Project: Analyzing River Thames Water Levels


Analyzing River Thames Water Levels

Time series data is everywhere, from watching your stock portfolio to monitoring climate change, and even live-tracking as local cases of a virus become a global pandemic. In this project, you’ll work with a time series that tracks the tide levels of the Thames River. You’ll first load the data and inspect it data visually, and then perform calculations on the dataset to generate some summary statistics. You’ll end by decomposing the time series into its component attributes and analyzing them.

The original dataset is available from the British Oceanographic Data Center here and you can read all about this fascinating archival story in this article from the Nature journal.

Here's a map of the locations of the tidal gauges along the River Thames in London.

The dataset comes with a file called Data_description.pdf. The dataset consists of 13 .txt files, containing comma separated data. We'll begin by analyzing one of them, the London Bridge gauge, and preparing it for analysis. The same code can be used to analyze data from other files (i.e. other gauges along the river) later.

Variable NameDescriptionFormat
Date and timeDate and time of measurement to GMT. Note the tide gauge is accurate to one minute.dd/mm/yyyy hh:mm:ss
Water levelHigh or low water level measured by tide gauge. Tide gauges are accurate to 1 centimetre.metres (Admiralty Chart Datum (CD), Ordnance Datum Newlyn (ODN or Trinity High Water (THW))
FlagHigh water flag = 1, low water flag = 0Categorical (0 or 1)
# We've imported your first Python package for you, along with a function you will need called IQR
import pandas as pd
import datetime as dt

def IQR(column): 
    q25, q75 = column.quantile([0.25, 0.75])
    return q75-q25

# loading data
lb = pd.read_csv('data/10-11_London_Bridge.txt')

# five first row

# subsetting the initial dataframe
df = lb.drop(' HW=1 or LW=0', axis=1).rename(columns = {'Date and time':'datetime',' water level (m ODN)':'water_level',' flag':'is_high_tide'})

# more information about our news database
# Converting object type to appropriate format
df['datetime'] = pd.to_datetime(df['datetime'])
df.water_level = df.water_level.astype('float')

# Adding news columns
df['month'] = df.datetime.dt.month
df['year'] = df.datetime.dt.year
# news variables
tide_high = df.loc[df.is_high_tide ==1, 'water_level']
tide_low = df.loc[df.is_high_tide==0, 'water_level']

# dictionnaries
high_statistics = {'mean':tide_high.mean(),'median':tide_high.median(),'IQR': tide_high.agg('IQR')}
low_statistics = {'mean':tide_low.mean(),'median': tide_low.median(),'IQR': tide_low.agg('IQR')}