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This repository focuses on improving the efficiency and sustainability of heavy-duty vehicles by accurately predicting failures in the Air Pressure System (APS) and reducing the cost of unnecessary repairs.

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mihirkudale/Sensor-Fault-Detection-ML

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Sensor-Fault-Detection

Problem Statement

The Air Pressure System (APS) is a critical component of a heavy-duty vehicle that uses compressed air to force a piston to provide pressure to the brake pads, slowing the vehicle down. The benefits of using an APS instead of a hydraulic system are the easy availability and long-term sustainability of natural air.

This is a Binary Classification problem, in which the affirmative class indicates that the failure was caused by a certain component of the APS, while the negative class indicates that the failure was caused by something else.

Solution Proposed

In this project, the system in focus is the Air Pressure system (APS) which generates pressurized air that are utilized in various functions in a truck, such as braking and gear changes. The datasets positive class corresponds to component failures for a specific component of the APS system. The negative class corresponds to trucks with failures for components not related to the APS system.

The problem is to reduce the cost due to unnecessary repairs. So it is required to minimize the false predictions.

Tech Stack Used

  1. Python
  2. FastAPI
  3. Machine learning algorithms
  4. Docker
  5. MongoDB

Infrastructure Required.

  1. AWS S3
  2. AWS EC2
  3. AWS ECR
  4. Git Actions
  5. Terraform

How to run?

Before we run the project, make sure that you are having MongoDB in your local system, with Compass since we are using MongoDB for data storage. You also need AWS account to access the service like S3, ECR and EC2 instances.

Data Collections

image

Project Archietecture

image

Deployment Archietecture

image

Step 1: Clone the repository

git clone https://github.com/mihirkudale/Sensor-Fault-Detection.git

Step 2- Create a conda environment after opening the repository

conda create -n sensor python=3.7.6 -y
conda activate sensor

Step 3 - Install the requirements

pip install -r requirements.txt

Step 4 - Export the environment variable

export AWS_ACCESS_KEY_ID=<AWS_ACCESS_KEY_ID>

export AWS_SECRET_ACCESS_KEY=<AWS_SECRET_ACCESS_KEY>

export AWS_DEFAULT_REGION=<AWS_DEFAULT_REGION>

export MONGODB_URL="mongodb+srv://<username>:<password>@ineuron-ai-projects.7eh1w4s.mongodb.net/?retryWrites=true&w=majority"

Step 5 - Run the application server

python app.py

Step 6. Train application

http://localhost:8080/train

Step 7. Prediction application

http://localhost:8080/predict

Run locally

  1. Check if the Dockerfile is available in the project directory

  2. Build the Docker image

docker build --build-arg AWS_ACCESS_KEY_ID=<AWS_ACCESS_KEY_ID> --build-arg AWS_SECRET_ACCESS_KEY=<AWS_SECRET_ACCESS_KEY> --build-arg AWS_DEFAULT_REGION=<AWS_DEFAULT_REGION> --build-arg MONGODB_URL=<MONGODB_URL> . 

  1. Run the Docker image
docker run -d -p 8080:8080 <IMAGE_NAME>

To run the project first execute the below commmand. MONGO DB URL:

mongodb+srv://mihir:XglZZ9OkjjUw74pZ@ineuron-ai-projects.7eh1w4s.mongodb.net/admin?authSource=admin&replicaSet=atlas-okvkrd-shard-0&w=majority&readPreference=primary&appname=MongoDB%20Compass&retryWrites=true&ssl=true

windows user

MONGO_DB_URL=mongodb+srv://mihir:XglZZ9OkjjUw74pZ@ineuron-ai-projects.7eh1w4s.mongodb.net/admin?authSource=admin&replicaSet=atlas-okvkrd-shard-0&w=majority&readPreference=primary&appname=MongoDB%20Compass&retryWrites=true&ssl=true

Linux user

export MONGO_DB_URL=mongodb+srv://mihir:XglZZ9OkjjUw74pZ@ineuron-ai-projects.7eh1w4s.mongodb.net/admin?authSource=admin&replicaSet=atlas-okvkrd-shard-0&w=majority&readPreference=primary&appname=MongoDB%20Compass&retryWrites=true&ssl=true

then run

python main.py

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This repository focuses on improving the efficiency and sustainability of heavy-duty vehicles by accurately predicting failures in the Air Pressure System (APS) and reducing the cost of unnecessary repairs.

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