# Wolfram Mathematica

## Date Analysis in DateHistogram

Analyze airplanes' arrival time.

In[1]:=
```arrivals = TemporalData[EventSeries, {CompressedData[" 1:eJztxUENACAMALGBAixgCQkzMPX8mQ7SJpfbWSdnRIzurj4AAADAjx52whOk "], CompressedData[" 1:eJxd3TvOZjuwmOdjwJEiT8EzWLyzhiBAkYagQIAiB8dTd+6qrwPx+bHRG/02 77f6yCoW1//9P/6f//4//4//+I//+M//M//33/7Xf/6/f+j/+78e+q//Jf8y 9jox5rjfi3e/eEYH53zxtu/FOG/k+X3iedPOdj7wErkFkXsXB2n77OIFt5H3 28A5aNEcy9BNViMoaH+E7kVB28jno6DsDHAR+dqiu0h7bcK9hEYT+1vQ+noH l0i3rz5FemMNRn8Ns5oM2ZoM2Zo0YS2m2Vp03TpmdS9Z5T+A98Uc+0/cIDnv bxh5mtUy8hWDnBuTYXdm+x5mNWlvIuUuhmyvZegmq81s35t+3ts6H9b+PnTs dnXvy/jua4uCcs9HzufbHUQUnA+Zcz5647Qu0vyjGDkdEXR6EDqslWv/DIYs q0joPFRyslLOapS7WL9nM6DZzWR1mXWJhk7T2s+u/eNiT5H8VuN+Y4LLUHry utizjqR1sWeVDb2GXrOi67IBGxwiA3oXwu0qN1JMGsp8rgn74jXtZYxu2FdB i+JrF0SMxMeii49JGAqKaFQjhSw5L/oqRQOhexn6TIb79fbM9sJp6DPbE1+J lPjKnMTdyGoHaV+5kfhKhsRoZBXP+BZOcn63EDlfvzbB/oF3g0HaNon8bjAK g5w7lRyDzhnjEHlukfZmUmq1zHkNQ8/b/LEHkfcm9DAouTejGsdqXIZsvDuK QoZ7XGbOiI/IYa1iGpnRn1/bIH2Vm0BC20fatkVqlQ14qzHXFhn9ua3G7obS dTmeRD4M2TzM9pyvhF5WWW7VyOpuQ5mxMyw36Jz1SpXC8VZjte/NeXXau/rq 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show complete Wolfram Language input
In[2]:=
```opts = {ChartElementFunction -> ChartElementDataFunction["GradientScaleRectangle", "ColorScheme" -> "SolarColors"], ImageSize -> 400, PlotTheme -> {"Grid", "LargeLabels"}, ChartStyle -> EdgeForm[GrayLevel[0.5]], PlotLabel -> "Arrival Time O`Hare Dec 2015"};```
In[3]:=
`DateHistogram[arrivals, opts]`
Out[3]=

Wednesday and Thursday are the busiest days, while Saturday is the least busy.

In[4]:=
```DateHistogram[arrivals, "Day", DateReduction -> "Week", PlotLabel -> "Weekly Analysis", opts]```
Out[4]=

The airport becomes busy around 7am and remains busy throughout the day.

In[5]:=
```DateHistogram[arrivals, "Hour", DateReduction -> "Day", PlotLabel -> "Daily Analysis", opts]```
Out[5]=

See the intensity of arrival times in a day.

In[6]:=
```DateHistogram[arrivals, "Hour", "Intensity", DateReduction -> "Day", AxesLabel -> {None, "%"}, PlotLabel -> "Daily Arrival Intensity", opts]```
Out[6]=