1. Introduction
Interference is a key limiting factor for the efficient use of the spectrum in modern wireless networks. It is, therefore, not surprising that the
interference channel (
IC) has been studied extensively in the past; see, e.g., [
1] (Chapter 6) and references therein. Most of the information-theoretic work developed for the IC assumes that interference is always present. However, certain physical phenomena, such as shadowing, can make the presence of interference intermittent or bursty. Interference can also be bursty due to the bursty nature of data traffic, distributed medium access control mechanisms, and decentralized networking protocols. For this reason, there has been an increasing interest in understanding and exploring the effects of burstiness of interference.
Seminal works in this area were performed by Khude et al. in [
2] for the Gaussian channel and in [
3] by using a model which corresponds to an approximation to the two-user Gaussian IC. They tried to harness the burstiness of the interference by taking advantage of the time instants when the interference is not present to send opportunistic data. Specifically, [
2,
3] considered a channel model where the interference state stays constant during the transmission of the entire codeword, which corresponds to a quasi-static channel. Motivated by the idea of degraded message sets by Körner and Marton [
4], Khude et al. studied the largest rate of a coding strategy that provides reliable communication at a basic rate
R and allows an increased (opportunistic) rate
when there is no interference. The idea of opportunism was also used by Diggavi and Tse [
5] for the quasi-static flat fading channel and, recently, by Yi and Sun [
6] for the
K-user IC with states.
Wang et al. [
7] modeled the presence of interference using an
independent and identically distributed (
i.i.d.) Bernoulli process that indicates whether interference is present or not, which corresponds to an ergodic channel. They further assume that the interference links are fully correlated. Wang et al. mainly studied the effect of causal feedback under this model, but also presented converse bounds for the non-feedback case. Mishra et al. considered the generalization of this model to multicarrier systems, modeled as parallel two-user bursty ICs, for the feedback [
8] and non-feedback case [
9].
The bursty IC is related to the binary fading IC, for which the four channel coefficients are in the binary field
according to some Bernoulli distribution. Note, however, that neither of the two models is a special case of the other. While a zero channel coefficient of the cross link corresponds to intermittence of interference, the bursty IC allows for non-binary signals. Conversely, in contrast to the binary fading IC, the direct links in the bursty IC cannot be zero, since only the interference can be intermittent. Vahid et al. [
10,
11,
12,
13,
14] studied the capacity region of the binary fading IC. Specifically, [
11,
14] study the capacity region of the binary fading IC when the transmitters do not have access to the channel coefficients, and [
12] study the capacity region when the transmitters have access to the past channel coefficients. Vahid and Calderbank additionally study the effect on the capacity region when certain correlation is available to all nodes as side information [
13].
The focus of the works by Khude et al. [
3] and Wang et al. [
7] was on the
linear deterministic model (
LDM), which was first introduced by Avestimehr [
15], but falls within the class of more general deterministic channels whose capacity was obtained by El Gamal and Costa in [
16]. The LDM maps the Gaussian IC to a channel whose outputs are deterministic functions of their inputs. Bresler and Tse demonstrated in [
17] that the generalized degrees of freedom (first-order capacity approximation) of the two-user Gaussian IC coincides with the normalized capacity of the corresponding deterministic channel. The LDM thus offers insights on the Gaussian IC.
1.1. Contributions
In this work, we consider the LDM of a bursty IC. We study how interference burstiness and the knowledge of the interference states (throughout referred to as
channel-state information (
CSI)) affects the capacity of this channel. We point out that this CSI is different from the one sometimes considered in the analysis of ICs (see, e.g., [
18]), where CSI refers to knowledge of the channel coefficients. (In this regard, we assume that all transmitters and receivers have access to the channel coefficients). For the sake of compactness, we focus on non-causal CSI and leave other CSI scenarios, such as causal or delayed CSI, for future work.
We consider the following cases: (i) only the receivers know the corresponding interference state (local CSIR); (ii) transmitters and receivers know their corresponding interference states (local CSIRT); and (iii) both transmitters and receivers know all interference states (global CSIRT). For each CSI level we consider both (i) the quasi-static channel and (ii) the ergodic channel. Specifically, in the quasi-static channel the interference is present or absent during the whole message transmission and we harness the realizations when the channel experiences better conditions (no presence of interference) to send extra messages. In the ergodic channel the presence/absence of interference is modeled as a Bernoulli random variable which determines the interference state. The interference state stays constant for a certain coherence time
T and then changes independently to a new state. This model includes the i.i.d. model by Wang et al. as a special case, but also allows for scenarios where the interference state changes more slowly. Note, however, that when the receivers know the interference state (as we shall assume in this work), then the capacity of this model becomes independent of
T and coincides with that of the i.i.d. model. The proposed analysis is performed for the two extreme cases where the states of each of the interfering links are independent, and where states of the interfering links are fully correlated. Hence we unify the scenarios already treated in the literature [
2,
3,
7]. Nevertheless, some of our presented results can be extended to consider an arbitrary correlation between the interfering states. The works by Vahid and Calderbank [
13] and Yeh and Wang [
19] characterize the capacity region of the two-user binary IC and the MIMO X-channel, respectively. While [
13,
19] consider a general spatial correlation between communication and interfering links, they do not consider the correlation between interfering links.
Our analysis shows that, for both the quasi-static and ergodic channels, for all interference regions except the very strong interference region, global CSIRT outperforms local CSIR/CSIRT. This result does not depend on the correlation between the states of the interfering links. For local CSIR/CSIRT and the quasi-static scenario, the burstiness of the channel is of benefit only in the very weak and weak interference regions. For the ergodic case and local CSIR, interference burstiness is only of clear benefit if the interference is either weak or very weak, or if it is present at most half of the time. This is in contrast to local CSIRT, where interference burstiness is beneficial in all interference regions.
Specific contributions of our paper include:
A joint treatment of the quasi-static and the ergodic model: Previous literature on the bursty IC considers either the quasi-static model or the ergodic model. Furthermore, due to space constraints, the proofs of some of the existing results were either omitted or contain little details. In contrast, our paper discusses both models, allowing for a thorough comparison between the two.
Novel achievability and converse bounds: For the ergodic model, the achievability bounds for local CSIRT, and the achievability and converse bounds for global CSIRT, are novel. In particular, novel achievability strategies are proposed that exploit certain synchronization between the users. To keep the paper self-contained, we further present the proof of the achievability bound for local CSIR that has appeared in the literature without proof.
Novel converse proofs for the quasi-static model: In contrast to existing converse bounds, which are based on Fano’s inequality, our proofs of the converse bounds for the rates of the worst-case and opportunistic messages are based on an information density approach (more precise, they are based on the Verdú-Han lemma). This approach does not only allow for rigorous yet clear proofs, but it would also enable a more refined analysis of the probabilities that worst-case and opportunistic messages can be decoded correctly.
A thorough comparison of the sum capacity of various scenarios: Inter alia, the obtained results are used to study the advantage of featuring different levels of CSI, the impact of the burstiness of the interference, and the effect of the correlation between the channel states of both users.
The rest of this paper is organized as follows.
Section 2 introduces the system model, where we define the bursty IC quasi-static setup, the ergodic setup, and briefly summarize previous results on the non-bursty IC. In
Section 3,
Section 4 and
Section 5 we present our results for local CSIR, local CSIRT and global CSIRT, respectively.
Section 6 studies the impact of featuring different CSI levels.
Section 7 analyzes in which scenarios exploiting burstiness of interference is beneficial.
Section 8 concludes the paper with a summary of the results. Most proofs of the presented results are deferred to the appendix.
1.2. Notation
To differentiate between scalars, vectors, and matrices we use different fonts: scalar random variables and their realizations are denoted by upper and lower case letters, respectively, e.g., B, b; vectors are denoted using bold face, e.g., , ; random matrices are denoted via a special font, e.g., ; and for deterministic matrices we shall use yet another font, e.g., . For sets we use the calligraphic font, e.g., . We denote sequences such as by . We define as .
We use
to denote the binary Galois field and ⊕ to denote the modulo 2 addition. Let the down-shift matrix
, a matrix of dimension
, be defined as
with
the all-zero vector and
the identity matrix.
Similarly, we define the matrix
of dimension
that selects the
d lowest components of a vector of dimension
q:
We shall denote by
the entropy of a binary random variable
X with probability mass function (
), i.e.,
Similarly, we denote by
the entropy
where
X and
are two independent binary random variables with probability mass functions
and
, respectively:
For this function it holds that . Finally, denotes the indicator function, i.e., is 1 if the statement is true and 0 if it is false.
2. System Model
Our analysis is based on the LDM, introduced by Avestimehr et al. [
15] for some relay network. This model is, on the one hand, simple to analyze and, on the other hand, captures the essential structure of the Gaussian channel in the high signal-to-noise ratio regime.
We consider a bursty IC where (i) the interference state remains constant during the whole transmission of the codeword of length
N (quasi-static setup) or (ii) the interference state remains constant for a duration of
T consecutive symbols and then changes independently to a new state (ergodic setup). For one coherence block, the two-user bursty IC is depicted in
Figure 1, where
and
are the channel gains of the direct and cross links, respectively. We assume that
and
are known to both the transmitter and receiver and remain constant during the whole transmission of the codeword. For simplicity, we shall assume that
and
are equal for both users. Nevertheless, most of our results generalize to the asymmetric case. More precisely, all converse and achievability bounds generalize to the asymmetric case, while the direct generalization of the proposed achievability schemes may be loose in some asymmetric regions.
For the
k-th block, the input-output relation of the channel is given bys
Let . In (3) and (4), and , . The interference states , , , are sequences of i.i.d. Bernoulli random variables with activation probability p.
Regarding the sequences and , we consider two cases: (i) and are independent of each other and (ii) and are fully correlated sequences, i.e., . For both cases we assume that the sequences are independent of the messages and .
We shall define the normalized interference level as
, based on which we can divide the interference into the following regions (a similar division was used by Jafar and Vishwanath [
20]):
very weak interference (VWI) for ,
weak interference (WI) for ,
moderate interference (MI) for ,
strong interference (SI) for ,
very strong interference (VSI) for .
2.1. Quasi-Static Channel
The channel defined in (3) and (4) may experience a slowly-varying change on the interference state. In this case, the duration of each of the transmitted codewords of length
is smaller than the coherence time
T of the channel and the interference state stays constant over the duration of each codeword, i.e.,
,
. In the wireless communications literature such a channel is usually referred to as a quasi-static channel [
21] (Section 5.4.1). In this scenario, the rate pair of achievable rates
is dominated by the worst case, which corresponds to the presence of interference at both receivers. However, in absence of interference, it is possible to communicate at a higher date rate, so planning a system for the worst case may be too pessimistic. Assuming that the receivers have access to the interference states, the transmitters could send opportunistic messages that are decoded only if the interference is absent, in addition to the regular messages that are decoded irrespective of the interference state. We make the notion of opportunistic messages and rates precise in the subsequent paragraphs.
Let indicate the level of CSI available at the transmitter side in coherence block k, and let indicate the level of CSI at the receiver side in coherence block k:
local CSIR: ,
local CSIRT: ,
global CSIRT: .
We define the set of opportunistic messages according to the level of CSI at the receiver as , where denotes the set of possible interference states . Specifically,
for local CSIR: ,
for local CSIRT: ,
for global CSIRT: .
Then, we define an opportunistic code as follows.
Definition 1 (Opportunistic code for the bursty IC).
An opportunistic code for the bursty IC is defined as:
- 1.
two independent messages and uniformly distributed over the message sets ;
- 2.
two independent sets of opportunistic messages and uniformly distributed over the message sets , ,
- 3.
two encoders:
- 4.
two decoders: .
Here and denote the decoded message and the decoded opportunistic message, respectively. We set , (for local CSIR/CSIRT) and (for global CSIRT).
To better distinguish the rates from the opportunistic rates , , we shall refer to as worst-case rates, because the corresponding messages can be decoded even if the channel is in its worst state (see also Definition 2).
Definition 2 (Achievable opportunistic rates).
A rate tuple is achievable if there exists a sequence of codes such thatandThe capacity region is the closure of the set of achievable rate tuples [1](Sec. 6.1). We define the worst-case sum rate as and the opportunistic sum rate as . The worst-case sum capacity C is the supremum of all achievable worst-case sum rates, the opportunistic sum capacity is the supremum of all opportunistic sum rates, and the total sum capacity is defined as . Note that the opportunistic sum capacity depends on the worst-case sum rate. Remark 1. The worst-case sum rate and opportunistic sum rates in the quasi-static setting depend only on the collection of possible interference states: for independent interference states we have , and for fully correlated interference states we have . In principle, our proof techniques could also be applied to analyze other collections of interference states.
Remark 2. In the CSIRT setting the transmitters have access to the interference state. Therefore, in this setting the messages are strictly speaking not opportunistic. Instead, transmitters can adapt their rate based on the state of the interference links, which is sometimes referred to as rate adaptation in the literature.
2.2. Ergodic Channel
In this setup, we shall restrict ourselves to codes whose blocklength N is an integer multiple of the coherence time T. A codeword of length thus spans K independent channel realizations.
Definition 3 (Code for the bursty IC).
A code for the bursty IC is defined as:
- 1.
two independent messages and uniformly distributed over the message sets
- 2.
two encoders:
- 3.
two decoders:
Here denotes the decoded message, and and indicate the level of CSI at the transmitter and receiver side, respectively, which are defined as for the quasi-static channel in Section 2.1. Definition 4 (Ergodic achievable rates).
A rate pair is achievable for a fixed T if there exists a sequence of codes (parametrized by K) such that The capacity region is the closure of the set of achievable rate pairs. We define the sum rate as , the sum capacity C is the supremum of all achievable sum rates.
2.3. The Sum Capacities of the Non-Bursty and the Quasi-Static Bursty IC
When the activation probability
p is 1, we recover in both the ergodic and quasi-static scenarios the deterministic IC. For a general deterministic IC the capacity region was obtained in [
16] (Theorem 1) and then by Bresler and Tse in [
17] for a specific deterministic IC. For completeness, we present the sum capacity region for the deterministic non-bursty IC in the following theorem.
Theorem 1. The sum capacity region of the two-user deterministic IC is equal to the union of the set of all sum rates R satisfying Proof. The proof is given in [
16] (Section II). For the achievability bounds, El Gamal and Costa [
16] (Theorem 1) use the Han-Kobayashi scheme [
22] for a general IC. Bresler and Tse [
17] (
Section 4) use a specific Han-Kobayashi strategy for the special case of the LDM. Jafar and Vishwanath [
20] present an alternative achievability scheme for the
K-user IC, which particularized for the two-user IC will be referenced in this work. □
We can achieve the sum rates (9) and (11) over the quasi-static channel by treating the bursty IC as a non-bursty IC. The following theorem demonstrates that this is the largest achievable worst-case sum rate irrespective of the availability of CSI and the correlation between and .
Theorem 2 (Sum capacity for the quasi-static bursty IC). For , the worst-case sum capacity of the bursty IC is equal to the supremum of the set of sum rates R satisfying
Proof. The converse bounds are proved in
Appendix A.1. Achievability follows directly from Theorem 1 by treating the bursty IC as a non-bursty IC. □
Theorem 2 shows that the worst-case sum capacity does not depend on the level of CSI available at the transmitter and receiver side. However, this is not the case for the opportunistic rates as we will see in the next sections.
Remark 3. In principle, one could reduce the worst-case rates in order to increase the opportunistic rates. However, it turns out that such a strategy is not beneficial in terms of total rates , . In other words, setting , (for local CSIR/CSIRT) and (for global CSIRT), as we have done in Definition 2, incurs no loss in total rate. Furthermore, in most cases it is preferable to maximize the worst-case rate, since it can be guaranteed irrespective of the interference state.
4. Local CSIRT
For the quasi-static and ergodic setups, we present converse and achievability bounds when transmitters and receivers have access to their corresponding interference states. We shall only consider the independent case here, because when
local CSIRT coincides with global CSIRT, which will be discussed in
Section 5.
4.1. Quasi-Static Channel
For the quasi-static channel, the converse and achievability bounds were already presented in Theorem 3 in
Section 3.1.1. Indeed, the converse bounds were derived for local CSIRT, whereas the achievability bounds in that theorem were derived for local CSIR. Since these bounds coincide for all interference regions and all probabilities of
it follows that, for the quasi-static channel, availability of local CSI at the transmitter in addition to local CSI at the receiver is not beneficial. The converse and achievability bounds are then given in Theorem 3.
4.2. Ergodic Channel
The converse bound (18) presented in Theorem 4 was derived for local CSIRT, so it applies to the case at hand. We next present achievability bounds for this setup that improve upon those for CSIR. The aim of these bounds is to provide computable expressions showing that local CSIRT outperforms local CSIR in the whole range of the parameter. While the particular achievability schemes are sometimes involved, the intuition behind these schemes can be explained with the following toy example.
Example 1. Let us assume that , and suppose that at time k the transmitters send the bits . If there is no interference, then receiver i receives . If there is interference, then receiver i receives . Consequently, the channel flips if , and it flips if . It follows that each transmitter-receiver pair experiences a binary symmetric channel (BSC) with a given crossover probability that depends on p and on the probabilities that are one. Specifically, letand define and , which are the crossover probabilities of the BSCs experienced by receivers 1 and 2, respectively, when they are affected by interference. By drawing for each user two codebooks (one for and one for ) i.i.d. at random according to the probabilities , , , and , and by following a random-coding argument, it can be shown that this scheme achieves the sum rate This expression holds for any set of parameters , and the largest sum rate achieved by this scheme is obtained by maximizing over .
In the following, we present the achievable sum rates that can be obtained by generalizing the above achievability scheme to general
and
. The achievability schemes that achieve these rates are presented in
Appendix D. The largest achievable sum rates can then be obtained by numerically maximizing over the parameters
(which depend on the interference region).
For the VWI region, we achieve the sum rate
For the WI region, we can achieve for any
where
and
.
To present the achievable rates for MI, we need to divide the region into the following four subregions:
- (a)
For
, we can achieve for any
and
where
,
,
, and
, and
where
,
,
, and
.
Remark 7. After combining (32) and (33), and appear only through the functions and , respectively. Hence, and can be optimized separately from the remaining terms.
- (b)
For
, we can achieve for any
and
where
,
,
, and
, and
where
,
,
, and
. Remark 7 also applies to the parameters
and
in (34) and (35).
- (c)
For
, we can achieve for any
and
where
,
, and
, and
where
,
, and
.
- (d)
For
we can achieve for any
and
where
,
, and
, and
where
,
, and
.
To present the achievable rates for SI, we divide the region into the following four subregions:
- (a)
For
, we can achieve for any
and
where
and
, and
where
and
.
- (b)
For
, we can achieve for any
and
where
, and
, and
where
, and
. Remark 7 also applies to the parameters
and
in (42) and (43).
- (c)
For
, we can achieve for any
and
,
where
,
,
and
. Remark 7 also applies to the parameters
and
in (44) and (45).
- (d)
For
, we can achieve for any
where
and
. Remark 7 also applies to the parameters
and
in (
45) and (
46).
In each region, we optimize numerically over the set of parameters, exploiting in some cases that there is symmetry (except for ) between the corresponding parameters of both users.
4.3. Local CSIRT vs. Local CSIR
To evaluate the effect of exploiting local CSI at the transmitter side, we plot in
Figure 2,
Figure 3 and
Figure 4 the converse and achievability bounds for local CSIR and local CSIRT. For each interference region, we choose one value of
. We omit the VWI region because in this region both local CSIR and local CISRT coincide. We observe that for all interference regions, except in the VWI region, local CSIRT outperforms local CSIR. We further observe that the largest improvement is obtained for
. This is not surprising, since in this case the uncertainty about the interference states is the largest.
4.4. Quasi-Static vs. Ergodic Setup
As observed in the previous subsection, for the ergodic setup local CSIRT outperforms local CSIR in all interference regions (except VWI). In contrast, the opportunistic rates achievable in the quasi-static setup for local CSIRT coincide with those achievable for local CSIR. In other words, the availability of local CSI at the transmitter is only beneficial in the ergodic setup but not in the quasi-static one. This remains to be true even if we consider the average sum capacity rather than the sum rate region. Intuitively, in the coherent setup, the achievable rates depend on the input distributions of and , and adapting these distributions to the interference state yields a rate gain. In contrast, in the quasi-static setup, we treat the two interference states separately: the worst-case rates are designed for the worst case (where both receivers experience interference), and the opportunistic rates are designed for the best case (where the corresponding receiver is interference-free).
Given that the opportunistic rate region is not enhanced by the availability of local CSI at the transmitter, it follows directly that the same is true for the average sum capacity, defined in (23). Note, however, that it is unclear whether (23) corresponds to the best strategy to transmit several messages over independent uses of a quasi-static channel when the transmitters have access to local CSI. Indeed, in this case transmitter i may choose the values for and as a function of the interference state , potentially giving rise to a larger average sum capacity. Yet, the set of achievable rate pairs depends on the choice of of transmitter , which transmitter i may not deduce since it has no access to the other transmitter’s CSI. How the transmitters should adapt their rates to the interference state remains therefore an open question.
6. Exploiting CSI
In this section, we study how the level of CSI affects the sum rate in the quasi-static and ergodic setups.
For the quasi-static channel,
Figure 5 and
Figure 6 show the total sum capacity presented in Theorems 3, 6 and 7. Specifically, we plot the normalized total sum capacity
versus
, comparing scenarios of local CSIR/CSIRT and global CSIRT. We analyze separately the cases
and
. For the case where
and global CSIRT, the total sum capacity is
for all interference regions. For
and local CSIR/CSIRT, the total sum capacity is
for VWI and VSI, but is strictly smaller in the remaining interference regions. Hence, in these regions global CSIRT outperforms local CSIR/CSIRT. For the case where
, the total sum capacity is equal to
irrespective of the level of CSI.
We further observe that the opportunistic-capacity region for local CSIRT is equal to that for local CSIR. Thus, local CSI at the transmitter is not beneficial. As we shall see later, this is in stark contrast to the ergodic setup, where local CSI at the transmitter-side is beneficial. Intuitively, in the ergodic case the input distributions of and depend on the realizations of and , respectively. Hence, adapting the input distributions to these realizations increases the sum capacity. In contrast, in the quasi-static case, the worst-case scenario (presence of interference) and the best-case scenario (absence of interference) are treated separately. Hence, there is no difference to the case of local CSIR.
For the ergodic setup,
Figure 7,
Figure 8,
Figure 9 and
Figure 10 show the converse and achievability bounds presented in Theorems 4, 5, 8 and 9. We further include the results on local CSIRT presented in
Section 4. Specifically, we plot the normalized sum capacity
versus the probability of presence of interference
p, comparing scenarios of local CSIR, local CSIRT and global CSIRT when
and
are independent of each other. The shadowed areas correspond to the regions where achievability and converse bounds do not coincide.
Figure 7 reveals that in the VWI region the sum capacity is equal to
, irrespective of the availability of CSI (see
Figure 7). Thus, in this region access to global CSIRT is not beneficial compared to the local CSIR scenario. In the VSI region, the sum capacity of the non-bursty IC is equal to
, which is that of two parallel channels without interference [
15] (Section II-A). Therefore, burstiness of the interference (and hence CSI) does not affect the sum capacity.
In the WI region, shown in
Figure 8, the converse and achievability bounds for local CSIR and global CSIRT coincide and it is apparent that global CSIRT outperforms local CSIR. In the MI and SI regions, the converse and achievability bounds only coincide for certain regions of
p. Nevertheless,
Figure 9 and
Figure 10 show that, in almost all cases, global CSIRT outperforms local CSIR. (For the case presented in
Figure 9, we also present the local CSIRT converse bound (18), although it is looser for some values of
p, with respect to the one depicted for global CSIRT.) Local CSIRT outperforms local CSIR in all interference regions (except VWI). We stress again the fact that this was not the case in the quasi-static scenario, where both coincide.
We next consider the case where
and
are fully correlated. For this scenario, [
7,
23] studied the effect of perfect feedback on the bursty IC. For comparison, the non-bursty IC with feedback was studied by Suh et al. in [
25], where it was demonstrated that the gain of feedback becomes arbitrarily large for certain interference regions (VWI and WI) when the signal-to-noise-ratio increases. This gain corresponds to a better resource utilization and thereby a better resource sharing between users. Specifically, [
7,
23] (bursty IC) and [
25] (non-bursty IC) assume that noiseless, delayed feedback is available from receiver
i to transmitter
i. For the symmetric setup treated in this paper, [
7] (Theorem 3.2) or [
23] (Theorem 3.2) showed the following:
Theorem 12 (Channel capacity for the bursty IC with feedback [
7,
23]).
The sum capacity of the bursty IC with noiseless, delayed feedback is given by Proof. See [
7] (Sections IV and V), [
23] (Sections IV and V, Appendices A, C, D). □
Observe that (65) for
coincides with (18). This implies that local CSIRT can never outperform delayed feedback. Intuitively, feedback contains not only information about the channel state, but also about the previous symbols transmitted by the other transmitter, which can be exploited to establish a certain cooperation between the transmitters.
Figure 11,
Figure 12,
Figure 13 and
Figure 14 show the bounds on the normalized sum capacity,
, comparing the scenarios of local CSIR versus global CSIRT when the interference states are fully correlated, i.e.,
. They further show the sum capacity for the case where the transmitters have noiseless delayed feedback [
7]. The shadowed areas correspond to the regions where achievability and converse bounds do not coincide.
Figure 11 reveals that feedback in the VWI region outperforms the non-feedback case, irrespective of the availability of CSI. Wang et al. [
7] have further shown that feedback also outperforms the non-feedback case in the VSI region. The order between global CSIRT and the feedback scheme is not obvious. There are regions where global CSIRT outperforms the feedback scheme and vice versa. Indeed, on the one hand, feedback contains information about the previous interference states and previous symbols transmitted by the other transmitter, permitting the resolution of collisions in previous transmissions. On the other hand, global CSIRT provides
non-causal information about the interference states, allowing a better adaptation of the transmission strategy to the interference burstiness.
7. Exploiting Interference Burstiness
To better illustrate the benefits of interference burstiness, we show the normalized sum capacity as a function of
, in order to appreciate all the interference regions. In the non-bursty IC (
), this curve corresponds to the well-known W-curve obtained by Etkin et al. in [
26]. We next study how burstiness affects this curve in the different considered scenarios.
In the quasi-static setup, burstiness can be exploited by sending opportunistic messages. We consider the total sum capacity for the case where the worst-case rate R is maximized. For local CSIR/CSIRT, Theorem 3 suggests that the use of an opportunistic code is only beneficial if the interference region is VWI or WI. For other interference regions there is no benefit. In contrast, for global CSIRT an opportunistic code is beneficial for all interference regions (except for VSI where the sum capacity corresponds to that of two parallel channels without interference).
Figure 15 and
Figure 16 illustrate these observations. Specifically, in
Figure 15 and
Figure 16 we show the normalized total sum capacity achieved under local CSIR/CSIRT and global CSIRT when the interference states are independent. We observe that, for local CSIR, the opportunistic rates
and
, are only positive in the VWI and WI regions. In these regions, if only one of the receivers is affected by interference the sum capacity is given by the worst-case rate
R plus one opportunistic rate of the user which is not affected by interference. In absence of interference at both receivers, both receivers can decode opportunistic messages. Hence, the total sum capacity is equal to
. For global CSIRT we can observe that, when only one of the receivers is affected by interference, we achieve the same total sum capacity as in the local CSIR/CSIRT. However, in absence of interference at both receivers, we achieve the trivial upper bound corresponding to two parallel channels. The fully correlated scenario can be considered as a subset of the independent scenario. Indeed, for the case
and
we obtain the same total sum capacity as for the independent scenario. The main difference is that in the fully correlated scenario the interference states
and
are impossible.
For the ergodic case,
Figure 17 and
Figure 18 show the bounds on the normalized sum capacity,
, as a function of
when
and
are independent. The shadowed areas correspond to the regions where achievability and converse bounds do not coincide. We further show the W-curve. Observe that for
the sum capacity as a function of
forms a V-curve instead of the W-curve. Further observe how the sum capacity approaches the W-curve as
p tends to one.
In
Figure 19 we show the bounds on the normalized sum capacity,
, as a function of
for global CSIRT when
and
are fully correlated. (For local CSIR the sum capacity is not affected by the correlation between
and
, so the curve for
as a function of
coincides with the one obtained in
Figure 17.) We observe that, for all values of
, the sum capacity forms a W-curve similar to the W-curve for
. This is the case because, when both interference states are fully correlated, the bursty IC is a combination of an IC and two parallel channels.
We observe that for global CSIRT the burstiness of the interference is beneficial for all interference regions and all values of
p. For local CSIR, burstiness is beneficial for all values of
p for VWI and WI. However, for MI and SI, burstiness is only of clear benefit for
. It is yet unclear whether burstiness is also beneficial in these interference regions when
. To shed some light on this question, note that evaluating the converse bound in [
23] (Lemma A.1), which yields (21), for inputs
and
that are temporally independent, we recover the achievability bound (20). Since for MI/SI and
this bound coincides with the rates achievable over the non-bursty IC, this implies that an achievability scheme can only exploit the burstiness of the interference in this regime if it introduces some temporal correlation (this observation is also revealed by considering the average sum capacity for the quasi-static case). In fact, for global CSIRT the achievability schemes proposed in Theorem 9 for MI and SI copy the same bits over several coherence blocks, i.e., they exhibit a temporal correlation, which cannot be achieved using temporally independent distributions. However, the temporal pattern of these bits requires knowledge of both interference states, so this approach cannot be adapted to the cases of local CSIR/CSIRT. In contrast, for global CSIRT in the fully correlated case where converse and achievability bounds coincide, it is not necessary to introduce temporal memory. This scenario is simpler, since in this case the channel exhibits only two channel states, a non-bursty IC and two parallel channels.
8. Summary and Conclusions
In this work, we considered a two-user bursty IC in which the presence/absence of interference is modeled by a block-i.i.d. Bernoulli process while the power of the direct and cross links remains constant during the whole transmission. This scenario corresponds, e.g., to a slow-fading scenario in which all the nodes can track the channel gains of the different links, but where the interfering links are affected by intermittent occlusions due to some physical process. While this model may appear over-simplified, it yields a unified treatment of several aspects previously studied in the literature and gives rise to several new results on the effect of the CSI in the achievable rates over the bursty IC. Our channel model encompasses both the quasi-static scenario studied in [
3,
5] and the ergodic scenario (see, e.g., [
7,
12]). While the model recovers several cases studied in the literature, it also presents scenarios which have not been previously analyzed. This is the case, for example, for the ergodic setup with local and global CSIRT. Our analysis in these scenarios does not yield matching upper and lower bounds for all interference and burstiness levels. Yet, examining the obtained results, we observe that the best strategies in these scenarios often require elaborated coding strategies for both users that feature memory across different interference. This fact probably explains why no previous results exist in these scenarios. Furthermore, several of our proposed achievability schemes require complex correlation among signal levels. Thus, while the LDM in general provides insights on the Gaussian IC, the proposed schemes may actually be difficult to convert to the Gaussian case.
In the quasi-static scenario, the highest sum rate R that can be achieved is limited by the worst realization of the channel and thus coincides with that of the (non-bursty) IC. We can however transmit at an increased (opportunistic) sum rate when there is no interference at any of the interfering links. For the ergodic setup, we showed that an increased rate can be obtained when local CSI is present at both transmitter and receiver, compared to that obtained when CSI is only available at the receiver side. This is in contrast to the quasi-static scenario, where the achievable rates for local CSIR and local CSIRT coincide. Featuring global CSIRT at all nodes yields an increased sum rate for both the quasi-static and the ergodic scenarios. In the quasi-static channel, global CSI yields increased opportunistic rates in all the regions except in the very strong interference region, which is equivalent to having two parallel channels with no interference.
Both in the quasi-static and ergodic scenarios, global CSI exploits interference burstiness for all interference regions (except for very strong interference), irrespective of the level of burstiness. When local CSI is available only at the receiver side, interference burstiness is of clear benefit if the interference is either weak or very weak, or if the channel is ergodic and interference is present at most half of the time. When local CSI is available at each transmitter and receiver and the channel is ergodic, interference burstiness is beneficial in all interference regions except in the very weak and very strong interference regions.
In order to compare the achievable rates of the quasi-static and ergodic setup, one can define the average sum rate of the quasi-static setup for local CSIR/CSIRT as , with a similar definition for the average sum rate for global CSIRT. The average sum rate corresponds to a scenario where several codewords are transmitted over independent quasi-static bursty ICs. This, in turn, could be the case if a codeword spans several coherence blocks, but no coding is performed over these blocks. This is in contrast to the ergodic setup where coding is typically performed over different coherence blocks. By the law of large numbers, roughly a fraction of p codewords experiences interference, the remaining codewords are transmitted free of interference. Consequently, an opportunistic transmission strategy achieves the rate , which corresponds to the average sum rate. Our results demonstrate that, for local CSIR, the average sum capacity, obtained by maximizing the average sum rate over all achievable rate pairs , coincides with the achievable rates in the ergodic setup for all interference regions. In contrast, for local CSIRT, the average sum capacity is strictly smaller than the sum capacity in the ergodic setup. For global CSIRT, average sum capacity and sum capacity coincide for all interference regions when the interference states are fully correlated, and they coincide for VWI and WI when the interference states are independent. For global CSIRT, MI/SI, and independent interference states, the average sum capacity is smaller than the sum capacity in the ergodic setup. In general, the average sum capacity defined for the quasi-static setup never exceeds the sum capacity in the ergodic setup. This is perhaps not surprising if we recall that the average sum capacity corresponds to the case where no coding is performed over coherence blocks. Interestingly, the average sum capacity is not always achieved by maximizing the worst-case rate. For small values of p, it is beneficial to reduce the worst-case rate in order to achieve a larger opportunistic rate.
In our work we considered both the case where the interference states of the two users are independent and the case where the interference states are fully correlated. In both ergodic and quasi-static setups, the results for local CSIR are independent of the correlation between interference states. For other CSI levels, dependence between the interference states helps in all interference regions except very weak and very strong interference regions.