Welcome to Final Year Projects!!
  • Newsletter
  • +91 90254 34960
  • Contact Us
  • FAQs
Select category
  • Select category
  • Artificial Intelligence
  • Biomedical
  • Block Chain
  • Cloud Computing
  • Cyber Security
  • Data mining
  • Deep Learning
  • Embedded Components
  • Generative AI
  • IoT
  • LORA
  • Machine Learning
  • Mini Projects
    • Embedded
    • Java
    • Matlab
    • Python
    • VLSI
      • pipeline
  • Natural Language Processing
  • Projects
    • Embedded
      • Agriculture
      • Artificial Intelligence(AI)
      • Biomedical
      • Digital Twin
      • Federated Learning
      • Image Processing
      • Internet of Things(IoT)
      • LoRaWAN
      • Python Interface
      • Raspberry PI
      • Robotics
      • Social Cause
      • Wireless Sensor Network
    • Java
      • Android
      • Artificial Intelligence
      • Augmented Reality
      • Blockchain
      • Cloud Computing
      • Cybersecurity
      • Data Mining
      • Internet of Things (IoT)
      • Machine Learning
      • Secure Computing
      • Social Cause
    • Matlab
      • Cryptography- Authentication
      • Cyber Security
      • Deep Learning
      • Digital Image Processing
      • Machine Learning
      • Natural Language Processing
    • Python
      • Agent AI
      • Blockchain
      • Cybersecurity
      • Deep Learning
      • Explainable AI
      • Federated Learning
      • Generative AI
      • GPT
      • Graph Neural Network
      • Machine Learning
      • OpenCV
      • Quantum Encryption
      • Reinforcement Learning
    • VLSI
      • Low Power VLSI Design
      • On-Chip Cryptography
      • Self Repairing Technology
  • Robotics
  • Secure Computing
Login / Register
0 Wishlist
0 Compare
1 item ₹5,500.00
Menu
1 item ₹5,500.00
Browse Categories
  • Java
  • Python
  • Embedded
  • Machine Learning
  • Mechanical
  • Matlab
  • VLSI
  • Raspberry PI
  • Artificial Intelligence
  • Home
  • Shop
    • PROJECTS
      • PROJECTS
        • Java
        • Python
        • Embedded
        • Matlab
        • VLSI
        • Mechanical
    • MINI PROJECTS
      • PROJECTS
        • Java
        • Python
        • Matlab
        • VLSI
        • Embedded
    • WORKSHOPS
      • Workshops
        • Python
        • Robotics
        • Industry Visit
        • Raspberry Pi
        • Image Processing
        • Mechanical Engineering
        • VLSI
        • Arduino
        • Matlab
        • Machine Learning
        • Embedded
        • Android
        • IoT
    • INTERNSHIPS
      • Internships
        • Python
        • Machine learning
        • Artificial intelligence
        • Web development
        • Android
        • IoT / internet of things
        • Cloud Computing
        • Digital Marketing
        • Big Data
  • Journal paper
  • Blog
  • About us
  • Contact us
“Plant Disease Detection Using Machine Learning Techniques” has been added to your cart. View cart
Click to enlarge
Home Projects Python Neural-XGBoost A Hybrid Approach for Disaster Prediction and Management Using Machine Learning
Adaptive Defense Zero-Day Attack Detection in NIDS with Deep Reinforcement Learning
Adaptive Defense Zero-Day Attack Detection in NIDS with Deep Reinforcement Learning ₹5,500.00
Back to products
PermGuard: A Scalable Framework for Android Malware Detection Using Permission-to-Exploitation Mapping
PermGuard: A Scalable Framework for Android Malware Detection Using Permission-to-Exploitation Mapping ₹5,500.00

Neural-XGBoost A Hybrid Approach for Disaster Prediction and Management Using Machine Learning

₹5,500.00

Aim

          To develop a four-class disaster prediction system that uses SMOTE for class balancing, evaluates four advanced machine learning models, selects the best-performing classifier, and deploys it through an interactive web interface

 

Compare
Add to wishlist
Categories: Machine Learning, Python Tags: CatBoost, Data Analytics, Data Science, Disaster prediction, Extra trees, Feature Extraction, LGBM, LightGBM, Machine Learning, Python Projects, Random Forest, SMOTE, XGBoost
Share:
  • Description
  • Reviews (0)
  • Software Download
  • Download Abstract
  • Shipping & Delivery
Description

Aim

          To develop a four-class disaster prediction system that uses SMOTE for class balancing, evaluates four advanced machine learning models, selects the best-performing classifier, and deploys it through an interactive web interface

Abstract

         Accurate disaster prediction is essential for mitigating risks and improving emergency response. This study proposes a SMOTE-enhanced multi-model machine learning framework that classifies disaster events into four distinct categories. The system integrates four advanced algorithms—LightGBM, Random Forest, Extra Trees, and CatBoost—combined with comprehensive preprocessing and class balancing using the Synthetic Minority Oversampling Technique (SMOTE). Each model is trained on the balanced dataset and evaluated using accuracy and F1-score, after which the best-performing model is automatically selected as the final predictor. A lightweight web interface is developed to allow users to input disaster-related parameters and receive real-time predictions. By combining SMOTE with ensemble-based learning, the proposed system significantly improves classification performance on minority disaster classes and provides a practical, deployable solution for real-world disaster analytics.

Proposed System

         The proposed system trains four advanced machine learning models—LightGBM, Random Forest, Extra Trees, and CatBoost—on a four-class disaster dataset enhanced with SMOTE. SMOTE generates synthetic samples for minority classes, ensuring equal representation across all categories. After preprocessing and balancing, each model is evaluated, and the best-performing model is selected for final deployment. A user-friendly web interface enables real-time predictions using this optimized model.

Advantage

  • SMOTE ensures equal representation of all four disaster classes
  • Improved accuracy and F1-score, especially for minority classes
  • Multi-model comparison ensures the best model is selected
  • Fast and efficient predictions
  • Easy-to-use web interface
  • Reliable classification even with originally imbalanced datasets
Reviews (0)

Reviews

There are no reviews yet.

Be the first to review “Neural-XGBoost A Hybrid Approach for Disaster Prediction and Management Using Machine Learning” Cancel reply

Your email address will not be published. Required fields are marked *


The reCAPTCHA verification period has expired. Please reload the page.

Software Download

You must be logged in to download the software.

Download Abstract

You must be logged in to download the abstract.

Shipping & Delivery
wd-ship-1
wd-ship-2

MAECENAS IACULIS

Vestibulum curae torquent diam diam commodo parturient penatibus nunc dui adipiscing convallis bulum parturient suspendisse parturient a.Parturient in parturient scelerisque nibh lectus quam a natoque adipiscing a vestibulum hendrerit et pharetra fames nunc natoque dui.

ADIPISCING CONVALLIS BULUM

  • Vestibulum penatibus nunc dui adipiscing convallis bulum parturient suspendisse.
  • Abitur parturient praesent lectus quam a natoque adipiscing a vestibulum hendre.
  • Diam parturient dictumst parturient scelerisque nibh lectus.

Scelerisque adipiscing bibendum sem vestibulum et in a a a purus lectus faucibus lobortis tincidunt purus lectus nisl class eros.Condimentum a et ullamcorper dictumst mus et tristique elementum nam inceptos hac parturient scelerisque vestibulum amet elit ut volutpat.

Related products

Compare

Deep Learning Algorithms for Cyber-Bulling Detection in Social Media Platforms

Python, Cybersecurity, Cyber Security
₹5,500.00
To improve the accuracy and efficiency of cyberbullying detection in social media text by utilizing an advanced machine learning model (DistilBERT) that overcomes ambiguity and classification challenges.
Add to wishlist
Add to cart
Quick view
Compare

Lung Nodule Detection in Medical Images Based on Improved YOLOv5

Python, Deep Learning, Generative AI, Projects, Artificial Intelligence, Deep Learning, Generative AI
₹5,500.00
Aim: To enhance the YOLOv8 model for achieving high-performance object detection in medical imaging and other specialized applications.
Add to wishlist
Add to cart
Quick view
New
Compare

Medical Chatbot

Python, Deep Learning, Projects, Deep Learning
₹5,500.00
Aim:          To create a chatbot that predicts medical conditions from images and provides disease-specific information, treatment options, and patient
Add to wishlist
Add to cart
Quick view
Compare

Online Recruitment Fraud (ORF) Detection Using Deep Learning Approaches

Python, Deep Learning, Projects, Artificial Intelligence, Deep Learning
₹5,500.00
Aim: To propose an advanced fraud detection system for online job postings by utilizing a transformer-based machine learning model, BERT, to enhance the detection of fraudulent job listings and improve the security of online recruitment platforms.
Add to wishlist
Add to cart
Quick view
Compare

Predictive Analysis of Network based Attacks by Hybrid Machine Learning Algorithms

Python, Machine Learning, Projects, Machine Learning
₹5,500.00
To enhance DDoS attack detection by implementing a machine learning system with hyper-parameter optimization and advanced prediction techniques
Add to wishlist
Add to cart
Quick view
Compare

Time Series Forecasting and Modeling of Food Demand Supply Chain Based on Regressors Analysis

Projects, Python, Machine Learning, Machine Learning
₹5,500.00
Aim:        To Develop a methodology that combines the robustness of ARIMA and SARIMA models with the explanatory power of
Add to wishlist
Add to cart
Quick view
Compare

Uncertain Facial Expression Recognition via Multi-Task Assisted Correction

Python, Deep Learning, Deep Learning
₹5,500.00
The aim of this research is to develop a robust and accurate facial expression recognition system that addresses the challenges posed by uncertain and ambiguous data. We aim to improve upon existing methods to enhance feature representation learning and uncertainty mitigation.
Add to wishlist
Add to cart
Quick view
Compare

Whale and Dolphin Classification

Python, Deep Learning, Projects, Deep Learning
₹5,500.00
The proposed method involves a multi-step process to classify whale and dolphin species from images. First, the dataset is collected and pre-processed to ensure high-quality input data. The VGG16 model is used to extract features from the images, capturing complex patterns and details. These features are then used to train a Support Vector Machine (SVM) model, which excels in binary and multi-class classification tasks.
Add to wishlist
Add to cart
Quick view

    Global Techno Solutions - GTS, started by young engineering graduates to overcome a problem they faced during their academic years. That is "Providing Solutions". They kept it as the motto for their company.

    • Phone: (+91) 90254 34960
    • Mail: sales@finalyearprojects.in
    Our Category
    • Java
    • Python
    • Embedded
    • Matlab
    • VLSI
    • Mechanical
    USEFUL LINKS
    • Privacy Policy
    • Returns
    • Terms & Conditions
    • Contact Us
    • Latest News
    • FAQ
    Mini Projects
    • Java
    • Python
    • Embedded
    • Matlab
    • VLSI
    Copyright Finalyearprojects.In 2024
    payments
    • Menu
    • Categories
    • Java
    • Python
    • Embedded
    • Machine Learning
    • Mechanical
    • Matlab
    • VLSI
    • Raspberry PI
    • Artificial Intelligence
    • Home
    • Shop
    • Blog
    • About us
    • Contact us
    • Wishlist
    • Compare
    • Login / Register
    Shopping cart
    Close
    Sign in
    Close

    Lost your password?

    OR
    Don't have an account? Signup

    No account yet?

    Create an Account

    HEY YOU, SIGN UP AND CONNECT TO GLOBAL TECHNO SOLUTIONS

    Be the first to learn about our latest trends and get exclusive offers

    Will be used in accordance with our Privacy Policy

    Shop
    0 Wishlist
    1 item Cart
    My account

    Back