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# how to scale factors in y-axis using ggplot2

I have Hour and Minute on my yaxis they are factors. I would like to scale my y-axis so that it is more readable. For example, I only like to show 00:00, 03:00, 09:00, 12:00, etc on my yaxis. Right now, three are too many hours and minutes on y-axis that and it does not look good.

This ended up being a very challenging and I am ready to give up. I took two approach to addres this:

1. I formatted my Time1 field `as.POSIXct` and used `scale_y_datetime` to strip out the Hour and Minute to put it on the y axis. The problem with this one is that I can not reverse order the time. I like to see 00:00 on the top of the y-axis and then 01:00, 02:00 and 03:00 etc. I could not do this. I tried this

`coord_trans(y="reverse")`

It did not work.

2. Second approach was to convert Time1 field to factor and only show Hour and Minute. I did this

`y\$Time1<-format(y\$Time, "%H:%M")`

then

``````y\$Time1 = factor(y\$Time1, levels=sort(unique(y\$Time1), decreasing=TRUE))
``````

this kinda worked but since it is factor, all the values for y-axis are showin on the plot. I like to scale this but couldnt find a solution yet. Any help is greatly appreciated as I am out of any ideas.

``````    dput(head(y,50))
structure(list(DATE = structure(c(15744, 15744, 15744, 15744,
15744, 15744, 15744, 15744, 15744, 15744, 15744, 15744, 15744,
15744, 15744, 15744, 15744, 15744, 15744, 15744, 15744, 15744,
15744, 15744, 15744, 15744, 15744, 15744, 15744, 15744, 15744,
15744, 15744, 15744, 15744, 15744, 15744, 15744, 15744, 15744,
15744, 15744, 15744, 15744, 15744, 15744, 15744, 15744, 15744,
15744, 15744, 15744, 15744, 15744, 15744, 15744, 15744, 15744,
15744, 15744, 15744, 15744, 15744, 15744, 15744, 15744, 15744,
15744, 15744, 15744, 15744, 15744, 15744, 15744, 15744, 15744,
15745, 15745, 15745, 15745, 15745, 15745, 15745, 15745, 15745,
15745, 15745, 15745, 15745, 15745, 15745, 15745, 15745, 15745,
15745, 15745, 15745, 15745, 15745, 15745, 15745, 15745, 15745,
15745, 15745, 15745, 15745, 15745, 15745, 15745, 15745, 15745,
15745, 15745, 15745, 15745, 15745, 15745, 15745, 15745, 15745,
15745, 15745, 15745, 15745, 15745, 15745, 15745, 15745, 15745,
15745, 15745, 15745, 15745, 15745, 15745, 15745, 15745, 15745,
15745, 15745, 15745, 15745, 15745, 15745, 15745, 15745, 15745,
15745, 15745, 15745, 15745, 15745, 15745, 15745, 15745, 15745,
15745, 15745, 15745, 15745, 15745, 15745, 15745, 15745, 15745,
15745, 15745, 15745, 15745, 15745, 15745, 15746, 15746, 15746,
15746, 15746, 15746, 15746, 15746, 15746, 15746, 15746, 15746,
15746, 15746, 15746, 15746, 15746, 15746, 15746, 15746, 15746,
15746, 15746, 15746, 15746, 15746, 15746, 15746, 15746, 15746,
15746, 15746, 15746, 15746, 15746, 15746, 15746, 15746, 15746,
15746, 15746, 15746, 15746, 15746, 15746, 15746, 15746, 15746,
15746, 15746, 15746, 15746, 15746, 15746, 15746, 15746, 15746,
15746, 15746, 15746, 15746, 15746, 15746, 15746, 15746, 15746,
15746, 15746, 15746, 15746, 15746, 15746, 15746, 15746, 15746,
15746, 15746, 15746, 15746, 15746, 15746, 15746, 15746, 15746,
15746, 15746, 15746, 15746, 15746, 15746, 15746, 15746, 15746,
15746, 15746, 15746, 15747, 15747, 15747, 15747, 15747, 15747,
15747, 15747, 15747, 15747, 15747, 15747, 15747, 15747, 15747,
15747, 15747, 15747, 15747, 15747, 15747, 15747, 15747, 15747,
15747, 15747, 15747, 15747, 15747, 15747, 15747, 15747, 15747,
15747, 15747, 15747, 15747, 15747, 15747, 15747, 15747, 15747,
15747, 15747, 15747, 15747, 15747, 15747, 15747, 15747, 15747,
15747, 15747, 15747, 15747, 15747, 15747, 15747, 15747, 15747,
15747, 15747, 15747, 15747, 15747, 15747, 15747, 15747, 15747,
15747, 15747, 15747, 15747, 15747, 15747, 15747, 15747, 15747,
15747, 15747, 15747, 15747, 15747, 15747, 15747, 15747, 15747,
15747, 15747, 15747, 15747, 15747, 15747, 15747, 15747, 15747,
15748, 15748, 15748, 15748, 15748, 15748, 15748, 15748, 15748,
15748, 15748, 15748, 15748, 15748, 15748, 15748, 15748, 15748,
15748, 15748, 15748, 15748, 15748, 15748, 15748, 15748, 15748,
15748, 15748, 15748, 15748, 15748, 15748, 15748, 15748, 15748
), class = "Date"), TIME1 = structure(c(0.0100694444444444, 0.0204976851851852,
0.0309143518518519, 0.0413310185185185, 0.0517476851851852, 0.0621643518518519,
0.0725810185185185, 0.0830092592592593, 0.0934259259259259, 0.103842592592593,
0.114259259259259, 0.124675925925926, 0.135092592592593, 0.145520833333333,
0.1559375, 0.166354166666667, 0.176770833333333, 0.1871875, 0.197604166666667,
0.208032407407407, 0.218449074074074, 0.228865740740741, 0.239282407407407,
0.249699074074074, 0.260115740740741, 0.270532407407407, 0.280960648148148,
0.291377314814815, 0.301793981481481, 0.312210648148148, 0.322627314814815,
0.333043981481481, 0.343460648148148, 0.353877314814815, 0.364293981481481,
0.374722222222222, 0.385138888888889, 0.395555555555556, 0.405972222222222,
0.416388888888889, 0.426805555555556, 0.437222222222222, 0.447650462962963,
0.45806712962963, 0.468483796296296, 0.478900462962963, 0.48931712962963,
0.499733796296296, 0.510162037037037, 0.520578703703704, 0.53099537037037,
0.541412037037037, 0.551828703703704, 0.56224537037037, 0.572673611111111,
0.583090277777778, 0.593506944444444, 0.603923611111111, 0.614340277777778,
0.624756944444444, 0.635185185185185, 0.645601851851852, 0.656018518518519,
0.666435185185185, 0.676851851851852, 0.687268518518519, 0.697685185185185,
0.708113425925926, 0.718530092592593, 0.728946759259259, 0.739363425925926,
0.749780092592593, 0.760196759259259, 0.770613425925926, 0.781030092592593,
0.791458333333333, 0.801875, 0.812291666666667, 0.822708333333333,
0.833125, 0.843541666666667, 0.853958333333333, 0.864375, 0.874803240740741,
0.885219907407407, 0.895636574074074, 0.906053240740741, 0.916469907407407,
0.926886574074074, 0.937303240740741, 0.947731481481481, 0.958148148148148,
0.968564814814815, 0.978981481481481, 0.989398148148148, 0.999814814814815,
0.0100694444444444, 0.0204861111111111, 0.0309027777777778, 0.0413310185185185,
0.0517476851851852, 0.0621643518518519, 0.0725810185185185, 0.0829976851851852,
0.0934143518518518, 0.103831018518519, 0.114259259259259, 0.124675925925926,
0.135092592592593, 0.145509259259259, 0.155925925925926, 0.166342592592593,
0.176759259259259, 0.1871875, 0.197604166666667, 0.208020833333333,
0.2184375, 0.228854166666667, 0.239270833333333, 0.2496875, 0.260115740740741,
0.270532407407407, 0.280949074074074, 0.291365740740741, 0.301782407407407,
0.312199074074074, 0.322615740740741, 0.333032407407407, 0.343460648148148,
0.353877314814815, 0.364293981481481, 0.374710648148148, 0.385127314814815,
0.395543981481481, 0.405960648148148, 0.416377314814815, 0.426793981481481,
0.437222222222222, 0.447638888888889, 0.458055555555556, 0.468472222222222,
0.478888888888889, 0.489305555555556, 0.499722222222222, 0.510138888888889,
0.520555555555556, 0.530983796296296, 0.541400462962963, 0.55181712962963,
0.562233796296296, 0.572650462962963, 0.58306712962963, 0.593483796296296,
0.603900462962963, 0.61431712962963, 0.624733796296296, 0.635162037037037,
0.645578703703704, 0.65599537037037, 0.666412037037037, 0.676828703703704,
0.68724537037037, 0.697662037037037, 0.708078703703704, 0.71849537037037,
0.728912037037037, 0.739340277777778, 0.749756944444444, 0.760173611111111,
0.770590277777778, 0.781006944444444, 0.791423611111111, 0.801840277777778,
0.812256944444444, 0.822673611111111, 0.833101851851852, 0.843518518518519,
0.853935185185185, 0.864351851851852, 0.874768518518519, 0.885185185185185,
0.895601851851852, 0.906018518518519, 0.916446759259259, 0.926863425925926,
0.937280092592593, 0.947696759259259, 0.958113425925926, 0.968530092592593,
0.978946759259259, 0.989363425925926, 0.999780092592593, 0.0100694444444444,
0.0204861111111111, 0.0309143518518519, 0.0413310185185185, 0.0517476851851852,
0.0621643518518519, 0.0725810185185185, 0.0829976851851852, 0.0934259259259259,
0.103842592592593, 0.114259259259259, 0.124675925925926, 0.135092592592593,
0.145509259259259, 0.1559375, 0.166354166666667, 0.176770833333333,
0.1871875, 0.197604166666667, 0.208020833333333, 0.218449074074074,
0.228865740740741, 0.239282407407407, 0.249699074074074, 0.260115740740741,
0.270532407407407, 0.280949074074074, 0.291377314814815, 0.301793981481481,
0.312210648148148, 0.322627314814815, 0.333043981481481, 0.343460648148148,
0.353888888888889, 0.364305555555556, 0.374722222222222, 0.385138888888889,
0.395555555555556, 0.405972222222222, 0.416400462962963, 0.42681712962963,
0.437233796296296, 0.447650462962963, 0.45806712962963, 0.468483796296296,
0.478935185185185, 0.489363425925926, 0.499780092592593, 0.510208333333333,
0.520625, 0.531041666666667, 0.541458333333333, 0.551875, 0.562303240740741,
0.572719907407407, 0.583136574074074, 0.593553240740741, 0.603969907407407,
0.614386574074074, 0.624803240740741, 0.635219907407407, 0.645636574074074,
0.656064814814815, 0.666481481481481, 0.676898148148148, 0.687314814814815,
0.697731481481481, 0.708148148148148, 0.718564814814815, 0.728981481481481,
0.739409722222222, 0.749826388888889, 0.760243055555556, 0.770659722222222,
0.781076388888889, 0.791493055555556, 0.801909722222222, 0.812337962962963,
0.82275462962963, 0.833171296296296, 0.843587962962963, 0.85400462962963,
0.864421296296296, 0.874837962962963, 0.88525462962963, 0.895671296296296,
0.906099537037037, 0.916516203703704, 0.926909722222222, 0.937337962962963,
0.947777777777778, 0.958206018518518, 0.968530092592593, 0.978958333333333,
0.989375, 0.999791666666667, 0.0100694444444444, 0.0204976851851852,
0.0309143518518519, 0.0413310185185185, 0.0517476851851852, 0.0621759259259259,
0.0725925925925926, 0.0830092592592593, 0.0934375, 0.103854166666667,
0.114270833333333, 0.124699074074074, 0.135115740740741, 0.145532407407407,
0.155960648148148, 0.166377314814815, 0.176805555555556, 0.187222222222222,
0.197650462962963, 0.20806712962963, 0.21849537037037, 0.228912037037037,
0.239340277777778, 0.249768518518519, 0.260185185185185, 0.270601851851852,
0.281030092592593, 0.291446759259259, 0.301863425925926, 0.312280092592593,
0.322696759259259, 0.333125, 0.343541666666667, 0.353958333333333,
0.364375, 0.374791666666667, 0.385219907407407, 0.395636574074074,
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0.114270833333333, 0.1246875, 0.135104166666667, 0.145532407407407,
0.155949074074074, 0.166365740740741), format = "h:m:s", class = "times"),
CPU = c(27.7058823529412, 28.1, 25.5444444444444, 24.4333333333333,
25.3222222222222, 22.3666666666667, 20.8555555555556, 19.5777777777778,
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17.5444444444444, 18.2222222222222, 17.7444444444444, 18.6333333333333,
21.6333333333333, 23.9, 27.9666666666667, 28.5222222222222,
32.1777777777778, 33.0111111111111, 36.5222222222222, 38.1111111111111,
43.8, 48.1666666666667, 52.4222222222222, 54.4444444444444,
60.8222222222222, 64.7111111111111, 60.5777777777778, 65.9111111111111,
67.3777777777778, 65.7777777777778, 66.6555555555556, 67.9888888888889,
70.9777777777778, 70.6888888888889, 66.3777777777778, 68.3,
66.0222222222222, 66.1777777777778, 64.9333333333333, 63.8,
66.1444444444444, 65.2888888888889, 63.1222222222222, 61.1666666666667,
62.9, 62.6444444444444, 60.9888888888889, 60.2222222222222,
57.8555555555556, 56.9333333333333, 56.1555555555556, 57,
53.0222222222222, 54.2222222222222, 54.0333333333333, 52.5777777777778,
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48.3444444444444, 50.1666666666667, 47.2, 44.4888888888889,
44.5111111111111, 43.7222222222222, 40.6111111111111, 39.2888888888889,
39.5333333333333, 36.6555555555556, 34.1888888888889, 33.6111111111111,
33.9222222222222, 33.3, 31.0777777777778, 29.8333333333333,
29.3444444444444, 29.7888888888889, 27.3888888888889, 25.9444444444444,
24.0666666666667, 23.4, 26.6666666666667, 26.5888888888889,
30.5294117647059, 25.7333333333333, 27.2666666666667, 26.7,
24.8666666666667, 23.3666666666667, 23.6333333333333, 21.7,
19.6666666666667, 22.4666666666667, 19.2333333333333, 20.9,
18.4333333333333, 19.6666666666667, 19.2666666666667, 19.8666666666667,
18.8666666666667, 18.3666666666667, 16.1666666666667, 15.6333333333333,
15.9333333333333, 17.1333333333333, 18.3, 23.7333333333333,
22.4, 20.4333333333333, 18.9666666666667, 19.3333333333333,
22.8333333333333, 25.0333333333333, 26.5333333333333, 29.7333333333333,
34.1666666666667, 35.9333333333333, 39.1, 37.4, 43.9, 38.6333333333333,
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49.3, 48.3666666666667, 48.1333333333333, 46.0333333333333,
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48.6666666666667, 48.4, 42.7333333333333, 45.2333333333333,
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39.8666666666667, 36.6333333333333, 38.7666666666667, 40,
34.4666666666667, 34.0333333333333, 35.5, 35.8666666666667,
30.3666666666667, 38.5666666666667, 27.4, 29.3666666666667,
39.6, 45.4333333333333, 61.4666666666667, 62.6666666666667,
61.7, 63.7666666666667, 61.6, 49.8, 52.2666666666667, 44.2666666666667,
37.9, 27.6428571428571, 26.6, 24.4333333333333, 25.1444444444444,
26.5555555555556, 22.0666666666667, 19.8, 19.9555555555556,
20.1111111111111, 18.2444444444444, 18.4333333333333, 17.1777777777778,
17.4333333333333, 18.5777777777778, 17.6888888888889, 16.1111111111111,
17.6777777777778, 17.4333333333333, 16.0888888888889, 17.0444444444444,
16.0444444444444, 15.1777777777778, 14.1888888888889, 16.0888888888889,
17.4222222222222, 17.0222222222222, 18.2111111111111, 20.6,
21.2111111111111, 21.9, 23.1888888888889, 24.9888888888889,
27.7, 30.9333333333333, 32.9444444444444, 35.4333333333333,
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45.2444444444444, 46.7666666666667, 48.3777777777778, 51.5888888888889,
53.5222222222222, 42.3157894736842, 34.7866666666667, 32.7733333333333,
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33.7733333333333, 32.1266666666667, 33.3066666666667, 34.4733333333333,
31.82, 31.8, 33.84, 33.78, 31.9066666666667, 29.7666666666667,
28.3466666666667, 28.62, 27.9866666666667, 28.82, 27.5, 29.4466666666667,
27.92, 28.0733333333333, 27.2666666666667, 28.0533333333333,
27.52, 25.8866666666667, 26.38, 26.8933333333333, 26.36,
25.88, 25.96, 26.8133333333333, 23.9133333333333, 26.4066666666667,
25.08, 23.7933333333333, 21.2333333333333, 17.3666666666667,
16.4807692307692, 16.9777777777778, 14.9555555555556, 16.3218390804598,
28.8684210526316, 31.6, 38.1, 35.3, 21.8627450980392, 19.3,
17, 16.7, 16.1444444444444, 14.3, 13.7333333333333, 13.4777777777778,
13.0333333333333, 12.1666666666667, 11.3, 11.9111111111111,
11.3222222222222, 11.4555555555556, 10.5333333333333, 10.7777777777778,
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9.95555555555556, 10, 9.47777777777778, 10.3333333333333,
11.3222222222222, 12.3333333333333, 14.1555555555556, 15.3555555555556,
17.1777777777778, 19.0888888888889, 20.1555555555556, 21.5444444444444,
26.0555555555556, 29.2777777777778, 31.1666666666667, 32.5333333333333,
36.5555555555556, 39.3555555555556, 41.6888888888889, 45.4888888888889,
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50.2777777777778, 51.4666666666667, 47.0333333333333, 48.6,
51.1888888888889, 48.6555555555556, 46.5, 44.8444444444444,
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46.0888888888889, 48.5555555555556, 46.0555555555556, 44.8777777777778,
44.5, 46.0666666666667, 45.6777777777778, 43.6, 44.5888888888889,
46.0555555555556, 45.4111111111111, 44.7555555555556, 43.3222222222222,
43.9888888888889, 43.1666666666667, 42.4777777777778, 41.4,
40.7555555555556, 40.2111111111111, 39.7333333333333, 38.9555555555556,
38.7111111111111, 38.9444444444444, 37.8222222222222, 37.5444444444444,
38.1888888888889, 37.2444444444444, 36.7222222222222, 36.7333333333333,
37.2333333333333, 35.3666666666667, 35.0444444444444, 34.7111111111111,
33.5666666666667, 32.4111111111111, 30.6222222222222, 29.9444444444444,
29.7888888888889, 29.7111111111111, 28.5, 27.6470588235294,
25.9, 24.0222222222222, 22.0444444444444, 22.5888888888889,
19.9888888888889, 17.3555555555556, 17.7555555555556, 17.6,
16.8, 16.2333333333333, 16.1666666666667, 18.5555555555556,
19.0444444444444, 17.6111111111111, 18)), .Names = c("DATE",
"TIME1", "CPU"), row.names = c(NA, 400L), class = "data.frame")
``````

This one returns this error: Error: Discrete value supplied to continuous scale

``````val<-c(0,0.19,0.29,0.39, 0.49,0.59, 0.69, 0.79, 0.89, 0.90,1)
brk = c(20, 30, 40, 50, 60, 70, 80, 90, 100)
cols<-c("white","#F0FFFF","#BBFFFF","#00FFFF","#42C0FB","#1C86EE", "green","yellow","#C9821E", "#FF0000", "#FF0000")
ggplot(y,aes(DATE, Time1, fill=CPU)) + geom_tile() + theme_bw() +
scale_fill_gradientn(name="CPU Utilization", colours=cols, values=val, limits=c(0,100), breaks = brk) +
guides(fill = guide_legend(keywidth = 5, keyheight = 1))+
scale_x_date(breaks = "1 days", labels=date_format("%a")) +
scale_y_continuous(breaks=1:4, labels=c("00:00", "03:00", "09:00", "12:00"))
``````

this one, I get no text in my y-axis:

``````val<-c(0,0.19,0.29,0.39, 0.49,0.59, 0.69, 0.79, 0.89, 0.90,1)
brk = c(20, 30, 40, 50, 60, 70, 80, 90, 100)
cols<-c("white","#F0FFFF","#BBFFFF","#00FFFF","#42C0FB","#1C86EE", "green","yellow","#C9821E", "#FF0000", "#FF0000")
ggplot(y,aes(DATE, Time1, fill=CPU)) + geom_tile() + theme_bw() +
scale_fill_gradientn(name="CPU Utilization", colours=cols, values=val, limits=c(0,100), breaks = brk)+
guides(fill = guide_legend(keywidth = 5, keyheight = 1))+
scale_x_date(breaks = "1 days", labels=date_format("%a")) + scale_y_discrete(breaks=1:4, labels=c("00:00", "03:00", "09:00", "12:00"))
``````
-
Not a reproducible example... – JT85 Apr 26 '13 at 15:13
@JT85, I've updated the original post. it is now reproduceable – user1471980 Apr 26 '13 at 15:22
I've written a blog post about plotting times with ggplot2: blog.ggplot2.org/post/29433173749/… Hopefully the code and examples there will be helpful. – Brian Diggs Apr 26 '13 at 19:35
@Brian Diggs, I followed you instructions exactly and get 0.00 to 1.0 on y-axis. Any idea, what I might be mising here? – user1471980 May 1 '13 at 19:53
@user1471980 Your question has morphed too much at this point. The original question you asked has been dealt with. Create a new question that contains (a minimalist version of) your new problem. Then roll back your last edit. – Brian Diggs May 2 '13 at 17:31

The problem you might be seeing with implementing the code from my blog post on the topic may be due to a bug I later found in the implementation when the scale includes midnight.

``````library("ggplot2")
library("scales")
library("chron")
``````

Using the `y` you define in the question. Make a pure time column:

``````y\$Time2 <- as.chron(y\$Time1, format="%H:%M")
y\$Time2 <- y\$Time2 - floor(y\$Time2)
``````

so now `y` has the structure

``````> str(y)
'data.frame':   50 obs. of  5 variables:
\$ DATE : Date, format: "2013-04-14" "2013-04-14" ...
\$ Time : POSIXct, format: "2013-04-26 17:14:00" "2013-04-26 17:29:00" ...
\$ CPU  : num  30.4 30.1 30 31 30 ...
\$ Time1: chr  "20:14" "20:29" "20:44" "20:59" ...
\$ Time2:Class 'times'  atomic [1:50] 0.843 0.853 0.864 0.874 0.885 ...
.. ..- attr(*, "format")= chr "h:m:s"
``````

The updated code for the transformation is

``````timesreverse_trans <- function() {
trans <- function(x) {-as.numeric(x)}
inv <- function(x) {times(-x)}
fmt <- function(x) {
notone <- x != 1
simplify <- !any(diff(x) < 1/(24*60))
ifelse(notone,
format(x-floor(x), simplify=simplify),
ifelse(simplify, "24:00", "24:00:00"))
}
trans_new("chrontimes-reverse",
transform = trans,
inverse = inv,
breaks = pretty_breaks(),
format = fmt,
domain=c(0,1))
}
scale_y_times <- function(..., trans=NULL) {
scale_y_continuous(trans=timesreverse_trans(), ...)
}
``````

Using this:

``````ggplot(y,aes(DATE, Time2, fill=CPU)) +
geom_tile() +
values=val, limits=c(0,100), breaks = brk) +
scale_x_date(breaks = "1 days", labels=date_format("%a")) +
scale_y_times() +
guides(fill = guide_legend(keywidth = 5, keyheight = 1)) +
theme_bw()
``````

gives

If this doesn't work for you, give a dataset that fails in the way you see.

-
@Brain Diggs, do you have to do this line - y\$Time2 <- as.chron(y\$Time)- floor(as.chron(y\$Time)). when you do this y\$Time2 becomes 4 hours aheas. For example in this case y\$Time is 2013-04-26 20:14:00 and y\$Time2 becomes 00:14:00. Is this accurate, do we need this line (y\$Time2 <- as.chron(y\$Time)- floor(as.chron(y\$Time))? – user1471980 May 2 '13 at 15:59
Looking back at the data, `DATE`, `Time` and `Time1` are not consistent with each other. `DATE` doesn't agree with the date part of `Time`, and `Time1` doesn't agree with the time part of `Time` (3 hours difference). The `Time2` I created doesn't agree with any of those (7 hours different from `Time` for me). I'll update the code to give a `Time2` that is at least consistent with `Time1` – Brian Diggs May 2 '13 at 16:11
ok I got the time part working but I intoroduced another huge problem. If the Date range is let's say one day, geom_tile() show the colors nice. But my data frame is huge and when I try to create a geom_tile(), I see little spots of color. What do you think that is happening. My x-axis is the DATE. – user1471980 May 2 '13 at 16:30
I have update the orinial y data frame, it is first 400 rows. – user1471980 May 2 '13 at 16:43
Likely that geom_tile is fitting the largest tiles that it can between unique values of your times, which is 1 second resolution. I doubt that is what you really want, but I don't know what it is that you do want. – Brian Diggs May 2 '13 at 17:37