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1.IntroductionMethane () is the second most important anthropogenic greenhouse gas (GHG) with a higher radiative forcing potential than carbon dioxide () on a per molecule basis,1 making anthropogenic a critical target for mitigation. The current global mixing ratio is 1852 parts per billion (ppb).2,3 Anthropogenic is responsible for a significant portion of the global warming produced by all well-mixed GHGs and contributes to the formation of ozone,4 another GHG and air pollutant. Despite the critical importance of for climate, the existing observing network has proven inadequate to constrain global, regional, and sectoral sources, and explain observed trends and variation in atmospheric over the last few decades. Therefore, there is a critical need for observations for constraining the strength and distribution of methane’s sources, including natural (e.g., wetlands) and anthropogenic (e.g., energy sector) ones. For instance, much of the year-to-year variations in methane’s global growth rate are likely from variations in wetland emissions and part of the recent increasing trend in methane’s growth rate may be associated with increased energy extraction activities.5,6 An adequate observing network is necessary to monitor the interaction between the carbon cycle and climate change, such as the potential release of from stored carbon reservoirs (e.g., Arctic and boreal soils) and changes in natural emissions. The current observing network does not provide the necessary data to understand and constrain methane’s sources, such as from permafrost thaw and wetlands, which challenges our ability to make confident projections of future climate. The importance of measuring is also reflected in the last National Research Council Decadal Survey for Earth Science7 and the recent report by the Carbon Climate Workshop.8 Our current understanding of distributions and processes is founded mostly on precise and accurate ground-based, in situ measurements from global monitoring networks.9,10 The location and frequency of these measurements are, however, very sparse on a global scale and even sparser at high latitudes where the thawing Arctic permafrost is of particular concern. Large quantities of organic carbon are stored in the Arctic permafrost and a warming climate can induce drastic changes in carbon emissions and a subsequent positive feedback mechanism can significantly accelerate climate change.11 Global measurements from satellites are available from passive optical sensors Atmospheric Infrared Sounder,12 Scanning Imaging Absorption Spectrometer for Atmospheric Chartography,13,14 Tropospheric Emission Spectrometer,15 Infrared Atmospheric Sounding Interferometer,16 and Greenhouse Gases Observing Satellite,17 but currently lack the required sensitivity to derive regional sources. Passive sensors measuring reflected sunlight are limited to sunlit areas of the planet and their sensitivity falls off at low sun angles, increasing cloud cover, aerosol scattering, and low surface reflectivity. Recent observations indicate that the thawing Arctic permafrost is active even during the cold season18 highlighting the need for continuous sampling at high latitudes even in the winter months. The benefit of active sensing missions is that they provide global measurements where they are really needed: in the absence of sunlight (i.e., at night and at high latitudes in all seasons), in the presence of scattered or optically thin clouds and aerosols, over land and water surfaces, and with higher accuracy and precision than currently available. Active measurements using laser remote sensing technology will be a key step in obtaining measurements of from orbit with sufficient coverage, sampling, accuracy, and precision to address key science questions. The French Centre National d’Etudes Spatiales in collaboration with the German Aerospace Centre (DLR) are developing an active methane mission called Methane Remote Sensing Lidar Mission (MERLIN) scheduled for launch in 2021.19,20 The MERLIN mission targets an 8 to 36 ppbv relative random error in the methane column abundance with a 50-km horizontal resolution. At NASA Goddard Space Flight Center (GSFC), we have been developing an active, airborne lidar to measure atmospheric methane using integrated path differential absorption (IPDA) as a precursor to a space mission to measure from orbit. 2.Instrument DescriptionAn IPDA lidar measures the absorption of laser pulses by a trace gas when tuned to a wavelength coincident with an absorption line.21–31 Using the instrument in a sounding (surface reflection) mode enables integrated column trace gas measurements from orbit with relatively modest laser power. The GSFC IPDA lidar uses a tunable, narrow-linewidth light source, and a photon-sensitive detector coincident with a absorption at 1650.96 nm. The spectrum at 1650.96 nm is well suited for active remote sensing. The line is mostly isolated from adjacent lines and there is very little water () vapor interference. The MELRIN line at 1645.55 nm is less suitable for our technique because it is interfered with by vapor at and it is wider than our line ( versus ), an important consideration because it increases the tuning requirement for our laser transmitter. Figure 1 shows the two-way atmospheric transmittance spectrum around 1650.96 nm from a 400-km orbit using the 2008 HITRAN database32 and a US standard atmosphere. Although in principle only two wavelengths (“on” and “off” the line) are needed to determine the transmittance through the atmospheric column, our technique uses multiple wavelengths to probe the absorption feature. Using multiple wavelengths can reduce errors that may affect the measurement precision,33 measure the spectral shift of the line with changing atmospheric pressure,34 generate atmospheric backscatter profiles of the entire column,35 and enable retrievals of trace gas mixing ratios above and below the planetary boundary layer.36 An early version of our instrument25 flew in 2011. The major differences between the system in Ref. 25 and the new instrument are: (1) the detector: in 2011, we used a very low () quantum efficiency (QE) photomultiplier tube with very limited dynamic range. The new instrument used an enhanced avalanche photodiode (e-ADP) with QE. (2) The type and energy of the transmitter(s): in 2011, we used a low-energy optical parametric amplifier (OPA) laser transmitter with pulse energy of . The new airborne lidar used an OPA and an optical parametric oscillator (OPO) with pulse energies of and , respectively. (3) The optomechanical layout and data acquisition system were completely redesigned and considerably improved. As a result, spurious effects such as etalon fringes were dramatically reduced, which improved the precision of the instrument. Our new airborne IPDA lidar used two different laser transmitters. The first is an OPA and the second is an OPO. Only one laser transmitter is used at a time using a movable mirror to select the desired transmitter. A simplified block diagram of our lidar is shown in Fig. 2 and is based on our previous work with optical parametric generation.37 The OPA, used 20 wavelengths, but was simpler to implement than the OPO, because it did not require an optical resonator cavity, was easier to align and tune, and used only two seed lasers. However, it is extremely difficult to scale the OPA energy to the level needed for space and still maintain a narrow linewidth. Depending on the receiver size and other instrument parameters, we calculate that is needed to obtain a measurement with a 0.5% precision. The underlying reason for the wider linewidth is the large mismatch between the seed and pump energies, which makes it very difficult to amplify the seed with the desired spectral characteristics. If the seed laser power can be significantly scaled up and back-conversion can be suppressed, then it may be possible to achieve energies of out of the OPA with the desired spectral characteristics. In the OPO, narrow linewidth is achieved using an optical resonator cavity, which also enhances the energy of the nonlinear conversion. Our OPO uses five wavelengths and a 1.2 mJ GSFC-built solid-state pump laser with a triangular optical ring cavity. The OPO energy could be scaled to space () and maintain a narrow linewidth with a suitable higher energy pump laser and improved optical design. However, the OPO currently requires a separate seed laser and complex optical phase-lock loops for each wavelength used. The first transmitter option (OPA) consists of a magnesium oxide-doped periodically poled lithium niobate (MgO:PPLN) crystal, which is pumped by a pulsed single-frequency 1064 nm laser and seeded by a continuous wave (CW) 1650.96 nm laser diode. The pump laser is a custom burst-mode Yb fiber laser from Fibertek Inc., based on a master oscillator power amplifier configuration.38 The pump laser was optimized for high peak power and generated in a burst pulse. Each burst pulse consists of 20 individual 3 ns pulses separated by 85 ns with the individual pulse energies in the burst varying from 2 to . An example of the OPA burst pulse is shown in Fig. 3. The OPA output varies nonlinearly with the peak power of the pump so the variation in the individual pump pulses resulted in very low conversion in the OPA of the low-energy pulses. The linewidth of the OPA was . The pump laser was delivered with a bare, large mode area fiber output that optimized the power output but was not suitable for flight. Prior to our flights, we connectorized the output and the burst pulse energy was reduced to per burst pulse. Two distributed-feedback (DFB) CW diode lasers, a master reference and a scanning seed, from NEL America (NLK1U5FAAA), are used in the OPA. The wavelength of the master reference laser is locked on the absorption peak at using a 16.5-cm cell containing of . The locking technique is the same for both the OPA and OPO, and is described by Numata et al.39,40 It is based on the technique used by Pound–Drever–Hall41 and is similar to the technique used by Fix et al.42 We estimate that the long-term drift of the master laser frequency is , based on our experience with similar DFB seed lasers for . The scanning seed laser is tuned over the line by rapidly scanning the laser current. The beat signal between the master reference laser and the scanning seed laser is measured by a frequency counter and recorded by the data acquisition system. The frequency of the beat signal is converted into the OPA wavelengths in postprocessing. The scanning seed and pump laser beams are combined with a beam combiner and focused through the PPLN crystal. The temperature of the PPLN crystal can be tuned to optimize the phase matching at the seed wavelength. The unconverted pump beam at 1064 nm is separated from the signal beam at 1650.96 nm using a dichroic mirror and directed into a beam dump. A small part of the OPA beam at 1650.96 nm is also directed through an 8-cm reference cell containing of for calibration purposes and a blocking filter prevents any remaining 1064 nm radiation from existing the aircraft. The main OPA output beam is directed through a beam expander to reduce its divergence. The final output energy of the OPA transmitter exiting the aircraft was per burst pulse and 20 wavelengths were used in each wavelength scan to sample the lineshape. The second transmitter (OPO) consists of another temperature-controlled PPLN crystal inside a three-mirror cavity. The temperature of the PPLN crystal can be temperature-tuned to optimize the phase matching at the seed wavelength. The OPO is pumped by a pulsed single-frequency 1064 nm Nd:YAG laser and seeded by five CW DFB lasers at . The pump laser of the OPO is a custom-made GSFC single-frequency Nd:YAG laser with a pulse width and maximum energy of 1.2 mJ per pulse at a 5 kHz repetition rate. The same master reference seed laser used in the OPA is used for the OPO. Part of the phase-modulated master reference beam (labeled “locking beam” in Fig. 2) is used to lock the OPO cavity using a cavity length-control servo and a piezoelectric transducer. Four additional slave DFB diode lasers are offset-locked to the master reference laser by an integral number of the OPO cavity free-spectral range using the beat signal from four detectors and four optical phase locked loop servos and a Rubidium frequency reference. Thus, the OPO samples the absorption at five wavelengths (one master and four slave). The wavelengths are selected by switching fast (NanoSpeed™) fiber optic switches made by Agiltron. After exiting the OPO cavity, the unconverted pump beam at 1064 nm is separated from the signal beam at 1650.96 nm using a dichroic mirror and directed into a beam dump. After the dichroic mirror, a small part of the OPA beam at 1650.96 nm is directed through a 5-cm reference cell containing of for calibration purposes and a blocking filter prevents any remaining 1064 nm radiation from existing the aircraft. The main OPO output beam is directed through a beam expander to reduce its divergence. The maximum output energy of the OPA transmitter exiting the aircraft was per pulse. The measured linewidth of the OPO was , but the measurement was limited by the resolution of the Febry–Perot etalon we used.39 The divergence for both laser transmitters was . Prior to exiting the aircraft through the nadir port, a wedged beam splitter sends a small portion of the outgoing beams () to an 8.9-cm diameter integrating sphere with two InGaAs detectors attached to one of its ports (one for the OPA and one for the OPO). The detectors measure the outgoing energy monitor pulses for the OPO or OPA and are digitized by the data acquisition system. The energy monitor pulses are used to normalize the reflected pulses from the ground every in postprocessing. In addition to the energy monitors, a multimode core fiber is also connected to a port of the integrating sphere and collects a small fraction of the outgoing laser energy. The multimode fiber output is collimated and fed back into the receiver telescope and focused on our sensitive detector to provide a zero-range pulse (or “start pulse”) for our ranging algorithm. The time of flight (TOF) from the zero-range pulse to the reflected pulses from the ground is used to determine the IPDA lidar range. The laser pulses reflected from the ground are collected by a commercial 20-cm diameter receiver telescope (Vixen VC200L) with an effective focal length of 2 m and are coupled into an antireflection-coated core multimode fiber. The receiver field of view (FOV) was . The receiver fiber output is collimated by a lens and directed through a 0.8 nm [full width at half maximum (FWHM)] bandpass filter, and then focused onto an HgCdTe-e-ADP by DRS Technologies.43–45 The detector is a array, with the pixel pitch being with no gaps between pixels. The detector is operated at 80 K and its electrical bandwidth is . The signals from the frequency counter, reference cell (OPA or OPO), the energy monitor (OPA or OPO), the zero-range pulse, and ground return pulses are digitized by a National Instruments© PXI-based data acquisition system containing a FlexRIO FPGA module, a FlexRIO digitizer adapter module, a timing and synchronization module, and a global positioning system (GPS) module. All signals are averaged every and the files are time stamped by the GPS time. Additional averaging can be performed in postprocessing. The major parameters of the airborne IPDA lidar are summarized in Table 1. Table 1Instrument parameters.
3.Airborne Demonstration Results3.1.FlightsIn late September 2015, the instrument was installed on the NASA DC-8 airborne laboratory, based at Armstrong Flight Research Center Science Aircraft Integration Facility in Palmdale, California. The transceiver structure supported two small, vibration isolation, optical benches for the OPO and OPA, the receiver telescope, and the transmit optics components. A vibration isolation mechanism for the entire structure minimized the impact of aircraft vibrations. The overall transceiver dimensions were and the total weight was 363 kg (Fig. 4). Two aircraft racks on either side of the transceiver structure held ancillary instrumentation needed for the operation of the instrument (data acquisition and control computers, detector, seed lasers, electronics, chillers for the pump lasers, etc.). A Picarro in situ analyzer (Picarro G1301-m) measuring methane, carbon dioxide, and water vapor using wavelength-scanned cavity ring down spectroscopy was also installed at a different location in the aircraft to provide in situ reference measurements. Three flights in the western United States were carried out in late September to early October 2015. Flight planning was constrained by the limited number of flight hours available, the inclement weather, and aircraft maintenance issues. Each flight lasted about 4 h and included several segments at increasing altitudes from 2 to 13 km over varying topography, ground reflectivity (including ocean), and atmospheric conditions. In addition, a spiral descent from to near the surface ( to 300 m depending on Federal Aviation Administration flight clearances) was included in the flight plan in order to sample the localized vertical profile of the mixing ratio and associated meteorological parameters (pressure, temperature, humidity, etc.) using the Picarro in situ sensor and the aircraft’s data acquisition system. The IPDA lidar was always turned off below 1 km above ground level (AGL) to comply with strict laser safety requirements. Figure 5 summarizes our flight paths in the western US. The flight tracks and locations were chosen to minimize the transit flight time and targeted areas of potential emission sources. For the first two flights, we used the OPA transmitter and for the third flight, we used the OPO. The first flight was mostly over the Central (San Joaquin) Valley of California. We flew on a general south–north track, at three different altitudes at , 5.9 to 6.0, and 12.7 km. A large portion of the flight was in and over a dense cloud cover and the spiral descent originally scheduled over Coalinga airport, California, was moved to north of Bakersfield, California, due to the weather conditions. The Coalinga airport was originally chosen due to its proximity to a large feedlot. The second flight targeted a large landfill northeast of Las Vegas, Nevada. After an initial pass at and a subsequent spiral descent and low pass over the landfill at AGL, two more flight segments were flown at 3.2 and 6.4 km. Then we transited over to the Central Valley, California where we did two high-altitude north–south flight segments at 12.7 and 13.1 km. Part of the Central Valley was completely covered by a dense cloud cover during our flight. The third flight was again over the Central Valley of California mostly due to adverse weather conditions and flight restrictions at other candidate sites. We flew on a rectangular path centered on the Central Valley at three different altitudes: 3.1, 6.3, and 12.7 km. A spiral descent and low pass ( AGL) was performed over Coalinga airport. Following the high-altitude segment at 12.7 km, we flew over the Pacific Ocean and performed another spiral descent over Edwards Air Force Base, California, prior to landing in Palmdale. The flight altitude profiles (GPS altitude and IPDA lidar range versus time) are shown in Fig. 6. 3.2.RetrievalsOur retrieval algorithm uses a least squares fit to minimize the root mean squared error between the IPDA lidar measurements and the model prediction and is similar to the approach used by Abshire et al.46 in their retrievals. The averaging time for the data acquisition system is , but the data are further averaged in postprocessing in 1-s intervals. First, the range (path length) from the aircraft to the surface is determined from the laser pulse TOF by correlating the first return pulse with the zero range pulse and measuring the time delay of the correlation peak, following the cross-correlation approach by Amediek et al.47 The aircraft is equipped with a GPS antenna and a radar altimeter and we compare our lidar range with the radar range to ensure that only valid ground return pulses are used in the retrievals. If only cloud returns are present, the data are not used in the analysis. However, there were many occasions we had multiple returns from cumulus and cirrus clouds, and the ground. Segments that did not contain enough valid ground returns due to the presence of clouds or other instrument issues were excluded from the analysis. Generally, when fewer than 50% ground returns are present over a 1-s averaging period the data were not used. The algorithm then estimates the column average of transmittance of the atmospheric column by fitting the integrated pulse returns from the surface at each wavelength, after normalization by the transmitted pulse energy, the filter transmission, and other instrument calibrations. The algorithm compares the experimental with the theoretically calculated transmittance values and adjusts the fit parameters, including the mixing ratio, to minimize the fit error. The theoretical calculations used a Voigt lineshape, the lineshape parameters from the HITRAN 2008 database, and line-by-line radiative transfer calculations.48 The impact of more complicated lineshape functions and line mixing was not included in the calculations. However, recent spectroscopic measurements by Delahaye et al.49 for the MERLIN line at 1645.55 nm suggest that differences of 1.5% up to 5% in the lineshape may arise if these effects are not taken into account. Figure 7 shows a theoretical lineshape from a 400-km altitude orbit with a US standard atmosphere, and a comparison of the corresponding wavelength sampling by the OPA and OPO (20 versus 5 wavelengths). The meteorological data for the vertical profile of the atmosphere are obtained from the spiral descents, the Goddard Modeling and Assimilation Office, Modern Era Retrospective Analysis for Research and Applications (MERRA),50 and the Goddard Earth Observing System Model, Version 551 with a sampling–interpolating interval of 1 second. The true mixing ratio profile over the entire flight path is of course, unknown. For simplicity, in our analysis the mixing ratio used in the radiative transfer calculations was set at a constant 1900 ppb. Although this value is clearly not an accurate estimate of the true mixing ratio for an entire flight, it is not very different from the column average values obtained by the in situ spectrometer during our spirals and it provided a reasonable basis for estimating the precision, but not necessarily the accuracy, of the IPDA lidar. In order to better assess the accuracy of an IPDA lidar, more frequent spirals and/or data from radiosondes are needed to infer the mixing ratio profile over a flight path. Figure 8 shows the time series data of the in situ mixing ratio measured by the Picarro, the theoretical mixing ratio, set at 1900 ppb, and the mixing ratio values obtained from our retrieval algorithm for flight 1. There are obvious differences between the instrument retrievals and those from the Picarro. That is to be expected since the Picarro is an in situ measurement and the lidar measures the column average. There were multiple outliers in our retrievals that were filtered out. These were mainly due to two factors: instrument adjustments and optically thick clouds. Due to aircraft vibrations and changes in the cabin temperature and pressure, the OPA transmitter needed alignment adjustments during flight to reoptimize its power. In addition, the wavelength locking circuitry and instrumentation that locked and reported the wavelength of each laser pulse, by measuring the frequency of the beat note between the reference laser and the scanning seed laser wavelengths, would occasionally report erroneous values. The average wavelength values are used if the reported wavelength value did not deviate more than from the moving average wavelength value. Finally, a significant part of the flight was over broken, optically thick clouds. When all the outliers due to broken clouds and instrument adjustments were filtered out, the agreement between the theoretical mixing ratio, set at 1900 ppb, and the retrieved mixing ratio values was very good, and the standard deviation of the retrieved mixing ratio was 14.9 ppb or (). Assuming the column average mixing ratio did not vary significantly, this value represents a reasonable estimate of the measurement precision of our IPDA lidar. Another good way to assess the IPDA lidar performance is to plot the experimentally retrieved differential optical depth (DOD) versus the theoretical value. The theoretical and experimental DOD values are determined by the difference in optical depth (OD) between the on wavelength interpolated at the wavelength closest to the peak () and the average value of the OD at the off wavelengths to the left and right of the absorption ( and , respectively). After removing all the outliers due to laser power adjustments, erroneous wavelength values and broken clouds, the DOD lidar versus DOD theory linear fit (Fig. 9), had a slope of 0.98 and an offset of . The value was 0.994. Figure 10 shows the time series data for flight 2: the in situ mixing ratio as measured by the Picarro, the theoretical mixing ratio (set at 1900 ppbv), and the IPDA lidar mixing ratio values. Again, outliers due to instrument adjustments and the presence of optically thick clouds were filtered out. The standard deviation of the retrieved mixing ratio was 13.4 ppb or (). The DOD lidar versus DOD theory linear fit for flight 2 had a slope of 0.998 and an offset of (Fig. 11). The value was 0.990. These values are consistent with flight 1 results indicating that when the instrument is operating properly (i.e., no adjustments are being made and no cloud interferences) it is capable of measuring mixing ratios with a 0.7% to 0.8% precision. Obviously, the definition of the instrument “operating properly” is subjective and in our case, it excluded sections of the flights where the instrument needed adjustments. However, the current results provide “proof-of-principle” evidence that a multiwavelength IPDA lidar with an OPA can provide high enough precision for meaningful science measurements from an airborne platform over a varying topography and altitudes from 2 to 13 km. The last flight (flight 3) used the OPO as the laser transmitter. As shown in Table 1, the OPO used only five wavelengths versus 20 for the OPA. Fewer wavelengths mean that the lineshape is under-sampled and thus, it is more difficult to identify and remove any baseline slope and/or other artifacts in the data. The OPO transmitter also required adjustments during flight. In addition, the high OPO energy () presented additional challenges. It saturated our detector especially at lower altitudes. Our initial plan to attenuate the received energy by restricting the receiver aperture size with a variable iris did not work for the flight configuration on the DC-8, even though we tested the idea successfully in the laboratory. The hardware that was used to restrict the receiver aperture size produced a large near-field backscatter when installed in the aircraft saturating and turning off the DRS detector. As a result, it could not be used for flight and thus, the OPO energy was too high for the detector, especially for the low-altitude flight segment and over highly reflective surfaces. The detector gain had to be turned down to its minimum value for part of the flight where the detector was presumed to be nonlinear. Our initial analysis showed a large discrepancy between the theoretical and experimental DOD values. More importantly, we expected the discrepancy to be worse for the lower altitude segment of the flight, where the detector was saturated and the gain was turned down to a minimum. Contrary to our initial expectations, the DOD discrepancy was worse for the higher altitude segment of the flight, where the detector was not saturated and operating in a linear regime. Repeated postflight calibrations of the DRS detector in the laboratory failed to uncover any significant detector nonlinearities within the digitizer dynamic range (1.23 V peak–peak) that could account for the discrepancy we observed. For a given detector gain (bias) above threshold, the detector is linear over at least two orders of magnitude and even when the detector gain is set to its minimum value the results were repeatable and could be calibrated. Another possible problem we uncovered in our post flight calibration was wavelength locking. Wavelength 1 () was initially reporting a “lock” status even though it was not always properly locked on the correct wavelength. The problem was corrected quickly during flight (shortly after the first spiral around 64,000 s UTC), but the data prior to the correction had to be discarded. We hypothesized that the other wavelengths might have also experienced the same issue later in the flight. Several postflight calibrations in the laboratory with a high-resolution wavemeter showed that the wavelength locking circuitry was operating properly and the circuitry was reporting the wavelength values correctly. A detailed analysis of the OPO reference cell indicated that the discrepancy was not due to the detector or the wavelength locking. The discrepancy was traced to the fast fiber optic switches used to switch between the five OPO wavelengths. The switches have a small amount of crosstalk and although the crosstalk was initially measured to be relatively small, ( to 1.5%), the effect on the signal can be significant especially at higher altitudes. Because of the crosstalk, the total signal received at each wavelength has contributions from all five wavelengths. Wavelengths 1 and 5 ( and ) are “off line” and are not absorbed. Wavelengths 2, 3, and 4 (, , ), however, are absorbed and the amount of absorption increases with altitude. As the altitude (absorption) increases the “on line” wavelengths (, , ) signals, have increasing contributions from the off line wavelengths ( and ). Thus, a correction factor is needed to account for the crosstalk. The analysis of the reference cell provided the initial evidence and estimate of the crosstalk correction factor. Further refinement of the average correction factor at three different flight altitudes (3.1, 6.3, and 12.7 km) was obtained by ratioing the raw integrated pulse energies at wavelengths 1, 2, 4, and 5 to wavelength 3 and comparing the actual with the theoretical values. Obviously, the correction factor values for different altitudes are just average estimates, not exact values and they vary with altitude and topography. As the aircraft ascends or descends or the topography changes, the crosstalk factor will change. Furthermore, as the performance and gain of the OPO cavity change there is no guarantee that the crosstalk between wavelengths will remain fixed. The crosstalk correction factor accounted for the observed discrepancy for the three constant flight altitude segments of flight 3 (3.1, 6.3, and 12.7 km) and was applied to the analysis. Figure 12 shows the time series data of the in situ mixing ratio from the Picarro, the theoretical mixing ratio, set at 1900 ppb, and the retrieved mixing ratio values for the three constant flight altitude segments (3.1, 6.3, and 12.7 km) used in the analysis. When the outliers were removed, the standard deviation of the retrieved mixing ratio was 21.4 ppb or (). The DOD retrieval versus DOD theory linear fit (Fig. 13) had a slope of 1.01 and an offset of . The value was 0.999. These values are comparable but slightly worse than those obtained during flights 1 and 2 with the OPA, but the number of outliers that were filtered out was higher. 4.DiscussionThe high accuracy and precision needed for measurements pose several challenges for the IPDA lidar design. Currently, the laser transmitter poses the greatest challenge. The transmitter must have narrow linewidth (), must be tunable to scan over the absorption line (), and must have high pulse energy. The exact energy requirement also depends on the detector QE, receiver aperture size, and other instrument parameters. Our link margin calculations show that is needed for space to achieve a 0.5% random error with a 1-m diameter telescope. We have tried to address several potential error sources in our instrument design: errors due to cloud and aerosol scattering are minimized by our pulsed approach, which digitizes the entire atmospheric column return and gates the returns from the ground. The IPDA lidar cannot penetrate optically thick clouds. However, our ranging algorithm provides accurate knowledge of the total pathlength minimizing the effect of multiple scattering and excluding returns from clouds. In order to improve the accuracy of the measurement, better knowledge of the spectroscopic parameters of the line and a more sophisticated lineshape function are needed. The line we used is actually comprised of multiple lines with different linestrengths and temperature dependence. There are obvious differences between the instrument retrievals and those from the Picarro. The lidar values show less variation in the mixing ratio, which is to be expected since the Picarro is an in situ measurement and the lidar measures the column average. The Picarro recorded a significant increase in the in situ mixing ratio only for flight 1 despite the fact that we tried to target landfills and other areas of increased mixing ratios. No significant mixing ratio increase was observed near these areas by the Picarro for flights 2 and 3. The biggest increase was observed during the spiral for flight 1 near the ground (around 7000 s UTC in Fig. 8) when the lidar was turned off to satisfy the laser safety requirements. The other big increase was observed earlier in the flight (around 6600 to 6700 s UTC in Fig. 8). The source of that increase is unclear. The predicted values (i.e., “truth”) to which our experimental data are fitted, assumed a constant mixing ratio of 1900 ppb. The actual mixing ratio profile over the entire flight path is of course, unknown. Although 1900 ppb is clearly not an accurate estimate of the true mixing ratio for an entire flight, it provided a reasonable basis for estimating the precision, but not necessarily the absolute accuracy, of the IPDA lidar. In order to assess the accuracy of any IPDA lidar, multiple spirals and/or data from other sources such as radiosondes are needed to measure the actual vertical distribution of the mixing ratio. Even then, differences and biases will remain. Differences in the spectroscopic database (HITRAN 2012 versus 2008) and effects such as line mixing and speed-dependent profiles produce different results. Our incomplete knowledge of the state of the atmosphere (pressure, temperature, and humidity) and the accuracy of our meteorological model also contribute. Although the MERRA model was adequate for these initial demonstration flights, to evaluate the IPDA lidar accuracy, better knowledge and modeling of the state of the atmosphere and vertical profiles at the local level are needed. These can be obtained in future flights by increasing the frequency and location of the spirals, including data from other instruments and radiosonde data if available. Finally, lidar issues due to a variety of factors such as shot noise, ground reflectivity, speckle noise, wavelength, and power stability of the laser transmitter, etalon fringes, and in the case of the OPO cross talk between wavelengths all contribute to biases in the measurement. With the limited data obtained from these demonstration flights, we are not able to separate individual bias sources. However, we did observe that the random noise was reduced by the expected , where is the averaging time, for up to to 10 s. After to 10 s, no improvement in the noise statistics is observed. The IPDA lidar needs significant engineering improvements to increase its reliability. The optomechanical design, laser transmitter stability, for both the OPA and OPO needs to be considerably improved to reduce the effects of vibration, temperature, and pressure. The locking electronics and diagnostics for the seed lasers and OPO cavity also need to improve. The isolation between OPO wavelengths needs to increase by at least an order of magnitude to eliminate the need for cross talk correction factors. All of these improvements are feasible if proper engineering resources can be applied. The OPA, which used 20 wavelengths, produced better fits, was simpler to implement than the OPO because it did not require an optical resonator cavity, and was easier to align and tune. However, it is extremely difficult to scale the OPA energy to that needed for space ( depending on the receiver size and other instrument parameters) and maintain a narrow linewidth. The highest energy we obtained in the laboratory with our OPA was using a two-stage OPA, and the burst-mode Yb fiber laser amplified by a custom solid-state amplifier as a pump. However, at high energies, the OPA output spectrum typically consists of a sharp peak near the seed wavelength and a broad side lobe, when the parametric gain is high. In that case, we cannot clearly define the linewidth but it is generally too wide for accurate IPDA lidar measurements. In addition, for a space mission we are aiming for a simple and efficient single stage—not a complex multi-stage—OPA based on quasiphase matching (QPM). In this configuration, we have observed that the OPA output linewidth does not fully converge to the seed linewidth, giving wide side lobes, especially when pump and seed fluences are high and low, respectively.52 Similar side lobes were observed in the seeded QPM-based OPA system for a lidar.53 Back conversion and parametric amplification of the seed’s side lobes are possible causes. Complex OPA/OPG systems in other wavelength regions have been developed with a narrow linewidth.54 However, it is difficult to predict how they can be implemented with a multiwavelength IPDA lidar for space because of their complexity. If the seed laser power can be significantly scaled up then it may be possible to achieve energies of out of the OPA with a narrow linewidth. With the existing seed and pump laser technology, we do not see a path to space for the OPA in the near future. However, it remains a viable transmitter for measurements from an airborne platform. In the OPO, narrow linewidth was achieved using an optical resonator cavity, which also enhances the energy of the nonlinear conversion. Our five-wavelength OPO uses a 1.2 mJ GSFC-built solid-state pump laser and a triangular optical ring cavity. We have since replaced the GSFC-built solid-state pump laser with a smaller, compact Yb fiber laser and redesigned the OPO cavity to improve stability. In the laboratory, we demonstrated energies of at 5 kHz with a narrow (transform limited) linewidth. The OPO energy could be scaled to space but it requires complex optical phase-lock loops and cavity control. In recent years, resonantly pumped erbium (Er) doped YAG, Er:YAG and Er:YGG, lasers, which directly emit at 1645.5 and 1650.96 nm, respectively, offer another option for a transmitter. Using Er:YAG for detection dates back to 197255 and recent successful demonstration and commercialization of high-power and high spectral brightness pump sources have afforded the realization of resonant pumping of Er:YAG56–59 and Er:YGG.60,61 The emission cross section of Er:YAG crystal is centered near 1645.3 nm and falls off rapidly at 1650.96 nm. It is near the MERLIN lines at 1645.55 nm, which are relatively wide (). Our line at 1650.96 nm is narrower (), which makes fast tuning easier. Unfortunately, Er:YAG cannot be used as a gain medium at 1650.96 nm, but Er:YGG can be used as a potential medium for lasing at that wavelength. Both materials are good candidates for a laser transmitter. Power scaling for both materials, multiwavelength operation and tuning considerations remain. Our preliminary radiative transfer calculations show that both lines (Er:YAG at 1645.55 nm and Er:YGG at 1650.96 nm) have similar temperature sensitivity and are well suited for space born measurements. Recent high-accuracy spectroscopic measurements indicate that line mixing effects in the Er:YAG 1645.55 nm line41 should also be taken into account. We expect similar effects to be present for the Er:YGG line at 1650.96 nm. 5.SummaryWe reported on an airborne demonstration of atmospheric measurements with an IPDA lidar using an OPO and OPA laser transmitter and sensitive avalanche photodiode detector. The lidar measured the atmospheric absorption at multiple, discrete wavelengths near 1650.96 nm. The instrument was deployed in 2015 aboard NASA’s DC-8 Airborne Laboratory and measured mixing ratios from 2 to 13 km. Relatively high-precision measurements of 0.7% to 1.1% were demonstrated for all three flights; however, many areas of improvement remain. The stability and reliability of the laser transmitters need to improve considerably but the basic measurement approach has been demonstrated. We are currently improving our airborne instrument with better optomechanical design and compact, more stable laser transmitters. We hope to fly again in the near future when the next opportunity arises. AcknowledgmentsThe authors would like to acknowledge the generous support by the Earth Science Technology Office (ESTO) Advanced Component Technology Program (ACT-13) and the GFSC Internal Research and Development (IRAD) Program. The authors would like to thank Dr. Piers Sellers, who passed away in December 2016, Ms. Lisa Callahan, and Dr. Matt Mcgill, for their unwavering support of our lidar development and flight demonstration. The authors would also like to thank Dr. Graham Allan and Dr. James Abshire for valuable discussions and consultations. The authors would also like to express their appreciation to the DC-8 flight operations team at the Science Aircraft Integration Facility in Palmdale, CA. ReferencesIPCC Fifth Assessment Report, Cambridge, New York
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