Trip based fuel consumption modelling using Machine Learning Project built a website from scratch 😁👍

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23 Jul 202405:50

Summary

TLDRThe project FP presents a fuel consumption prediction model using machine learning. It utilizes various regression methods, with the decision tree model achieving 98% accuracy. The model considers parameters like distance, speed, temperature, and weather conditions to predict fuel consumption. The project includes a user-friendly website with a predictor feature, providing drivers with cost-efficient and environmentally sustainable fuel usage insights.

Takeaways

  • 📊 **Data-Driven Model**: The project utilizes a dataset named 'measurements.csv' for fuel consumption prediction.
  • 🌐 **Web Integration**: A web application is developed to interface with the prediction model using Python.
  • 🔍 **Data Visualization**: The team performed data visualization as part of their analysis process.
  • 🤖 **Machine Learning Models**: Various regression models were tested including Linear Regression, Lasso Regression, Decision Tree, Random Forest, and SVM.
  • 🏆 **Best Model Chosen**: The Decision Tree model achieved the highest accuracy at 98% and was selected for deployment.
  • 📝 **Model Persistence**: The trained Decision Tree model is saved using a 'pickle' file for later use.
  • 💻 **Web Development**: The project features a web application with HTML pages connected via Python.
  • 🔗 **Live Website**: A live website is demonstrated, accessible through a provided link.
  • 📈 **Input Parameters**: Users can input parameters such as distance, speed, temperature, and weather conditions to predict fuel consumption.
  • 🌍 **Global Impact**: The project aids drivers and travel managers in planning fuel needs and promoting cost efficiency and environmental sustainability.
  • 📦 **Deployment**: The model is deployed through a command-line interface, showcasing its practical application.

Q & A

  • What is the main focus of the project FP?

    -The main focus of the project FP is to develop a fuel consumption prediction model using machine learning.

  • What type of data file is used for the project?

    -The project uses a CSV file named 'measurements' for the dataset.

  • What are the different machine learning models explored in the project?

    -The project explored various regression models including linear regression, Lasso regression, decision tree model, random forest model, and SVM.

  • Which evaluation metric was used to compare the models?

    -The R-squared score was used as the evaluation metric to compare the models.

  • Which model provided the best accuracy according to the R-squared score?

    -The decision tree model provided the best accuracy with an R-squared score of 98%.

  • How is the decision tree model's performance utilized in the project?

    -The decision tree model is used to predict fuel consumption, and the model is dumped into a pickle file for later use.

  • What is the programming language used to connect the web pages with the Python language?

    -The project uses Flask, a micro web framework written in Python, to connect the web pages.

  • How is the project deployed and accessed?

    -The project is deployed by running a Python script that starts a web server, and it can be accessed through a provided link in a web browser like Microsoft Edge.

  • What are the parameters required for the fuel consumption prediction model?

    -The parameters required include distance, speed, temperature inside and outside the vehicle, and whether the weather is rainy or sunny.

  • What is the unit of fuel consumption predicted by the model?

    -The model predicts fuel consumption in liters per 100 kilometers.

  • How does the project help drivers or travel managers?

    -The project helps drivers or travel managers by predicting the fuel needed for a trip, suggesting cost-efficient methods, and promoting environmental sustainability.

  • What additional features are available on the project's website?

    -The website includes pages for the home, predictor, about us, team details, and a contact us section.

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Связанные теги
Fuel PredictionMachine LearningData AnalysisDecision TreeEfficiencySustainabilityTravel ManagementCost EffectiveEnvironmental ImpactWeb Application
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