Accident Prone Area
Project Overview
The project talks about predicting traffic accidents. The output is categorized as accident severity on a different range, and the problem is handled as a machine learning classification problem. Bar graphs, line charts, histograms, and other visual aids have been used to illustrate the findings. Additionally, a map showing the locations of different accident-prone zones has been created. It was made possible by the dataset’s information on the latitude and longitude of these locations.
Tools & Technologies Used
Methodology / Process
- Loading Datasets.
- Data Preprocessing.
- EDA and Visualizing Numerical Columns
- Analysing Accident Frequency by weather conditions.
- Analysing Accident Frequency by Hour of the Day.
- Analysing Accident Frequency by Day of the Week.
- Analysing High Accident Count and Severity.
- Analysing of Accident Rates Urban and Rural Areas.
- Analysing Accident Severity Distribution by Speed Limit.
- Analysing Total Number of Casualties by Accident Severity
- Creating and Comparing Machine learning models : Decision Tree , Random Forest, Logistic Regression, Ada Boost, LGBM, ANN.
- Saving The Models and Analysing It To Find Users Prediction.
Loading Datasets.
Data Preprocessing.
EDA and Visualizing Numerical Columns
Analysing Accident Frequency by weather conditions.
Analysing Accident Frequency by Hour of the Day.
Analysing Accident Frequency by Day of the Week.
Analysing High Accident Count and Severity.
Analysing of Accident Rates Urban and Rural Areas.
Analysing Accident Severity Distribution by Speed Limit.
Analysing Total Number of Casualties by Accident Severity
Decision Tree Accuracy
Random Forest Accuracy
Logistic Regression Accuracy
AdaBoost Accuracy
LGBM Accuracy
ANN Accuracy
Comparing Machine Learning Models
Saving The Models and Analysing It To Find Users Prediction.
📦 Free Project Package
Download all files including project code, dataset, model file (.pkl) etc.
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