(Directions for Excel Mac: 2011) Most of the global average warming over the past 50 years is very likely due to anthropogenic GHG increases

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(Directions for Excel Mac: 2011) Most of the global average warming over the past 50 years is very likely due to anthropogenic GHG increases How does the IPCC know whether the statement about global warming s cause is extremely likely, very likely, or more likely than not? How does the IPCC consistently, across many different disciplines (scientific, technical, and socio-economic), quantify uncertainty? The IPCC uses three different approaches for uncertainty, depending on whether the data are qualitative, quantitative, or based on expert judgment. For the quantitative assessments, most often used in the scientific disciplines, the IPCC uses a Likelihood Scale to consistently define the probability, or likelihood of occurrence. The Likelihood Scale is based on statistics and probability. Statistics is the language that scientists generally use to objectively, and consistently make conclusions about their data despite uncertainty that is inherent in all datasets. However, statistics is not the best way to communicate findings to a broad audience for the purpose of making new policies or educating the public. By using the Likelihood Scale, the IPCC can effectively communicate what we know and what we don t know about global climate change. In this exercise, you will use statistics to analyze a dataset from Lake Mendota that spans the last 150 years. Every year, since 1855, someone has recorded when the lake froze (ice on), and when the lake thawed (ice off). We are going to use these data to ask, Is ice off date on Lake Mendota earlier? To answer this question and at the same time quantify the uncertainty around the answer, you will use one of the most basic statistical techniques a t-test.

The learning objectives for this lab are to: 1) Analyze a historical, climatic dataset qualitatively and then quantitatively, using a probabilistic technique the t-test. 2) Relate statistical results to the IPCC Likelihood Scale. 3) Consider how statistics provide a consistent, objective way of making conclusions despite uncertainty in scientific data. Qualitative analysis Historical climate data show a substantial amount of year-to-year variation. This variation is one form of uncertainty when scientists analyze for trends in climate data. For example, if you were alive in 1920 and you looked back at the data would you say, with certainty, ice off date is earlier? Think about how you determine your level of confidence especially considering the year-to-year variation. Study the graph below to make a qualitative assessment of ice off date. Record whether ice off date today is earlier than it was in the 1850 s. Report your level of certainty (using the language from the IPCC Likelihood Scale). 130 May 120 Ice Off Date on Lake Mendota 110 Ice Off Date 100 90 80 70 February 60 50 1840 1860 1880 1900 1920 1940 1960 1980 2000 2020 Year Is ice off date earlier today? Level of certainty

Quantitative analysis Without quantitative, probabilistic analysis, it is difficult to analyze data with certainty. Now that you have qualitatively analyzed Mendota s ice off data, you will quantitatively analyze the same data. The dataset is provided as an excel file, and is divided into several twenty year sections. You are going to ask, using statistics, Is ice off date on Lake Mendota earlier?. First, you will ask the question as if you were alive in 1914 (Is the first twenty year section statistically different from the second twenty year section), and then again in 1934, and so on until 1994. In this way, you will be able to visualize how the level of certainty changes as time goes on. You will use a very basic statistical test, the t-test to answer these questions. A t-test compares means between two samples, while also considering the variation around each mean. You will use Excel to run the t-test, but it is important to note the actual equation Excel is using: Where X = sample mean and s = standard deviation, and n = sample size. Statistical Analysis for Mac: Excel 2011 To run a Dependent t-test for Excel 2011, you will need to download the free application from StatPlus. http://www.analystsoft.com/en/products/statplusmacle/ 1. Open the Excel spreadsheet Ice_Off_Date.xls 2. Check that all data records have values.

3. Open StatPlus and go to Statistics Basic Statistics and Tables Comparing Means (T-Test) 4. A window will open and ask for Variable #1. Select the Values box, this will highlight the values section. Uncheck the Labels in first row under both variable #1 and variable #2. Next, click on the button with the spreadsheet with the arrow. Uncheck the Labels in first row under both 5. This will open the Excel sheet. Select the data in cells B2- B21. Then select the Compare means sheet and select the values box under Variable #2. Again, select the button to the left with the red arrow. This time select D2-D21 cells in Excel. 6. Alpha will already be set at 5% and Hypothesized Mean Difference is 0. 7. Two-Sample T-Test Assuming Equal Variances (homoscedastic) should be in the T- Test Type box.

8. Select Ok at the bottom to get results 9. A new Excel sheet should open up with the results of the T-Test 10. A t-statistic has been calculated and will show up in cells 9A and 9B. This will be the number to use to determine whether mean ice off date has changed on Lake Mendota from time period in section 1 (1855-1874) compared to time period in section 2 (1875-1894).

The t Stat, in cell B9 is the number we are interested in analyzing. Statisticians use a lookup table to determine whether a particular t-statistic, with a particular sample size, shows that two samples actually differ. The IPCC has basically taken this same look-up table and added their own language to describe the likelihood of various climatic changes in a consistent way. t-statistic Probability of occurrence IPCC Likelihood Scale 0.681 75% 0.851 80% Likely 1.05 85% 1.303 90% Very Likely 1.684 95% 2.021 97.5% Extremely Likely 2.123 98% 2.423 99% 2.704 99.5% 2.971 99.75% 3.307 99.9% Virtually Certain 3.551 99.95%

3.790 99.99% The t-statistic for our analysis (0.958) says that the probability that ice off date changed between the two sections of time is somewhere between 80 85%. The IPCC would then conclude, It is likely that by the year 1894, ice off date was earlier on Lake Mendota in Wisconsin. Hypothesize how likelihood will change as you move along in time, based on looking at the graph of ice off data. Run the same analyses to test for differences in ice off date between section 1 and subsequent sections (1 vs. 3 then 1 vs. 4 and finally 1 vs. 7). Enter your results on a table like this: Which comparison? T Stat Probability of IPCC Likelihood Scale Occurrence 1 vs. 2 0.958 < 85% Likely 1 vs. 3 1 vs. 4 1 vs. 7 Report the Likelihood Scale results on the graph below: 130 May 120 Ice Off Date on Lake Mendota 110 Ice Off Date 100 90 80 70 60 February 50 1840 1850 1860 1870 1880 1890 1900 1910 1920 1930 1940 1950 1960 1970 1980 1990 2000 2010 2020 Likely Year Did the certainty level for 1994 match the certainty level you reported for the qualitative analysis? Why or why not? Did the level of certainty change over time as you hypothesized it would?