Inspiration

Environmental pollution, climate change, and inefficient resource usage are increasing risks to human health, agriculture, and industries. Most existing systems only monitor data without taking action. This inspired us to build an AI-powered system that not only monitors environmental conditions in real time but also automatically responds to improve safety, sustainability, and quality of life.

What it does

Untitled is an AI-powered IoT environmental monitoring and smart automation system. It uses ESP32-based multi-sensor devices to monitor air quality, temperature, humidity, noise, and soil moisture in real time. The data is visualized through a web dashboard with health scores, alerts, and predictions. Based on intelligent logic, the system automatically controls devices such as fans and irrigation systems.

How we built it

We built the system using ESP32 microcontrollers connected to environmental sensors. The firmware was developed in C/C++ to collect sensor data and send it to the cloud via Wi-Fi. Firebase was used for real-time data storage and synchronization. A web dashboard was fully developed to display live data, alerts, and analytics, while AI logic handles prediction and automation decisions.

Challenges we ran into

Integrating multiple sensors and ensuring reliable real-time data transmission was challenging. Synchronizing hardware data with cloud services and automation logic required careful optimization. Implementing AI-based predictions within limited time and hardware constraints was also a key challenge.

Accomplishments that we're proud of

We successfully built a working end-to-end prototype that monitors multiple environmental parameters and performs automatic smart actions. The system is scalable, affordable, and suitable for real-world use cases such as homes, agriculture, industries, and smart cities.

What we learned

This project helped us gain hands-on experience in IoT hardware integration, cloud connectivity, AI-driven automation, and full-stack web development. We learned how real-time data, AI, and automation can work together to solve real-world environmental problems.

What's next for Untitled

In the future, we plan to enhance the system with more advanced AI models, improved prediction accuracy, and support for additional sensors and devices. We aim to scale the platform for larger deployments in smart cities, industrial monitoring, and precision agriculture, focusing on reliability, security, and energy efficiency.

Built With

  • ai/ml
  • analysis
  • apis
  • arduino
  • automation
  • backend
  • basic
  • charting
  • cloud
  • code
  • communication
  • connectivity)
  • core
  • css
  • dashboard
  • dashboard)
  • data
  • database
  • deployment)
  • esp32
  • firebase
  • for
  • frameworks
  • google
  • hardware-&-iot-esp32-microcontroller-environmental-sensors-(air-quality
  • hosting
  • http
  • humidity
  • ide
  • javascript
  • libraries
  • live
  • logic
  • models
  • noise
  • pattern
  • platforms
  • prediction
  • protocols
  • real-time
  • realtime
  • rest
  • rule-based
  • soil-moisture)-programming-languages-c-/-c++-(esp32-firmware-using-arduino-framework)-html
  • studio
  • sync)
  • temperature
  • tools
  • transmission
  • visual
  • visualization
  • wi-fi
Share this project:

Updates