Hi Alex and everyone,
My apologies for the confusion and this double message (I just noticed that the 
example dataset appeared distorted)! Let me try to simplify here again.

My dataframes are structured in the following way: an x column and y column, 
like this:



Now, let's say that I want to determine the rate of increase at about x = 1.0, 
relative to the beginning of the period (i.e. 0 at the beginning). We can see 
clearly here that the answer would be y = 43. My question is would it be 
possible to quickly determine the value at around x = 1.0 across the 10 
dataframes that I have like this without having to manually check them? The 
idea is to determine the range of values for y at around x = 1.0 across all 
dataframes. Note that it's not perfectly x = 1.0 in all dataframes - some could 
be 0.99 or 1.01.  
I hope that this is clearer!
Thanks,

-----Original Message-----
From: Alexander Ilich <ail...@usf.edu>
To: r-sig-geo@r-project.org <r-sig-geo@r-project.org>; rain1...@aim.com 
<rain1...@aim.com>
Sent: Tue, May 9, 2023 2:23 pm
Subject: Re: [R-sig-Geo] Finding the highest and lowest rates of increase at 
specific x value across several time series in R

 #yiv7769615370 P {margin-top:0;margin-bottom:0;}I'm currently having a bit of 
difficultly following. Rather than using your actual data, perhaps you could 
include code to generate a smaller dataset with the same structure with clear 
definitions of what is contained within each (r faq - How to make a great R 
reproducible example - Stack Overflow). You can design that dataset to be small 
with a known answer and the describe how you got to that answer and then others 
could help determine some code to accomplish that task.
Best Regards,AlexFrom: R-sig-Geo <r-sig-geo-boun...@r-project.org> on behalf of 
rain1290--- via R-sig-Geo <r-sig-geo@r-project.org>
Sent: Tuesday, May 9, 2023 1:01 PM
To: r-sig-geo@r-project.org <r-sig-geo@r-project.org>
Subject: [R-sig-Geo] Finding the highest and lowest rates of increase at 
specific x value across several time series in R I would like to attempt to 
determine the difference between the highest and lowest rates of increase 
across a series of dataframes at a specified x value. As shown below, the 
dataframes have basic x and y columns, with emissions values in the x column, 
and precipitation values in the y column. Among the dataframes, the idea would 
be to determine the highest and lowest rates of precipitation increase at 
"approximately" 1 Terratons of emissions (TtC) relative to the first value of 
each time series. For example, I want to figure out which dataframe has the 
highest increase at 1 TtC, and which dataframe has the lowest increase at 1 
TtC. at However, I am not sure if there is a way to quickly achieve this? Here 
are the dataframes that I created, followed by an example of how each dataframe 
is structured:
#Dataframe objects created:
    CanESMRCP8.5PL<-data.frame(get3.teratons, pland20)     
IPSLLRRCP8.5PL<-data.frame(get6.teratons, pland21)    
IPSLMRRCP8.5PL<-data.frame(get9.teratons, pland22)    
IPSLLRBRCP8.5PL<-data.frame(get12.teratons, pland23)    
MIROCRCP8.5PL<-data.frame(get15.teratons, pland24)    
HadGEMRCP8.5PL<-data.frame(get18.teratons, pland25)    
MPILRRCP8.5PL<-data.frame(get21.teratons, pland26)    
GFDLGRCP8.5PL<-data.frame(get27.teratons, pland27)    
GFDLMRCP8.5PL<-data.frame(get30.teratons, pland28)
#Example of what each of these look like:
    >CanESMRCP8.5PL
        get3.teratons   pland20    X1      0.4542249 13.252426    X2      
0.4626662  3.766658    X3      0.4715780  2.220986    X4      0.4809204  
8.495072    X5      0.4901427 10.206458    X6      0.4993126 10.942797    X7    
  0.5088599  6.592956    X8      0.5187588  2.435796    X9      0.5286758  
2.275836    X10     0.5389284  5.051706    X11     0.5496212  8.313389    X12   
  0.5600628  9.007722    X13     0.5708608 11.905644    X14     0.5819234  
6.126022    X15     0.5926283  9.883264    X16     0.6042306  7.699696    X17   
  0.6159752  5.614193    X18     0.6274483  6.681527    X19     0.6394011 
10.112812    X20     0.6519496  8.721810    X21     0.6646344 10.315931    X22  
   0.6773436 11.372490    X23     0.6903203  8.662169    X24     0.7036479 
10.106109    X25     0.7180955 10.990867    X26     0.7322746 13.491778    X27  
   0.7459771 17.256650    X28     0.7604589 12.040960    X29     0.7753096 
10.638796    X30     0.7898374  7.889500    X31     0.8047258 11.757174    X32  
   0.8204160 15.060151    X33     0.8359387  9.822078    X34     0.8510721 
11.388695    X35     0.8661237 10.271567    X36     0.8815913 13.224285    X37  
   0.8984146 15.584782    X38     0.9154501  9.320024    X39     0.9324529  
9.187128    X40     0.9497379 12.919805    X41     0.9672824 15.190318    X42   
  0.9854439 12.098606    X43     1.0041460 16.758629    X44     1.0241779 
17.435182    X45     1.0451656 15.323428    X46     1.0663605 18.292109    X47  
   1.0868977 12.625429    X48     1.1079376 17.318583    X49     1.1295719 
14.056624    X50     1.1516720 18.239445    X51     1.1736696 16.312087    X52  
   1.1963065 18.683315    X53     1.2195753 20.364835    X54     1.2425277 
14.337167    X55     1.2653873 16.072449    X56     1.2888002 14.870248    X57  
   1.3126799 18.431717    X58     1.3362459 19.873449    X59     1.3593610 
17.278361    X60     1.3833589 18.532887    X61     1.4083234 16.178170    X62  
   1.4328881 17.689810    X63     1.4572568 21.395131    X64     1.4821021 
20.154886    X65     1.5072721 15.655971    X66     1.5325393 21.692028    X67  
   1.5581797 23.258303    X68     1.5842384 23.802459    X69     1.6108635 
15.824673    X70     1.6365393 19.016228    X71     1.6618322 20.957593    X72  
   1.6876948 19.105363    X73     1.7134712 19.759288    X74     1.7392598 
27.315595    X75     1.7652725 24.882263    X76     1.7913807 25.813408    X77  
   1.8173818 23.658997    X78     1.8434211 24.223432    X79     1.8695911 
23.560818    X80     1.8960611 28.057708    X81     1.9228969 26.996265    X82  
   1.9493552 26.659719    X83     1.9759324 22.723687    X84     2.0026666 
30.977267    X85     2.0290137 29.384326    X86     2.0549359 24.840383    X87  
   2.0811679 26.952620    X88     2.1081763 29.894790    X89     2.1349227 
25.224040    X90     2.1613017 27.722623
    >IPSLLRRCP8.5PL
        get6.teratons   pland21    X1      0.5300411  8.128827    X2      
0.5401701  6.683660    X3      0.5503503 12.344974    X4      0.5607762 
11.322411    X5      0.5714146 14.250646    X6      0.5825357 10.013592    X7   
   0.5937966  9.437394    X8      0.6051673  8.138396    X9      0.6168960  
9.767765    X10     0.6290367  8.166579    X11     0.6413864 12.307348    X12   
  0.6539184 12.623931    X13     0.6667360 11.182448    X14     0.6800060 
12.585040    X15     0.6935350 13.408614    X16     0.7071757  9.352335    X17  
   0.7211951 12.743725    X18     0.7356089 11.625612    X19     0.7502665 
10.240418    X20     0.7650959 12.394282    X21     0.7800845 16.963066    X22  
   0.7953119 16.380090    X23     0.8107459 10.510501    X24     0.8260236 
12.645911    X25     0.8414439 14.134851    X26     0.8572960 18.924963    X27  
   0.8732313 17.849050    X28     0.8892344 10.941533    X29     0.9057380 
12.034925    X30     0.9223530 15.897904    X31     0.9391578 19.707692    X32  
   0.9563358 16.690375    X33     0.9738711 18.098571    X34     0.9916517 
16.588447    X35     1.0096934 16.125172    X36     1.0279473 19.108647    X37  
   1.0463864 16.972994    X38     1.0653421 22.869403    X39     1.0842487 
21.228874    X40     1.1035309 25.509754    X41     1.1230403 15.579367    X42  
   1.1426743 21.259726    X43     1.1626806 26.061262    X44     1.1833831 
21.918530    X45     1.2045888 22.369094    X46     1.2262981 21.480456    X47  
   1.2481395 20.503543    X48     1.2703019 27.717028    X49     1.2929382 
26.295449    X50     1.3157745 28.271455    X51     1.3390449 31.595651    X52  
   1.3626052 26.188018    X53     1.3863833 26.326999    X54     1.4102701 
26.902272    X55     1.4343871 25.308764    X56     1.4584666 23.789699    X57  
   1.4831504 26.916504    X58     1.5080384 32.921638    X59     1.5331210 
29.753267    X60     1.5582794 29.567720    X61     1.5832585 31.454097    X62  
   1.6085002 26.602191    X63     1.6339502 35.873728    X64     1.6594560 
34.222654    X65     1.6851070 36.290959    X66     1.7109757 31.623912    X67  
   1.7368503 31.965520    X68     1.7626750 41.490310    X69     1.7883216 
35.645934    X70     1.8141292 35.639422    X71     1.8405670 37.085608    X72  
   1.8672313 44.812777    X73     1.8939987 40.044602    X74     1.9208222 
37.834526    X75     1.9478806 44.497335    X76     1.9750195 39.839740    X77  
   2.0024118 38.300529    X78     2.0302205 52.116649    X79     2.0581589 
59.189047    X80     2.0861536 51.559857    X81     2.1141780 43.305779    X82  
   2.1421791 47.950074    X83     2.1703249 46.252149    X84     2.1985953 
47.536605    X85     2.2266540 49.422466    X86     2.2547762 44.577399    X87  
   2.2827062 49.720523    X88     2.3102098 47.138244    X89     2.3379090 
51.882832    X90     2.3656370 51.413472
Etc...
Any help with this would be greatly appreciated!
Thanks,
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