3.2. HIRS on NOAA Satellites
The time series of radiance ratio over SNOs for the channels studied show clear biases among different satellites (
Figure 3).
Here, the radiance ratio is defined as the ratio of the HIRS channel radiances from earlier satellites divided by that of the later (successor) satellite at the SNOs for a matching pair of satellites. Among all those channels studied, Channel 8 (the atmospheric window channel) has the smallest inter-satellite bias, generally less than 0.5% in radiance, although the inter-satellite difference can be seen clearly from the figure and are different from one satellite pair to another. These biases are generally higher than the bias for HIRS on MetOp-A relative to IASI. In contrast, Channel 1 has the largest inter-satellite bias, more than 4% for some satellite pairs (e.g., NOAA-15/NOAA-16), with consistent North/South hemisphere differences. This large bias has been reported in several previous studies [
9,
14]. Most of the satellite pairs have a consistent correlation between the HIRS de facto SRF CWN difference (SRF
df) and radiometric biases. The positive correlation between them suggests that the biases can mostly be explained by SRF
df, while the negative correlation for a few pairs (especially for those with small CWN differences such as NOAA-09/NOAA-10) is likely due to SRF errors (SRFerr) caused by prelaunch measurement uncertainties as discussed earlier. These features are consistent with previous analyses done by [
9,
14]. By shifting the SRF to the left or right to reduce SRF
err due to the uncertainties, we can find an optimal SRF value at which the radiance difference can be minimized.
Using Equation (3), the predicted HIRS radiance for a given channel is generated to estimate the radiometric bias due to SRF
df.
Figure 4 shows the radiance ratio between the consecutive two satellites for all channels studied after accounting for the effects of the HIRS SRF
df. Indeed, in most cases, the inter-satellite bias has been reduced significantly. For example, the radiance ratio time series of Channels 1, 2, and 8 now are aligned almost to 1. For Channel 3, there are still some residual biases for SNO pairs before the year 2003. The residual bias indicates that there are still biases caused by other factors, which can be attributed to SRF
err or uncertainty. It is also observed that there is very little difference between the bias over the North and South SNO locations, which simplifies the SRF
err correction in the next step.
After accounting for the radiance biases due to SRF
df, the next step is to reduce the residual biases caused by SRF
err due to prelaunch measurement uncertainties.
Figure 5 shows the radiance ratio over SNOs after the intermediate SRF correction as described in Equation (5). In this figure, both the HIRS SRF
df and SRF
err due to measurement uncertainty have been removed from the time series. The SRF correction has been referenced to the late satellite in each satellite pair. This method can effectively reduce the bias between the two satellites. Except for Channel 3, the correction works well for almost all channels in the time series (ratio very close to 1). For Channel 8, the ratio biases are within a range of 0.01% (close to 1) with a standard deviation less than 0.04. The corrected South and North Pole biases at SNOS are now very similar and close to each other. For Channel 1, the maximum bias is 0.8% for South Pole SNO between HIRS on NOAA-18 and MetOp-A with a standard deviation of 0.02. For Channel 2, the maximum bias is 0.3% between NOAA-10/NOAA-11 and a standard deviation of 0.01. For Channel 3, the maximum bias is about 1.6% between NOAA-11/NOAA-12 with a standard deviation of 0.005. From the time series, Channels 1–3 are less sensitive to the SRF correction than Channel 8. Further discussions on each channel are provided below.
It is known that HIRS Channel 1 is located at the CO
2 Q-branch at the 15 um (or 667 cm
−1). Q-branch is where the vibrational transitions occur with the same rotational quantum number (ΔJ = 0) in the ground and excited. In theory, CO
2 absorption is very strong at the Q-branch, and a very low radiance is expected. However, as it is shown in the IASI spectrum in
Figure 2b, instead, there is an upward spike in radiance at this spectral region. The reason for this spike is not directly due to strong CO
2 absorption, but instead because it is sensing a higher layer (upper stratosphere with a HIRS weighting function peak at ~30 hPa) of the atmosphere with a higher temperature at this spectral region, due to the opaqueness with strong CO
2 absorption. On the high-frequency side (towards 750 cm
−1) of the Q-branch, the energy of rotational transitions is added to the energy of the vibrational transition. This is known as the R-branch of the spectrum for ΔJ = +1, where the rest of the HIRS CO
2 channels are located. In contrast, the P-branch for ΔJ = −1 lies on the low wavenumber side of the Q branch, which is not covered by the HIRS channels. The appearance of the R-branch is very similar to the appearance of the pure rotation spectrum, and the P-branch appears as a near mirror image of the R-branch.
Therefore, Channels 1, 2, and 3 are located on the R-branch of the CO
2 spectral absorption curve between 13 and 15 um from IASI observations, which is relatively flat, although a slope in radiance is still present as shown in
Figure 1, which makes the SRF shift method in Chen et al. [
8] still applicable. However, for Channel 3, the relatively flat SRF curve makes the algorithm difficult to converge. When the least-squares method is used, it cannot be minimized towards zero (
Figure 5 for Channel 3), though the SRF shift values are reasonably good visually. For Channel 1, after SRF correction, the south-pole and north-pole time series become more different in the final time series. Although the results in the radiance ratio are close to 1, the variability increases as the bias are reduced. Channel 1 also has a nonlinear and sensitive response of radiance bias to SRF shift due to the radiance spike at 667 cm
−1, though the SRF shift can account for a large bias reduction. It is also noted that the SNR of Channel 1 is the smallest among all the 12 longwave infrared channels [
9], which implies larger radiometric uncertainties.
Overall, while the method works well to reduce inter-satellite bias, there are uncertainties compared to the other CO
2 channels studied by Chen et al. [
8]. It should be kept in mind that while the time series work better for channels with linear sensitivity in response to SRF shift, for other channels (such as Channel 1), errors can also be propagated from one satellite SRF correction backward and accumulated in the SRF corrections for the earlier satellites. Thus, these spectral shift values have uncertainties, and users must exercise caution for long-term trending studies.
Channel 8 observes the Earth’s surface and is located in a spectrally relatively flat part on the spectral absorption curve. Thus, its sensitivity to SRF shift due to CO
2 absorption is small, as shown in
Figure 2a. However, the Planck function is nonlinear and dominates this spectral region. As a result, we found that the SRF shift methods work very well to reduce inter-satellite bias. As [
11] illustrated, Channel 8 of HIRS onboard, MetOp-A has a bias of about 0.15 K compared to IASI, which can be due to several factors such as nonlinearity blackbody non-unity emissivity, and SRF shift. This study found that the inter-satellite bias before any adjustment can be as high as 0.5% (e.g., NOAA-14/NOAA-15 and NOAA-16/NOAA-17), though this is generally small compared to other channels. This bias has been reduced effectively to be less than 0.01%, and the SRF correction works well for this channel.
3.3. Bridging the Gap between NOAA-07 and NOAA-09 Using the Global Mean Method
The SNO time series allowed us to address the HIRS SRF issues for satellite pairs with SNOs, as presented in previous sections. However, there was a period in history when there were no SNOs in the mid-1980s between NOAA-09 and previous satellites (NOAA-06/07/08). The satellite mission life for NOAA-08 was much shorter by today’s standards. As a result, an alternative method has to be used to bridge this gap. Here, we choose to use the global mean radiance method, primarily because the equator crossings of these two satellites are similar, which significantly reduces the daily cycle effects in the inter-satellite calibration. The concept of the global mean method is not new, and the method has been used previously for climate studies. Here, we focus on correcting the HIRS SRF errors using this method.
NOAA-09 has a valid data period of 25 February 1985 to 14 November 1988, while NOAA-07 has a valid data period of 15 December 1981 to 02 February 1985. Though NOAA-09 has two months of data overlapped with NOAA-07 before 25 February 1985, these data are missing from the NOAA CLASS data archive, and only a few points of SNOs exist. With currently available datasets, both NOAA-07 and NOAA-09 have several years of observations, but no overlap observations. The gap between the NOAA-09 and NOAA-07 is about one month. Here, we use a global mean method to derive our SRF shift based on the radiance time series globally averaged observations for each month and each channel.
Figure 6 shows the radiance ratio of the global mean radiance normalized by the fitted seasonal cycle. Immediately, the difference between the two satellites can be identified. For example, the ratio of Channel 2 changes from 0.993 on January 1985 of NOAA-07 (last red dots) to 0.985 on March 1985 of NOAA-09 (first green dots). This large jump cannot be explained by climate change compared to the Outgoing Longwave Radiation (OLR) time series. Channels 1–3 have similar patterns for both NOAA-07 and NOAA-09, respectively. It is found that a high monthly anomaly existed in the NOAA-07 radiance time series for Channels 1–3. The highest ratio occurs during 1982–1983, which is a strong El Niño year. These channels have been used to study the OLR [
16], and been used to construct the ENSO index [
7]. These higher monthly anomalies are consistent with that in the OLR time series. The month-by-month variation is usually small with amplitude less than 0.5%. The abrupt change of the radiance ratio from the last half-year of NOAA-07 and the first half-year of NOAA-09 can only be explained by the SRF difference. For Channel 8, the time series is relatively flat, and the inter-annual variability is small compared to Channels 1–3, usually less than 1.5%.
Note that the difference between descending and ascending time series exists. For example, one can see positive trending for Channel 2 and negative trending for Channel 8 in the NOAA-09 ascending time series (daytime), where the climate signals are relatively flat in the OLR time series. These are caused by the diurnal variation when local crossing time changes with time. For this reason, only nighttime results (descending orbit) are used in the final results because the diurnal changes at night are expected to be much less than those at daytime [
17].
With the global mean method, first we look at each month with the HIRS observations over each area grid (0.25 by 0.25) from −80° S to 80° N. Then, the radiance average over each month and each grid is computed and then globally averaged (area-weighted) to get a monthly time series for N07 and N09, respectively, for each channel. We only use HIRS pixels near nadir (from pixel 26–31). Then, the annual and semi-annual signals are fitted and extended to every month for both time series. The time series of radiance ratio (to the seasonal cycle) is analyzed to derive the SRF shift. This global time series method is derived similarly to that used by [
18] to study the global daily cycle. For different channels, the responses to the climate signal are different. The long wave infrared channels have been used to monitor the longwave radiation, are very sensitive to the ENSO signals, and have been used as an indicator of ENSO activity. HIRS OLR time series displayed a strong inter-annual variability, especially around 1983 [
6,
7], though the actual cause of this strong anomaly is still in debate (such as volcano eruption versus ENSO). In minimizing the SRF shift, we only consider the data 6 months before and after February of 1985 to avoid large monthly anomalies. We assume the climate signal does not change during the short non-overlapping period relative to the OLR time series.
Diurnal cycles can cause significant difference when two satellites observe the earth at different local times [
18,
19] and can be propagated into the climate signal. This diurnal effect must be taken into account. Fortunately, NOAA-07 and NOAA-09 are both in the afternoon orbit, and their equatorial crossing times are very close to each other when launched (both at 14:30, see Figure 1 in [
19]). However, the equator crossing time drifted about 1 h during their lifetime for both satellites. We consider only time series for descending orbit (most observations are at night, with beginning equator crossing time at 2:30 AM).
Similar to the SNO method, we define a model to simulate the radiance bias and hence derive the optimal SRF shift (intermediate between NOAA-09 and NOAA-07) for each channel. The correction has been also separated into two steps: HIRS SRFdf, and SRFerr due to uncertainties for each satellite.
The first step is to quantify the bias due to HIRS SRFdf between NOAA-07 and NOAA-09. However, the least-squares fitting cannot be directly applied to the global mean time series, especially for Channel 8 and other channels with small spectral sensitivity. The radiance seasonal cycle amplitude of Channel 8 (76–81 mW/(m2 sr cm−1)) in the global mean time series is much less than the actual radiance range (15–150 mW/(m2 sr cm−1)) observed. In contrast, the averaged global radiance is close to the onboard blackbody radiance. At that point, the SRF shift induced radiance change approaches zero. If the global mean values are directly used, the least-squares can cause algorithm singularity and thus a very large unrealistic SRF shift. Therefore, we have to address the HIRS SRFdf effect using the original HIRS datasets directly instead of using the global mean at this step.
On the other hand, the inter-channel dependency shown in Equation (3) changes with time and location. In Chen et al. [
8], the inter-channel dependency is derived using only high latitude IASI data since SNOs occur only in the polar area. Before deriving the radiance corrections due to the HIRS SRF
df, we first derived the latitude-dependent inter-channel coefficient. To consider HIRS SRF
df, the coefficient W and C in Equation (4) is derived using the IASI observations in each zone with a 2.5° interval from −80° S to 80° N. In each zone, we first simulate the HIRS (of NOAA-07) using IASI data for January 2014. Consistent with HIRS nadir data, only those data over IASI pixels near the nadir have been used. Then, we use Equation (4) to calculate a set of coefficients specific to that latitude zone through the leasts-squares fitting. These coefficients are then applied to the original HIRS datasets (using Equation (3)) to address the radiance bias caused by the HIRS SRFdf between satellites and then a globally averaging is carried out to form a new time series compared with the original global mean time series without HIRS SRF corrections. By doing so, we have accounted for the latitude dependency of the inter-channel correlations. The newly obtained time series has removed the HIRS SRFdf effect between NOAA-07 and NOAA-09. Note that the data processing of global HIRS and IASI observations is computational intensive and requires many CPU hours, a supercomputer with an embarrassingly parallel scheme (
https://en.wikipedia.org/wiki/Embarrassingly_parallel, accessed on 10 July 2021) has been used for this study.
The next step is to reduce the residual radiance bias through SRF shift to correct the HIRS SRFerr. Similar to the SNO method, SRF shift is performed as discussed earlier. With SNO overlapping, the comparison is made between two time series over the same period. However, here we assume the jumps and discrepancies in the radiances between NOAA-07 and NOAA-09 global mean time series are solely caused by the SRFerr due to uncertainties. To reduce the inter-annual “climate change” effects, we only look at the time series within one year period near the breakpoint (February 1985). We assume that the global mean time series of the pre-six-month period (NOAA-07) and after six months (NOAA-09) should yield the same mean values if there are no SRF differences. Thus, we can compare the NOAA-07 ratio from different SRF shifts, and the NOAA-09 mean ratio (over the post six-month period) to derive the optimal SRF shift.
In the second step, to simulate the HIRS radiance with IASI to obtain the coefficients to determine SRF error in Equation (3), we shifted the SRF between −4.0 cm−1 to 4.0 cm−1 with an interval of 0.2 cm−1 relative to the NOAA-07 CWN of each channel and convolved with IASI hyperspectral radiances. Thus, using the simulated HIRS data from IASI over one month globally (January 2014), 41 sets of coefficients (latitude dependent) can also be derived for each latitude zone using Equation (4). These coefficients are then applied to HIRS observations (NOAA-07) and averaged globally. Then, we have 41 sets of global mean radiance time series. After normalizing the time series using the same seasonal cycle, we compared the mean absolute difference between each time series of NOAA-07 to the mean of the NOAA-09 (no SRF shift) for each channel. The optimal SRF is determined between NOAA-07 and NOAA-09 when the error approaches the minimum among 41 comparisons in Equation (5). As a result, from NOAA-06 to MetOp, we have obtained corrected HIRS SRF for each pair of satellites.
Figure 6 shows the HIRS SRFdf effect between satellites on each channel (blue line), especially Channel 2 from the descending orbit time series. It also shows the time series after SRF error correction (black line) described in
Section 2. Immediately, one can see the two time series become aligned closely near Feb. 1985 after the optimal SRF shift has been applied to NOAA-07. Thus, the optimal SRF shift (of the satellite pair) can then be used to bridge the gap between NOAA-09 and NOAA-07 with the optimal radiance correction in the absence of SNO.
For each satellite pair, the SRF shift (intermediate SRF shift) was obtained in reference to the later satellite in the pair. The next step is to reference the SRF shift to MetOp-A IASI as done in Chen et al. [
8].
3.4. Connecting the 40+ Year HIRS Time Series with Final SRF Correction
The same method in Chen et al. [
8] is used to propagate the SRF shift from MetOp-A HIRS to earlier and later satellites (NOAA-19/MetOp-B).
Scheme 1 shows the flow chart of how the SRF propagation was done schematically. We start from the MetOp-A IASI and HIRS comparison (on the same satellite) to derive the MetOp-A HIRS SRF shifts relative to MetOp-A IASI. We then propagate the comparison back to earlier satellites one by one from Metp-A HIRS to NOAA-19, to NOAA-18, and back to NOAA-9. Then, the global mean method was used to bridge the gap between NOAA-9 and NOAA07, which allows us to connect back to NOAA-06. The final SRF shift is then determined for each satellite and each channel, now referred to as MetOp-A IASI. An equation for this has been used for propagating the SRF corrections.
is the final SRF shift relative to the pre-launch SRF (
);
is an optimized central wavenumber for that channel at satellite n;
is the intermediate SRF correction (SRF
df and SRF
err). The SRF calculations are separated into the South and North pole, and the final SRF shifts are calculated as the mean values between the North and South poles when the SNO method is used, while the global mean yields only one value using descending orbit dataset. The final optimized SRF shift (
) for each channel of these satellites are given in
Table 2.
The HIRS SRF error correction may have significant impacts on climate studies. For global climate studies, such as the OLR time series [
6,
16], the subtraction of the global mean radiance bias over the overlapping period after diurnal correction appears to be a straightforward method. However, in other applications, such as climate study using the derived products from HIRS (such as clouds, water vapor time series [
1]), the corrected SRFs will be used to recalculate the coverage of clouds in a radiative transfer model, and therefore it becomes important. Radiative transfer models and atmospheric retrievals often use SRF to calculate the coefficients and atmosphere transmittance coefficients. Errors in SRF can propagate into the forward model, tangent linear and adjoint models through these coefficient calculations, affecting the accuracy of the retrieval products [
20].