The present invention generally relates to the field of digital communications, and more particularly to a communication system, digital receiver, a demodulator and a method of demodulation using partial knowledge of the channel state information.
In the literature, there are three types of demodulation techniques that are currently used in various wired and wireless communications techniques [1], namely, coherent, non-coherent and differentially coherent, which are denoted as CD, NCD and DCD, respectively. Each of the mentioned demodulation techniques is used for particular applications based on the channel and system resources and requirements. Moreover, selecting a particular modulation/demodulation method enables to trade-off the error performance, complexity and spectral efficiency. For example, CD provides low error probability given that the channel state information (CSI) is known accurately at the receiver side. However, accurate knowledge of the CSI requires invoking channel estimation techniques, which might require high complexity signal processing techniques and might affect the system spectral efficiency as well. On the contrary, NCD does not require any information about the CSI hence its a low complexity demodulator, however the error probability is generally very high [2]. DCD is different from CD and NCD because it requires the transmitter to introduce memory in the transmitted sequence. The information symbols extraction does not require the knowledge of the CSI at the received side, however, it requires the CSI to be almost fixed over two consecutive symbols. The probability of error and complexity for the DCD is generally in between CD and NCD. The main disadvantage of DCD is that it requires differential encoding at the transmitter side, and the receiver should know the phase of the first symbol in the received sequence [3], hence it requires some sort of pilot symbols which degrades the spectral efficiency. Moreover, it is very sensitive to phase noise and I-Q imbalance impairments [4]. Therefore, DCD is not suitable for applications where the received signal suffers from phase noise, large phase variations, or time-varying I-Q imbalance.
Brief Explanation
The present invention presents a new class of demodulation for M-ary amplitude shift keying systems (MASK) that requires partial knowledge of the CSI, namely, the channel attenuation coefficient. Therefore, the new demodulator does not require the knowledge of the channel phase shift. Consequently, no complicated channel estimation techniques are required, and the system will be very robust to the system impairments such as phase noise, I-Q imbalance, etc. In this sense, the new technique is denoted as semi-coherent demodulation (SCD). To reduce the complexity of the new SCD, a suboptimal demodulator is derived which has much lower complexity than the optimal while providing almost the same error probability.
Generally speaking, the CSI is composed of real and imaginary components, which can be expressed as h=|h| ejθ, where |h| corresponds to the channel attenuation and θ is the phase shift. In the proposed receiver, only |h| is required to detect the transmitted symbols with low probability of error. The proposed receiver can be used to increase the spectral efficiency of most digital communications receiver and/or reduce their error probability.
Main Features:
This patent describes an efficient new digital communications receiver that has never been considered before. The main features of the new receiver are:
Benefits:
Limitations:
The bit error performance of the proposed technique is not as good as the coherent systems in ideal channel conditions. However such difference becomes very small in practical non-ideal scenarios. Moreover, the performance difference can be substantially reduced when diversity techniques are involved, which makes the system very attractive for various applications.
Aspects of the Invention:
As a first aspect of the invention, there is provided a digital communication receiver for detecting signals transmitted by a digital transmitter through a communication channel, the channel having a channel attenuation |h| and a channel phase shift having a multipath fading effect on the transmitted signals, the receiver comprising a demodulator configured to demodulate signals received by the receiver using channel coefficients representing the channel attenuation only without any knowledge of the channel phase shift.
Preferably, the demodulator is robust to phase noise, large phase variations and time-varying I-Q imbalance.
Preferably, the demodulator uses a M-ary amplitude shift keying technique, the transmitted signals being modulated by the transmitter using said same technique before transmission using a modulation order M equal or superior to 2.
Preferably, the detected signals have a symbol Error Rate (SER) intermediate in terms of performance between a coherent detection and a non-coherent detection assuming a same spectral efficiency.
Preferably, the demodulator is less complex than a coherent demodulator, and wherein the SER performance of the detected signals using the demodulator is substantially similar to a SER performance obtained using a coherent demodulator.
Preferably, the channel is a multi-path fading channel. The multi-path fading channel can be for example Rayliegh, Ricean or Nakagami.
Preferably, the received signals have an energy η and the channel attenuation coefficients have a magnitude |h|2, and wherein the demodulator is configured to equalize the energy of the receivd signals η using only the magnitude of the channel coefficients |h|2 such that an equalized envelop of the received signals is obtained according to the following equation in which the multipath fading effect of the channel on the transmitted signals is converted into an additive disturbance:
where ζ is: the energy equalized signal
where ν is: the received signal
where Ai2 is: the energy of the transmitted symbol
where w is: additive white Gaussian noise
where (.)* denotes the complex conjugate.
Preferably, the demodulator makes decisions for the detection of transmitted signals according to the following conditional probability distribution function (PDF):
where ζ is a decision variable and where ψi=(ζ+Ei)σw2σh2.
where Ei is: the energy of the transmitted symbol
where σw2 is: the noise variance
where σh2 is: the variance of the fading coefficients
Preferably, the demodulator makes decisions for the detection of transmitted signals according to the following minimum distance detector (MDD) equation:
Âi=argminE
where Âi is: the estimated symbol amplitude
where M is the modulation order.
Preferably, the MDD has a Signal to Error Ratio (SER) which follows the following equation:
where
where
and Ē=1/MΣi=0M−1Ei is the average power per symbol which is normalized to unity,
where PS is: the symbol error probability
where χi is: already defined above
where δ is: amplitude difference between adjacent symbols
where Γ is: average symbol energy
Preferably, the attenuation channel coefficients are obtained by inserting pilot symbols within the transmitted signals with a particular time spacing, the pilot symbols having a constant modulus, |s|2=P, where P is a constant.
Preferably, the estimated value of the channel attenuation magnitude |h|2 is obtained by computing {circumflex over (α)}=ηP/|s|2,
Where
ηP=|νP|2=|h|2|s|2+(h*s*w+hsw*)+|w|2.
As a further aspect of the invention, there is provided a computer-implemented demodulation method comprising:
Preferably, the demodulation method is robust to phase noise, large phase variations and time-varying I-Q imbalance.
Preferably, the demodulation method uses a M-ary amplitude shift keying technique, the transmitted signals being modulated by the transmitter using said same technique before transmission using a modulation order M equal or superior to 2.
Preferably, the detected signals have a symbol Error Rate (BER) intermediate in terms of performance between a coherent detection and a differentially coherent detection assuming a same spectral efficiency.
Preferably, the demodulation method is less complex than a coherent demodulation, and wherein the SER performance of the detected signals using the demodulation method is substantially similar to a SER performance obtained using a coherent demodulation.
Preferably, the channel is a multi-path fading channel. The multi-path fading channel can be for example Rayliegh, Ricean or Nakagami.
Preferably, the received signals have an energy η and the channel attenuation coefficients have a magnitude |h|2, and wherein the demodulation method further comprises equalizing the energy of the received signals η using only the manguitude of the channel coefficients |h|2 such that an equalized envelop of the received signals is obtained according to the following equation in which the multipath fading effect of the channel on the transmitted signals is converted into an additive disturbance:
where ζ is: the energy equalized signal
where ν is: the received signal
where Ai2 is: the energy of the transmitted symbol
where w is: additive white Gaussian noise
where (.)* denotes the complex conjugate.
Preferably, the demodulation method further comprises making decisions for the detection of transmitted signals according to the following conditional probability distribution function (PDF):
where ζ is a decision variable and where ψi=(ζ=Ei)σw2σh2.
where Ei is: the energy of the transmitted symbol
where σw2 is: the noise variance
where σh2 is: the variance of the fading coefficients
Preferably, the demodulation method further comprises making decisions for the detection of transmitted signals according to the following minimum distance detector (MDD) equation:
Âi=argminE
where Âi is: the estimated symbol amplitude
where M is the modulation order.
Preferably, the MDD has a Signal to Error Ratio (SER) which follows the following equation:
where
where
and Ē=1/MΣi=0M−1Ei is the average power per symbol which is normalized to unity
where PS is: the symbol error probability
where χi is: already defined above
where δ is: amplitde difference between adjacent symbols
where Γ is: average symbol energy
Preferably, the attenuation channel coefficients are obtained by inserting pilot symbols within the transmitted signals with a particular time spacing, the pilot symbols having a constant modulus, |s|2=P, where P is a constant.
Preferably, an estimated value of the channel attenuation magnitude |h|2 is obtained by computing α=ηP/|s|2,
Where
ηP=|νP|2=|h|2|s|2+(h*s*w+hsw*)+|w|2.
As another aspect of the invention, there is provided a demodulator device for detecting signals transmitted by a digital transmitter to a digital receiver through a communication channel, the channel having a channel attenuation |h| and a channel phase shift having a multipath fading effect on the transmitted signals, the demodulator device being configured to communicate with the digital receiver for demodulating signals received by the receiver using channel coefficients representing the channel attenuation only without any knowledge of the channel phase shift.
Preferably, the demodulation is robust to phase noise, large phase variations and time-varying I-Q imbalance.
Preferably, the demodulator device uses a M-ary amplitude shift keying technique, the transmitted signals being modulated by the transmitter using said same technique before transmission using a modulation order M superior to 2.
Preferably, the detected signals have a Bit Error Rate (BER) intermediate in terms of performance between a coherent detection and a differentially coherent detection assuming a same spectral efficiency.
Preferably, the demodulator device is less complex than a coherent demodulator, and wherein the BER performance of the detected signals using the demodulator is substantially similar to a BER performance obtained using a coherent demodulator.
Preferably, the channel is a multi-path fading channel. The multi-path fading channel can be for example Rayliegh, Ricean or Nakagami.
Preferably, the received signals have an energy η and the channel attenuation coefficients have a magnitude |h|2, and wherein the demodulator is configured to equalize the energy of the receivd sginals η using only the manguitude of the channel coefficients |h|2 such that an equalized envelop of the received signals is obtained according to the following equation in which the multipath fading effect of the channel on the transmitted signals is converted into an additive disturbance:
where ζ is: the energy equalized signal
where ν is: the received signal
where Ai2 is: the energy of the transmitted symbol
where w is: additive white Gaussian noise
where (.)* denotes the complex conjugate.
Preferably, the demodulator device makes decisions for the detection of transmitted signals according to the following conditional probability distribution function (PDF):
where ζ is a decision variable and where ψi=(ζ+Ei)σw2σh2.
where Ei is: the energy of the transmitted symbol
where σw2 is: the noise variance
where σh2 is: the variance of the fading coefficients
Preferably, the demodulator device makes decisions for the detection of transmitted signals according to the following minimum distance detector (MDD) equation:
Âi=argminE
where Âi is: the estimated symbol amplitude
where M is the modulation order.
Preferably, the MDD has a Signal to Error Ratio (SER) which follows the following equation:
where
where
and Ē=1/MΣi=0M−1Ei is the average power per symbol which is normalized to unity
where Ps is: the symbol error probability
where χi is: already defined above
where δ is: amplitde difference between adjacent symbols
where Γ is: average symbol energy
Preferably, the attenuation channel coefficients are obtained by inserting pilot symbols within the transmitted signals with a particular time spacing, the pilot symbols having a constant modulus, |s|2=P, where P is a constant.
Preferably, an estimated value of the channel attenuation magnitude |h|2 is obtained by computing α=ηP/|s|2,
Where
ηP=|νP|2=|h|2|s|2+(h*s*w=hsw*)+|w|2.
As a further aspect of the invention, there is provided a digital communication system comprising a transmitter, a receiver and a demodulator implementing the demodulation technique in accordance with the various embodiments of the present invention.
As a further aspect of the invention, there is provided a computer readable medium embedding computer instructions configured to execute the demodulation technique in accordance with the various embodiments of the present invention.
The invention will now be described with reference to the accompanying drawings, which illustrate a preferred embodiment of the present invention without restricting the scope of the invention's concept, and in which:
MASK Modulation
In MASK modulation, the baseband representation of the transmitted signal is given
d=Ai, iε{0,1, . . . ,M−1} (1)
where M is the modulation order, the amplitudes Aiε for coherent detection, while for NCD Ai≧0. Without loss of generality, the amplitudes are selected such that Ai+1>Ai. Moreover, the amplitude spacing is usually assumed to be uniform where Ai+1−Ai=δ. Since the average symbol power is normalized to unity, then 1/MΣi=0M−1Ai2=1. The transmitted amplitudes can be described by,
Ai=i×δ, iε{0,1, . . . ,M−1}, (2)
where
Conventional NC MASK Detection
Assuming that the information symbols are transmitted over a Rayleigh frequency-flat fading channel, the received signal can be expressed as
ν=hAi+w, iε{0,1, . . . ,M−1} (4)
where the channel fading coefficient h is a complex normal random variable h˜CN(0, 2σH2) and w˜CN(0, 2σw2) denotes the additive white Gaussian noise (AWGN). To perform NCD, the energy of the received signal should be computed,
η=|ν|2=|h|2|Ai2|+(h*Ai*w+hAiw*)+|w|2. (5)
where (.)* denotes the complex conjugate. The received signal energy η is the decision variable that will be fed to the maximum likelihood detector (MLD). The conditional probability distribution function (PDF) of η can be expressed as
where Ei=Ai2. The PDF in (6) for M=4 is shown in
Based on the PDF given in (6), the MLD can be expressed as [5],
It is worth noting that the MLD of NCD of MASK requires accurate knowledge of σw2 and σh2. The SER using MLD can be expressed as [5],
where
The SER of the NCD-MASK for M=2 using optimal MLD is presented in
The New Semi-Coherent Demodulator
To eliminate the impact of the multiplicative fading we introduce the new SCD, which can be obtained by equalizing the received symbols energy using only the magnitude of the channel coefficients. The equalized envelop ζ can be expressed as
As depicted in (9), the multiplicative effect of multipath fading has been converted into an additive disturbance. The process of computing |h|2 for practical systems will be presented in the following sections.
The conditional PDF of the decision variable ζ is given by
where 104 i=(ζ+Ei)σw2σh2. As it can be noted from
The SER of the SCD using MLD is presented in
Based on the PDF given in (10), it can be shown that the optimum detector has high complexity, and it requires the knowledge of σw2 and σh2. Consequently, suboptimal solutions should be considered. Towards this goal, it is straightforward to show that in high SNR scenarios, an efficient suboptimal detector for SCD can be expressed as
Âi=argminE
which corresponds to the minimum distance detector (MDD). The SER based on
MDD can be expressed as
where
where
and Ē=1/MΣi=0M−1Ei is the average power per symbol which is normalized to unity for all systems.
The SER for M=2 is shown in
Partial CSI Estimation
As it can be noted from (9), the partial CSI required for the SCD is the channel attenuation coefficient |h|2. The most straightforward approach to obtain |h|2 is to insert pilot symbols within the information symbols with a particular time spacing. The spacing between the pilot symbols can be optimized based on the channel variations in the time domain. For quasi static and slowly varying channels, the number of pilots is insignificant and hence, the spectral efficiency degradation becomes negligible. The main requirement for the pilot symbols is to have a constant modulus, |s|2=P, where P is a constant. Therefore, the energy of the received signal when a pilot symbol s is transmitted can be expressed as,
ηP=|νP|2=|h|2|s|2+(h*s*w=hsw*)+|w|2. (13)
The estimated value of |h|2≐α can be obtain by computing {circumflex over (α)}=ηP/|s|2.
The channel variations over time can be described using Jake's model [7]. Assuming that the channel is Rayleigh fading with Lh independent multipath components, the time correlation between the channel coefficients can be expressed as,
E[hnhm]=βlJ0(2πfdTs(n−m)), (14)
where Ts is the symbol period, βl is the normalized power of the lth multipath component where Σl=0L
Numerical Results
In the previous parts, the SER performance was obtained under ideal channel conditions and perfect channel estimation. Therefore, this section presents the SER in the presence of mobility, channel estimation errors, and phase noise.
The SER of the SCD in the presence of mobility is presented in
The SER of SCD and CD in the presence of phase noise (PN) is presented in
ν=hejφAi+w, iε{0,1, . . . M−1}
where φ is a function of the phase noise power, and it is typically modeled as a random jitter φ˜N(0, σPN2) [14], where σPN2 is measured in rad2. As it can be noted from the figure, the SER of SCD is independent of the PN, which is expected because the SER depends only on the magnitude of the channel response. On the contrary, CD is sensitive to PN particularly at high values of σPN2. It is worth noting that PN can be caused by the transmitter and receiver frequency jitter, timing and frequency synchronization, and channel estimation error, therefore, large PN values might be experienced in particular system and channel conditions [14].
The new receiver for digital communication systems proposed is based on a novel demodulation technique that requires only partial knowledge of the channel state information, which simplifies the channel estimation process. The error rate performance of the new receiver is substantially lower than that of the conventional non-coherent demodulators. The proposed system enables high spectral efficiency implementation of digital communication systems by exploiting the pilots for joint data transmission and channel estimation.
Blind CSI Estimation Using Amplitude-Coherent Detection
In this section, we propose a low complexity blind channel estimation technique using ACD. As it can be noted from aforementioned discussion, the partial CSI required for the ACD is the channel attenuation coefficient α. The most straightforward approach to obtain α is to insert pilot symbols within the information symbols, and then use least-squared estimation to compute α. The main requirement for the pilot symbols is to have a known amplitudes at the detector side. Therefore, without loss of generality, we assume that the pilot symbols dPSK{l} satisfy |dPSK{l}|2=C{l}=1∀l. Since MPSK has constant modulus, we assume that all pilot symbols are MPSK modulated.
If the pilot and data symbol during the lth signaling interval are denoted by dPSK{l} and dASK{l}, respectively, then the transmitted frame has generally the following structure,
d=[dPSK{1}, sASK{2}, . . . , dASK{Q}, dASK{Q+1}, dASK{Q+2}, . . . , dASK{2Q}, dPSK{2Q+1}, . . . ]. (15)
The value of Q depends on the channel coherence time, spectral efficiency, interpolation error tolerance, etc.
Using least square estimation, the channel attenuation factor obtained from the lth pilot symbol can be expressed as,
where rPSK is the received signal that corresponds to a given pilot symbol. Similar to conventional coherent systems, the channel estimates can be used to form the following sparse vector
a=[{circumflex over (α)}{1}], 0{2}, . . . , 0{Q}, {circumflex over (α)}{Q+1}, 0{Q+2}, . . . , 0{2Q}, {circumflex over (α)}{2Q+1}, . . . ], 2Q+1=L. (17)
Then, interpolation can used to compute {circumflex over (α)}{i}where =l mod Q≠1. Finally, the data symbols can be detected by computing {circumflex over (d)}ASK{l}=|rASK{l}|2/{circumflex over (α)}{l}, l mod Q≠1.
As it can be noted from the aforementioned discussion, the pilot symbols design and channel estimation approach used are generally similar to those used in coherent detection. However, it is interesting to note that once {circumflex over (d)}ASK{l} is obtained, then the full CSI can be obtained for all data symbols where ĥASK{l}=rASK{l}/{circumflex over (d)}ASK{l}, l mod Q≠1. Then, interpolation can be used to find ĥPSK{l}, l mod Q=1, which allows constructing the vector ĥ=[ĥ{1}, ĥ{2}, . . . , ĥ{L}]. Consequently, the entire received vector can be detected coherently
{circumflex over (d)}=ĤĤHr (18)
where r=[r{1}, r{2}, . . . , r{L}], Ĥ=diag{ĥ{1}, ĥ{2}, . . . , ĥ{L}}, and (.) denotes the Hermitian transpose operation. Therefore, if the pilot symbols are regular MPSK data-bearing symbols, then the data can be recovered and utilized. In this sense, the data and pilot symbols exchange their roles recursively to estimate the CSI and detect the data with low complexity and no power or spectrum penalties.
Because both dpSK and dASK symbols are bearing data, none of them should be referred to as pilot symbol. Moreover, the ratio between the number of PSK and ASK symbols is channel and system dependent. However, PSK SER is typically lower than ACD. Therefore, the number of PSK symbols can be increased to provide lower SER as long as the separation between ASK symbols is small enough to provide accurate channel estimation.
It is important to note that using A0=0 for channel estimation with ACD should be avoided since the channel coefficient is undefined in such scenarios. A simple solution to resolve this matter is to use Am=(m+1)×δ, mε{0, . . . , M−1}. For an average power 1/MΣm=1M Em=1 and equally spaced constellation points, the amplitude separation can be defined as sm+1−sm≐δ, where
Therefore, Ps can be expressed as
It is worth noting that the SER when A0>0 is higher than the case where A0=0 due to the loss of power efficiency. Such limitation can be avoided by setting A0=0, however, CSI over the entire frame has to be recovered from nonuniformly spaced samples [15].
Numerical Results of the Blind Detection Technique
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