Month: June 2018

US House Votes Down Social Cost of Carbon

 

The House GOP on Friday took a step forward in reining in the Obama administration’s method of assessing the cost of carbon dioxide pollution when developing regulations.

The House voted 212-201, along party lines, to include a rider blocking the use of the climate change cost metric to an energy and water spending bill.

The amendment offered by Texas Republican Rep. Louie Gohmert bars any and all funds from being used under the bill to “prepare, propose, or promulgate any regulation that relies on the Social Carbon analysis” devised under the Obama administration on how to value the cost of carbon. (Source Washington Examiner, here)

To clarify: the amendment in question defunds any regulation or guidance from the federal government concerning the social costs of carbon.

Background:  T
The Obama administration created and increased its estimates of the “Social Cost of Carbon,” invented by Michael Greenstone. who commented on the EPA Proposed Repeal of CO2 emissions regulations.  A Washington Post article, October 11, 2017, included this:

“My read is that the political decision to repeal the Clean Power Plan was made and then they did whatever was necessary to make the numbers work,” added Michael Greenstone, a professor of economics at the University of Chicago who worked on climate policy during the Obama years.

Activists are frightened about the Clean Power Plan under serious attack along three lines:
1. No federal law governs CO2 emissions.
2. EPA regulates sites, not the Energy Sector.
3. CPP costs are huge, while benefits are marginal.

Complete discussion at CPP has Three Fatal Flaws.

Read below how Greenstone and a colleague did exactly what he now complains about.

Social Cost of Carbon: Origins and Prospects

The Obama administration has been fighting climate change with a rogue wave of regulations whose legality comes from a very small base: The Social Cost of Carbon.

The purpose of the “social cost of carbon” (SCC) estimates presented here is to allow agencies to incorporate the social benefits of reducing carbon dioxide (CO2) emissions into cost-benefit analyses of regulatory actions that impact cumulative global emissions. The SCC is an estimate of the monetized damages associated with an incremental increase in carbon emissions in a given year. It is intended to include (but is not limited to) changes in net agricultural productivity, human health, property damages from increased flood risk, and the value of ecosystem services due to climate change. From the Technical Support Document: -Technical Update of the Social Cost of Carbon for Regulatory Impact Analysis -Under Executive Order 12866

A recent Bloomberg article informs on how the SCC notion was invented, its importance and how it might change under the Trump administration.
How Climate Rules Might Fade Away; Obama used an arcane number to craft his regulations. Trump could use it to undo them. (here). Excerpts below with my bolds.

scc-working-group

In February 2009, a month after Barack Obama took office, two academics sat across from each other in the White House mess hall. Over a club sandwich, Michael Greenstone, a White House economist, and Cass Sunstein, Obama’s top regulatory officer, decided that the executive branch needed to figure out how to estimate the economic damage from climate change. With the recession in full swing, they were rightly skeptical about the chances that Congress would pass a nationwide cap-and-trade bill. Greenstone and Sunstein knew they needed a Plan B: a way to regulate carbon emissions without going through Congress.

Over the next year, a team of economists, scientists, and lawyers from across the federal government convened to come up with a dollar amount for the economic cost of carbon emissions. Whatever value they hit upon would be used to determine the scope of regulations aimed at reducing the damage from climate change. The bigger the estimate, the more costly the rules meant to address it could be. After a year of modeling different scenarios, the team came up with a central estimate of $21 per metric ton, which is to say that by their calculations, every ton of carbon emitted into the atmosphere imposed $21 of economic cost. It has since been raised to around $40 a ton.

Trump can’t undo the SCC by fiat. There is established case law requiring the government to account for the impact of carbon, and if he just repealed it, environmentalists would almost certainly sue.

There are other ways for Trump to undercut the SCC. By tweaking some of the assumptions and calculations that are baked into its model, the Trump administration could pretty much render it irrelevant, or even skew it to the point that carbon emissions come out as a benefit instead of a cost.

The SCC models rely on a “discount rate” to state the harm from global warming in today’s dollars. The higher the discount rate, the lower the estimate of harm. That’s because the costs incurred by burning carbon lie mostly in the distant future, while the benefits (heat, electricity, etc.) are enjoyed today. A high discount rate shrinks the estimates of future costs but doesn’t affect present-day benefits. The team put together by Greenstone and Sunstein used a discount rate of 3 percent to come up with its central estimate of $21 a ton for damage inflicted by carbon. But changing that discount just slightly produces big swings in the overall cost of carbon, turning a number that’s pushing broad changes in everything from appliances to coal leasing decisions into one that would have little or no impact on policy.

According to a 2013 government update on the SCC, by applying a discount rate of 5 percent, the cost of carbon in 2020 comes out to $12 a ton; using a 2.5 percent rate, it’s $65. A 7 percent discount rate, which has been used by the EPA for other regulatory analysis, could actually lead to a negative carbon cost, which would seem to imply that carbon emissions are beneficial. “Once you start to dig into how the numbers are constructed, I cannot fathom how anyone could think it has any basis in reality,” says Daniel Simmons, vice president for policy at the American Energy Alliance and a member of the Trump transition team focusing on the Energy Department.

David Kreutzer, a senior research fellow in energy economics and climate change at Heritage and a member of Trump’s EPA transition team, laid out one of the primary arguments against the SCC. “Believe it or not, these models look out to the year 2300. That’s like effectively asking, ‘If you turn your light switch on today, how much damage will that do in 2300?’ That’s way beyond when any macroeconomic model can be trusted.”

Another issue for those who question the Obama administration’s SCC: It estimates the global costs and benefits of carbon emissions, rather than just focusing on the impact to the U.S. Critics argue that this pushes the cost of carbon much higher and that the calculation should instead be limited to the U.S.; that would lower the cost by more than 70 percent, says the CEI’s Mario Lewis.

Still, by narrowing the calculation to the U.S., Trump could certainly produce a lower cost of carbon. Asked in an e-mail whether the new administration would raise the discount rate or narrow the scope of the SCC to the U.S., one person shaping Trump energy and environmental policy replied, “What prevents us from doing both?”

See Also:

Six Reasons to Rescind Social Cost of Carbon

SBC: Social Benefits of Carbon

drain-the-swamp

via Science Matters

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June 9, 2018 at 12:42PM

Apocalyptic Pope Warns Of Global Destruction Without Green Energy Shift

VATICAN CITY, June 9 (Reuters) – Pope Francis warned that climate change risked destroying humanity on Saturday and called on energy leaders to help the world to convert to clean fuels to avert catastrophe.

“Civilisation requires energy but energy use must not destroy civilisation,” the pope told top oil company executives at the end of a two-day conference in the Vatican.

Climate change was a challenge of “epochal proportions”, he said, adding that the world needed an energy mix that combated pollution, eliminated poverty and promoted social justice.

The conference, held behind closed doors at the Pontifical Academy of Sciences, brought together oil executives, investors and Vatican experts who, like the pope, back scientific opinion that climate change is caused by human activity.

“We know that the challenges facing us are interconnected. If we are to eliminate poverty and hunger … the more than one billion people without electricity today need to gain access to it,” the pope told them.

“Our desire to ensure energy for all must not lead to the undesired effect of a spiral of extreme climate changes due to a catastrophic rise in global temperatures, harsher environments and increased levels of poverty,” he said.

Full story

via The Global Warming Policy Forum (GWPF)

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June 9, 2018 at 11:37AM

Does Global Warming increase total atmospheric water vapor (TPW)?

By Andy May

Some have speculated that the distribution of relative humidity would remain roughly constant as climate changes (Allen and Ingram 2002). Specific humidity can be thought of as “absolute” humidity or the total amount of water vapor in the atmosphere. We will call this amount “TPW” or total precipitable water with units of kg/m2. As temperatures rise, the Clausius-Clapeyron relationship states that the equilibrium vapor pressure above the oceans should increase and thus, if relative humidity stays the same, the total water vapor or specific humidity will increase. The precise relationship between specific humidity and temperature in the real world is unknown but is estimated to be between 0.6 to 18% (10-90%ile range) per degree Celsius from global climate model results (Allen and Ingram 2002).

Carl Mears and colleagues (Mears, et al. 2018) have recently published a satellite microwave brightness record of TPW from 1988 to 2017 showing TPW, over the world’s ice-free oceans, increasing in lockstep with global mean temperature. This surprised me since Benestad (Benestad 2016), (Partridge, Arking and Pook 2009), (Miskolczi 2014) and (Miskolczi 2010) have previously reported that TPW, as computed from weather balloon data, has gone down recently, although their time periods were earlier and longer than the record shown in Mears, et al.

CO2 does not have a large direct effect on temperature, Ramathan and Coakley estimated that the direct effect of doubling CO2, with no feedbacks, would cause temperatures to rise 1.2°C, which is no big deal (Ramanathan and Coakley 1978). Water vapor is a much more powerful greenhouse gas, it has twice the radiative effect (or “greenhouse” effect) of CO2 according to Pierrehumbert (Pierrehumbert 2011) and transports thermal energy around the Earth in ocean currents and as latent heat in water vapor via atmospheric convection. If adding man-made CO2 to the atmosphere somehow, directly or indirectly, causes the amount of atmospheric water vapor to increase, then this “feedback” could cause temperatures to rise more than we would see from adding CO2 alone. Water vapor is the dominant greenhouse gas, according to (Soden, et al. 2005). Likewise, if adding CO2 somehow caused water vapor to decrease or some reflective clouds to increase, the resulting negative feedback could cause temperatures to go down or stay the same. No one really knows how much water vapor feedback, or even if it is positive or negative, is occurring. For this reason, there is considerable interest in determining the current atmospheric water vapor trend.

Figure 1 shows the NCEP weather reanalysis version 1 (Kalnay, et al. 1996) total specific humidity converted to kg/m2 up to about 8 km (300 mb) as an orange line. This value is based mostly upon weather balloon, surface data and after-the-fact analysis of weather using a global weather (not climate) forecasting model. The yellow line is from the NCEP reanalysis 2 global weather model (Kanamitsu, et al. 2002), it provides a total atmosphere TPW estimate, but only goes back to 1979. The gray line is the HADCRUT version 4 global surface temperature anomaly and the blue line is the RSS ice-free ocean TPW estimate from satellite microwave measurements. The RSS estimate is much higher presumably because it only uses samples over oceans that have no sea ice. The RSS data is only available from 1988 to present. Besides the problems with sea-ice, the RSS data has missing data due to rain events and the measurements used can be affected by clouds (Vonder Harr, Bytheway and Forsythe 2012).

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Figure 1. Various estimates of total precipitable water (TPW) in the atmosphere compared to the HADCRUT4 temperature anomaly.

The two NCEP analyses are global estimates from models that are calibrated using actual measurements, thus they are “reanalyses.” Their advantage over the RSS estimate is they are truly global and have values for every map grid. The reanalysis grid for NCEP reanalysis 1 for 2017 is shown in Figure 2. The NCEP reanalysis 1 model had several problems as described in (Kanamitsu, et al. 2002), but most have been fixed as discussed in the reanalysis 1 web site. The data for all of the TPW estimates displayed here was downloaded in May or June of 2018.

The specific humidity reanalysis results are not based solely on weather balloon radiosonde data, but the NCEP reanalysis 1 is more reliant on them than the reanalysis 2 project. Both projects also use land-based weather station data, ship data, aircraft and satellite data. Some have concluded that the radiosonde humidity data prior to 1973 and north of 50°N and south of 50°S is unreliable. Paltridge, et al. excluded this data and confirmed the negative overall trends in TPW, at least in the upper troposphere.

clip_image003clip_image003Figure 2. The NCEP reanalysis 1 grid of average TPW for 2017 in kg/m2. Data source: NCEP reanalysis 1.

The RSS grids are much sparser as can be seen in Figure 3. The white areas (land- and ice-covered areas) of Figure 3 have no values which, in part, explains why the average RSS TPW values are so much larger than the NCEP values. The color scales used in all the maps are the same. Besides excluding areas containing sea-ice, areas with “moderate and high rain rates” are excluded from the RSS dataset, this introduces a systemic “non-rainy” bias to the dataset (Mears, et al. 2018). However, Mear’s and colleague’s dataset is probably a fairly accurate representation of TPW over the areas sampled. The problem with it is that the land areas and most of the polar regions are excluded and it only goes back to 1988. This is very unfortunate since the AMO began to turn significantly positive in 1988, which makes the RSS comparison to global temperature look “cherry-picked.”

clip_image004clip_image004Figure 3. The RSS satellite microwave measured TPW over the ice-free oceans, moderate to severe rain events are excluded. Data source: Remote Sensing Systems.

The NCEP internet retrieval program would not allow me to download the reanalysis 2 TPW data for 2017 for some reason, but I did get the 2017 “canned” dataset from their website, it is shown in Figure 4. The data retrieval was done from here.

clip_image005clip_image005Figure 4. The NCEP reanalysis 2 TPW for 2016. Data source and description: NCEP Reanalysis 2.

Compare Figure 4 to Figure 2, they are similar, except around the Pakistan/Tibet/China border. This shows as a cool, dry area in reanalysis 2 and as a wet anomaly in reanalysis 1. The NCEP reanalysis 2 shows more water vapor in the tropics than the reanalysis 1, this makes the reanalysis 2 averages higher. Further the reanalysis 2 TPW is for the whole atmosphere, whereas the reanalysis 1 TPW is only to 300 mbar (~8 km).

All three estimates shown in Figure 1 show an increase in TPW from around 1990 to the present, but the RSS increase is more dramatic. The increase in global average temperature begins in 1976, 14-16 years earlier. In Figure 2, we can see that the NASA CO2 record shows a rapid increase in trend beginning even earlier in the 1950s.

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Figure 5. The NASA CO2 reconstruction from 1850 to the present. Data source NASA.

Because of the large differences in the various estimates of TPW, the relationship with global temperature is difficult to see. Figure 6 is a close up of the RSS TPW and HADCRUT4.

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Figure 6. RSS TPW plotted with HADCRUT4. Data sources: RSS and Met Office Hadley Centre.

In Figure 6, we see a close correlation between global temperatures and the RSS ocean TPW measurements from satellite microwave data. Even the details match well. In Figure 7 we see the longer NCEP reanalysis 2 record compared to HADCRUT4. Again, there is a close match in detail, but the trends from 1979 to 1992 are opposite.

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Figure 7. The NCEP reanalysis 2 TPW record compared to HADCRUT4. Data sources: NCEP Reanalysis 2 and Met Office Hadley Centre.

Finally, in Figure 8, we see the NCEP reanalysis 1 record, which goes back to 1948, compared to HADCRUT4. The records match well from the present to the early 1980s and then begin to diverge, the divergence becomes extreme in the 1950s. Roy Spencer has blamed this on the poor-quality hygrometers used in weather balloons in the early days. Perhaps, but weather balloon data is not the only data used in these reanalyses. The NCEP reanalysis 2 results are almost certainly better than the reanalysis 1 results, but they are tantalizing short, beginning in 1979. We need 20-30 years more data to see if the influence of global mean temperature can be swamped by the influence of the AMO and other ocean cycles as suggested by the reanalysis 1 results.

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Figure 8. Data sources: NCEP reanalysis 1 and Met Office Hadley Centre.

While surface temperature is clearly a large factor influencing TPW over the short term, there may be other factors influencing it. Figure 9 compares the smoothed AMO index of Atlantic Ocean temperatures to NCEP R1.

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Figure 9. Data sources: NCEP reanalysis 1 and NOAA.

So, if the TPW estimates in the 1950s are accurate enough, perhaps they reveal a strong influence of the AMO cycle on TPW? It is hard to tell since many have questioned the quality of the early hygrometer data.

Over the short term, the correlation between TPW over the oceans and temperature is good, see Figure 10A. This however, is certainly not surprising. Over the longer term, using the NCEP R1 data, it is poor. As seen in Figure 10B, the correlation deteriorates. The time period and the data selected matters.

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Figure 10. Data sources NCEP, RSS and the Met Office Hadley Centre.

The correlations between RSS TPW and NCEP R1 versus HADCRUT4 have similar slopes, which is surprising. Both show an increase of about 2.5 kg/m2 (9%-13%) per degree of global temperature increase, but the NCEP reanalysis 1 plot suggests that there are actually two slopes, thus two trends and factors other than average surface temperature influencing TPW. Compare this estimate to the earlier cited specific humidity range of 0.6% to 18% per degree Celsius (Allen and Ingram 2002). The uncertainty in the amount of increase in TPW, due to global temperature changes is large.

TPW in the Upper Troposphere

As Partridge, et al. (Partridge, Arking and Pook 2009) have noted climate models predict that specific humidity will increase in the upper troposphere as global warming continues. Yet, this is not what is seen in the NCEP reanalysis 1 data, see Figure 11. Partridge, et al. have investigated more measurement levels and report that all levels above 850 hPa (~1.4 km) have a negative trend through 2007 in the tropics and southern midlatitudes. They also found that every level above 600 hPa (~4 km) in the northern midlatitudes has a negative trend.

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Figure 11. Global average TPW (blue line) from 500 hPa to 300 hPa or roughly 5 km to 8 km altitude compared to the HADCRUT4 temperature anomaly. Data sources: NCEP reanalysis 1 and Met Office Hadley Centre.

In many ways this negative trend is counterintuitive since the world is warming and more evaporation is expected. A warming atmosphere should cause more evaporation and a higher TPW. From Paltridge, et al.:

“Negative trends in q [TPW] as found in the NCEP data would imply that long-term water vapor feedback is negative—that it would reduce rather than amplify the response of the climate system to external forcing such as that from increasing atmospheric CO2.”

This was also the conclusion reached by Ferenc Miskolczi (Miskolczi 2014). Others, such as Roy Spencer and Richard Lindzen, have suggested that warmer temperature will cause more clouds, which will increase the albedo of the Earth and lower temperatures or reduce the rate of warming (provide negative feedback) as a result.

Conclusions and Discussion

The various estimates of total atmosphere TPW available do not agree with one another very well. Even the two NCEP estimates, both global, vary by over 18% and these estimates are 33% lower than the RSS ocean-only estimate. However, since about 1990 all the total atmosphere estimates trend upwards. Prior to 1990, the story is more complex. The longer NCEP reanalysis 1 estimate trends down from 1948 to 1975 in sync with the AMO, but different from the HADCRUT4 trend. All datasets agree that short term changes (<30 years) in surface global temperature have a positive (if small) influence on total atmosphere TPW, but it is not clear that long-term changes (>30 years) in TPW are related solely to global surface temperatures, they might be impacted more by ocean surface temperature cycles, such as the AMO.

The global climate models predict that global warming will increase upper troposphere specific humidity, but the weather balloon data shows a decline in specific humidity and in TPW in the upper troposphere. The humidity data declines in quality with altitude and lower temperatures, but even in the tropics where water vapor concentration is high at high altitudes, this trend persists. This also contradicts satellite data, but the ability of satellites to separate the signal of the upper troposphere water vapor from the lower is unclear. The accuracy of the specific humidity calculations in the upper troposphere is also unclear. However, both the NCEP reanalysis and the European reanalysis show a decline (Benestad 2016) and (Partridge, Arking and Pook 2009).

While there is great uncertainty in the amount of TPW in the whole atmosphere and in the upper troposphere, the importance of TPW and its trend is undeniable. In the tropics, at the lower levels of the atmosphere, the large amount of water vapor already traps nearly all the IR (infra-red radiation), so adding CO2 to this atmosphere has little effect (Pierrehumbert 2011). But, in the upper troposphere, where IR is emitted to space and additional CO2 or water vapor may make a difference, water vapor may be decreasing, at least according to NCEP reanalysis 1. Uncertainty abounds in this critical area of research and most important, what data we have is over too short a time period. Consider this quote from Pierrehumbert (Pierrehumbert 2011):

“For present Earth conditions, CO2 accounts for about a third of the clear-sky greenhouse effect in the tropics and for a somewhat greater portion in the drier, colder extratropics; the remainder is mostly due to water vapor. The contribution of CO2 to the greenhouse effect, considerable though it is, understates the central role of the gas as a controller of climate. The atmosphere, if CO2 were removed from it, would cool enough that much of the water vapor would rain out. That precipitation, in turn, would cause further cooling and ultimately spiral Earth into a globally glaciated state. It is only the presence of CO2 that keeps Earth’s atmosphere warm enough to contain much water vapor. Conversely, increasing CO2 would warm the atmosphere and ultimately result in greater water-vapor content – a now well understood situation known as water vapor feedback.”

So, we see the crucial role assumed for water vapor in the entire man-made climate change hypothesis. CO2 has only a minor role to play in warming the Earth by itself. It is only the assumed, but unmeasured, feedback from water vapor that a large impact on our climate can be predicted. Yet, as shown above, this assumed feedback cannot be measured with any accuracy with the data we have available. In fact, over climate time scales (>30 years) we cannot even be sure the feedback is positive. There is a strong correlation between temperature and total atmospheric water vapor concentration over short time periods, especially over the oceans from 1988 to 2017, when the AMO index was rising. But, it falls apart over longer periods of time and it is negative in the crucial upper troposphere. I can offer no solutions or great insights here, only questions and problems.

Andy May is a writer and author of “Climate Catastrophe! Science or Science-Fiction?” He retired in 2016 after 42 years in the oil and gas industry as a petrophysicist.

The R code and other information, including links to the original data, used to make the figures in the post can be downloaded here.

Works Cited

Allen, Myles, and William Ingram. 2002. “Constraints of future changes in climate and the hydrologic cycle.” Nature 419. https://ift.tt/2kXExbO.

Benestad, Rasmus. 2016. “A Mental Picture of the Greenhouse Effect.” Theoretical and Applied Climatology 128 (3-4): 679-688. https://ift.tt/2lcJLn0.

Kalnay, E., M. Kanamitsu, R. Kistler, W. Collins, D. Deaven, L. Gandin, M. Iredell, et al. 1996. “The NCEP/NCAR 40-year reanalysis project.” Bulletin of the American Meteorological Society. https://ift.tt/2kXEEEg.

Kanamitsu, Masao, Wesley Ebisuzaki, Jack Woollen, Shi-Keng Yang, J. Hnilo, M. Fiorino, and G. Potter. 2002. “NCEP-DOE AMIP-II Reanalysis (R-2).” BAMS. https://ift.tt/2sSRdV3.

Mears, Carl, Deborah Smith, Lucrezia Ricciardulli, Junhong Wang, Hannah Huelsing, and Frank Wentz. 2018. “Construction and Uncertainty Estimation of a Satellite-Derived Total Precipitable Water Data Record Over the World’s Oceans.” Earth and Space Science. https://ift.tt/2kXEFbi.

Miskolczi, Ferenc. 2014. “The Greenhouse Effect and the Infrared Radiative Structure of the Earth’s Atmosphere.” Development in Earth Science. https://ift.tt/1BLA3p0.

Miskolczi, Ferenc. 2010. “The Stable Stationary Value of the Earth’s Global Average Atmospheric Planck-Weighted Greenhouse-Gas Optical Thickness.” Energy and Environment. https://ift.tt/2kY9uwD.

Partridge, G., A. Arking, and M. Pook. 2009. “Trends in middle- and upper-level tropospheric humidity from NCEP reanalysis data.” Theory of Applied Climatology. https://ift.tt/2xZqc88.

Pierrehumbert, Raymond. 2011. “Infrared radiation and planetary temperature.” Physics Today, January: 33-38. https://ift.tt/2l0FNLC.

Ramanathan, V., and J. Coakley. 1978. “Climate Modeling Through Radiative-Convective Models.” Reviews of Geophysics and Space Physics 16 (4). https://ift.tt/2sU8f5h.

Soden, Brian, Darren Jackson, V. Ramaswamy, M. Schwarzkopf, and Xianglei Huang. 2005. “The Radiative Signature of Upper Tropospheric Moistening.” Science. https://ift.tt/2kWPTga.

Vonder Harr, Thomas, Janice Bytheway, and John Forsythe. 2012. “Weather and climate analyses using improved global water.” Geophysical Research Letters 39. https://ift.tt/2xUQfxt.

via Watts Up With That?

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June 9, 2018 at 11:25AM

Something Rotten In Denmark

The DMI Greenland melt graph and map seems to be stuck on a few days ago, with the June 8 values being exactly the same as the June 7 values. Joe Bastardi pointed this out yesterday.

However there was almost no melting on June 8.

Meanwhile ice and snow continues to accumulate on Greenland’s surface at a near record rate.

Greenland Ice Sheet Surface Mass Budget: DMI

And sea surface temperatures around Greenland are plummeting.

anomnight.6.7.2018.gif (1174×640)

The bad news keeps piling up for climate alarmists.  Their scam is dying a very rapid death.

via The Deplorable Climate Science Blog

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June 9, 2018 at 08:36AM