Published on: April 14, 2025
BATECHOMON
BATECHOMON
NEWS – BatEchoMon: India’s First Automated Bat Monitoring System
HIGHLIGHTS
Overview
- Name: BatEchoMon (Bat Echolocation Monitoring)
- Purpose: Automated real-time detection and analysis of bat echolocation calls.
- Developed by:
- Kadambari Deshpande (Postdoctoral Fellow, IIHS)
- Vedant Barje (WildTech Project Lead, Wildlife Conservation Trust)
- Under the guidance of Jagdish Krishnaswamy at IIHS, Bengaluru
Why BatEchoMon Was Needed
Challenges in Traditional Bat Monitoring
- Manual scanning of hours-long recordings.
- Time-consuming data analysis:
- 30 GB of data generated per night (11 hours of recording).
- Took 11 months to process data from just 20 nights.
Deshpande’s Experience
- Recorded bat calls in the Western Ghats for PhD research.
- Desired a system to automate data collection and analysis.
Technology Behind BatEchoMon
Core Components
- Ultrasonic Detector: Audiomoth (configured as a microphone).
- Processing Unit: Raspberry Pi microprocessor.
- Algorithm: Convolutional Neural Network (CNN) for species identification.
- Output:
- Spectrograms of bat calls.
- Audio recordings of identified calls.
- Statistical analysis of bat activity by species and time.
Design Features
- Automatic Activation: Begins at sunset.
- Real-Time Processing: Detects, isolates, and analyses bat calls instantly.
- Enclosure Size: 200 mm × 80 mm × 80 mm.
- Power System:
- Solar panel with battery backup.
- Operates up to 8 days without sunlight.
- Data Transfer: WiFi-enabled.
- Modular Design: Customisable based on location needs.
Impact on Bat Research
Scientific and Ecological Significance
- Automates a previously manual process.
- Enables researchers to focus on ecological questions, not just data processing.
- Can be deployed across different regions to expand bat studies in India.
Development Journey
Inspiration and Collaboration
- Deshpande’s long-standing wish to build a localised monitoring tool.
- Collaboration sparked after meeting Barje.
- Iterated through multiple designs and components.
Cost and Accessibility
- Costs about a third of other advanced bat detectors.
- Designed to be affordable and scalable.
Challenges Ahead
Limitations in Bat Call Databases
- Currently identifies only 6–7 common Indian bat species.
- Need for robust, diverse reference datasets.
Future Goals
- Broaden species recognition across urban and forested landscapes.
- Extend beta testing to external users.
- Improve accuracy through national collaborations.
Looking Ahead
Improving Indian Bat Research
- Field still developing in India.
- Limited Indian submissions in global bat-call databases (ChiroVox, Xeno-Canto).
- Initiatives like the State of India’s Bats workshop are fostering collaboration.