The present invention relates to optical fiber communication systems and more particularly relates to increasing the throughput of data transmission over an optical fiber communication system through the use of multilevel modulation.
In virtually all fields of communications, there exists a persistent demand to transmit more data in less time. The amount of information that can be transmitted over a communications system (or through a component of that system) is referred to as the bit rate or the data throughput of the system. Traditionally, system throughput is increased by either increasing the number of channels carrying information or increasing the bit rate of each channel. In order to meet ever-increasing bandwidth demands, aggregate throughput in fiber optic transmission systems has conventionally been increased by using multiple Wavelength Division Multiplexed (WDM) channels, time-division-multiplexing (TDM), or some combination of the two techniques. WDM techniques increase the number of channels transmitted on a particular fiber, while TDM techniques increase the data rate of each individual channel.
Conventional optical fiber networks typically can deliver on the order of 10 Gigabits of data per second (10 Gb/s). Both WDM and TDM techniques have been applied to realize fiber channel bit rates well above this conventional 10 Gb/s capacity. Many fiber optic communication systems comprise multiple WDM channels simultaneously transmitted through a single optical fiber. Each of these channels operates independently at a given bit rate, B. Thus for an m channel WDM system, the system throughput is equal to m·B. Conventional dense WDM (WDM) systems typically operate with 40 to 100 channels. There are certain restrictions, however, that limit the aggregate power that can be transmitted through a single DWDM optical fiber (i.e., the launch power). For example, eye safety power regulations and nonlinear effects in the fiber place limits on the aggregate launch power. In addition, channel spacing limitations and per-channel launch power, effectively limit the number of WDM channels that can be combined for transmission on a single fiber.
TDM techniques also are associated with various limitations. For example, using conventional TDM techniques to achieve an n-times increase in channel data rates requires the optical components of a link (e.g., the modulator and photodetector) to be replaced with new optical components having n-times the bandwidth of the original optical components. In addition, the interface circuitry must be replaced with new circuitry having bandwidth n-times greater than the original circuits.
Optical fiber networks are typically comprised of a series of links that include a transmission block, a receiver block, and a long stretch of optical fiber connecting the two blocks (i.e., the optical plant).
In order to realize channel data rates of 10 Gb/s and beyond, the optical fiber 104 as well as the Head 102 and Terminal 106 of the link 100 are typically upgraded to support the increased data rates. In order to increase the channel bit rates in this conventional link 100, each transmission block 102 and reception block 106 must be replaced with optical components and circuitry capable of achieving the desired bandwidths. For high-speed channel bit rates (10 Gb/s and faster), the optical fiber 104 also must often be replaced in order to compensate for signal distortions, which are more prominent at higher data rates. This process can be particularly cumbersome and costly in a long-haul link where hundreds of kilometers of fiber must be replaced. For existing long-haul optical links, the complexity and cost of replacing planted fiber often represents a prohibitive barrier for increasing channel bit rates.
Service providers seeking to optimize revenue and contain cost prefer a highly granular, incremental expansion capability that is cost effective while retaining network scalability. The ability to increase the throughput capacity of single point-to-point links or multi-span links without upgrading or otherwise impacting the remainder of the network is highly desirable from an engineering, administrative and profitability standpoint.
In view of the foregoing, there is a need for a method of increasing a channel data rate in a fiber optics communication link that does not require replacing an existing optical fiber plant or necessitate a change in the expensive optical components. There exists a further need to increase the efficiency of the available spectrum within a given fiber optic communication link and to obtain efficient highly granular bandwidth upgrades without upgrades to an existing optical fiber plant, upgrades to channel combing optics, or significant changes to existing maintenance and administrative procedures. The method should further allow service providers to increase data throughput on a per-link basis as throughput demands increase, generating higher profitability for the service provider and lower cost for the consumer.
The present invention increases channel data throughput rates without requiring replacement of the existing optical fiber in a link (i.e., the optical fiber plant). In one aspect of the present invention, channel throughput is increased by upgrading the components and circuitry in the head and terminal of an optical fiber communication system link. Advantageously, the present invention can increase aggregate throughput in fiber optic links beyond the limits of conventional WDM upgrades, while eliminating the necessity of replacing existing fiber plants. In addition to providing an alternative to expensive TDM or WDM upgrades, the proposed invention may also be used in tandem with these approaches to achieve even greater increases in data transmission rates. The increase in system throughput is achieved by using advanced modulation techniques to encode greater amounts of data into the transmitted spectrum of a channel, thereby increasing the spectral efficiency of each channel. Representative modulation techniques include 2n-ary amplitude shift keying (2n-ASK), 2n-ary frequency shift keying (2n-FSK), 2n-ary phase shift keying (2n-PSK), as well as combinations of these techniques such as quadrature amplitude modulation (QAM). Because optical fiber has a finite bandwidth, these types of spectrally efficient modulation techniques provide a viable solution for extending channel data rates beyond the limits of standard OOK modulation. The spectral efficiency is improved because all 2n-ary variations occupy essentially the same optical bandwidth. Thus a link employing 16-level ASK modulation can have the same spectral occupancy as a 2-level OOK link.
The present invention provides a novel method of increasing transmission capacity by upgrading the head and terminal of the system to achieve greater spectral efficiency and hence throughput. The novel method eliminates the need to replace existing fiber plants. The advanced modulation techniques described above add little or no complexity to the optical components of the channel transmitter and receiver, further reducing the cost of a system upgrade. For 2n-ary ASK modulation, which uses 2n different signal levels (amplitudes) to form 2n different transmission symbols, an n-times increase in channel throughput can be provided using the same bandwidth, lasers, modulators, and photodetectors as those used in the original on-off-keyed (OOK) link. Spectrally efficient complex modulation techniques can be supported by interface circuits having an increased level of signal processing capability in order to both encode multiple bits into a transmitted symbol and decode the original data from the received symbols.
The present invention also provides novel signal processing methods that enhance the transmission of a multilevel optical signal over existing fiber optics communication systems. A novel pre-distortion circuit modifies the transmitted signal based on knowledge of prior data and known link linear and nonlinear performance. A novel linearizer circuit can be used to introduce a nonlinearity into a transmitted signal to precisely counteract any nonlinearities of the optical source. Additionally, a novel forward error correction process is used to enhance the quality of the decoded multilevel signal.
The various aspects of the present invention may be more clearly understood and appreciated from a review of the following detailed description of the disclosed embodiments and by reference to the drawings and claims.
Exemplary embodiments of the present invention enable an increase in channel data rates without the replacement of an existing optical fiber plant. Various embodiments of the present invention use a novel multilevel modulation technique to effect a substantial increase in data rate. Advantageously, various embodiments of the present invention enable a substantial data throughput increase in a fiber optics communication system without requiring a modification of the optical fiber plants associated with the system. Specifically, the increase in data rate can be accomplished in various embodiments of the present invention by upgrading head and terminal components, namely, the system transmitters and receivers. The transmitters and receivers can be modified to include advanced 2n-ary modulation (demodulation) technology for encoding (decoding) greater amounts of data within the channel spectrum. Representative advanced modulation techniques include multilevel amplitude, frequency and phase shift keying modulations. An exemplary transmitter comprises an n-channel encoder, a digital-to-analog converter (DAC), pre-compensation circuitry, and an optical source. An exemplary receiver comprises an optical detector, distortion post-compensation circuits, an analog-to-digital converter (ADC), and an n-channel decoder.
In comparison to the prior art optical transmission system illustrated in
The embodiment presented herein provides a method of generating and receiving light to form a spectrally-efficient high-speed ASK optical link. It will be appreciated by one skilled in the art that an FSK signal can be converted into an ASK signal by using a conventional filter, and similarly a PSK signal can be converted into an ASK signal by using a conventional interferometer. QAM modulation is a combination of PSK and ASK and can thus be converted into two ASK data streams. Therefore, the exemplary embodiment addresses the enabling technologies required to process high-speed multilevel signal streams of which ASK is exemplary.
As a specific example, the assumption may be made that the 16-level signal in
The improved spectral efficiency and reduced system costs afforded by multilevel amplitude modulation are offset to some degree by a corresponding degradation in the signal-to-noise ratio (SNR) of the signal due to the reduced energy separation between signals. For example, modeling channel distortions as additive, white Gaussian noise (independent of the transmitted signal), the received power penalty necessary to achieve the same error performance for a multilevel ASK signal compared to an OOK signal with equal symbol rate is described by the equation:
ΔP=−10 log(2n−1)
where ΔP is the penalty (in dB) and 2n is the number of levels. This penalty compares the proposed approach using a data rate n times faster than the baseline OOK modulation. One can also compare the two methods using the same data rate. The power penalty for this case is:
ΔP′=−10 log([2n−1]/√{square root over (n)}).
The penalty is lower for this constant data rate comparison because the reduced bandwidth for the proposed multilevel scheme allows for higher out-of-band noise suppression. The penalty ΔP′ does not take into account the effects of dispersion. These effects are negligible at data rates on the order of 2.5 Gb/s but can be quite significant at data rates 10 Gb/s and higher. Thus, the penalty ΔP′ is overstating the penalty associated with multilevel signaling because the signal model for the high rate OOK scheme neglects the significant effects of dispersion
An Exemplary Transmitter
For every clock cycle, the encoder 502 converts the protected n-bit word into a second “error-resistant” n-bit word. Gray codes, such as the Q-Gray code shown in Table 1, are an example of “error-resistant” codes, where Q-Gray codes are defined to be a class of Gray codes satisfying the property that the maximum number of transitions on each bit is minimized as one cycles through the sequence. This limitation on the maximum number of transitions produces codes that surpass tradition Gray-codes in that the impact of errors in excess of adjacent levels is minimized. For example, the Q-Gray code in Table 1 has a maximum of four transitions (which is the minimum value possible) on any bit as one cycles through the sequence. The traditional reflected Gray code, however, has eight transitions on the least significant bit and thus does not meet our definition of a Q-Gray code. It should be obvious to one skilled in the art, that a set of equivalent Q-Gray codes that can be formed from the one tabulated in Table 1. The bit columns can be arbitrarily rearranged, the columns can be inverted, and the code can be “rotated” in 16 different ways, resulting in a total of 6144 equivalent codes that we term “Q-Gray codes”. The encoded n-channels are input to the DAC 504, which generates a 2n-level electrical signal that can be used to modulate the optical source 508. The optical source 508 could in practice be a directly modulated laser or a laser with an external modulator and can transmit distinct data values (symbols) by transmitting varying levels of optical intensity over an optical communication medium, such as an optical fiber.
In an exemplary embodiment of the present invention, four digital channels can be input to the EPC module 510. The EPC module 510 makes the data more robust by sending an extra n−m bits of data for every m input bits. These redundant error correction (EC) bits allow for the correction by the receiver of bit errors incurred during the encoding/transmission/decoding process. One skilled in the art will recognize that a variety of existing algorithms may be used to accomplish this. Typical algorithms included Reed-Solomon codes, Reed-Muller codes, block codes, convolutional codes, and trellis codes to name a few. The additional data introduced by the EPC module may be addressed either by increasing the system clock rate or by using more than four channels throughout the remainder of the system. Both addresses are transparent to the proposed invention as they simply correspond to a change in an operational parameter. In particular, increasing the clock rate involves sending pulses with a shorter duration, and using more channels involves using a larger value for n. Thus, no generality is lost in assuming that the clock rate is increased and number of data channels is kept at four for the purpose of describing the invention.
The EPC module 510 feeds the processed data into the encoder 502. The four encoded channels can then be input to the DAC 504 and converted to one of 16 possible amplitude levels for a four times increase in data throughput. The encoding function of the four-channel encoder 502 as well as the corresponding DAC output is summarized in Table 2.
Pre-distortion of the transmitted data can help compensate for non-ideal link frequency response and for some classes of link non-linearities, effectively reducing pattern-dependent errors in the transmitted data. Hence, this technique is often referred to as pre-compensation. This pre-distortion (as described below) may operate at the analog/symbol level as shown in
A number of coding options exist to accomplish the desired EC necessary to compensate for the power penalty associated with multilevel amplitude modulation. The EPC 510 will be responsible for implementing such algorithms. An exception to this is the implementation of Gray codes (as described in U.S. Pat. No. 2,632,058), which are an example of block coding with m=n. The Gray code can be implemented in the encoder since it corresponds to a one-to-one mapping, which can be implemented with a small logic circuit. In the '058 patent referenced above, a method of encoding binary notation is described such that adjacent words in the code are differentiated by a change in only one bit. This method can be distinguished from conventional binary notation where adjacent words often differ by several bits. For example, the binary equivalent of 7 in a four-bit word is 0111. The binary equivalent of 8 (an adjacent “word” to 7) is 1000; each of the four bits is reversed. Although the teaching in the '058 patent pertains to pulse code modulation, the same principles can be applied to multilevel amplitude modulation. If conventional binary notation is used to encode four data streams into a single 16-level stream, the bit error rate (BER) of the channels will be especially sensitive to those transitions between adjacent levels that involve a change of greater than one bit. Thus, Gray codes can reduce bit error rates (without the addition of redundant EC bits) in systems where the channel rate is increased using multilevel encoding. As stated above, Table 1 relates a conventional binary encoding for a 16-level (four channels) transmission to various Gray code encoding schemes. Each of the digits in the four-bit words shown in the table represents a transmitted bit from one of the four independent data streams. The binary reflected notation is described in the '058 patent. The alternative Gray code (which we will denote as Q-Gray code for simplicity) is presented in the table as an alternative embodiment of the Gray code implementation for multilevel amplitude modulation. In addition to the adjacent levels differing by only one bit, the alternative code can further enhance channel BERs because, for each individual channel, several adjacent levels do not effect a change in the transmitted bit value for that channel.
The encoders (502, 603) depicted in
During circuit operation, the individual N bits (Ai) of a binary encoded binary word, A, are individually applied to the respective differential switch inputs (e.g., 806). A binary word is assumed to be made up of N bits (AN, AN−1, . . . A2, A1) of value 0 to 1, and the decimal value, Dw, of the word is shown in Equation 1:
This is the conventional definition of a binary encoded word. The corresponding differential inputs for each ith binary bit, Ai, are labeled Vi and Vi′ to represent the fact that the actual voltages used to represent the binary levels are not 0 and 1. Nevertheless, it is assumed that the differential switch is driven appropriately for one of each of the switches' transistors to be “on” for any given logic state.
The current sources I1 through IN are binary weighted as follows in Equation 2:
where Imod is the modulation current of the traditional laser driver circuit. The N individual bits of the applied binary word drive the respective switch that controls the current source determined in Equation (2). This results in a total current, IT, of Equation
Grouping the constant terms in Equation (3) gives the definition of total current shown in Equation 4:
in which the constant K is defined in Equation 5:
Comparing Equation (4) to Equation (1) shows that the resulting total output current, IT, is a perfect analog representation of the decimal value of the binary word. This circuit 800 effectively forms a large-current digital-to-analog converter.
The speed of the multilevel driver 800 can be similar to the speed of the conventional driver 700 if the differential switches 802 and current sources 804 are appropriately scaled for device size. The size of the transistors 802 used for the circuit 800 directly impacts circuit speed. In general, the smaller the transistors used to perform a circuit's function, the faster the circuit. For the i current paths of the modulator, the current level through each path is proportional to 2i−1. Therefore the transistor sizes, Si, of both the differential switch 802 and current sources 804 can be scaled by as shown in Equation 6:
where So is the size of the conventional laser drivers transistors (FET width or BJT area). With this device scaling, the total device size of all current paths, which is a good indicator of circuit speed is defined in Equation 7:
The total device “size” of all current paths is identical to the conventional driver circuit 700 and therefore should exhibit a very similar circuit speed.
The plurality of current sources 804 shown in
This circuit 900 is a high-output-current digital-to-analog converter, which can be applied to a variety of applications including the driving of laser diodes. In particular, if the laser diode shown in
The pre-compensation blocks shown in
Returning to
GA(Sn+1−Sn)=A·(Sn+1−Sn) (8)
GB(Sn−Sn−1)=B·(Sn−Sn−1) (9)
GC(Sn+1−Sn−1)=C·(Sn+1−Sn−1) (10)
where Gk is the gain of the amplifier (with k=A, B, or C).
The differential amplifiers D, E, and F are second order amplifiers and operate by amplifying the square of the difference between two of the tapped symbols. The function of each of these amplifiers is described by Equations 11-13:
GD(Sn+1−Sn)=D·(Sn+1−Sn)2 (11)
GE(Sn+1−Sn)=E·(Sn+1−Sn)2 (12)
GF(Sn+1−Sn)=F·(Sn+1−Sn)2 (13)
The differential amplifier G shown in
The element Σ1 sums the output symbols from the differential amplifiers A through G, generating the polynomial shown in Equation 14:
=A·(Sn+1−Sn)+B·(Sn−Sn−1)+C·(Sn+1−Sn−1)+D·(Sn+1−Sn)2+E·(Sn−Sn−1)2+F·(Sn+1−Sn−1)2+G·( . . . )q (14)
As an example, Σ1 may be an adder or a power combiner.
The element Σ2 (which, as an example, may be an adder or a power combiner) sums with the symbol to be transmitted (Sn) in the data stream. For this reason, the data stream must be delayed by an amount equivalent to the delay applied to the tapped Sn symbol. For the case shown in
Those skilled in the art will appreciate that the method of precompensation described above also may be implemented with a pre-determined, stored digital mapping function or lookup table. In such a case, the appropriate modification to the transmitted output symbol, as determined by the lookup table, may be based on characteristics of the symbol itself as well as those of one or more preceding and succeeding output symbols. For example, a 16 level system (n=4) which interrogates 3 input symbols, (i.e., the symbol to be transmitted and the preceding and succeeding pulse) requires 4096 table entries. For high symbol rates (e.g., 2.5 Gsym/s and greater), the implementation of a large lookup table can become increasingly complex. Hence, the previously described analog circuit embodiment, which is designed to approximate the functionality of a lookup table, may be preferred. In either case, the lookup table entries or the coefficients of the circuit implementation may be dynamically updated to maintain the desired system performance.
=A·(∫Sn+1dt−Sn)+B·(Sn−∫Sn−1dt)+C·(∫Sn+1dt−∫Sn−1dt)+D·(∫Sn+1dt−Sn)2+E·(Sn−∫Sn−1dt)2+F·(∫Sn+1dt−∫Sn−1dt)2+G· . . . )q (15)
The limits of integration in the above expression can be set to some interval of time greater than the inverse of the symbol rate. In this way, the integration path is extended beyond the bit length of the symbol in the integrand in order to include information regarding neighboring symbols in the data stream. Thus, the expression above, in reference to
in which L is the light output, α is the slope of the output versus drive current, and Io is the zero light output current. The light output produced by the laser diode is some nonlinear function, LD(Id′), of the laser's drive current, Id′, as shown by Equation 17:
L=LD(I′d) (17)
The objective is to have Id′ be a function of Id, such that Equation (16) and Equation (17) are identical, or algebraically for Id>Io:
α·(Id−Io)=LD(I′d) (18)
In practice, this equality can only be maintained over a limited device operating range. By current conservation:
I′d=Id−Ie (19)
where Ie the nonlinear element's terminal current which is a function the element's terminal voltage, V. The circuit dictates that V is:
V=Vd(I′d)+Rd·I′d (20)
in which Vd(Id′) is the laser diode's junction voltage.
After combining Equations (18), (19), and (20), and simplification to eliminate Id, the necessary parametric function form for the nonlinear element required to linearize the light output is shown in Equation 21:
Since the laser characteristics Vd(I), Rd, and LD(I) are known and Io and α can be selected as desired, the necessary Ie(V) for linear operation is now known by this equation.
Referring to Equation (21), the product of Rd and Id′ is added to the laser diode's operating voltage in the nonlinear element's terminal voltage (argument on the left-hand side of equation). This allows for the nonlinear element to be realizable using a simple circuit as presented below.
Linearization of a voltage controlled light modulator is similarly performed as depicted in
The light output from the modulator is determined by some known nonlinear function, LM:
L=LM(V′m) (23)
Equating Equations (22) and (23), for Vm>Vo:
β·(Vm−Vo)=LM(Vm′) (24)
From
V′m=Vm−Rm·(Ie(V′m)+Im(V′m)) (25)
in which Im(V) is the modulators current and is zero for many voltage-controlled modulators. Equations (23), (24), and (25) can be solved for Ie in terms of the modulator voltage Vm′ to give:
Equation 26 gives the functional form of Ie required for linear light output with Vo and β being free scalar parameters.
Thus, the necessary current voltage characteristics of the nonlinear element have been determined, but not the nonlinear element itself. Preferably, the nonlinear element is passive (plus diodes). This will restrict the nonlinear element to only exhibit a positive differential resistance/conductance. That is, the current can only increase (or remain constant) with increasing applied voltage. This places restrictions on the resulting modulation sensitivities (α and β).
For the laser diode linearization circuit, differentiating Equation (18) and solving for the partial derivative of Ie with respect to Id′ gives Equation 27:
The left-hand side of Equation (29) must be positive since the differential resistance of the series combination of the laser diode and resistor, Rd, must be positive and as discussed above the conductance of the nonlinear element must be positive. Algebraically,
Combining Equations (27) and (28) gives:
for all operating currents, Id′. This sets the linearized slope efficiency to be less than or equal to the original laser slope efficiency.
Similarly, for the voltage controlled optical modulator, assuming that the modulator conducts no current:
for all modulator voltages, Vm′. If the modulator conducts current, the slope efficiency will be lower because of the losses introduced by Rm.
An exemplary embodiment of the nonlinear element 1600 is shown in
In actual implementation, voltage sources with the single series resistor configuration may not be used. Instead, a Thevenin equivalent network may be synthesized from the system power supply and a series combination of two resistors. The resistors R1 and R2 are selected such that:
where R1 is connected from ground to the diode and R2 is connected from the R2 diode junction to Vcc.
The approach described herein addresses static linearization. The embodiments shown are anticipated to be integrated in microelectronic circuits allowing for very low parasitics and high-quality microwave diodes. Therefore, the linearization circuit may be expected to have a very large bandwidth. It may be assumed that the dynamic response of the laser diode or optical modulator is the same as static up to the operating speed. This is justified by the fact that an optoelectronic or electronic device's operational bandwidth is roughly defined by the frequency where the dynamic performance is no longer similar to the static and it is assumed that the device being linearized is being operated at a frequency within it's bandwidth. Additionally, it should be obvious to one skilled in the art that reactive impedance matching can occur between the device and the linearization network to help mitigate this issue.
In summary, the linearization network illustrated in
The light source is assumed to be amplitude controlled and of adequate coherence to be used in WDM systems. It is desired that the source be as linear as possible, though as just described in the previous section, linearization networks can be used to improve linearity. The light source will need to have an electrical bandwidth commensurate with the symbol rate of the communication link. This will be much lower than the link's aggregate data rate and therefore represents significant cost advantage at moderate speeds (less than or equal to 10 Gb/s) and enabling technology at high data rates (over 40 Gb/s). Preferred light sources include direct modulation of laser diodes, and externally modulated laser sources (i.e., Mach-Zehnder, or Electro-Absorptive modulators).
An Exemplary Receiver
The optical detector 1802 and following trans-impedance amplifier (TIA) should exhibit good linearity over the entire receiver dynamic range. Fortunately, a conventional PIN detector in conjunction with an analog TIA offers good linearity over wide signal ranges. Additionally, the adaptive thresholding discussed below as well as the pre-distortion discussed above will compensate for system nonlinearities. The TIA is assumed to have a gain control, which will be used to produce a signal output of fixed amplitude.
In this circuit 1900, an input signal is divided into two parts. One part propagates down the upper cascade of delay-lines of equal delay 1902; whereas the other part is inverted and propagated down the lower cascade of delay lines 1904. Alternately, a differential signal can be applied to the upper 1902 and lower 1904 delay line cascades without the need for a signal inverting means. The two transmission line cascades can provide a means for supporting both positive and negative gain coefficients. From each junction of the delay-lines a high-input impedance amplifier (e.g., 1906) is used to sample the signal without significantly distorting the signal propagating down the delay-line cascade. From each of these buffers is a FET (e.g., 1908) (drain or source connected), which is used as a variable resistor means. The other terminal (source or drain) of these variable resistance FET's is connected to a common node 1910 at which point signal summation occurs. From this node is a resistor 1912 that is of sufficiently low impedance to mitigate coefficient interdependence, which would be caused by the varying impedance of this summation node as various taps are controlled. The resulting summation is then amplified and output.
The peak voltage of the received signal, Vp is detected by a diode 2003, capacitor 2006, and resistor 2008. Ideally, with a frequency independent (equalized) channel, the peak voltage would be constant over time. If the optical channel is not equalized, the measured peak voltage will vary with time. This occurs due to the time dependent frequency content of a random data stream. Thus, the sampled peak voltage is measured and fed into the microcontroller 2002 through the ADC 2004. The job of the microcontroller 2002 is to appropriately select the gain coefficients of the PTF to make the measured peak voltage constant in addition to removing ISI which corrupts the other signal levels in the same manner as the peak. Since there may be no knowledge of the frequency content of the random data at any given time, the measured peak voltage fluctuation can only give a measure of goodness and not direct knowledge of appropriate PTF settings. Therefore, the microcontroller 2002 must perform a multidimensional optimization (4N+2 variables) to minimize a single scalar quantity. Fortunately, those skilled in the art will realize that many numerical techniques can be brought to bear to solve this problem (e.g., minimum mean-squared error method, gradient methods, bisection, genetic algorithm, etc.). One of the numerical techniques is employed and the microcontroller 2002 repeats this procedure to determine the appropriate equalizer tap gains (weights).
The sampling rate must be adjusted appropriately to the received data stream's random properties. Typically one would sample the data sufficiently fast that the frequency content of the signal (and especially the ISI) is observed. However, the practical maximum sampling rate is limited by the cost of such a high-speed ADC. Nonetheless, one may still observe the effects of ISI through the peak stability or the “wellness” of the measured histogram as described later. Consequently, such a measure of goodness (based on slowly sampled data) may be used in an optimization algorithm to determine the filter coefficients. Effective sample rates of 1/10th to 1/100th the high-speed data rate should be sufficient in the proposed approach For example, at 10 Gsym/s data rates, a 10 ns sampling time appears appropriate ( 1/100th of the 0.1 ns bit period). This sampling speed (100 Msps) is readily available using current technology. A preferred embodiment would AC couple the output of the detector circuit 2010 and peak detect the fluctuation amplitude. Then, the microcontroller 2002 can sample the fluctuation level on demand at a rate commensurate with the control algorithm (<1 Msps) and optimize the filter coefficients.
The output of the microprocessor's 2002 optimization algorithm is fed into. DACs 2012 to control the equalizer tap gains by varying the gate voltages of FETs. Equalization filters are known to commonly amplify high-frequency noise. To address this issue, a low pass filter (LPF) 2014 is placed after the equalization filter.
In the embodiment shown in
The received signal from the equalization filter or receiver is split and fed into the two IDFs. The dump filters consists of an integrator (i.e. RC circuit) and switch (i.e. transistor). The number of dump filters employed may vary depending on the data rate and the limitations of component performance. A clock is used for the dumping pulse of the integrator and will be extracted from the received signal using a clock recovery circuit followed by a divide-by-two frequency divider. A clock recovery circuit can be implemented using edge detectors with phase-locked loops or bandpass filters and comparators. With two IDFs, the recovered ½ clock and inverted ½ clock signals are adequate to operate the IDFs switches as well as the sample-and-hold (SH) circuits or track-and-hold circuits, which hold the result of the IDFs at the end of the symbol period for thresholding by the analog-to-digital converters. The data stream is integrated during alternate symbol periods (clock/2) in the IDF filters. This allows for parallel operation resulting in the demultiplexing of the data stream into even and odd symbol data streams. Then, the even and odd data streams can be sampled and multilevel thresholded by the SH and ADC. The resulting binary signals can be sent to latches to temporally align the results from the two parallel channels. The result is the thresholded output of two symbols once every two-symbol periods. The specific clock pulses used are not shown in
Table 4 shows the sequence of events during several symbol periods. The “*” represents the SH sample point. Note that the latched outputs are both valid over any given symbol period.
This approach can be extended to an arbitrary number of channels allowing for additional speed-performance reduction of the components in each channel as well as for higher levels of demultiplexing.
Generally, the N-channel filter 2300 operates by sequentially activating the IDF circuits 2302 for one symbol period each. At the end of the symbol time, the SH (e.g., 2304) (sample-and-hold or track-and-hold circuits) holds the result of the correlation function performed by the IDFs. The ADC is then triggered and performs the multi-level thresholding. When the ADC is complete (should be completed in less than N symbol times), the result is latched into the first set of latches. After all N-channels have valid results; the final N symbol-result is latched into the output latches. The final N symbol-results remain valid for N symbol time periods or equivalently until the next N symbols are processed. This system forms a pipelined detection approach, which significantly alleviates the speed requirements of the ADCs.
The Analog-to-Digital Converter (ADC) (e.g., 2306) may be a conventional uniformly-leveled converter of adequate speed and resolution or the preferred embodiment described below. Since the ASK signal may be significantly distorted by the nonlinearities of the optical link, the received levels may no longer be uniformly spaced during detection at the receiver.
A simulated multi-level eye diagram of a 16-level signal transmitted through a hypothetical fiber link (10 Gb/s optical link sent through a 140 km fiber length with a single EDFA) is shown in
For this exemplary embodiment, the received analog signal is sampled at random points in time and a histogram of the measured voltages is formed as illustrated in
These temporally random samples must be performed at a voltage resolution in excess of the number of levels used in the high-speed data transmission. In particular, in order to determine the location of the peaks and valleys of the resulting histogram, the Nyquist theorem dictates that the sample resolution be as a minimum twice that of the number of data levels in the high speed data stream (i.e. 5 bits for 16 levels). In practice, ADC technology is readily available to allow for significant voltage resolution over-sampling (say 14 bits).
Ideally samples would occur at times centered temporally in the high-speed data stream's eyes. This would require critical timing requirements and therefore not be expected to be cost effective. Instead, the voltage samples can be easily made at random times thereby allowing for the elimination of all critical timing circuitry. The result of random signal voltage sample times is similar to the ideal sampling case due to the larger probability of sampling during a signal transition. This results in a data “floor” in the histogram, which can be easily removed during subsequent signal processing. Random sampling for this application means random to the high-speed data rate. This can be achieved by using a periodic sample rate, which is not harmonically related to the high-speed data rate. The actual average sample rate of the random voltage samples is dictated by the threshold update speed desired. If the communication channel is expected to vary quickly with time, the sample rate must be correspondingly high. As an example, assuming that the channel varies with a 10 ms characteristic time and 1000 samples forms the histogram; average conversion speed only need be 100,000 samples per second.
This approach can additionally provide information of the “wellness” of the received signal. For example, the ratio of the number of samples within the eyes to the peaks between the eyes will relate directly to error rate. Additionally, these types of ratios along with measured signal levels would provide very useful information to select the operating point of programmable analog signal processing modules prior to this process. For example, the tap weighting coefficients of a programmable delay line equalization filter could be adjusted for maximum data “eye-opening”. Advantageously, this approach can be applied to the optimal detection of multi-level signals of any number of levels (2 to infinity).
Specifically, the DSP 2502 would sample the received analog voltage by triggering the sample-and-hold circuit 2504 or equivalently a track-and-hold circuit at some time random in relation to the received data stream. The sample/track-and-hold circuits 2504 will necessarily have a capture bandwidth commensurate with the high-speed data stream, but will only need to be able to sample at rate much lower than that of the high-speed data stream. The DSP 2502 would then trigger the ADC conversion and record the resulting voltage. The DSP 2502 would continue this process until adequate statistic information can be gathered to determine the appropriate decision levels. Typical time sample set sizes are expected to be on the order of 100 to 1000, though larger or smaller sample sizes can also be selected. The actual sample size should be adequate to determine the resulting Gaussian probability peaks with adequate accuracy to sufficiently determine the eye centers. When a new sample is recorded, the oldest will be rejected from the sample set. The statistical analysis will be continually performed; thereby adjusting the decision levels in real time to compensate for time varying distortion/noise of the received signal. Additionally, the “wellness” of the data may also be used to feedback control signals to analog signal conditioning circuits to provide an improved eye opening for reduced error rate.
These voltage decision levels are then used by three high-speed comparators 2506-2510, which are followed by combinational logic 2512 to properly decode the levels back to the encoded data streams. The three comparators 2506-2510 and combinational logic 2512 are closely related to a traditional flash ADC with the exception of optimal threshold control (as per present invention) and decoding methods more amenable to communication systems than binary. The receiver converts the multi-level input into properly decoded data streams. It should be obvious to one skilled in the art that this circuit can be expanded to n-level transmissions by incorporating n−1 high-speed comparators, a more complex decoding logic, and a higher resolution low-speed ADC for statistic signal sampling.
One skilled in the art will understand that various combinational logic circuits can be designed to perform the decoding function block 2712. As illustrated by Table 5, adjacent levels output by an ADC effect a change of only one bit in the decoded four-bit words. These types of decoding techniques are well known to those skilled in the arts. A discussion of these techniques is given in “Digital and Analog Communications” by Gibson, published by Macmillan Publishing Company in 1993.
Although the present invention has been described in connection with various exemplary embodiments, those of ordinary skill in the art will understand that many modifications can be made thereto within the scope of the claims that follow. Accordingly, it is not intended that the scope of the invention in any way be limited by the above description, but instead be determined entirely by reference to the claims that follow.
The present application is a continuation of and claims priority under 35 U.S.C. §120 to application Ser. No. 10/032,586, now U.S. Pat. No. 7,173,551, filed Dec. 21, 2001, entitled “Increasing Data Throughput in Optical Fiber transmission Systems,” the entire contents of which are incorperated by reference. The present application also claims priority to provisional patent application entitled, “Method of QAM Generation and Demodulation Techniques,” (filed on Apr. 19, 2001 and assigned U.S. application Ser. No. 60/284,457. The present application also claims priority to provisional patent application entitled, “Mixed Signal Processing for Distortion Compensation of Multilevel Optical Communication Signals,” filed on Mar. 29, 2001 and assigned U.S. application Ser. No. 60/279,916. The present application also claims priority to provisional patent application entitled, “Automatic Threshold Tracking and Digitization Method for Multilevel Signals,” filed on Apr. 4, 2001 and assigned U.S. application Ser. No. 60/281,526. The present application also claims priority to provisional patent application entitled. “Parallel Noise Filtering for Multi-Level Optical Data Reception,” filed on Apr. 24, 2001 and assigned U.S. application Ser. No. 60/286,070. The present application also claims priority to provisional patent application entitled, “Adaptive Equalizer for Multi-Level Optical Data Receiver,” filed on Apr. 19, 2001 and assigned U.S. application Ser. No. 60/284,949. The present application also claims priority to provisional patent application entitled, “Linearization of Optical Modulation,” filed on Apr. 19, 2001 and assigned U.S. application Ser. No. 60/284,964. The present application also claims priority to provisional patent application entitled, “System and Method for Increasing Throughput in Optical Fiber Transmission Systems.” filed on Jul. 11, 2001 and assigned U.S. application Ser. No. 60/304,718. The present application also claims priority provisional patent application entitled, “High-Speed Multilevel Light Modulator Driver Circuit,” filed an May 9, 2001 and assigned U.S. application Ser. No. 60/289,674.
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