be expressed as a transition probability for a two-level system. Therefore, this relationship can be tested in generic single qubit platforms. This relationship has been probed by using optical interferometry (Xu et al., 2014), superconducting qubits (Wang et al., 2014; Gong et al., 2016) and trapped ion systems (Cui et al., 2016).

IBM-Q currently grants access up to 5-qubit quantum machines based on superconducting transmon qubits which are controllable using Qiskit, an open-source software development kit (Aleksandrowicz et al., 2019; Andersson et al., 2020). These machines have been successfully utilized in simulating spin models (Cervera-Lierta, 2018; Rodriguez-Vega et al., 2022), topological fermionic models (Koh et al., 2022), quantum entanglement (Choo et al., 2018; Wang et al., 2018; Cruz et al., 2019; Mooney et al., 2019; Pozzobom and Maziero, 2019), far-from-equilibrium dynamics (Zhukov et al., 2018), non-equilibrium quantum thermodynamics (Gherardini et al., 2021; Solfanelli et al., 2021), open-quantum systems (García-Pérez et al., 2020), among others. One of the future advantages of IBM-Q is the possibility to do simulation of quantum systems beyond the maximum limits of classical computer over a wide range of parameters. In this work, we test the KZM adiabatic-impulse assumption on the simplest, but important case of a single qubit (LZ model), through experiments on the Qiskit (Andersson et al., 2020) simulator and real quantum hardware, establishing the limits required to obtain accurate results in each case. We successfully reproduced the LZ dynamics under a discrete time evolution in current IBM quantum devices which can provide information about dynamics state evolution given that error mitigation procedures were implemented. Additionally, noticeable effects of decoherence are observed and explained by a simple phenomenological model of relaxation and dephasing for open quantum systems. Furthermore, analysis and estimation of the experimental asymptotic probability allows us to verify the universal KZM in a timescale appropriate for an almost closed system under an adiabatic quench regime. In summary, the key achievement of this work has been the validation of a central premise of KZM through a protocol to characterize and obtain an effective time-dependent dynamics on IBM realistic quantum computers. For reaching such goal we performed LZ evolution under different annealing times, maintaining a fixed number of total gates, a basic benchmark procedure on quantum critical phenomena in near term quantum computers.

This paper is organized as follows. A brief review on KZM, the LZ model and its close connection with KZM are presented in Sect. 1. In Sect. 2 we present the experimental platform. The contrast between theoretical predictions and experimental results is collected in Sect. 3. Finally, we summarize the main conclusions in Sect. 4.

1 Theoretical background

1.1 Brief review of the Kibble-Zurek Mechanism

The KZM describes the dynamics of a system across a continuous symmetry breaking second-order phase transition induced by the change of a control parameter λ. When the system is driven through the critical point λc, both the correlation length ξ and reaction time τ diverge as

ξ=ξ0ϵν,τ=τ0ϵzν.(1)

where, ϵ=λλc/λ marks the separation from the critical point. The spatial and dynamic equilibrium critical exponents are given by ν and z, respectively, while the mesoscopic behavior of the system is contained in the dimensional constants ξ0 and τ0. If the quench varies linearly in time, ϵt=t/ta, where ta denotes a quench or annealing time scale, the system reaches the critical point at t = 0. Therefore, the equilibrium effective reaction time diverges as Eq. 1. This phenomenon is known as critical slowing down and can be used to describe the time evolution across a phase transition as a sequence of three stages. Initially, the system is prepared in the high symmetry phase from which it evolves within an adiabatic evolution stage. Secondly, the evolution enters an impulse stage in the neighborhood of the phase transition where the system is effectively frozen. Finally, when the system is far away from the critical point, the dynamics are adiabatic again. These three regimes are schematically represented in Figure 1A. The three regions are separated by two points marked as t̂KZM and t̂KZM, in such a way that the freeze-out occurs at the instant t̂KZMτ0tazν1/1+zν. The main point of the KZM argument is that the size average or correlation length, ξ̂, of domains in the broken symmetry phase is set by the equilibrium correlation length evaluated at the freeze-out time. Therefore, the density of excitations resulting from quench evolution scales as ρξ̂D and goes as

ρKZM1ξ0τ0taDν1+zν,(2)

where D is the dimensionality of the system. This result was initially derived in the classical domain (Kibble, 1980; Zurek, 1985) and subsequently extended to quantum systems (Dziarmaga, 2005; Zurek et al., 2005). Additionally, the KZM has also been extended to novel scenarios including long-range interactions (Acevedo et al., 2014; Puebla et al., 2019; Puebla et al., 2020), inhomogeneous systems (Collura and Karevski, 2010; Dziarmaga and Rams, 2010; Gómez-Ruiz and del Campo, 2019) and nonlinear quenches (Barankov and Polkovnikov, 2008; Sen et al., 2008).

FIGURE 1
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FIGURE 1. Connection between KZM and avoided level crossing in a LZ transition. (A) In a continuous second order phase transition, the reaction time diverges near the critical point. The KZM approximation takes into account the total dynamics divided in three stages (adiabatic, impulse and adiabatic) represented by the graduated yellow-dark red-yellow colors and separated by the freeze out-time t̂KZM. (B) The inverse of the energy gap in LZ exhibits a similar behavior of the reaction time. However, it is not divergent at the crossing point. Similarly, we divided the LZ dynamics in the same three KZM regimes and separated by the Landau-Zener jump time t̂LZ. Inset: Avoided level crossing LZ.

1.2 Landau-Zener model

Consider a two-level system, with gap Δ, described by the time-dependent Hamiltonian =1

Ĥt=εt2σ̂zΔ2σ̂x.(3)

With σ̂n the Pauli matrix along the nx,y,z direction. We define the diabatic states as the Hamiltonian eigenvectors when Δ = 0 and consequently eigenvectors for the Pauli operator σ̂z: σ̂z0=+10 and σ̂z1=11. The respective (diabatic) energy levels are E0,1=εt/2. Now, the adiabatic instantaneous eigenvalues E±t and eigenstates E±t are solutions of ĤtE±t=E±tE±t. The instantaneous gap energy is given by ΔE=E+E=ε2t+Δ2 (for more details see Ref. (Ivakhnenko et al., 2022)). In the main panel of Figure 1B, we depicted the inverse of the energy gap as a function of time while the instantaneous adiabatic eigenvalues are shown as an inset in the Figure 1B. The eigenstates are written as a linear combination of the diabatic states as ψt=αt0+βt1. By solving the corresponding eigenequation in terms of parabolic cylinder functions Dpz, and using the substitution z=texpiπ/4/ta, we obtain the transition amplitudes

αz=ei3π4δδχ1D1iδz+χ2Diδiz,βz=χ1Diδz+χ2D1+iδiz.(4)

where δ = Δ2ta/4 is the adiabaticity parameter. Moreover, χ1 and χ2 are found from the initial condition at z = zi (see the section: Supplementary Data for details of the calculations and derivations):

χ1=ei3π4δD1+iδiziαziDiδiziβziδD1iδziD1+iδiziDiδziDiδizi,χ2=ei3π4δDiδziαzi+δD1iδziβziδD1iδziD1+iδiziDiδziDiδizi.(5)

Notice that, Eqs 4, 5 are valid for any arbitrary initial condition and final time t. For the experimental implementation discussed below, we are interested in studying the system’s evolution from an initial state starting in the anticrossing point at t = 0. In the section: Supplementary Data, the formal solutions for this particular initial condition are summarized.

1.3 Connection between the KZM and LZ evolution

Here we demonstrate how we can implement a controllable evolution using an IBM-Q quantum simulation, in close analogy to the topological defect formation in KZM. Following the seminal arguments exposed in Ref. (Damski, 2005; Damski and Zurek, 2006), topological defects can be built into the LZ model by being associated to the diabatic states. Consider one of the states, such as 0, to be a topologically defected phase and 1 a defect-free phase. For example, in the case of vortices, state 0 may be an eigenstate of the angular momentum operator L̂z0=n0, while L̂z1=0. In this scenario, Damski introduces the normalized density of topological defects as the average angular momentum

ρKZM=1nψL̂zψ=ψ|02.(6)

Then, a system evolving in time under the LZ model can be used to study transitions between the phases through the probabilities of the diabatic states. The similarity between the reaction time of a second order phase transition and the inverse of energy gap in the LZ Hamiltonian is shown in Figure 1B. In analogy with the KZM, this suggests that the adiabatic-impulse-adiabatic approximation (AI) may be used to estimate the asymptotic probability when the system traverses the avoided level crossing, thus elucidating the link between the KZM and LZ evolution.

We divided the dynamics through the anti-crossing into three stages like the AI scenario for KZM. Without loss of generality, we assume that the system starts at ti → − from the ground state E, and then it evolves to tf. We define a natural time scale given by the inverse of the energy gap

1E+t̂LZEt̂LZ=ηt̂LZ,(7)

where E±t are the adiabatic energy eigenvalues at time t=t̂LZ and η is a constant. Using Eq. 3, we obtain

t̂LZta=Δ21+4Δ2ηta21.(8)

The AI assumes that the evolution wave function ψt of the system satisfies:

• Adiabatic dynamics: from ti = − to t=t̂LZ

ψteiΦ1Et.

• Impulse dynamics: from t=t̂LZ to t=t̂LZ

ψteiΦ2Et̂LZ.

• Adiabatic dynamics: from t=t̂LZ to tf =

ψtEt2A.

Where Φ1, Φ2 are global phases, and A is a constant. Following the AI, Damski in Refs (Damski, 2005; Damski and Zurek, 2006). reported the probability of finding the LZ system in the excited state at tftLZ, a calculation we briefly summarize for the sake of completeness in view of our main experimental in terest.

From now on, we focus on the LZ dynamics for the evolution starting in the ground state at the anticrossing point. The initial state at t = 0 is then expressed as E0=10/2, and consequently the transition probability PAI=E+t̂LZE02 is given by (Damski, 2005; Damski and Zurek, 2006)

PAI=12111+ε̂2=121212ηta2+ηtaηta2+4+2.(9)

Where we have fixed the two-level system gap to Δ = 1. Additionally, ε̂=εt̂LZ is the linear bias at time t=t̂LZ. Expanding Eq. 9 into aseries of ta, we obtained (Damski, 2005; Damski and Zurek, 2006)

PAI=12η2ta1/2+ηη8ta3/2+Ota5/2.(10)

which will be relevant for testing the predictions of the universal AI for KZM below.

2 Experimental IBM-Q platform

We implemented our experimental studies in two topologies or processors types. Figure 2A shows the device layout for the IBMQ 5-qubit ibmq_bogota (Falcon r5.11L topology QC1) and ibmq_lima (Falcon r4T topology QC2). The topology of the device determines the possible placement of two-qubit gates. The qubits are furthermore prone to decoherence, thereby requiring several runs of the experiment to make up for statistical errors. We measure the LZ, and concomitant KZM relation, for each one of the IBM-Q transmons in QC1 and QC2. Each transmon plays the role of a qubit, evolving with its own dynamics, experimentally showing the effects of decoherence on the hardware. Generally, the physical transmon type qubits of the same machine offer a variety of properties that describe the quality of the qubit, such as thermal relaxation time (T1), dephasing time (T2), anharmonicity, and error properties detailed in the section: Supplementary Data, allowing us to compare the simulation’s performance with different physical parameters. In Figure 2A, the times T1 and T2 are depicted for each considered circuit topology at two different dates, illustrating in a graphical way how these times change every time that IBM performed a calibration of every device.

FIGURE 2
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FIGURE 2. Decoherence times in different IBM-Q and IBM-Q circuit simulation of the Landau-Zener process. (A) In the pie-like chart, we contrast the thermal relaxation time (T1) and dephasing time (T2), in μs, for two different topology circuits, simply called QC1 and QC2 (see text for details). Due to in situ IBM machine calibration routines the times T1 and T2 may change. Every pie-like chart is divided into two sectors by a dashed line, where the upper and lower sectors corresponding to decoherence times at two different dates. (B) Quantum circuit for the LZ simulation starting at the state ψti=Ûnθ0, where Ûnθ is a unitary rotation along the axis n. (C) Schematic representation of the LZ transition probability: the solid line corresponds to the exact result given by Eq. 13, with Δ = 1, ta = 2, ti = 0 and tf = 10, while the symbols illustrate expected results for a grid of points with separation dt = tfti/Nt, being Nt the total circuit depth. The filled dots correspond to: the shortest circuit with depth 1 (gray dot) and an intermediate circuit depth N (black dot). The inset shows the discrete approximation of the time-dependent component ɛ(t) of the LZ Hamiltonian.

3 Results

3.1 Simulation of the Landau-Zener evolution on IBM-Q

Unitary dynamics.– We are interested in the experimental determination, and respective simulation, on a digital open-access IBM-Q of a single qubit evolution under a linearly time-dependent Hamiltonian (LZ problem). At time ti, a qubit in the processor is initialized in the state ψti=Ûn̂θ0, where Ûnθ=cosθ/2Îiσ̂nsinθ/2 is a unitary rotation along the axis nx,y,z with σ̂n the usual Pauli matrix along the n-direction. The whole evolution from ti to tf is performed by sampling the Hamiltonian at regular intervals dt = (tfti)/Nt where Nt denotes the number of time steps or the total circuit depth (see blue region in Figure 2B). The equivalent circuit for the experimental IBM-Q realization, and its simulation, is shown in Figure 2B. Assuming an evolution governed by a time-independent Hamiltonian and for small enough intervals of duration dt, the time evolution operator at time t = N dt, with 1 ≤ NNt, can be approximated by

Ût,tik=0N1eiĤkdt,(11)

where Ĥk=Ĥ(ti+kdt).

Since we are interested in the evolution from an initial condition where the LZ system is prepared in an equal weight superposition at the anticrossing point, we start by applying the unitary rotation Ûyπ/2. The approximate time evolution operator is constructed with general unitary gates. A general unitary single qubit gate describes rotations on the Bloch sphere and is defined by three Euler angles

Ûθ,ϕ,λ=cosθ2eiλsinθ2eiϕsinθ2eiϕ+λcosθ2.(12)

IBM-Q devices are equipped with the finite and complete set {CX,I,Uz,X,X} of basis gates on which any quantum circuit must be decomposed into. The general unitary gate can then be expressed using the previous set as U(θ,ϕ,λ)=eiγÛzϕ+πXÛzθ+πXÛzλ, where γ=λ+ϕ+π/2 is a global phase factor. Using this decomposition, small time progressions as defined in Eq. 11 are simulated and finally the state ψt is measured.

As already stated, the Landau-Zener dynamics can be exactly solved (see Supplementary Data), thus allowing a direct benchmark test of the experimental results on a realistic quantum device against exact results. For a LZ evolution starting at the anticrossing ground state, we obtain the LZ transition probability PLZ(t) at time t given as

PLZt=|χ1Diδz+χ2D1+iδiz|2,(13)

with the amplitudes χ1 and χ2, see Eq. 5, given by:

χ1=2kexpiπk4ik2ikΓk+1+iΓ12+kΓ2k,(14)
χ2=expiπk2k+12ikΓ12k+1i2ikΓ1kΓ12k.(15)

Where z and δ are given in Section 1.2.

Our first aim is to benchmark our LZ experimental results with the above exact theoretical prediction. This is schematically illustrated in Figure 2C where we display the exact result, see Eq. 13, and a hypothetical grid of points representing expected target data with a separation dt = (tfti)/Nt, being Nt the total circuit depth. For every experimental data, 5,000 shots have been realized on each quantum circuit, QC1 and QC2.The unit of energy is set by choosing Δ = 1 in the LZ Hamiltonian (see Eq. 3). Therefore, in the following, we express energy parameters and time as dimensionless quantities ( = 1). Using the quantum circuits QC1 and QC2, we implemented the corresponding gates in all qubits available on parallel and we did a sweep of parameters in annealing time ta from 0.05 to 2.0. Additionally, for both theoretical and experimental results, the final evolution time tf was chosen according with: tf = 4 for annealing times in the interval 0.05 ≤ ta ≤ 0.17 and tf = 10 for 0.17 < ta ≤ 2. These particular choices have been supported by the fact that as we are mainly interested in the asymptotic LZ probability transition, a good asymptotic collapse is reached for these parameter regimes. We also represent the experimental results PLZN as a function of the number of layers in the circuit instead of time. We emphasize that an N-deep circuit corresponds to a physical qubit interaction time tInt = 2tSXN, where tSX is the gate length property for X and it is fixed by IBM-Q as tSX = 35.555 ns. In Figure 3, we present a contrast of the LZ transition probability for both the theoretical and experimental results. In the panel Figure 3A, we choose the most robust qubit that better reproduced the theoretical PLZ. Specifically, we found that the qubit 3 and 2 for ibmq_bogota and ibmq_lima, respectively, have the best performance. In order to better appreciate the experimental agreement and differences for every single-qubit over QC1 and QC2, we show the LZ transition probability as a function of the number of applied gates in Figure 3B.

FIGURE 3
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FIGURE 3. Measurement of LZ probabilities on IBM-Q. In panel (A), we establish a contrast between the exact and experimental results for the LZ transition probability as a function the number of layers or circuit depth N, and the annealing time ta. In this panel, all figures share the same color vertical scale. The initial condition, PLZt=0=0.5, is represented by a red dashed line. Note that in some region of parameters a probability larger than 0.5 for the experimental results is obtained. In panel (B), the behavior of the LZ probability for every qubit available in each processor is shown, identifying in this way the most isolated (larger decoherence time) qubit in each case. We fixed the maximum number of layers in the circuit as Nt = 50.

In the next subsection, we address the influence of the number of layers in the LZ simulation circuit and the role of decoherence.

Open system dynamics.- The performance of the hardware worsens with an increasing depth of the circuit. The assumption of a closed quantum system rapidly breaks down for qubits with short relaxation (T1) and dephasing (T2) timescales, thus requiring for a theoretical analysis that resorts to a quantum open system approach. The effects of quantum decoherence are noticeable in the measured probability when scaling the number of gates due to the increase in computing times. We model every qubit on IBM-Q as a two-level system coupled to a Markovian bath. The system evolution is described by a continuous map ρt=etLρt0, t ≥ 0 generated by the Lindbladian L=iĤ,+nL̂nL̂n12L̂nL̂n, (Breuer and Petruccione, 2007), where, Ĥ is the Hamiltonian and L̂n are Lindblad operators that describe the system-bath interactions. Dissipative processes in a superconducting qubit such as relaxation, i.e., transitions from the higher energy level 1 to ground state 0, can be described phenomenologically by the operator L̂1=Γ|01| and dephasing by rotations around the z axis L̂2=γσ̂z. Additional transitions such as thermal excitations from the ground state 0 to 1 may also be considered (Marquardt and Püttmann, 2008), although for a superconducting transmon qubit this process is negligible. The rates Γ = 1/T1 and γ = 1/T2 − 1/2T1 are related to the characteristic times of each physical qubit.

In Figure 4, we establish a contrast between the unitary exact dynamics, numerical Lindblad dynamics (QuTip) and the experimental results obtained for qubit 4, the noisiest qubit in both quantum machines. QuTiP is an open-source framework for Python that allows for numerical simulations of quantum dynamics of open systems under different solvers (Johansson et al., 2012; Johansson et al., 2013). Specifically, we depicted the Landau-Zener probability as a function of the number of layers in the circuit, N, for two specific annealing times ta = 1 (colors green/purple) and ta = 0.1 (colors blue/orange). Additionally, we show as an inset the ratio between T2/T1, the bar scale shows the value of this proportion from 0 to 2. Although, ibmq_lima quantum computer has the ratio T2/T1 almost constant, qubit 4 is the most prone to decoherence.

FIGURE 4
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FIGURE 4. Contrast between close and open quantum dynamics for LZ on IBM-Q. The Landau-Zener transition probability is shown as a function of the number of layers N in the circuit implemention for qubit 4, the noisiest qubit for each QC1 and QC2 quantum circuit. We contrast the theoretical prediction for a close system (unitary dynamics) given by Eq. 13 (dashed line), the decoherent dynamics given by the numerical solution of the Lindblad equation (solid line) and experimental results (symbols). The experimental results clearly depart from the unitary evolution prediction as the number of layers Nt increases in the circuit (see Figure 2B blue region). Additionally, in every panel, we present as inset the ratio between the dephasing time (T2) and the thermal relaxation time (T1).

3.2 Simulation of the Kibble-Zurek mechanism on IBM-Q

The main purpose of this work is to validate the adiabatic-impulse approximation of the Kibble-Zurek mechanism through the nonequilibrium dynamics of the Landau-Zener model on IBM-Q. Using Eq. 13 with Δ = 1, the asymptotic probability can be exactly calculated as

PLZt=11δexp3πδ2|χ2|2.(16)

Expanding the asymptotic probability into series, we obtain (Damski, 2005; Damski and Zurek, 2006)

PLZt=12π4ta1/2+π32πln4ta3/2+Ota5/2.(17)

We find the value of η by directly comparing the adiabatic-impulse approximation given by Eq. 10 and the expansion of the LZ asymptotic probability at first-order (η = π/4). However, non-trivial corrections for high-order terms appear. In both main panels of Figures 5A,B, we depict the agreement of the theoretical prediction for the adiabatic-impulse approximation (Eq. 9) and asymptotic Landau-Zener probability (Eq. 16). We note the role of the corrections for large quench times. For finite-time LZ simulations, estimating the asymptotic transition probability becomes challenging and similar to experimental data. To this end, we introduced the Landau-Zener jump-time t as the fist zero in the second derivative of the Landau-Zener probability, thus:

d2PLZtdt2t=t=0.(18)

FIGURE 5
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FIGURE 5. Simulation of the Kibble-Zurek mechanism on IBM-Q. In both upper and lower panels, we contrast the adiabatic-impulse approximation (Eq. 9), asymptotic Landau-Zener probability (Eq. 16), and the experimental data. In panel (A), we show experimental data retrieved from ibmq_bogota. In panel (B), we present the experimental results from ibmq_lima. In the inset, we present the protocol to calculate the asymptotic experimental Landau-Zener probability. The error bars with length 2ζEB, calculated from the finite-time effect, are also shown. Solid symbols are consistent with the best qubit behavior as depicted in Figure 3.

In this way, we propose that the estimated finite-time asymptotic Landau-Zener probability can be approximated by the average of all values of PLZt with tt. In the inset of Figure 5B, we display the protocol implemented to calculate the finite-time asymptotic Landau-Zener probability. Therefore, we establish a finite-time error regime depicted in the main panel of Figures 5A,B as error bars using the experimental values of the annealing time. The estimation of the Landau-Zener jump-time t has been implemented uniquely from the theoretical prediction, assuming it will be the same for the experimental data. Note that the adiabatic-impulse approximation and the asymptotic Landau-Zener probability are equivalent in the regime of our experimental data giving confidence in our validation of the KZM on the IBM-Q platform.

For the qubit with the largest decoherence T1 and T2 times (the best qubit from now on), the experimental data show an excellent agreement with the theoretical predictions for the impulse-adiabatic approximation. For large annealing time ta, the experimental data has a significant deviation for some qubits in the ibmq_bogota quantum computer. Indeed, the adiabatic-impulse approximation relationship with the Landau-Zener problem assumes a close system’s quantum dynamics. However, since IBM-Q is benchmarked as an open-quantum system, deviations are to be expected.

In order to further testing the KZM adiabatic-impulse approximation, from our experimental data, we rewrite the Eq. 9 in terms of 3 fitting parameters, as

PAItax1x212x3ta2+x3tax3ta2+4+2.(19)

In Figure 6, we depict the comparison of the fitting parameters x1, x2 and x3 for the best qubit at ibmq_bogota and ibmq_lima. The structure of the fitting expression allows us a direct comparison with the theoretical predictions x1T,x2T,x3T. The first fitting parameter x1 provides information about how robust the qubit is to decoherence for fast LZ driving. Note that the theoretical prediction is x1T=1/2 as it is fixed by the initial condition at the anticrossing initial point. Moreover, it fixes the value of the impulse-adiabatic approximation for small annealing times, PAIta0=1/2. It is evident from Figure 5 that some qubits deviate from this ideal value in this regime, confirming that these qubits are already highly sensible to decoherence. Nonetheless, for these results, we used the smallest number of layers considered. The second fitting parameter x2 gives information about the higher annealing time regime, with theoretical value x2T=1/2. The asymptotic value of the adiabatic-impulse approximation is zero for large annealing times. However, large annealing times imply that the LZ transition probability has several oscillations as a function of time. Consequently, it is necessary to manage large simulation times to obtain the asymptotic LZ probability. It is to be expected that, our results show deviations due to finite simulation time effects. Finally, the third parameter x3 validates the Kibble-Zurek scaling in the adiabatic-impulse approximation (x3T=π/4). We found an excellent agreement with the theoretical predictions for these QC1 and QC2 robust qubits. Thus, by using the close relationship between the KZM and the LZ transition probability, we validated and tested the KZM on IBM-Q. These results can be part of a sequence of major steps to fully understand the strength and limitations of time-dependent quantum simulations. It may provide insights for designing top efficient quantum simulation protocols for more involved out-of-equilibrium and interacting systems.

FIGURE 6
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FIGURE 6. KZM adiabatic-impulse approximation fitting parameters. From the best qubit experimental data (solid symbols in Figure 5), the fitting to the KZM adiabatic-impulse approximation PAI (ta) given by Eq. 19 is probed (the dashed gray lines correspond to the theoretical predictions). The experimental data at ibmq_bogota and ibmq_lima are depicted in blue and red, respectively.

4 Conclusion

In this work we explored the dynamics of a two level system under the time-dependent Landau-Zener Hamiltonian on digital IBM Quantum computers. Time evolution was simulated by discretization of the time dependent Hamiltonian and application of subsequent single-qubit unitary gates representing finite time progressions. We studied the Landau Zener transition probability as a function of time by running parallel quantum circuits on 5-qubit machines ibmq_lima and ibmq_bogota with different topologies. We find a strong agreement with the theoretical solution of the LZ problem for robust qubits from both machines. We also considered the effect of decoherence on an open LZ system, modeling the dissipation using collapse operators for relaxation and dephasing. For greater trotterizations of the time evolution operator, increasing computing time cause noticeable deviations from the theoretical LZ solution. The numerical solution of the Lindblad master equation accurately depicts the open system’s relaxation towards the ground state, supported by the measured probabilities.

The above positive LZ results allowed us to demonstrate the first simulation on a realistic quantum computer of the universal Kibble-Zurek mechanism by estimating the asymptotic transition probability obtained from LZ experimental data. Results show excellent agreement for the best qubits considered in each device and low annealing times. We find that larger annealing times demand a greater time resolution in the evolution operator discretization, putting practical limits on the performance achieved, as it becomes limited by the conflict between computing depth and decoherence times. However, the rapid rate of quantum hardware advances may soon change this. Furthermore, an interesting follow-up research direction would consist in focusing on richer open quantum platforms, where KZM has been poorly explored. Thus, using real quantum hardware to test quantum universal dynamical behaviors, in both closed and open systems, represent an interesting extension of the results presented in this work.

Data availability statement

The datasets presented in this study can be found in online repositories. The names of the repository/repositories and accession number(s) can be found below: https://github.com/sanhq17/Testing_KZM_IBMQ.

Author contributions

FG-R and LQ initiated and guided the project. SH-Q took the experimental measurements. FG-R developed numerical simulations and prepared the figures. All authors contributed to the analysis of the results and the writing of the manuscript.

Funding

SH-Q, FR, and LQ are thankful for the financial support from Facultad de Ciencias-UniAndes projects: INV-2021-128-2292, and INV-2019-84-1841. FG-R acknowledges financial support from European Commission FET-Open project AVaQus GA 899561.

Acknowledgments

The authors thank to Bogdan Damski for useful comments and suggestions.

Conflict of interest

The authors declare that the research was conducted in the absence of any commercial or financial relationships that could be construed as a potential conflict of interest.

Publisher’s note

All claims expressed in this article are solely those of the authors and do not necessarily represent those of their affiliated organizations, or those of the publisher, the editors and the reviewers. Any product that may be evaluated in this article, or claim that may be made by its manufacturer, is not guaranteed or endorsed by the publisher.

Supplementary material

The Supplementary Material for this article can be found online at: https://www.frontiersin.org/articles/10.3389/frqst.2022.1026025/full#supplementary-material

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Keywords: IBM quantum computing, Kibble-Zurek mechanism, Landau-Zener model, adiabatic-impulse approximation, quantum technologies

Citation: Higuera-Quintero S, Rodríguez FJ, Quiroga L and Gómez-Ruiz FJ (2022) Experimental validation of the Kibble-Zurek mechanism on a digital quantum computer. Front. Quantum Sci. Technol. 1:1026025. doi: 10.3389/frqst.2022.1026025

Received: 23 August 2022; Accepted: 07 October 2022;
Published: 25 October 2022.

Edited by:

Erik Torrontegui, Universidad Carlos III de Madrid, Spain

Reviewed by:

Francesco Plastina, University of Calabria, Italy
Ricardo Puebla, Universidad Carlos III de Madrid, Spain

Copyright © 2022 Higuera-Quintero, Rodríguez, Quiroga and Gómez-Ruiz. This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.

*Correspondence: Fernando J. Gómez-Ruiz, fernandojavier.gomez@iff.csic.es

Disclaimer: All claims expressed in this article are solely those of the authors and do not necessarily represent those of their affiliated organizations, or those of the publisher, the editors and the reviewers. Any product that may be evaluated in this article or claim that may be made by its manufacturer is not guaranteed or endorsed by the publisher.