Snowfall Inspired video

Continuing my series of posts about making music inspired by videos/images I recorded previously based weather/climate events. This episode occurred when an unusual amount of snow felt during a short period of time this last winter. The therm unusual is used because this episode was unusual for the actual standards. The same amount of snow used to fall in the past and that was a normal event.

I called this video Snow – Spock’s finger as a joke to the album with the same name of the progressive rock band Spock’s Beard.

I Believe In Gnomes, Santa Claus And The Weather Man

It’s been a while since my last post. Basically the struggle of any artist, be happy or make money!

Anyway, I have been experimenting and making music inspired by videos/images I recorded previously based weather/climate events. It is more or less like a little side project that will help me when creating the videos of the climate change prog rock opera.

This video I made when a series of storms hit the place where I live.

The reason I called this song I Believe In Gnomes, Santa Claus And The Weather Man is because sometimes I have the feeling that people believe more in gnomes than in the forecast of the weather man. They are not that bad and they do a really good work most of the time. Weather forecast is hard!

The Chaos of Weather

After a long break I am finally back. This is the first post of the “Weather Forecasting” posts. Roughly speaking, to forecast the weather, scientists use computer models to mimic Earth dynamics. These models are mathematical equations of the atmosphere and oceans. However, the Earth dynamics is a big complex system. On top of that some Earth natural systems have a chaotic behavior. But what is chaos? Summarizing the wikipedia definition:

Chaos is when the behavior of dynamical systems are highly sensitive to initial conditions. Thus, small differences in initial conditions (such as those due to rounding errors in numerical computation) yield widely diverging outcomes for such dynamical systems. Therefore, chaotic systems are predictable for a while and then appear to become random. In other words, the deterministic nature of these systems does not make them predictable.

Around 1960, the meteorologist Edward Lorenz (one of the fathers of chaos theory), was working on a set of differential equations describing convective processes in the atmosphere which were producing encouragingly realistic results. One day, he decided to enter data manually from a point part way through rather than waste time by starting the run over. He found that not long after the run had been restarted from this intermediate point, the forecast diverged and it was completely different. The reason behind, was the output data he used to restart the model. It had been rounded to 3 significant digits, while the computations were done to 6, an error of about 1%. With this unexpected results he discovered that the degree of numerical precision in the initial conditions provided to a numerical weather prediction (NWP) model affects the resulting forecast significantly after only a few days of forecast time (Lorenz 1963).  A good example (also from wikipedia) of chaotic behavior  is the double rod pendulum where the start of the pendulum from a slightly different initial condition would result in a completely different trajectory:

Double-compound-pendulum.gif
Double-compound-pendulum” by CatslashOwn work. Licensed under Public Domain via Wikimedia Commons.

The Earth weather is one of the Earth natural systems with a chaotic behavior. Consequently, the use of different initial conditions in the atmospheric and oceans equations will lead to different final results. So why does not use the same initial condition always to forecast the weather and have the same results? The source of the errors in the forecasting is a more complex subject and I will explain in a post later. However if the Earth system is so unpredictable how come scientists can use computer models to reconstruct past and future climate? First it is necessary to explain the difference between weather and climate where the difference is a measure of time. Weather is what conditions of the atmosphere are over a short period of time, and climate is how the atmosphere “behaves” over relatively long periods of time. Weather is more difficult to predict and has more uncertainties than climate. An elegant demonstration of this difference can be seen in this short video from National Geographic. The astrophysicist and Cosmos host Neil deGrasse Tyson uses a dog walking to clarify the concept.

More additional information of computer models and how they are used to predict climate can be found here: Can we trust climate models?  and Numerical weather prediction.

Weather Forecasting: Is it better to toss a coin?

Why Is Weather Forecasting Always Wrong?  Have you asked yourself the same question? Have you cursed the weather forecasting when you were expecting a sunny day and then rained? Does this picture looks familiar?

tempoeficaz

Once I was in Toronto when the forecasting for the other day was a blizzard. Basically, lots of snow. When that day finally arrived we had half of the expected snow. I friend of mine said: “It is the government. They say more snow will fall than what is expected to scare the people.” Well at that time my knowledge about weather and atmospheric science was minimal. I did not know what to think. Is my friend right? Is the government really doing this? What is the real reason behind? Are the guys responsible for the weather forecasting incompetents? A few years ago i did a seminar giving a brief explanation of how hard is to predict weather. Unfortunately the slides do not come with detailed information. Thus, to answer some questions about weather forecasting I will do a series (not consecutive) of posts explaining why weather is so hard to predict. In addition I will try to give an overview of  how it is predicted. I will add the posts under the category ¨Weather Forecasting”.

To explain the whole weather forecasting problem it is really hard, almost impossible. For example:

Despite the detailed knowledge about precipitation including the complete hydrological cycle (evaporation, water vapour, convection, condensation, clouds, soil moisture, groundwater and the origin of rivers), predicting precipitation accurately is still one of the most difficult tasks in meteorology (Kuligowski:1998)

I know the paper is old but the problem persists. Even in 2014 precipitation still a major forecasting challenge. Some of the reasons are:

  • The chaotic nature of the atmosphere and the complexity of the processes that are involved in precipitation
  • The difficulties of precipitation measurements including problems with rain gauges, radar and satellites
  • The limited temporal and spatial scales of numerical weather prediction (NWP) models?

My goal is to provide information about the most important parts of the weather forecasting. Of course at the end of the posts, if I am missing something please let me know but I hope my posts will be enough to anyone know that the scientists are doing a really good job and they are really hard work guys and if they are missing is not because conspiracy or incompetence. It is because the problem is really hard.

 

Journal references:

Kuligowski, R., & Barros, A. (1998). Localized Precipitation Forecasts from a Numerical Weather Prediction Model Using Artificial Neural Networks Weather and Forecasting, 13 (4), 1194-1204 DOI: 10.1175/1520-0434(1998)0132.0.CO;2

[Random News] Watching the Earth breathe from space (Measuring CO2 from space) and more…

  1. Nasa Launches Carbon Dioxide Observer
  2. How Solar Energy Empowered a Nicaraguan Community Once Devastated by War
  3. How El Niño will change the world’s weather in 2014
  4. How Arizona Could Soon Tax Thousands of Residents For Going Solar

Nasa Launches Carbon Dioxide Observer

Image Credit: NASA

Image Credit: NASA

NASA successfully launched its first spacecraft dedicated to studying atmospheric CO2. Orbiting Carbon Observatory-2 (OCO-2) will be NASA’s first dedicated Earth remote sensing satellite to study atmospheric carbon dioxide from Space. OCO-2 will be collecting space-based global measurements of atmospheric CO2 with the precision, resolution, and coverage needed to characterize sources and sinks on regional scales. “Sources and sinks” are the keys words here. As I posted before, when CO2 is added in the atmosphere only a part stays in there (which drives warming). The remained part could be absorbed by the ocean, and land. However, exactly where is highly uncertain. Thus this sensors will help to solve this part of the puzzle. Also OCO-2 will also be able to quantify CO2 variability over the seasonal cycles year after year.

Continue reading

Hug a Climate Scientist Day and Others Random Interesting News of the Week

These are the news of the week:

  1. Hug a Climate Scientist Day
  2. The Brazil World Cup’s Climate Wild Card
  3. Start Your Electric Engines and Welcome to the Formula E!
  4. A Look at the Sustainable Chicago Restaurant That Recycled and Composted Everything for 2 Years

 

Hug a Climate Scientist day

Climate scientists carry the biggest burden of all: they know our planet is going to turn into a reheated chicken nugget and no one has really been listening. Click in the picture and check the cartoon.

 

The Brazil World Cup’s Climate Wild Card

If you are watching World Cup games and predicting which teams will win matches, might I suggest that you take into account the climate where matches are played. Brazil is huge, spanning about 40 degrees of latitude, and includes ten different climates. Continue reading