Fauci-Birx climate models?

Honest, evidence-based climate models could avoid trillions of dollars in policy blunders

Paul Driessen and David R. Legates

President Trump and his Coronavirus Task Force presented some frightening numbers during their March 31 White House briefing. Based on now 2-week-old data and models, as many as 100,000 Americans at the models’ low end, to 2.2 million at their high end, could die from the fast-spreading virus, they said.

However, the President, Vice President Pence, and Drs. Anthony Fauci and Deborah Birx hastened to add, those high-end numbers are based on computer models. And they are “unlikely” if Americans keep doing what they are doing now to contain, mitigate and treat the virus. Although that worst-case scenario “is possible,” it is “unlikely if we do the kinds of things that we’re essentially outlining right now.”

On March 31, Dr. Fauci said, the computer models were saying that, even with full mitigation, it is “likely” that America could still suffer at least 100,000 deaths. But he then added a very important point:

“The question is, are the models really telling us what’s going on? When someone creates a model, they put in various assumptions. And the models are only as good and as accurate as the assumptions you put into them. As we get more data, as the weeks go by, that might change. We feed the data back into the models and relook at the models.” The data can change the assumptions – and thus the models’ forecasts.

“If we have more data like the NY-NJ metro area, the numbers could go up,” Dr. Birx added. But if the numbers coming in are more like Washington or California, which reacted early and kept their infection and death rates down – then the models would likely show lower numbers. “We’re trying to prevent that logarithmic increase in New Orleans and Detroit and Chicago – trying to make sure those cities work more like California than like the New York metro area.” That seems to be happening, for the most part.

If death rates from corona are misattributed or inflated, if other model assumptions should now change, if azithromycin, hydroxychloroquine and other treatments, and people’s immunities are reducing infections – then business shutdowns and stay-home orders could (and should) end earlier, and we can go back to work and life, rebuild America’s and the world’s economies … and avoid different disasters, like these:

Millions of businesses that never reopen. Tens of millions of workers with no paychecks. Tens of trillions of dollars vanished from our economy. Millions of families with lost homes and savings. Millions of cases of depression, stroke, heart attack, domestic violence, suicide, murder-suicide, and early death due to depression, obesity and alcoholism, due to unemployment, foreclosure and destroyed dreams.

In other words, numerous deaths because of actions taken to prevent infections and deaths from COVID.

It is vital that they recheck the models and assumptions – and distinguish between COVID-19 deaths actually due to the virus … and not just associated with or compounded by it, but primarily due to age, obesity, pneumonia or other issues. We can’t afford a cure that’s worse than the disease – or a prolonged and deadly national economic shutdown that could have been shortened by updated and corrected models.

Now just imagine: What if we could have that same honest, science-based approach to climate models?

What if the White House, EPA, Congress, UN, EU and IPCC acknowledged that climate models are only as good and as accurate as the assumptions built into them? What if – as the months and years went by and we got more real-world temperature, sea level and extreme weather data – we used that information to honestly refine the models? Would the assumptions and therefore the forecasts change dramatically?

What if we use real science to help us understand Earth’s changing climate and weather? And base energy and other policies on real science that honestly examines manmade and natural influences on climate?

Many climate modelers claim we face existential manmade climate cataclysms caused by our use of fossil fuels. They use models to justify calls to banish fossil fuels that provide 80% of US and global energy; close down countless industries, companies and jobs; totally upend our economy; give trillions of dollars in subsidies to fossil fuel replacement companies; and drastically curtail our travel and lifestyles.

Shouldn’t we demand that these models be verified against real-world evidence? Natural forces have caused climate changes and extreme weather events throughout history. What proof is there that what we see today is due to fossil fuel emissions, and not to those same natural forces? We certainly don’t want energy “solutions” that don’t work and are far worse than the supposed manmade climate and weather ‘virus.’

And we have the climate data. We’ve got years of data. The data show the models don’t match reality.

Model-predicted temperatures are more than 0.5 degrees F above actual satellite-measured average global temperatures – and “highest ever” records are mere hundredths of a degree above previous records from 50 to 80 years ago. Actual hurricane, tornado, sea level, flood, drought, and other historic records show no unprecedented trends or changes, no looming crisis, no evidence that humans have replaced the powerful natural forces that have always driven climate and weather in the real world outside the modelers’ labs.

Real science – and real scientists – seek to understand natural phenomena and processes. They pose hypotheses that they think best explain what they have witnessed, then test them against actual evidence, observations and data. If the hypotheses (and predictions based on them) are borne out by their subsequent observations or findings, the hypotheses become theories, rules or laws of nature – at least until someone finds new evidence that pokes holes in their assessments, or devises better explanations.

Real scientists often employ computers to analyze data more quickly and accurately, depict or model complex natural systems, or forecast future events or conditions. But they test their models against real-world evidence. If the models, observations and predictions don’t match up, real scientists modify or discard the models, and the hypotheses behind them. They engage in robust discussion and debate.

Real scientists don’t let models or hypotheses become substitutes for real-world data, evidence and observations. They don’t alter or “homogenize” raw or historic data to make it look like the models actually work. They don’t tweak their models after comparing predictions to actual subsequent observations, to make it look like the models “got it right.” They don’t “lose” or hide data and computer codes, restrict peer review to closed circles of like-minded colleagues who protect one another’s reputations and funding, claim “the debate is over,” or try to silence anyone who asks inconvenient questions or criticizes their claims or models. Climate modelers have done all of this – and more.

Put bluntly, what climate modelers are essentially saying is this: We don’t need data; we have models. If real world observations don’t conform to our computer model predictions, the real world must be wrong.

Climate models have always overstated the warming. But even though modelers have admitted that their models are “tuned” – revised after the fact to make it look like they predicted temperatures accurately – the modelers have made no attempt to change the climate sensitivity to match reality. Why not? 

They know disaster scenarios sell. Disaster forecasts keep them employed, swimming in research money – and empowered to tell legislators and regulators that humanity must we take immediate, draconian action to eliminate all fossil fuel use – the economic, human and environmental consequences be damned. And they probably will never admit their mistakes or duplicity, much less be held accountable.

“Wash your hands! You could save millions of lives!”  has far more impact than “You could save your own life, your kids’ lives, dozens of lives.” When it comes to climate change, you’re saving the planet.

With Mann-made climate change, we are always shown the worst-case scenario: RCP 8.5, the “business-as-usual” … ten times more coal use in 2100 than now … “total disaster.” Alarmist climatologists know their scenario has maybe a 0.1% likelihood, and assumes no new energy technologies over the next 80 years. But energy technologies have evolved incredibly over the last 80 years – since 1940, the onset of World War II! Who could possibly think technologies won’t change at least as much going forward?

Disaster scenarios are promoted because most people don’t know any better – and voters and citizens won’t accept extreme measures and sacrifices unless they are presented with extreme disaster scenarios.

The Fauci-Birx team is trying to do science-based modeling for the ChiCom-WHO coronavirus – feeding updated data into their models. Forecasts for infections and deaths are down significantly. Thankfully.

So now we must demand honest, factual, evidence-based climate model as well. No more alarmists and charlatans setting climate and energy policy. Our economy, livelihoods, lives and liberties are too vital.

The fact is, models are also only as good as the number of variables they can handle, and the data quality for every variable. There is no way models can possibly factor in the hundreds of infection, treatment, death and other variables associated with COVID – and Earth’s climate is vastly more complex. Simply put, models play a role but should never be a primary driving force in setting important public policies.

Paul Driessen is senior policy analyst for the Committee For A Constructive Tomorrow (www.CFACT.org) and author of books and articles on energy, environment, climate and human rights issues. David R. Legates is a Professor of Climatology at the University of Delaware.

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Tom Abbott
April 13, 2020 12:02 pm

From the article: “Honest, evidence-based climate models could avoid trillions of dollars in policy blunders”

Yes, but we didn’t have that luxury with the unknown Wuhan virus.

Instead, we had to estimate using the best guesses, and then as data on the infection comes in, this data is fed into the computer models and the data modifies the computer models up or down, depending on the numbers. That’s why the initial estimates change over time. It’s not because they were “wrong”, because all initial models are just as “wrong” until they get data fed into them. Before data, they are guesses. Sometimes the guesses are educated guesses, but they are guesses just the same. The real data is what puts reality into the models.

And here we are on April 13, and the latest estimate of the number of deaths from Wuhan virus if nothing was done to stop it from spreading is about 1.1 million deaths (Chris Monckton) which comes in at the low end of the initial estimate of one million to 2.2 million deaths in the U.S. if nothing is done.

So it doesn’t look like the models, which now have much more data than was available at the start of the pendemic, are out of the ballpark on the number of deaths that would occur without intervention.

The lower initial estimate of 100,000 deaths if 50 percent of Americans practiced safe distancing, is higher than the current estimates of 61,000 deaths, and that could be explainable if more than 50 percent of Americans were practicing safe distancing.

So claims that the models are way off base are BS (Bad Science). The models are reflecting the data within them.

niceguy
Reply to  Tom Abbott
April 14, 2020 7:05 am

What data?

We had no data on the virus. It was project fear all over again.

Dan D
Reply to  Tom Abbott
April 14, 2020 4:56 pm

“1 million to 2.2 million initially” I’ve enver heard of this low estimate of 1 million

Fauci may have been referencing the internal CDC model which had 1.7 million deaths, but it was also an upper limit. Models based with uncertain data, must broaden their projection limits based on that uncertainty. That’s what makes a model honest, as we all know and you demonstrate by trying to revise history on what the model accounted for happening.

“assumed [only possible] 50 percent of Americans [could] practice social distancing [confirmed by WH task force] -Robert Redfield”

100,000-240,000

That calculation was not shared widely. In reality, a much larger number — 90% — is observing the government’s guidelines, US Surgeon General Dr. Jerome Adams said in several interviews this week.”

The lower limit was dead wrong. Unless the model was presented as “A garbage out model which has nothing to do with the coronavirus” it’s dishonest, and shafts the public for some ads.

Dan D
Reply to  Tom Abbott
April 14, 2020 5:42 pm

“1 million to 2.2 million initially” I’ve never heard of this low estimate of 1 million

Fauci had been probably referencing the internal CDC model which had 1.7 million deaths, not the 1 million which has been beared out with the more recent Monchton estimate. Models based with uncertain data, must broaden their projection limits based on that uncertainty. That’s what makes a model honest, as we all know and you demonstrate by trying to revise history on what the model accounted for happening.

“assumed [only possible] 50 percent of Americans [could] practice social distancing [confirmed by WH task force] -Robert Redfield”

100,000-240,000

That calculation was not shared widely. In reality, a much larger number — 90% — is observing the government’s guidelines, US Surgeon General Dr. Jerome Adams said in several interviews this week.”

The lower limit was an unqualified wrong. Unless the model was presented as “A garbage out model which has nothing to do with the coronavirus” it’s dishonest, and shafts the public for some ads.

Eliza
April 13, 2020 12:13 pm

There is no time the USA Fausci ect are destroying your country this is a normal flu virus you are destroying your country Trump needs to OPeN you country or we will all be dead from hunger not the virus. please for CHrist sake wake up

icisil
Reply to  Eliza
April 13, 2020 1:42 pm

I think he’s getting ready to.

Tom Abbott
Reply to  Eliza
April 14, 2020 4:35 am

“There is no time the USA Fausci ect are destroying your country this is a normal flu virus you are destroying your country Trump needs to OPeN you country or we will all be dead from hunger not the virus.”

The Rnaught for Wuhan virus is estimated to be 5.7. That’s a little more infectious than the flu virus.

I heard an idiot reporter yesterday telling us all about how 16.2 million Americans were out of work and our current situation is almost as bad as the Great Depression of 1929. I wish I had been standing beside him when he said that, and I would have said, “Wake up fella! Stop scaring people unnecessarily. The people that lost their jobs in 1929, didn’t have unemployment insurance payments to fall back on, or other governent programs. They lost their jobs in 1929, and they were out of money. Period. That’s not the case today, and today does not compare to the Great Depression in anything but numbers of people affected. The U.S. economy is strong, maybe never stronger. That was not the case in 1929.

When the economy starts back up (within eight weeks), nearly all of those 16.2 million people will get their jobs back and in the meantime they get paid to keep them solvent until the economy gets back on track. Nothing like 1929.

More than anything, we need rapid virus and antibody testing. Once we get a clear picture of what is going on with this virus in the human population, then we can deal with it effectively, and we will get that picture from extensive testing.

n.n
April 13, 2020 12:14 pm

The new science of plausible based on assumptions/assertions for preferred outcomes.

mddwave
April 13, 2020 12:45 pm

On the CDC forecast model for the ongoing flu season rates, the data is presented as 5, 50, 95 percentile results. There is a wide range between the 5 and 95 percentile. Unfortunately, the 50 percentile and low results isn’t very alarming so the worst case scenario is presented.

High Treason
April 13, 2020 2:34 pm

Please note a major conflict of interest- Dr Fauci is on the board of the Bill and Melinda Gates Foundation. Explains why he is dismissive of hydroxychloroquine-vested interest in Bill Gates’ vaccine.
Even more suspicious is Bill Gates, who has always stated that there are too many humans is calling for compulsory vaccination with verification (read RFID implant.) Please explain.
Like the hysterically inaccurate climate models, we have seen the same thing with the COVID models. Both have used tampered data- there is evidence of deaths of older people documented as Coronavirus-to die with coronavirus as opposed to of coronavirus is a semantic manipulation to deceive the People in to surrendering their freedoms. The same sort of massaging of the data occurs with the climate hysteria. The outcome would be the same- shutdown of the economy.
Here in Australia, the police have been fast in becoming dictatorial. How quickly did we degenerate in to a police state. Remember, we have only had 60 odd deaths-all older, comorbid cases that would not have been that far from death’s door anyway. We have had the economy shut down and police marauding the streets fining (now unemployed) people $1,000 just for being outside.
In the unsustainable shutdown economy, we have had a 38% reduction in emissions, which is still short of the 45% reduction that Labor wanted!! Even a shutdown economy has not met the target! Remember, they were only 1.5% off winning the election with this insane policy and an unelectable leader.
The Boy that Cried Wolf and The Emperor’s New Clothes are not merely children’s tales, they are a subtle warning that mass hysteria is constantly being used to deceive us out of our freedoms.
This is why we need to be more active. There are forces that are trying to take our freedoms.

icisil
Reply to  High Treason
April 13, 2020 2:55 pm

Reply to  High Treason
April 13, 2020 3:43 pm

Why not that big nasty vaccination I, everybody, got as a kid that left a scare the size of a nickle on your arm. Just do the same thing on the wrist?
Note: I am Not being serious.

Tom in Florida
April 13, 2020 2:40 pm

Now tell me how nice is it to be homebound in cold, nasty weather with little chance to be outside?
I will tell you that here in Florida with temperatures in the 80’s, lots of sunshine and fresh breezes, being able to take walks, work in your yard or just sit outside enjoying the weather makes the current situation a lot less stressful and a lot more enjoyable.
So, climate fearmongers, tell me again why a warmer world isn’t better?

April 13, 2020 3:29 pm

Overestimates and overreactions of coronavirus danger have the effect of making people more cautious about their own safety and that of their friends and results in sensible actions that protect people. Overestimates and overreactions to the non-existent Climate Catastrophy deprive people of the benefits of fossil fuels and their side products that protect people’s lives. People may begin to notice this difference in the future. Climate Models have always overstated any warming and ignored the obvious benefits. Climate Models are adjusted to mimic the past to make it look like they predict future and past temperatures accurately. The past temperature data is ruthlessly altered and rewritten to change the resulting climate sensitivity to match reality. People may start to notice this malfeasance and investigate the fraud.

Rudolf Huber
April 13, 2020 5:07 pm

I have said it for a long time and I won’t stop doing that now. Models are opinions. They are whatever someone says they shall be. They have very little if anything at all to do with actual measured reality. But that’s not what the Climate Alarmist crowd is telling us. They say that they know what will happen. When they only think so and can’t even prove their assumptions. Plus, their assumptions must be garbage as every model fails when it’s tested against reality. When I worked for a gas trading company, we had a team that ran projections on deals. On one they made 100 projections to chose from. When I get stuff like this I know that they know nothing. Like the Alarmist crowd.

Tom Abbott
Reply to  Rudolf Huber
April 14, 2020 4:47 am

“I have said it for a long time and I won’t stop doing that now. Models are opinions.”

Models start out as opinions. If you put real data into a model, then it becomes more than an opinion.

The difference between virus computer models and human-caused climate change computer models is virus computer models input actual data, whereas human-caused climate change models are made up of guesses.

Then the alarmists try to refine their CAGW models (using more guesses) by trying to make them match the bogus, bastardized global surface temperature record. Even if they were successful at matching the bogus surface temperature record (and they are not), it would be meaningless, since every bit of it is science fiction. They would be matching science fiction to science fiction.

Megs
April 13, 2020 6:50 pm

Looks like the thread is getting back on track. I thought the whole idea of this post is that it proves that any model is only worth the accuracy of the data that goes into it. I suspect there wasn’t enough information available early on with the Covid-19 virus pandemic to get accurate predictions, hopefully the data will be adjusted with actual figures to reflect more realistic likely outcome. Reflecting on what should or should not have been done changes nothing, it’s been done. We need some factual data to help us decide the best way forward.

The current ‘climate’ models have only ever been adjusted to present a desired agenda. The results being presented from them are no more ‘real’ than ‘consensus’ science.

April 13, 2020 8:55 pm

If I was to model the “pandemic”, I would use a logistic model. That would not solve the crappy data problem, but it would provide a framework.

Biological growth (cumulative) of virus epidemics, or trees, or humans, or other biological phenomena, in general follows the logistic function: F(x) = 1/(1+e^-1). The logistic curve is sigmoid or S-shaped. When it “flattens” is a subjective judgement, but the cumulative curve has a distinct and calculable inflection point.

The first derivative of the cumulative curve is the growth rate, which follows the logistic distribution. It is bell-shaped like the Gaussian curve, although it is different mathematically: F(x) = e^-x/(1+e^-x)^2. The peak of the growth rate curve is contemporaneous (because the x-axis is time) with the inflection point of the cumulative growth curve.

The second derivative is acceleration. It is S-shaped on its side, like a sine wave skewed to the right. Acceleration passes through the x-axis (equals zero) at the point when the rate peaks and cumulative growth inflects. Thereafter acceleration is negative (deceleration) and dips into negative territory before it asymptotically approaches the x-axis from below.

The Gompertz function is a specialized case of the general logistic function, and is sometimes used for growth studies because it has coefficients that can be solved for using linear regression, assuming that one has reliable data to analyze. The coefficients correspond to asymptotes and scaling.

Also sometimes used is the Weibull distribution, another specialized form of the logistic with asymptote, shape, and scaling coefficients. We used the Weibull to develop tree and stand growth models back when I was a grad student.

The logistic model is useful for biological growth. Technically the model is logistic, not “exponential” or “logarithmic”. It also works for drag racing in case you want to model the distance traveled, speed, and acceleration of your dragster.

I speculate based on unreliable data that we have already passed the inflection point, that the growth rate has peaked, and the “pandemic” is decelerating. With or without “mitigation” — biology does that kind of thing.

Ian Coleman
April 14, 2020 12:05 am

Let’s not get too pedantic about our terms here, folks, but all increases are exponential, including negative increases. It’s just a matter of choosing the appropriate exponent. But I know what people mean when they use the word exponential, and it’s the connotation that supplies the practical meaning.

Reply to  Ian Coleman
April 14, 2020 8:12 am

Sorry to be pedantic, but I was trying to teach you something. You can use “exponential”, or “logarithmic”, or “non-linear””, or “uppy uppy”, or whatever term you like. Be wild, be free.

But if you wish to model growth, the nominative topic of this post, then I advise you to use some form of the logistic function. Otherwise you will be doing it wrong and your model will suck.

Nylo
April 14, 2020 12:09 am

“What if the White House, EPA, Congress, UN, EU and IPCC acknowledged that climate models are only as good and as accurate as the assumptions built into them? What if – as the months and years went by and we got more real-world temperature, sea level and extreme weather data – we used that information to honestly refine the models? Would the assumptions and therefore the forecasts change dramatically?”

Well, that would be logical reasoning. Not gonna happen.

Anthony Banton
April 14, 2020 3:04 am

“Model-pedicted temperatures are more than 0.5 degrees F above actual satellite-measured average global temperatures”

Satellite based average temperatures are not what the GCMs project.
The surface record as confirmed by AIRS vs GISS is …..

https://iopscience.iop.org/1748-9326/14/4/044030/downloadHRFigure/figure/erlaafd4ef1

GISS vs AR5 GCM ensemble …..

comment image

“Models that were used in the IPCC 4th Assessment Report can be evaluated by comparing their approximately 20-year predictions with what actually happened. In this figure, the multi-model ensemble and the average of all the models are plotted alongside the NASA Goddard Institute for Space Studies (GISS) Surface Temperature Index (GISTEMP). Climate drivers were known for the ‘hindcast’ period (before 2000) and forecast for the period beyond. The temperatures are plotted with respect to a 1980-1999 baseline.”

“– and “highest ever” records are mere hundredths of a degree above previous records from 50 to 80 years ago.”

No, eg …..
France: all time high of 45.9C 28 Jun 2019 (Previous 44.1 2003)

Sweden, Bergen: 33.3 (previous 32.2)

Alaska, Anchorage 32.2 (29.4)

“The meteorological winter of 2019-2020 shattered temperature records in Russia and France as well as other parts of Europe and the United States. In Moscow, this was the warmest winter in nearly 200 years of record-keeping, and the first winter there to have an average temperature at or above 32 degrees (0 Celsius).
https://www.themoscowtimes.com/2020/02/03/russian-cities-see-hottest-january-in-recorded-history-a69136

“The official report of 19.0 degrees Celsius in the town Sunndalsøra is the highest temperature ever measured in Norway and Scandinavia itself, in January or any winter month! The previous Norwegian record of 17.9 °C was measured in Tafjord in 1989.”

Yes, yes, I know …. If you say so.

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