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  • Silencio Network Introduction
    • The Problem
    • Our Mission
    • How We Capture Value
    • How We Deliver Value
      • Venue Noise Levels
      • Street Noise Levels
      • Noise Complaints
      • In-App Monetization
    • Our Honest Data Approach
    • How To Get Started
  • Technical Overview
    • Why Blockchain? Why peaq?
    • Architecture Overview
    • Self-Custodial Wallet
    • Measurement Processor
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      • Anomaly Detection Engine
      • Fraud Detection Consequences
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    • Token Distribution
    • Utility of the $SLC Token
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      • Gamification Features
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    • Staking
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  • Core Contributors
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    • Introducing our Power User, Sam!
  • Disclaimer
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  1. Technical Overview

Architecture Overview

How Silencioʼs Technology Allows Users to Measure Noise Levels and Earn Rewards

PreviousWhy Blockchain? Why peaq?NextSelf-Custodial Wallet

Last updated 6 months ago

Powered by web3, the sensors provide consent-based access to the microphone and location, actively capturing noise levels in dB(A) (through open street recordings and venue check-ins). The noise data collected are aggregated into H3 hexagons and visualized as part of the . Ultimately, these noise datasets serve multiple purposes, including training machine learning and AI models and providing an API for accessing average noise levels at different locations.

World Noise Explorer