0:00:13hello everyone
0:00:15a here i will be presenting a high during the work between the university of people and to feel it's
0:00:20set
0:00:21in the netherlands
0:00:24okay
0:00:25here it will be a speaking about the concept of a detection like diversity
0:00:30in one can to
0:00:31spectrum sense
0:00:33as we will see
0:00:36a a a a a you is pretty minds the concept of type are T A we all know from
0:00:41communication
0:00:43and here a is that would like to a person
0:00:46first
0:00:48i will be introducing the concept of a a type are T
0:00:52may in communications
0:00:54probably due are or familiar
0:00:56with it but uh it just one is light
0:00:58and then i will be presenting
0:01:01the a
0:01:03this set that we will be can is here to form we can't that i detection
0:01:08oh will be paired very simple
0:01:10simple model but the is enough for our corporate part
0:01:15and
0:01:16then i'm willing to use the concept of type are T first percent it by that kind of map
0:01:22in their a context of for uh that networks and we we see that it applies to was spectrum sensing
0:01:28and i with if few nice the presentation with some results
0:01:32and they find out
0:01:33please
0:01:36first
0:01:37and the concept of diversity in wireless communications
0:01:41yeah
0:01:43it's a a like a
0:01:45we have a a a bit error rate cool
0:01:48usually a a a and these behaviour in the high snr regime
0:01:53that it's a we have here um with if you got that that it's sort which were usually colour
0:01:58a coding gain of quickly to now that
0:02:00i one
0:02:01and to a we have here i'm X point
0:02:04that it is that are secure
0:02:07a by using different coding scheme so we can
0:02:10a a move this course down but this no is kind of their as file they died are secure that
0:02:15of the is
0:02:17and a
0:02:18the was Q means a if we can in probably a similar scheme in
0:02:23in a
0:02:24that a the spectrum sense
0:02:26and we would see that a a yes
0:02:28but
0:02:29we have we must have into account that in communications
0:02:33okay we use when move far from this point so that
0:02:37we use the
0:02:39usually go to the bit error rates are um to ten to the minor to your ten to the minus
0:02:44four
0:02:45and
0:02:46a a a a use could be not the case in the case of the spend to sense
0:02:51a here we have the model that we we can see there here in a spectrum sensing
0:02:56a a a a a simple in the sense that a will be considered
0:03:00both the spatial and a both temporal
0:03:04while
0:03:05signal
0:03:06and nodes
0:03:08and to
0:03:09here we will have that the noise he's can see there are uncorrelated that first antennas same with the same
0:03:14part
0:03:15we should we be assumed no
0:03:17and the signal it would be a a run one in
0:03:21that T
0:03:22a a is the same signal
0:03:23seeing told antennas
0:03:25yes multiplied by a company
0:03:26five
0:03:29and a we we consider here are some more
0:03:34under this model it's easy to see that the hypothesis that dustin problem is given by the eye what this
0:03:40is there
0:03:41that a
0:03:43no no memory usage is present
0:03:45that is the the same to say that H sequence either
0:03:49yeah hypothesis one it's different from zero
0:03:52and to as detection schemes
0:03:54we we can see there a a a three C
0:03:57the first one is that year are clear that the talk but you're not i a generalized likelihood
0:04:02racial test
0:04:03for a say and more that we present before
0:04:06and in this case we have that in this a is that vector or response to the largest eigenvalue of
0:04:12the spatial covariance
0:04:15mesh sure
0:04:16spatial covariance
0:04:17and then
0:04:18these detector
0:04:19choirs the cross-correlation terms between the different a
0:04:24and see it's not a very useful for for to put the
0:04:28implementation
0:04:30then we have a the detection that just mesh are spent at the at each of and then S
0:04:35some C
0:04:36i
0:04:36and compress it seconds set their score
0:04:39and a finally we will have a a a fully these two would
0:04:44a a or we sure that
0:04:46a a a a and that test
0:04:48performed is in each of the nodes and then just the decisions are right
0:04:52send
0:04:53to the fashion
0:04:54which one send
0:04:56and the
0:04:59as you can see these say that the are a better
0:05:02in terms of their complexity
0:05:04first we have these that they are requires that they only got ten S are located
0:05:09this one requires to there's meet then or you seen by each of the that top say here we have
0:05:14they or for sure
0:05:16and
0:05:17as performers formers tick we will use a a day usual probably lead your sound and
0:05:22and the probability of detection that it's equal want to a one minute the probability of
0:05:28and the we are considering here a a fading the fading case
0:05:32we are that a a bit channel coefficient and coefficient H
0:05:37is not the state it is not a deterministic but a a a a presents that are and fading
0:05:43in this case we have that they produce the of false alarm
0:05:46it depends only on the on this is zero and does it and doesn't depend on the right stations of
0:05:52they
0:05:52of the channel
0:05:55and then we
0:05:57we have that the a a a it's a also that are used
0:06:01can in the following we will consider probability of false alarm fixed
0:06:05and we will focus on the became your of the probability of detection and probability of missed detection
0:06:11that the columns a random body
0:06:14can we talk about the and they were set in this case
0:06:17and that's there is a a a a a two
0:06:19if we plot
0:06:22directly they a their behaviour of the different detectors
0:06:26for a different number of antennas
0:06:29yeah we brought in the average means that the probability
0:06:33this already average over a a fading right S H M so the channel are going to be average a
0:06:38signal of the channel
0:06:39and we can see that a a week come bound
0:06:42all the behaviour of detectors
0:06:44and the same definition of in the communications a scheme apply
0:06:49that be say here we have that the slope of the cool
0:06:52a corresponds to my and the number of and
0:06:57however that was to me a does it makes sense to consider these
0:07:01this performance metric
0:07:03in
0:07:04in the spectrum sensing
0:07:07because here if we will look quite these axes
0:07:10we see that a we yeah we if they asymptotic really in a signals larger than C
0:07:16but we are interested more in the behaviour of if you for and the schemes here and use be you
0:07:22where a
0:07:23these behavior is
0:07:24you sent a fully described by this is no
0:07:29hence can a we have that
0:07:33in in
0:07:34in
0:07:35a spectrum sensing we are more interested
0:07:38you know in these two point
0:07:40i mean a a a a at what point
0:07:42that that vectors are just working with
0:07:44and how fast
0:07:46these that the door
0:07:47a
0:07:49i achieves
0:07:50asymptotic asymptotic rate
0:07:53in this case a
0:07:55we we can think
0:07:57if
0:07:58if the a previous method a couple i can describe this
0:08:01features and a we say that we can see that and that a a a
0:08:06detection by their city as seen in communications just described the behaviour of the course
0:08:11cool
0:08:12here
0:08:13when the probability of rich probably get detection was close to one
0:08:18but a ever this problem or ready yeah there you four
0:08:21in there are that work
0:08:22and they here we are going to use a a summer results
0:08:26first present it by that i don't have
0:08:30in the feed it of a product networks
0:08:33and a but you also have the same problem that the and they are actual definition of type are you
0:08:38that's an but i directly to a to the sense
0:08:44a spectrum sense
0:08:45in this case they are there as they T by two permit
0:08:49a they define that may more iteration of a signal
0:08:54a
0:08:55crowbar bar star
0:08:56that it's here and you'd say and the point where they
0:09:00average probably the of detection it was point five
0:09:04that it's a and the point
0:09:06from which they that vectors that's working well
0:09:11this corpus
0:09:12all i always assumes that the probably you of false alarm is fixed
0:09:16a case a fixed for
0:09:19and the the second a
0:09:21metric take they use
0:09:23to characterise the
0:09:25the performance
0:09:27is that they are secure the or that or that a i'm not a bit by are T
0:09:31that in this case is defined as a is slow
0:09:35of a
0:09:36average average probability of detection at this point that we have seen before
0:09:41that to use a a a a a prop
0:09:43the performance of kind of a eyes by
0:09:46these
0:09:47like that i wrote he
0:09:54a a in their case
0:09:56this this that they pretty they use a is very similar to that one may we have seen
0:10:01in five to this equation
0:10:03i really is complete with the more they like percent at to be in this talk
0:10:08the only difference that it's a big difference
0:10:11is that a you know for rather
0:10:13the vector direct X
0:10:14these assumed to be known
0:10:17and the seems the that already
0:10:19it's assumed to be no
0:10:21a
0:10:21why even if fading
0:10:23it can be seen as a option
0:10:26a random variable
0:10:27because we have here i i wish and noise last
0:10:30the for a
0:10:31what features of the channel that is also about the case of raid five fading
0:10:36and then thing
0:10:38this um is
0:10:39also about
0:10:40and then
0:10:41they derive the diversity order
0:10:45as defined by
0:10:47i is the mutual we have seen before
0:10:51a for a three different detectors high percentage before
0:10:54for the idea that they they think that they or their grows
0:10:58linear with the number of antennas
0:11:01energy detection we could also with
0:11:03the square root of a
0:11:05and they are function i a
0:11:08it grows with a a low you mean
0:11:11of the number of and can spend taking of the cases it's proportional to the number of some
0:11:16we have a from each of them then
0:11:19but a a however in a spectrum sensing a a we have
0:11:23that a
0:11:25just go here
0:11:26we have to be
0:11:27the transmitted signal by the primary system is not no
0:11:31in this case a we have here i wish we could like biology
0:11:35yeah
0:11:36something
0:11:37and here we have another option
0:11:40a it's is
0:11:42something in difficult to deal with
0:11:44and a in five
0:11:45we have a
0:11:49the a
0:11:50the probability of the detection
0:11:52without
0:11:53i
0:11:54having the average
0:11:56i mean a we have this i mean close form but we need one but it with respect to the
0:12:01fading of the channel
0:12:04a a this is a difficult
0:12:06and a a a at least a
0:12:09a a in order to get some
0:12:11close form results as we have to resort to approximations
0:12:16and they inspired by the problem and a actually definition of a C you by that do not
0:12:21we propose the following approximation
0:12:24here a i'm not in their joint probability of detection
0:12:28that's a before they title
0:12:32average
0:12:33a a with respect
0:12:34to this thing
0:12:35to the extent and
0:12:36as
0:12:37and we approximate it by a piecewise linear
0:12:40function
0:12:41that a a a a a has there right the slope but the point
0:12:44so your point five
0:12:45and then
0:12:47you
0:12:48you from a point and before a point it
0:12:51zero and one
0:12:54this looks like a rough approximation but they are there are writing with respect to
0:13:00to the a
0:13:01to a rayleigh fading we see that and a
0:13:05the approximation a
0:13:07fits speed you we pretty well with they a with N P D rock salt
0:13:12and more if we look at the point of interest that it's are around
0:13:17where the probability of detection is a point five the average probability of detection is point
0:13:24and a
0:13:25using this a this approximation we we where you want to thing
0:13:30the same type of the order that
0:13:32i in the case of for other
0:13:34but a a for our to
0:13:36this is already the a and that her and then at their type of C by that's that you are
0:13:40for spectrum send
0:13:42a here we can see that a a there are stored sub time not quite similar to the to that
0:13:47one simple of usually
0:13:49and the
0:13:51here we see that a a for the N or the we then in that uh a more of their
0:13:55proportional to web
0:13:57here are for an and you the texture the square root of ten
0:14:00and for the or for sure
0:14:01even using this approximations
0:14:04we are not able to obtain now
0:14:06a a closed-form expression for the
0:14:09now i
0:14:12in this case a we just show numerically that it's a smaller on the square
0:14:18but they we believe
0:14:20we believe that they in fact
0:14:23i
0:14:23it is
0:14:24similar to the case of a rather think it's problem
0:14:28brought proportional to look
0:14:32and a which is the main difference
0:14:35with respect to a rather that a here
0:14:37if you if we all remember the the other perhaps you where
0:14:41exactly like that
0:14:42but we have a okay are and not just
0:14:46uh i square root of K
0:14:49this uh
0:14:52is performance to a big keys
0:14:54the comes from the fact that we don't know that with that C
0:14:58you know rather that they know they
0:15:01the vector
0:15:02a
0:15:04the transmitted signal
0:15:06and then
0:15:08they
0:15:08a start
0:15:09a like are or of the um we can do here the spectrum sin
0:15:16and a to finish this presentation of just will percent here some
0:15:20some numerical results
0:15:22that we can not thing you see these
0:15:25i
0:15:26seem that more than
0:15:28here we can see that the and the minimum operational snr
0:15:33a
0:15:34the D C with the number of antennas
0:15:37and a we can see here that actually
0:15:40there are a a a a a great of D is with respect
0:15:44to the different
0:15:46a a to the different that that
0:15:48and the D R and yeah O T
0:15:50or which performs best
0:15:51but uh as we have seen it cannot be implement implement eating at least T would be man
0:15:57and then are you X that
0:15:59it performs a pretty you that are and day or for sure
0:16:03and here we can see they behave you're right talk a lot before that if we look at the diapers
0:16:08the or or than with respect to the number of antennas
0:16:11the growth great
0:16:12for the are to use mostly you
0:16:15why a they one for day
0:16:17and that you that they don't use a kind of a
0:16:21following the square root of and
0:16:23and he and or for sure
0:16:25we can not think these numerical
0:16:28for from the theoretical results
0:16:30but we can not get that close form spanish pressure
0:16:34a a to compute
0:16:35some complete from
0:16:37here i percent the concept of a a a a a that are not a they to T
0:16:42and we have seen that it's meaningful
0:16:45for spectrum size
0:16:46this are that we use
0:16:48a however
0:16:50a a it's
0:16:51white white and if you were to compute
0:16:54a a and we need
0:16:55to we sort
0:16:56two approximations in model the too
0:16:59do thing a close form
0:17:01a
0:17:02and a a i is to the racial set technique an approximation we some are we have four with
0:17:08to take care about using approximations in these kind of
0:17:12point
0:17:13and as future work a yeah
0:17:16the i just percent it one
0:17:18not channel aggressive but but
0:17:20maybe there is another one that is more
0:17:23so double for our case
0:17:25and a we may just than the press
0:17:28a
0:17:30that are
0:17:31that are not
0:17:32they a and not used
0:17:33ooh more complex that the talks for all their fading standard
0:17:37and we these uh i i finish my person take
0:17:40or
0:17:44so uh
0:17:45there is a a question from the stage we have
0:17:48four minutes so
0:17:49we can take some question
0:17:55okay if you don't have a question have one
0:17:57uh
0:17:58you told that's that's your results are based on a approximation
0:18:02and and that you were working with the
0:18:04fixed it probably to fonts and
0:18:07so the question is is is your
0:18:09approximation
0:18:10batted than in your a is used for and it probably the found are i mean it's
0:18:14what robust with
0:18:15different probably the false or or or or
0:18:19yeah
0:18:23right
0:18:25yeah
0:18:27i
0:18:27white
0:18:30i
0:18:32or
0:18:33i
0:18:34a
0:18:36i
0:18:37a
0:18:42i
0:18:51i
0:19:05okay that's
0:19:07and that a question
0:20:50okay i use there is no hundred question list then the speaker
0:20:53um