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Weather Station Dashboard

Contributers to this Project

Radi Al-Rashed, Yanal Kashou and the IT Department.

Overview

We have a weather station atop the main building at HTU. We decided to take the data feed and create a simple real-time / pseudo real-time dashboard that represents the data in an intuitive way and gives insight into our weather conditions.

dashboard

Note: All IP addresses, database users and passwords have been replaced with * for security purposes.

Technologies

  • R for data analyses and visualizations
  • Shiny for dashboard Server logic and UI
  • HTML for design
  • CSS for design
  • Python for initializing and updating the database
  • SQL for database
  • LoggerNet (CRBasic) for the weather station connection

Folder Structure

Stylesheet, logo, font and footer files are place in the www folder. Shiny readily accepts them in this directory.
Some of the raw data is available in the data-snapshots folder.

Data Pipeline

The weather station outputs 3 comma-separated tables.

  1. CR1000_FifteenSec.dat - A single entry that gets replaced every 15 seconds due to storage constraints.
  2. CR1000_OneMin.dat - Readings every minute.
  3. CR1000_OneHour.dat - Readings every hour.

The new entries in these tables (except the 15 Second table) are appended to a MS-SQL database called weatherDB with tables called perMINUTE and perHOUR respectively.

Then our dashboard connects to the database and the 15 Second Table and reads a specified number of rows from each to process and display.

Source Code Explanation

  • loggernet-config.CR1
    Configuration file/program for the weather station.

  • global.R
    Contains static logic for the dashboard as well as library imports.

  • app.R
    Main dashboard source file, contains all UI and Server logic.

  • ws_db.sql
    Creates database schema.

  • init_weatherDB.py
    Populate the database for the first time.

  • update_min_weatherDB.py
    Update the database (table = perMINUTE) on change in output tables from weather station.

  • update_hour_weatherDB.py
    Update the database (table = perHOUR) on change in output tables from weather station.

  • update_min_weatherDB.bat
    Call update_min_weatherDB.py from windows task scheduler.

  • update_hour_weatherDB.bat
    Call update_hour_weatherDB.py from windows task scheduler.

  • run_dashboard.sh, and run_db script.sh
    Linux scripts to run the dashboard by broadcasting to an IP address and run the database update script

  • www\style.css
    CSS design stylesheet for the dashboard.

Lessons Learned

Design

  • Because we used shinydashboard as the package for the UI, altering the UI and sizing it according to resolution demanded hard-coding the CSS elements. The code hosted here is for a resolution of 1920x1080. We had to redesign it when broadcasting to a screen because the resolution was 1280x768.

  • We intially wanted to display a correlation between solar radiation and visibility, however the plot was difficult to read and understand, and was not so aesthetically pleasing. So we decided to investigate and show the inverse-correlation between relative humidity and air density.

  • Positioning the top elements including the logo was a mess, using the shinydashboard package put a lot of contraints and we had to disable the header completely from CSS and hard code the widths of each element as a % of the total width instead of sticking to bootstrap's grid system.

Readings and Calculations

  • We also needed to find the air density through calculations, this was important to display the wind rose and the air density vs relative humidity. So we got on Wikipedia and used the equation of air density for humid air. https://en.wikipedia.org/wiki/Density_of_air#Humidity_(water_vapor)

  • The wind rose displays wind power, however our weather station does not output the wind power, it outputs variables such as wind speed and wind direction. So we calculated the specific wind power as if it is being collected by a wind turbine with an area of 1m^2 because we do not have a wind turbine.
    The equation was also taken from Wikipedia: https://en.wikipedia.org/wiki/Wind_power#Wind_energy

  • The barometric pressure readings were off and needed calibration. We calibrated it to a weather station in Marka following advice from Arabia Weather. However, our readings did not fluctuate even in extreme weather events. This was fixed by setting the SEChan (SE Channel) variable in the LoggerNet Configuration to "2". It was fixed by trial and error.

Code

  • Setting up the SQL connections on Linux and Windows were different. Windows demanded a Data Source be defined, while on Linux simply supplying the connection string with a driver, server, user and password was enough.

  • We faced a bottleneck when setting the collection interval, where the data table output from the weather station was every hour and we thought that we were getting data on a shorter interval, however it turned out that we were collecting the same data every minute or so. This was fixed by reprogramming the data logger and setting the table outputs to shorter intervals.

Hardware

  • The weather station was initially powered by a built-in solar cell that charges it's battery. When we changed the interval down from 1 hour to both 1 hour, 1 minute and 15 seconds, the battery voltage fell whenever weather conditions worsened and at night. This caused gaps in our data. We fixed it by connecting it directly via power cable.

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A pseudo real-time weather station analytics dashboard.

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