Question
Climate change has become a significant issue in Australia. Australia's extreme climate is vulnerable to climate shifts and has experienced many extreme weather events recently.
Climate change has become a significant issue in Australia. Australia's extreme climate is vulnerable to climate shifts and has experienced many extreme weather events recently. Research has shown that climate change is influencing flowering timing and the relative flowering orders of plants. Changes in flowering order can have detrimental effects on plant growth and food availability. Little research has examined how flowering orders have changed over time. This data from Hudson & Keatley (2021) explores the influence of long-term climate shifts in Victoria on the relative flowering order similarity of 81 species of plants from 1983 to 2014. The species were ranked annually by the time taken to flower (FFD), and changes in flowering order were measured by computing the similarity between annual flowering order and the flowering order of 1983 using the Rank-based Order similarity metric (RBO). The earliest flowering species is ranked 1 and latest ranked 81 for the given year under study.
A decrease in similarity over time suggests that flowering orders are becoming more dissimilar from their original ordering in 1983. The aim of your analysis is to see if it is possible to determine how flowering orders respond to specific changes in climate by understanding the relationship between flowering order (RBO) and climate conditions. Climate variables are yearly averaged temperature, rainfall, radiation and relative humidity. These relationships may be used - in theory - to forecast future flowering orders. Note the term "flowering order similarity" refers to the similarity between the flowering order of the 81 plant species for a particular year and the flowering order of the same plants in the so-called baseline reference year, 1983 (the first year in the data collection period with enough observations) measured by a rank similarity metric, RBO. RBO values are therefore numbers between 0 and 1. Higher RBO values indicate higher similarity of the order of the first flowering occurrence (based on FFD) of the 81 species from 1983 compared to each of the subsequent years, 1984 to 2014, so the time series are of length 31.
Models will be built using RBO similarity values for the flowering orders of consecutive years as the dependent time series (Yt). Your data contains 5 time series, the RBO time series of the 81 plant species studied by Hudson & Keatley (2021) and the yearly averaged climate variables measured from 1984 - 2014, as 1983 is the reference year for flowering order FFD ranks. The time series are thereby of length 31, as the RBO metrics utilise 1983 rank orders of FFD as the baseline.
All series are available here inRBO .csvDownload RBO .csv
Task 3 Part (a):Carry out your analysis based onunivariateclimate regressors (modeloneclimate indicator at a time, i.e.,univariateregressor).
- Modelling methods to try (DLM, ARDL, polyck, koyck, dynlm).
- Choice of optimal models within EACH a specific method can be assessed from values of R squared, AIC, BIC, MASE etc (as is appropriate to the method).
The goal is to forecast RBOthreeyears ahead using each regressor one at a time and (use percentiles for the regressors) in forecasting for each of thebestmodels within the methods utilised.
Point forecasts and confidence intervals are required to be obtained and reports for the forecasts. Percentiles method for relevant covariates for the forecasts can be used.
Task 3 Part (b):Flowering orders became more dissimilar over the most recent decades, particularly during the Millennium Drought (1997 - 2009), suggesting that flora in Australia is responding to changes in their environment. According to the BoM the drought period for
Australia occurred from 1996 to 2009 How would younowaccommodate for this in your analysis of the Rank RBO. Perform the appropriate analysis and obtain the 3 year ahead forecasts (suggest using the dynlm package) only for part (b)).
I JUST NEED THE R CODE FOR THIS IN RMD FORMAT.
THE FIRST PART IN THE BELOW LINK CAN HELP YOU SOLVE THIS QUESTION
https://rpubs.com/AnnaKrinochkina/537658
BELOW IS THE CSV FILE OR THE INPUT DATA.
RBO.csv
Year | RBO | Temperature | Rainfall | Radiation | RelHumidity |
1984 | 0.755009 | 9.371585 | 2.489344 | 14.87158 | 93.9265 |
1985 | 0.740752 | 9.656164 | 2.47589 | 14.68493 | 94.93589 |
1986 | 0.842386 | 9.273973 | 2.42137 | 14.51507 | 94.09507 |
1987 | 0.748443 | 9.219178 | 2.319726 | 14.67397 | 94.49699 |
1988 | 0.798408 | 10.20219 | 2.465301 | 14.74863 | 94.08142 |
1989 | 0.79388 | 9.441096 | 2.73589 | 14.78356 | 96.08685 |
1990 | 0.792568 | 9.943836 | 2.39863 | 14.67671 | 93.77918 |
1991 | 0.81387 | 9.690411 | 2.635616 | 14.41096 | 93.15562 |
1992 | 0.815284 | 9.691257 | 2.795902 | 13.39617 | 94.09863 |
1993 | 0.775801 | 9.947945 | 2.87863 | 14.26575 | 94.91973 |
1994 | 0.747185 | 9.316438 | 1.974795 | 14.52329 | 93.26932 |
1995 | 0.75082 | 9.164384 | 2.843288 | 13.90411 | 94.45863 |
1996 | 0.664442 | 8.967213 | 2.814754 | 14.3306 | 94.6 |
1997 | 0.694121 | 9.038356 | 1.403014 | 14.77534 | 93.74685 |
1998 | 0.704554 | 8.934247 | 2.289041 | 14.6 | 94.60822 |
1999 | 0.699226 | 9.547945 | 2.126301 | 14.6137 | 96.22603 |
2000 | 0.713712 | 9.680328 | 2.471858 | 14.65574 | 95.65738 |
2001 | 0.726742 | 9.561644 | 2.227945 | 14.14521 | 94.70712 |
2002 | 0.662948 | 9.389041 | 1.74 | 14.63836 | 93.53233 |
2003 | 0.711823 | 9.210959 | 2.270411 | 15.11233 | 94.47096 |
2004 | 0.703994 | 9.300546 | 2.620492 | 14.64481 | 95.01421 |
2005 | 0.732117 | 9.623288 | 2.28411 | 15.09315 | 94.30356 |
2006 | 0.725803 | 8.715068 | 1.78137 | 15.41096 | 94.84493 |
2007 | 0.700772 | 9.80137 | 2.191233 | 15.19452 | 94.11068 |
2008 | 0.744515 | 9.034153 | 1.743169 | 14.80328 | 94.39508 |
2009 | 0.685304 | 9.457534 | 2.03863 | 15.12877 | 94.63096 |
2010 | 0.702263 | 9.765753 | 2.777808 | 14.29315 | 96.05205 |
2011 | 0.758267 | 9.826027 | 2.886301 | 14.01096 | 95.70603 |
2012 | 0.734637 | 9.76776 | 2.599454 | 14.4071 | 94.90519 |
2013 | 0.725517 | 10.09726 | 2.540274 | 14.43014 | 93.83479 |
2014 | 0.709092 | 10.24725 | 2.239286 | 14.60165 | 94.21016 |
Step by Step Solution
There are 3 Steps involved in it
Step: 1
Get Instant Access to Expert-Tailored Solutions
See step-by-step solutions with expert insights and AI powered tools for academic success
Step: 2
Step: 3
Ace Your Homework with AI
Get the answers you need in no time with our AI-driven, step-by-step assistance
Get Started