1. Introduction
Collective synchronous behaviour of a many-body quantum system has attracted much attention from many scientific disciplines, particularly from quantum optics and quantum information [Reference Goychuk, Casado-Pascual, Morillo, Lehmann and Hänggi3, Reference Giorgi, Galve, Manzano, Colet and Zambrini4, Reference Kimble8, Reference Machida, Kano, Yamada, Okumura, Imamura and Koyama15, Reference Mari, Farace, Didier, Giovannetti and Fazio17, Reference Vinokur, Baturina, Fistul, Mironov, Baklanov and Strunk20, Reference Zhirov and Shepelyansky23]. In order to provide a mathematically rigorous analysis of such a phenomenon, several mathematical models (even phenomenological ones) have been proposed in literature after Winfree [Reference Winfree22], Kuramoto [Reference Kuramoto12] and Vicsek [Reference Vicsek, Czirók, Ben-Jacob, Cohen and Shochet21]. Among tractable candidates, we are concerned with the following model [Reference Lohe14] on the unitary group ${ \mathbf{U}(d) }$ of degree $ d$ :
subject to initial data:
Here, $U_j$ is a state matrix on $j$ -th node, $H_j$ plays a role of intrinsic frequency on $j$ -th node, $\kappa \gt 0$ measures a (uniform) coupling strength between nodes, and $a_{ij}\gt 0$ describes network structures. Note that system (1.1)–(1.2) preserves unitarity and is represented as a gradient flow. It has been shown that when $H_i \equiv H$ for all $ i\in [N]$ , then every state asymptotically collapses to a common one, and when $H_i \neq H_j$ for some $i \neq j \in [N]$ , relative correlation matrix $U_i U_j^\dagger$ converges to a definite one for each $i,j$ . For the latter case, convergence of $U_j$ itself is still unknown. For detailed statements of the convergence results, we refer the reader to [Reference Ha, Ko and Ryoo6, Reference Ha and Ryoo7, Reference Lohe14].
However, it is more natural to expect the situation that state converges to another state up to phase translation. This is more reasonable and fits better with quantum mechanics where gauge invariance is allowed. In this regard, we suggest a new model on the unitary group satisfying following the two properties:
(P1): Each state converges to a stationary state.
(P2): Such stationary states are identical up to phase translation.
For this purpose, we introduce a new model on the unitary group:
subject to initial data:
Here, the inner product between matrices is defined by the Frobenius inner product, and the corresponding Frobenius norm is defined as follows:
One can easily verify that unitary group ${ \mathbf{U}(d) }$ is positively invariant under system (1.3) (see Lemma 2.1).
For (P1), we show that (1.3) is represented as a gradient flow with the following analytical potential:
Since the unitary group is compact, we deduce from the Łojasiewicz inequality that $U_j$ converges to a definite state, say $U_j^\infty \in{ \mathbf{U}(d) }$ , for each $j\in [N]$ . See Lemma 2.3 for detailed verification.
On the other hand for (P2), since (1.3) is a gradient flow with potential (1.5), it would be expected that a solution approaches a state that minimises the potential so that $\mathcal V(\mathcal U)$ becomes zero. In this situation, there exists $\alpha _{ij} \in \mathbb C$ such that
which implies (P2). Hence, in what follows, our analysis is dedicated to rigorously providing this minimising process. To be more specific, we find a sufficient condition leading to
which is called quantum synchronisation (see Definition 2.1). For our argument, we define the matrix-valued synchronisation quantity:
and show that $F_{ij}$ tends to zero (see Theorem 3.1). This plausible scenario is verified for $N=2$ as a simple motivation in Section 2.4.
Recently, when quantum synchronisation is considered, time-delayed interaction would be introduced for the emission time of some experiments at the laboratory level [Reference Bellomo, Giorgi, Palma and Zambrini1, Reference Palma, Vaglica, Leonardi, De Oliveria and Knight19]. One of the simplest implementations of the time delay is to consider a uniform delay time $\tau \gt 0$ in the interaction. For example, what $U_j$ receives in (1.3) at time $t$ is the information of $U_k$ at time $t-\tau$ . Hence, for possible realistic application of the model, we also introduce the following delayed system for (1.3):
subject to initial data
Here, $\tau \gt 0$ is a uniform time delay among all states, and $U_j^\tau$ is defined as
and initial data $\{\Phi _j(t)\}$ are given to be Lipschitz continuous function. Thus, the system (1.7)–(1.8) admits a local solution from the standard Cauchy-Lipschitz theory, and this local solution directly extended to a unique global one due to the uniform boundedness of $\dot U_j$ . Then, our second goal is to verify an emergence of quantum synchronisation for (1.7) when $\tau$ is sufficiently small by analysing the synchronisation quantity $F_{ij}$ in (1.6). For the analysis, we closely follow [Reference Ha, Kim, Kim, Park and Shim5] where a uniform time delay for (1.1) is considered. See Theorem 4.1 for the result.
Lastly, we perform numerical simulations for both (1.3)–(1.4) and (1.7)–(1.8) to compare theoretical results with numerical ones. We numerically verify that the potential $\mathcal V$ (in fact, rescaled one) converges to zero with and without (small) delay for randomly chosen initial data.
The rest of this paper is organised as follows. In Section 2, we study elementary properties and detailed description of our model and review previous relevant results. Moreover, motivation is provided by analysing the case of $N=2$ . In Section 3, we show that quantum synchronisation emerges for (1.3) under some frameworks, and in Section 4, we verify that quantum synchronisation still emerges when the time-delay between nodes is sufficiently small. Finally, we present numerical simulation results in Section 5 to observe that quantum synchronisation of (1.3) and (1.7) indeed appears for the generic initial data. Finally, Section 6 is devoted to conclusion of the paper and further discussion.
2. Preliminaries
In this section, we provide several dynamical properties and detailed description for the system (1.3) and review several relevant previous results.
2.1. Dynamical properties
As a synchronisation model on the unitary group, it should be guaranteed that the unitary group is a positively invariant manifold of the system (1.3). Of course, positive invariance of the unitary group directly follows from the projection operator in (2.4). However, for readers’ convenience, we provide an alternative proof in analytic way.
Lemma 2.1. Let $\{U_j\}$ be a solution to (1.3)–(1.4). Then, the unitary group is positively invariant under the flow (1.3):
Proof. We first define a critical time $T_*$ as a maximal time that the Frobenius norms of $U_i$ are smaller than $\sqrt{d}+1$ :
Since the initial data $U_i^0$ are on the unitary group, which implies $\|U_i^0\|=\sqrt{d}$ , we have $T_*\gt 0$ . We will show that $T_*=+\infty$ . Suppose to the contrary that $T_*\lt +\infty$ . Then, there exists an index $i_0$ such that $\|U_{i_0}(T_*)\|=\sqrt{d}+1$ . On the other hand, it is straightforward to observe that
where $V_{jk} \;:\!=\; \langle U_j,U_k\rangle U_k$ . Therefore for $0\le t\le T_*$ , we have
where we used a boundedness of $\|U_i(t)\|$ in the time interval $[0,T_*]$ . Then, since $\|I_d-U^0_i(U_i^0)^\dagger \|=0$ , Grönwall’s inequality implies
and in particular, $U_{i_0}(T_*)\in{\mathbf{U}}(d)$ , and therefore, $\|U_{i_0}(T_*)\|=\sqrt{d}$ . This contradicts the choice of index $i_0$ , and therefore, we conclude that $T_*=+\infty$ . Then, we return to the estimate (2.1) and use the same argument as above to conclude that $U_i(t)\in{\mathbf{U}}(d)$ for all $i\in [N]$ and $t\ge 0$ .
Next, we show that system (1.3)–(1.4) is invariant under phase translation.
Lemma 2.2. Let $\{U_j\}$ be a solution to (1.3)–(1.4). Then, the system is invariant under the phase translation, that is, for a set of constants $\{\theta _1,\theta _2,\ldots, \theta _N\}$ , if $\{U_1,U_2,\ldots, U_N\}$ is a solution to (1.3), then $\{e^{{\mathrm i} \theta _1}U_1, e^{{\mathrm i} \theta _2}U_2, \ldots, e^{{\mathrm i} \theta _N}U_N\}$ also becomes a solution to (1.3).
Proof. One can easily notice that if $\{U_j\}$ is a solution to (1.3), then
Thus, if we define $W_i \;:\!=\; e^{{\textrm i} \theta _i} U_i$ , then (2.2) can be written as
Therefore, $W_i$ is also a solution to (1.3) subject to the initial data $W_i(0)=e^{{\textrm i}\theta _i}U_i(0)$ .
In most of the synchronisation models on the unitary group, such as (1.1), the system is said to be synchronised if the difference between two oscillators $U_i$ and $U_j$ tends to zero:
However, a generalised definition of synchronisation, called quantum synchronisation was introduced in [Reference Kim and Kim9], based on the idea that if the one state is the phase factor multiplication of the other state, then the two states are indistinguishable.
Definition 2.1. [9] For a solution $\{U_i\}$ to system (1.3)–(1.4), we say that the system exhibits quantum synchronisation if for each $i,j \in [N]$ , there exists a constant $\alpha _{ij} \in \mathbb R$ such that
In particular, if $\alpha _{ij} \equiv 0$ for all $i,j\in [N]$ , we say that the system exhibits complete quantum synchronisation.
Next, we show that the system (1.3) can be represented as a gradient flow on the unitary group.
Lemma 2.3. The system (1.3) can be represented as a gradient flow of the following analytical potential:
Moreover, for each $i\in [N]$ , there exists a constant unitary matrix $U_i^\infty \in{ \mathbf{U}(d) }$ such that
Proof. In order to show that system (1.3) is a gradient flow, we first calculate $\frac{\partial |\langle U_i,U_j\rangle |^2}{\partial U_i}$ and then take the orthogonal projection of the resulting relation by using the projection formula.
Note that projection of any $d\times d$ matrix $X$ onto $T_U{ \mathbf{U}(d) }$ , the tangent space of ${ \mathbf{U}(d) }$ at $U \in{ \mathbf{U}(d) }$ , is given by
We now compute the gradient of $|\langle U_i,U_j\rangle |^2$ for fixed indices $i$ and $j$ . Since $U_i \in \mathcal M_{d,d}(\mathbb C) = \mathbb R^{2d^2}$ , where $\mathcal M_{d,d}(\mathbb C)$ denotes the set of all $d\times d$ complex-valued matrices, partial derivatives of $U_i$ can be achieved by the partial derivatives of real and imaginary components of $U_i$ in $\mathbb R^{2d^2}$ . Similarly, taking partial derivatives of a scalar-valued function of $\mathcal U$ can be obtained by taking partial derivatives of the function with respect to real and imaginary components. Let us denote the $(k,l)$ -component of $U_i$ as $[U_i]_{kl}=a_{kl}^i+{\textrm i} b_{kl}^i$ . We first consider the case when $i\neq j$ . Then, since
we have
and
Similarly, when $i=j$ , then we have
Thus, the derivative of $|\langle U_i,U_j\rangle |^2$ by $U_i$ is
where $\delta _{ij}$ denotes the Kronecker delta. This yields the following formula of the gradient of $|\langle U_i,U_j\rangle |^2$ at $U_i$ :
since $\mathbb{P}_{U_i}(\langle U_i,U_i\rangle U_i)=0$ . Hence, the gradient of potential is given by
Therefore, the system (1.3) is a gradient flow with the potential $\mathcal{V}$ in (2.3), that is
On the other hand, it is known that the gradient flow on a compact manifold must converge [Reference Ha, Ko and Ryoo6, Theorem 5.1], by using Łojasiewicz inequality. Since $({\mathbf{U}}(d))^N$ is a compact manifold, we conclude that the system (1.3) must converge, that is, there exists $U_i^\infty \in{ \mathbf{U}(d) }$ such that $\lim _{t\to \infty }U_i(t)=U_i^\infty$ .
2.2. Model description
Since (1.3) is a gradient flow equipped with potential (2.3), a solution is expected to converge to a minimiser of (2.3), that is, a solution converges to some definite states tending to minimise the potential $\mathcal{V}$ . When a solution reaches global minimum of ${\mathcal V}(\mathcal U)$ , then we have for all $i,j\in [N]$ :
This condition exactly coincides with the emergence of quantum synchronisation in Definition 2.1. Hence, it is natural to expect that the system (1.3)–(1.4) exhibits the quantum synchronisation, instead of the complete quantum synchronisation.
Another motivation for quantum synchronisation is as follows. We note that the only difference between classical synchronisation system (1.1) with $(H_i,a_{ij}) = (O_d,1)$ and the system (1.3) is that $U_k$ in (1.1) is replaced by $\frac{\langle U_i,U_k\rangle }{d} U_k$ , by rescaling $\kappa \mapsto d\kappa$ . Since a solution to (1.1) with $(H_i,a_{ij}) = (O_d,1)$ tends to a common state, that is, $\|U_i(t) - U_k(t)\|\to 0$ as $t\to \infty$ [Reference Ha and Ryoo7], one can expect that our model would exhibit the following convergence:
which also coincides with the definition of quantum synchronisation in Definition 2.1.
Remark 2.1. (1) We also mention that the model (1.3) is essentially high-order model. If we consider the case when $d=1$ and parameterise $U_i = e^{{\textrm i} \theta _i}$ , then the system (1.3) reduces to
which is a trivial dynamics. However, with the same parameterisation, the system (1.1) with $(H_i,a_{ij})=(O_d,1)$ reduces to the well-known Kuramoto model [Reference Kuramoto12]:
The reason why the system (1.3) reduces to the trivial dynamics is that the two phases are considered to be identical if they are only different in phase factor. In this sense, all the one-dimensional phases are identical, and therefore, the dynamics becomes trivial. Therefore, the new model (1.3) is essentially high-dimensional, and it is qualitatively different from the usual synchronisation model.
(2) One might consider the non-identical extension of the system (1.3) as in (1.1):
If we consider the diagonal Hamiltonian, that is,
then (2.5) becomes
However, if we introduce $V_j\;:\!=\;e^{{\textrm i} a_j t} U_j$ , then by using similar argument as in Lemma 2.2, $V_j$ exactly satisfies (1.3):
Therefore, the effect of $a_j$ disappears up to the phase factor. See also Remark 3.2.
2.3. Previous results
In this part, we review previous results on the quantum synchronisation models that are closely related to (1.3). First of all, the first non-abelian quantum synchronisation model (1.1) on the unitary group was introduced in [Reference Lohe14]. Here, we briefly recall the previous results on (1.1). For detailed statements and proofs, we refer the reader to [Reference Ha and Ryoo7, Reference Kim and Park11].
Theorem 2.1. [Reference Ha and Ryoo7, Reference Kim and Park11]
-
1. [Reference Ha and Ryoo7] Suppose that $H_i = O_d$ for all $i \in [N]$ and initial data $\{U_j^0\}$ satisfy
\begin{equation*} \max _{1\leq i,j\leq N } \|U_i^0 - U_j^0\| \lt \sqrt 2 \end{equation*}and let $\{U_j\}$ be a solution to (1.1) with initial data $\{U_j^0\}$ . Then, we have\begin{equation*} \lim _{t\to \infty } \max _{1\leq i,j\leq N } \|U_i (t) - U_j(t) \| = 0. \end{equation*} -
2. [Reference Ha and Ryoo7] Suppose that system parameters satisfy
\begin{equation*} \kappa \gt \frac {54} {17} \max _{1\leq i,j\leq N} \|H_i - H_j\|\gt 0,\quad \max _{1\leq i,j\leq N } \|U_i^0 - U_j^0\| \ll 1, \end{equation*}and let $\{U_j\}$ be a solution to (1.1) with initial data $\{U_j^0\}$ . Then, the limit $\lim _{t\to \infty } (U_iU_j^\dagger )(t)$ exists. -
3. [Reference Kim and Park11] Suppose that system parameters satisfy
\begin{equation*} H_i = -a_i I_d,\quad \sum _{i=1}^N a_i=0, \quad \kappa \gg \max _{1\leq i,j\leq N} |a_i-a_j|,\quad \max _{1\leq i,j\leq N } \|U_i^0 - U_j^0\| \ll 1 \end{equation*}and let $\{U_j\}$ be a solution to (1.1) with initial data $\{U_j^0\}$ . Then, there exists a constant unitary matrix $V \in{ \mathbf{U}(d) }$ and a real number $\theta _j^\infty$ such that\begin{equation*} \lim _{t\to \infty } U_j(t) = e^{{\mathrm i} \theta _j^\infty } V. \end{equation*}
We remark that the results in Theorem 2.1(3) exactly coincide with quantum synchronisation in Definition 2.1, whereas Theorem 2.1(2) is, in fact, not quantum synchronisation.
On the other hand, the system (1.3) is also closely related to a swarming model on the complex sphere in the Hilbert space [Reference Kim and Kim9] suggested by the present authors, which reads as:
subject to initial data
Here, $\mathcal H$ is a complex Hilbert space and $\psi _i=\psi _i(t)$ is a state vector on the $i$ -th node. In addition, the inner product in $\mathcal H$ is linear in the first argument and conjugate linear in the second argument just as the Frobenius inner product: for $c\in \mathbb C$ and $x,y\in \mathcal H$ ,
Then, the authors showed the following statement.
Theorem 2.2 (Reference Kim and Kim9, Theorem 4). Let $\{\psi _i\}$ be a solution to (2.6)–(2.7). Suppose that the norm of the average of initial data is strictly positive, that is, $\|\frac 1N \sum _{i=1}^N \psi _i^0\| \gt 0$ . Then, there exist complex-valued functions $\alpha _{ij}(t)$ such that
If we adopt our definition for quantum synchronisation in Definition 2.1 to the swarming model (2.6), then one can say that (2.6) exhibits quantum synchronisation (see also Definition 1 in [Reference Kim and Kim9]).
Finally, it should be mentioned that (2.6) is also related to the Schrödinger–Lohe model [Reference Lohe13] where $\mathcal H= L^2(\mathbb R^d)$ which reads as:
The only difference between (2.6) and (2.8) is the order of the inner product. Precisely, $\langle \psi _k,\psi _i\rangle$ is given in (2.6) and $\langle \psi _i,\psi _k\rangle$ is given in (2.8). However, with this change, their asymptotic behaviours are completely different.
2.4. Two-state system
As a starting point of the analysis, we first consider a two-state system of (1.3):
subject to initial data:
We define a correlation matrix $G$ for (2.9):
Below, we study the temporal evolution of the correlation matrix $G$ .
Lemma 2.4. Let $\{U_1,U_2\}$ be a solution to (2.9)–(2.10). Then, $G$ satisfies
Proof. It directly follows from the governing equations (2.9).
We note that the matrix $G$ is normal, and therefore, it is always diagonalisable. By following the idea in [Reference Kim and Kim10], we show that it suffices to consider the diagonalisation of $G$ .
Lemma 2.5. Let $G=G(t)$ be a solution to (2.11) with initial datum $G_0$ whose diagonalisation is given as:
where $V_0$ is a $d\times d$ unitary matrix and $D_0$ is a $d\times d$ complex diagonal matrix. Then, $G(t)$ is determined by:
where $D(t)$ is a solution to the following Cauchy problem:
Proof. Let $D$ be a solution to (2.13). We multiply $V_0$ and $V_0^\dagger$ in the left- and right-hand sides of (2.13). Then, one has
If we define
then, $X=X(t)$ satisfies
which is the same governing equation (2.11) for $G(t)$ . Since the initial datum $G_0$ of $G(t)$ is also decomposed as (2.12), the desired assertion follows from the uniqueness of the solution to (2.11).
We use Lemma 2.5 and a well-known result for the Kuramoto synchronisation model to show that the system (2.9)–(2.10) exhibits the quantum synchronisation for generic initial data.
Theorem 2.3. Let $\{U_1,U_2\}$ be a solution to (2.9)–(2.10). Then, for almost all initial data, there exists a constant $\theta ^\infty \in \mathbb R$ such that
Proof. It follows from Lemma 2.4 that $G = U_1U_2^\dagger$ satisfies
and we assume that initial datum $G_0$ is decomposed into $G_0 = V_0 D_0V_0^\dagger$ where $D_0$ is diagonal and $V_0$ is unitary. Then, $G(t)$ is completely determined by the relation $G(t) = V_0 D(t) V_0^\dagger$ where $D$ satisfies (2.13). Since $D$ is a $d\times d$ diagonal and unitary matrix, we can parameterise $D$ as:
By substituting the representation (2.14) of $D$ into (2.13), we obtain
or, equivalently,
which is nothing but a classical Kuramoto synchronisation model. On the other hand, it is already known in [Reference Dong and Xue2] that for almost all initial data, there exists $\theta ^\infty \in \mathbb R$ such that
This yields
Finally, the relation $U_1(t)U_2(t)^\dagger = G (t) = V_0 D(t) V_0^\dagger$ yields the desired convergence.
Theorem 2.3 implies that quantum synchronisation for (1.3) with $N=2$ occurs for generic initial data. Thus, it is naturally expected that quantum synchronisation also emerges for $N\gt 2$ at least under some appropriate condition on the parameters and initial data. We will show the general results for $N\gt 2$ in Section 3.
Finally, we close this section with the Riccati-type differential inequality.
Lemma 2.6. Let $y\;:\;[0,\infty )\to \mathbb R_+$ be a positive, almost everywhere differentiable function satisfying
where $a,b,c\gt 0$ are positive constants. If
then, there exists a constant $\lambda \gt 0$ such that
Proof. Let us consider a quadratic function $f(x)\;:\!=\;cx^2+bx-a$ . Then, the differential inequality that $y$ satisfies becomes
On the other hand, note that the equation $f(x)=0$ has two real roots $\alpha _{\pm }$ satisfying
Hence, if $0\lt y_0\lt \alpha _+$ , then
which implies $y(t)$ decreases from time $t=0$ . However, for $0\lt y(t)\lt y_0\lt \alpha _+$ ,
Therefore, we choose $\lambda = -f(y_0)\gt 0$ to obtain the desired exponential decay.
3. Emergence of quantum synchronisation of (1.3)
We already observed in the previous section that the model (1.3) with $N=2$ exhibits quantum synchronisation for generic initial data. In this section, we present the quantum synchronisation estimate of the model (1.3)–(1.4) when $N\gt 2$ . Precisely, we will provide a sufficient condition on the initial data and the model parameters for the quantum synchronisation of (1.3).
Motivated by the heuristic idea that the following quantity
decays to 0 as $t\to \infty$ , we define the matrix $F_{ij}$ as:
which measures a degree of quantum synchronisation between $U_i$ and $U_j$ . Moreover, for simplicity, we also define
Then, one can observe that the following relations hold
We start with deriving a temporal evolution of $F_{ij}$ .
Lemma 3.1. Let $\{U_j\}$ be a solution to (1.3)–(1.4). Then, $F_{ij}$ satisfies
Proof. Since the proof is too lengthy, we present it in Appendix A.
In order to observe the quantum synchronisation, we define the radius of $F_{ij}$ :
Then, it is straightforward to observe that the quantum synchronisation appears if and only if ${\mathcal D}_F$ converges to 0. In the following lemma, we estimate $\mathcal{D}_F$ .
Lemma 3.2. Let $\{U_i\}_{i=1}^N$ be a solution to (1.3)–(1.4). Then, we have
Proof. We use the estimate of $F_{ij}$ in (3.1) and the fact that ${\textrm{tr}}(F_{ij})=0$ to derive the time derivative of $\|F_{ij}\|^2$ as:
On the other hand, we observe that the following relation holds:
which implies
where we used $\|U_k\|=\sqrt{d}$ . Similarly, we also obtain
Using $|h_{ij}|=|{\textrm{tr}}(U_iU_j^\dagger )|\le d$ , we finally obtain
Therefore, once we choose the indices $i$ and $j$ so that $\|F_{ij}\|=\mathcal{D}_F$ , then we derive the desired differential inequality for $\mathcal{D}_F$ :
Now we are ready to introduce our first main theorem that concerns the emergence of quantum synchronisation for (1.3). It is nothing but a corollary of Lemmas 2.6 and 3.2
Theorem 3.1. Suppose that the initial data satisfy
and let $\{U_j\}$ be a solution to (1.3)–(1.4). Then, system (1.3) exhibits quantum synchronisation:
and the decay rate is exponential.
Proof. It follows from (3.2) that the diameter $\mathcal{D}_F$ satisfies the differential inequality in Lemma 2.6 with the coefficients:
After the straightforward computation, the constant $\alpha _+$ in Lemma 2.6 becomes
Therefore, if $\mathcal{D}_F(0)\lt \alpha _+$ , we conclude that $\mathcal{D}_F(t)$ exponentially decays to 0, which implies the desired convergence.
Remark 3.1. Since $d\ge 1$ , we have
We already observed in Lemma 2.3 that the convergence toward equilibrium is guaranteed. In the following corollary, we show that the convergence rate is indeed exponential by using Theorem 3.1.
Corollary 3.1. Suppose that the initial data satisfy (3.3), and let $\{U_j\}$ be a solution to (1.3)–(1.4). Then, for each $j\in [N]$ , there exists $U_j^\infty \in{ \mathbf{U}(d) }$ such that
Here, the convergence rate is exponential. Moreover, there exist $\alpha _j \in \mathbb C$ with $|\alpha _j|=1$ and $U^\infty \in{ \mathbf{U}(d) }$ such that for each $j\in [N]$ ,
Proof. We note that the convergence of $U_j(t)$ as $t\to \infty$ is already guaranteed from the gradient flow structure in Lemma 2.3. To show that the convergence is exponential, recall the governing equation (1.3) of $U_j$ :
Then, we observe
for some positive constants $C$ and $\lambda$ by Theorem 3.1. Therefore,
which verifies the exponential convergence toward equilibrium. For the last assertion, we first note that, again by Theorem 3.1, we have
which implies
Therefore, for each $i,j\in [N]$ , there exists a constant $\alpha _{ij} \in \mathbb C$ with $|\alpha _{ij}|=1$ such that
Fix $i=1$ and write
Then, $U_j^\infty = \alpha _{1j} U_1^\infty = \alpha _j U^\infty$ for all $j\in [N]$ . This completes the proof.
Remark 3.2. As mentioned in Section 2, we can consider the non-identical model (2.5) of (1.3):
In this case, the dynamics of $G_{ij}$ becomes
and the dynamics of $h_{ij}$ becomes
Thus, when we consider the dynamics of $\|F_{ij}\|^2$ , the additional term is only
Using the fact that ${\textrm{tr}}(F_{ij})=0$ , the first term vanishes. On the other hand, by considering the relation $dG_{ij}=h_{ij}I_d-F_{ij}$ , the second term is reformulated as:
which also vanishes when $H_j = a_j I_d$ . Thus, newly introduced terms from the natural frequencies disappear. Therefore, the results in Theorem 3.1 and Corollary 3.1 are still valid for the non-identical model (3.4) when $H_j=a_jI_d$ with $a_j\in \mathbb R$ .
4. Emergence of quantum synchronisation with time-delayed interaction
In this section, we show that how quantum synchronisation is robust under time-delayed interaction. Recall the time-delayed model introduced in (1.7):
Although time-delayed interaction is employed, the unitary property of $\{U_j\}$ is still guaranteed.
Lemma 4.1. Let $\{U_j\}$ be a solution to (1.7)–(1.8). Then, we have
Proof. Once we notice that the right-hand side of (1.7) can be represented in terms of the projection formula (2.4):
then the positive invariance directly follows.
We first study some elementary lemmas which will be crucially used for the quantum synchronisation for the time-delayed model (1.7). We define a delayed fluctuation for $U_i$ :
Then, we can show that the fluctuation is uniformly bounded by $\mathcal O(1)\tau$ .
Lemma 4.2. Let $\{U_j\}$ be a solution to (1.7)–(1.8). Then, for any $t\gt 0$ , we have
Proof. We basically follow the proof in [Reference Ha, Kim, Kim, Park and Shim5, Lemma 4.1]. By integrating (1.7) over $[(t-\tau )_+,t]$ for $t\gt 0$ to find
Here, we used the notation $x_+\;:\!=\;\max \{x,0\}$ . Then, we observe
to obtain
Next, we define quantities that measure a degree of delayed quantum synchronisation, which are analogous to those introduced in Section 3:
For this notation, we observe
Similar to Lemma 4.2, we need to estimate the fluctuations for $F_{ij}$ .
Lemma 4.3. Let $\{U_j\}$ be a solution to (1.7)–(1.8). Then, for any $t\gt 0$ , the following estimates hold
Here, $M$ is the constant introduced in (4.2).
Proof. (i) We use Lemma 4.2 to find
(ii) We first observe
On the other hand, we have
and by using the same argument, we see
However, since
we obtain the desired control on the difference between $\|F_{ij}\|^2$ and $\|F^\tau _{ij}\|^2$ :
Next, as in Lemma 3.1, we derive a temporal evolution for $F_{ij}$ .
Lemma 4.4. Let $\{U_j\}$ be a solution to (1.7)–(1.8). Then, $F_{ij}$ satisfies
Proof. The only difference between (1.3) and (1.7) is that $U_k(t)$ in (1.3) is replaced with $U_k^\tau (t)$ $= U_k(t-\tau )$ . Thus, it suffices to replace the terms $U_k$ involving dummy index $k$ in (3.1) by $U_k^\tau$ . In particular, we only need to replace the terms whose first index is $k$ such as $h_{ki}, F_{ki}, h_{kj}$ and $F_{kj}$ . For instance, by using (4.3), we observe that $h_{ki}(t) = \textrm{tr}(G_{ki}(t)) = \textrm{tr}(U_k(t)U_i^\dagger (t))$ becomes $\textrm{tr}(U_k(t-\tau )U_i^\dagger (t)) = \textrm{tr}(G_{ik}^{\tau,\dagger } (t))=\overline{h^\tau _{ik}}.$ Therefore, $h_{ki}$ in (3.1) is now replaced by $\overline{h_{ik}^\tau }$ . Similarly, $F_{ki}$ becomes $F_{ik}^{\tau,\dagger }$ . After the replacement, the governing equation of $F_{ij}$ for the time-delayed model (1.7) becomes (4.4).
Next, by following Lemma 3.2, we derive the differential inequality for $\mathcal D_F$ .
Lemma 4.5. Let $\{U_j\}_{j=1}^N$ be a solution to (1.7)–(1.8). Then, $\mathcal D_F$ satisfies
Proof. From Lemma 4.4, $\|F_{ij}\| ^2$ satisfies
Here, we observe
Similarly, we have
Hence, we derive a differential inequality for $\|F_{ij}\|$ :
We now choose the indices $i$ and $j$ so that $\|F_{ij}\|=\mathcal{D}_F$ , and use Lemma 4.3 to conclude that $\mathcal D_F$ satisfies
We now derive the quantum synchronisation of the time-delayed model (1.7) by combining the differential inequality for $\mathcal{D}_F$ and Lemma 2.6.
Theorem 4.1. Suppose that system parameters and initial data satisfy
and let $\{U_j\}$ be a solution to (1.7)–(1.8). Then, system (1.7) exhibits quantum synchronisation:
5. Numerical simulation
In this section, we numerically simulate (1.3) and (1.7) to observe whether the quantum synchronisation appears or not. We randomly generate the initial data $U_j^0$ or $\Phi _j(t)\equiv U_j^0$ for $-\tau \le t\le 0$ over the unitary group ${\mathbf{U}}(d)$ and solve the ordinary/delayed differential equations by using the fourth-order Runge–Kutta method. To verify the emergence of quantum synchronisation, we observe the two quantities. First, we observe the potential $\mathcal{V}$ defined in (2.3). Instead of directly tracking the dynamics of $\mathcal{V}$ , we rescale it as:
so that the value of the potential function lies in $[0,1]$ , regardless of the dimension or the number of particles. We choose $N=20$ and $\kappa =1$ and then observe $\widetilde{\mathcal{V}}$ for different values of dimension $d$ in Figure 1.
We observe that regardless of the dimension, the rescaled potential decays to 0 exponentially fast, implying that the system converges to the equilibrium $\{U^\infty _j\}$ , where the relation $U_i=\alpha _{ij}U_j$ with $|\alpha _{ij}|=1$ holds.
Second, we also present the values $\alpha _j$ defined as $U_j^\infty = \alpha _j U_1^\infty$ in Figure 2. As we showed theoretically, $\alpha _j$ are on the unit circle of the complex plane, which also implies that the system reached the minimiser of the potential.
We also conduct numerical simulations for the time-delayed model (1.7) and report the dynamics of rescaled potential $\widetilde{\mathcal{V}}$ and illustrate the results in Figure 3. The numerical simulation results show that although the time delay effect slows down the decay of the potential, and in particular, the larger time delay implies slower convergence, the system eventually reaches equilibrium. Through the simulation, we numerically observe that the conditions in Theorems 3.1 and 4.1 are technical assumptions for proving the quantum synchronisation, and the quantum synchronisation is indeed observed for a generic initial data, as we proved for the case of $N=2$ .
6. Conclusion
In the present paper, we introduce a modified synchronisation model on the unitary group, which shows a qualitatively different asymptotic behaviour compared to the previous standard synchronisation model on the unitary group. To illustrate the new asymptotic behaviour, we introduce the notion of quantum synchronisation and prove that our model exhibits quantum synchronisation under sufficient conditions on the initial data and model parameters. We also extend the quantum synchronisation analysis to the model with time-delayed interactions and verify the theoretical results by numerical simulations, showing that the quantum synchronisation indeed emerges for generic initial data. Recently, a mean-field limit and kinetic description of the synchronisation models have been widely investigated [Reference Morales and Poyato16, Reference Peszek and Poyato18]. Therefore, one may extend the quantum synchronisation model to the kinetic level, and this will be one of the possible future perspectives.
Acknowledgement
The work of D. Kim was supported by the National Research Foundation of Korea (NRF) grant funded by the Korea government (MSIT) (No.2021R1F1A1055929).
Competing interests
We state that there is no competing interest.
A. Proof of Lemma 3.1
In this appendix, we present the proof of Lemma 3.1. Recall the dynamics of $U_j$ in (1.3):
Then, $G_{ij} = U_i U_j^\dagger$ satisfies
Taking the trace to (A.1), we also obtain the dynamics of $h_{ij}$ as:
We use the relation $F_{ij} = h_{ij}I_d - dG_{ij}$ and the equations (A.1) and (A.2) to obtain the governing equation for $F_{ij}$ :
Since $dG_{ij} = -F_{ij}+h_{ij}I_d$ , we rewrite $\mathcal{I}_2$ as:
Thus, we calculate $\mathcal{I}_1+\mathcal{I}_2$ as:
On the other hand, we note that
and
where we used ${\textrm{tr}}(F_{ij})=0$ . Thus, we substitute the above two relations into the estimate of $\mathcal{I}_{1}+\mathcal{I}_{2}$ to obtain the desired equation for $F_{ij}$ :