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5.8: Problem Set- Plot Your Own Climate Data

  • Page ID
    9868
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    Problem set

    Part 1: Visualize your own climate data

    Go to Interactive Atmospheric Data Visualization and follow my directions:

    • The main page has an interactive map of the world with a bunch of colored dots on to designate places where atmospheric data is habitually collected by NOAA. You'll see that the default current selection is set to the Mauna Loa Observatory. Click “Carbon Cycle Gases” to expand that menu and then choose Time Series. You will be taken to a new page. Don’t change anything on the page, just scroll down and click the Submit button. You have just generated a time series plot of carbon dioxide concentrations recorded at 3397 meters above sea level at the Mauna Loa observatory. In fact, it is exactly the same plot we discussed on the previous page of this lesson, except more updated because I created that course page a while ago. Go ahead and try it! Then after you check out the plot, you can click the “Site Selection" link to get back to the original page we started on.

    • Now back at the original page, you see a world map and by hovering your mouse over the different circles you can find out the name of any station and what kind of samples it takes (carbon dioxide, methane, whatever) and how long the station has been active. If you click on one of the network station symbols, the menu side of the page changes so that you can make a plot of that station's atmospheric data. Go ahead and play around with this Web site. There's a lot of neat stuff here. You can always click “Site Selection" to get back to the original page we started on.

    • Pick two stations other than Mauna Loa and preferably ones that have at least a couple of years of data. It’s also interesting to pick one in the northern hemisphere and one in the southern hemisphere.

    • Make time series plots for both carbon dioxide (CO2) and methane (CH4) at your stations—that's 4 plots. You can save the plots to your computer by clicking where it says "PDF version" on the page where it makes your plot.

    • Create a word processing document (Microsoft Word, Macintosh Pages, Google Docs, or PDF) to record your work for this problem set.

    • Paste your plots into your document, and answer these questions.

    • The main page has an interactive map of the world with a bunch of colored dots on to designate places where atmospheric data is habitually collected by NOAA. You'll see that the default current selection is set to the Mauna Loa Observatory. Click “Carbon Cycle Gases” to expand that menu and then choose Time Series. You will be taken to a new page. Don’t change anything on the page, just scroll down and click the Submit button. You have just generated a time series plot of carbon dioxide concentrations recorded at 3397 meters above sea level at the Mauna Loa observatory. In fact, it is exactly the same plot we discussed on the previous page of this lesson, except more updated because I created that course page a while ago. Go ahead and try it! Then after you check out the plot, you can click the “Site Selection" link to get back to the original page we started on.

    • Now back at the original page, you see a world map and by hovering your mouse over the different circles you can find out the name of any station and what kind of samples it takes (carbon dioxide, methane, whatever) and how long the station has been active. If you click on one of the network station symbols, the menu side of the page changes so that you can make a plot of that station's atmospheric data. Go ahead and play around with this Web site. There's a lot of neat stuff here. You can always click “Site Selection" to get back to the original page we started on.

    • Pick two stations other than Mauna Loa and preferably ones that have at least a couple of years of data. It’s also interesting to pick one in the northern hemisphere and one in the southern hemisphere.

    • Make time series plots for both carbon dioxide (CO2) and methane (CH4) at your stations—that's 4 plots. You can save the plots to your computer by clicking where it says "PDF version" on the page where it makes your plot.

    • Create a word processing document (Microsoft Word, Macintosh Pages, Google Docs, or PDF) to record your work for this problem set.

    • Paste your plots into your document, and answer these questions.

    Part 2: Bad cherrypicking of good data

    People often wonder how there can be different interpretations of the same datasets. In Part 2 of this activity, we will deliberately set up a "strawman" of a dataset that has been selected to maximize the potential for incorrect interpretation in order to see how different interpretations can arise. To do this we will take advantage of the fact that there is natural variability in the concentration of CO2 in the atmosphere due to the seasonality of plant growth. We will make two plots, each containing several months of data at Mauna Loa.

    Go to NOAA's Trends in Atmospheric Carbon Dioxidepage and follow my directions:

    • Scroll down to the bottom of the page so that you are looking at the plot called “Mauna Loa Daily,

      Monthly and Weekly Averages for two years”

    • Use the slider bars below the plot to make the x-axis go from Oct 2017 to April 2018. Take a screenshot of this plot and include it in your document.

    • Use the slider bars below the plot to make the x-axis span June 2018 - October 2018. Take a screenshot of this plot and include it in your document.

    • Answer the Part 2 questions on your document.

    Here are the Part 2 questions:

    1. Look at the October to April plot. Pretend you have never seen the full range of data spanning multiple decades. Estimate the rate of change of atmospheric carbon dioxide from this plot.
    2. Look at the June to October plot. Pretend you have never seen the full range of data spanning multiple decades. Estimate the rate of change of atmospheric carbon dioxide from this plot.
    3. Why is it so important to sample the atmosphere continuously and for a long period of time?
    4. What are some of the points raised in this problem set that do not lend themselves to simple table-top experiments in a lab or a classroom?

    Submitting your work

    Upload your document to the "Lesson 5 - Keeling curve problem set" assignment in Canvas by the due date indicated on the first page of this lesson. Here's what should be in your document: 4 plots from part 1 and the answers to the part 1 questions; two plots from part 2 and answers to the part 2 questions. Name your document like this:

    L5_keelingcurve_AccessAccountId_LastName.doc/.pdf/.pages

    For example, Cardinals second baseman Kolten Wong would name his problem set L5_keelingcurve_kkw16_wong.doc

    Grading rubric

    I will use my general rubric for grading problem sets to grade this activity.


    This page titled 5.8: Problem Set- Plot Your Own Climate Data is shared under a CC BY-NC-SA 4.0 license and was authored, remixed, and/or curated by Eliza Richardson (John A. Dutton: e-Education Institute) via source content that was edited to the style and standards of the LibreTexts platform.