Skip to content

This is a series of processing cases and analyses based on spatial data files. The types of data being processed include vector data (such as SHP, Geopackage, etc.) and a large amount of tabular data (which includes time information and coordinates).

License

Notifications You must be signed in to change notification settings

ZominWang/Spatial-Data-Analysis

Repository files navigation

Spatial-Data-Analysis-And-Visualization

This is a series of processing cases and analyses based on spatial data files.

For the body of the notebook, see document:

A consolidated multifactor analysis of the severity of accidents and transport casualties.ipynb

I. Datasource

The data used in this project was sourced from STAT19 R PACKAGE The types of data being processed include vector data (such as SHP, Geopackage, etc.) and a large amount of tabular data (which includes time information and coordinates).

II. Introduction

This project was initiated as part of the Spatial Data Science for Social Sciences that I elected as part of my Urban Planning and Design studies at the University of Sheffield.

This project utilizes key Python libraries for data analysis and visualization. Pandas is used for data manipulation and analysis, matplotlib and seaborn for data visualization, numpy for mathematical operations, and the Google Maps API for handling geographical data and mapping functionalities.

The primary objective of this project is to explore the causes of traffic accidents and identify factors related to their severity. By analyzing the intricate relationship between various factors such as location, time, environmental conditions, and the nature of accidents, the study aims to provide valuable insights into accident causation and severity.

The findings from this multifactor analysis can serve as a valuable reference for future urban construction and planning. By understanding the variables that contribute to the severity of accidents, we can design and plan our cities in a way that minimizes potential risks and creates safer travel conditions for all citizens. Moreover, it could provide useful information for daily commuters, helping them understand the factors that contribute to accidents and thus make safer travel decisions.

In essence, this project embodies the intersection of Spatial Data Science and Urban Planning, using the tools of the former to inform decisions in the latter, for a safer, more efficient urban environment.

III. Limitation

Some of conclusions are missing some nuance, for example, we don't know the relative traffic volumes at different times of the day (or year).

The joyplot visualisation approach may not be best used for this data; because it gives the impression of a oscillating variable, where in reality it is simply discrete data points at 1, 2 etc.

About

This is a series of processing cases and analyses based on spatial data files. The types of data being processed include vector data (such as SHP, Geopackage, etc.) and a large amount of tabular data (which includes time information and coordinates).

Topics

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published