Feeds:
Posts
Comments

Archive for October, 2023

One Look at the Effect of Higher Resolution Models

In #15 we looked at one issue in modeling tropical cyclones (TCs). Current climate models have actual biases in their simulation of ocean temperature. When we run simulations with and without these errors there are large changes in the total energy of TCs.

In this article we’ll look at another issue – model resolution. Because TCs are fast and small scale, climate models at current resolution struggle to model them.

It’s a well known problem in climate modeling, and not at all a surprise to anyone who understands the basics of mathematical modeling.

This is another paper referenced by the 6th Assessment Report (AR6): “Impact of Model Resolution on Tropical Cyclone Simulation Using the HighResMIP–PRIMAVERA Multimodel Ensemble”, by Malcolm Roberts and co-authors from 2020.

The key science questions addressed in this study are the following:

1) Are there robust impacts of higher resolution on explicit tropical cyclone simulation across the multi- model ensemble using different tracking algorithms?

2) What are the possible processes responsible for any changes with resolution?

3) How many ensemble members are needed to assess the skill in the interannual variability of tropical cyclones?

In plain English:

  • They review the results of a number of climate models each at their standard resolution and then at a higher resolution
  • When they find a difference, what is the physics responsible? What’s missing from the lower resolution model that “kicks in” with the higher resolution model?
  • How many runs of the same model with slightly different initial conditions are needed before we start to see the year to year variability that we see in reality?

To see the whole article, visit the new Science of Doom on Substack page and please consider suscribing, for notifications on new articles.

Read Full Post »

In #1-#6 of the “Extreme Weather” series we looked at trends in Tropical Cyclones (TCs) from the perspective of chapter 11 of the 6th assessment report of the IPCC (AR6). The six parts were summarized here.

The report breaks up each type of extreme weather, reviews recent trends and then covers attribution and future projections.

Both attribution and future projections rely primarily on climate models. We looked at some of the ideas of attribution in the “Natural Variability, Attribution and Climate Models” series.

AR6 has a section: Model Evaluation, on p. 1587, before it moves into Detection and Attribution, Event Attribution.

How good are models at reproducing Tropical Cyclones?

Accurate projections of future TC activity have two principal requirements: accurate representation of changes in the relevant environmental factors (e.g., sea surface temperatures) that can affect TC activity, and accurate representation of actual TC activity in given environmental conditions.

Suppose in the future we had a model that was amazing at reproducing tropical cyclones when a variety of climate metrics were accurately reproduced. However, if the climate model didn’t reproduce these metrics reliably we still wouldn’t get a reliable answer about future trends in tropical cyclones.

As a result tropical cyclones are a major modeling challenge.

To see the whole article, visit the new Science of Doom on Substack page and please consider suscribing, for notifications on new articles.

Read Full Post »

Overview of Chapter 3 of the IPCC 6th Assessment Report

The periodic IPCC assessment reports are generally good value for covering the state of climate science. I’m taking about “Working group 1 – the Physical Science Basis”, which in the case of the 6th assessment report (AR6) is 12 chapters.

They are quite boring compared with news headlines. Boring and dull is good if you want to find out about real climate.

If you prefer reading about the end of days then you’ll need to stick to press releases.

Here’s a quick summary of Chapter 3 – “Human Influence on the Climate System”. Chapter 3 naturally follows on from Chapter 2 – “Changing State of the Climate System”.

To see the whole article, visit the new Science of Doom on Substack page and please consider suscribing, for notifications on new articles.

Read Full Post »

In #9 we looked at an interesting paper (van Oldenborgh and co-authors from 2013) assessing climate models. They concluded that climate models were over-confident in projecting the future, at least from one perspective which wouldn’t be obvious to a newcomer to climate.

Their perspective was to assess spatial variability of climate models’ simulations and compare them to reality. If they got the spatial variation reasonably close then maybe we can rely on their assessment of how the climate might change over time.

Why is that?

One idea behind this thinking is to consider a coin toss:

  • If you flip 100 coins at the same time you expect around 50 heads and 50 tails. Spatial.
  • If you flip one coin 100 times you expect 50 heads and 50 tails. Time.

There’s no strong reason to make this parallel with climate models on spatial and time dimensions but climate is full of challenging problems where we have limited visibility. We could give up, but we just have the one planet so all ideas are welcome.

In the paper they touched on ideas that often come up in modeling studies:

  • assessing natural variability by doing lots of runs of the same climate model and seeing how they vary
  • comparing the results of different climate models

To see the whole article, visit the new Science of Doom on Substack page and please consider suscribing, for notifications on new articles.

Read Full Post »

In #1 we saw an example of natural variability in floods in Europe over 500 years. Clearly the large ups and downs prior to the 1900s can’t be explained by “climate change”, i.e. from burning fossil fuels.

If you learnt about climate change via the media then you’ve probably heard very little about natural variability, but it’s at the top of climate scientists’ minds when they look at the past, even if it doesn’t get mentioned much in press releases.

Here’s another example, this time of droughts in the western USA. This is a reconstruction of the pre-instrument period.

To see the whole article, visit the new Science of Doom on Substack page and please consider suscribing, for notifications on new articles.

Read Full Post »