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Unmanned Aerial Vehicles Traffic Management Solution Using Crowd-sensing and Blockchain
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Unmanned aerial vehicles (UAVs) are gaining immense attention due to
their potential to revolutionize various businesses and industries.
However, the adoption of UAV-assisted applications will strongly rely on
the provision of reliable systems that allow managing UAV operations at
high levels of safety and security. Recently, the concept of UAV traffic
management (UTM) has been introduced to support safe, efficient, and
fair access to low-altitude airspace for commercial UAVs. A UTM system
identifies multiple cooperating parties with different roles and levels
of authority to provide real-time services to airspace users. However,
current UTM systems are centralized and lack a clear definition of
protocols that govern a secure interaction between authorities, service
providers, and end-users. The lack of such protocols renders the UTM
system unscalable and prone to various cyber attacks. Another limitation
of the currently proposed UTM architecture is the absence of an
efficient mechanism to enforce airspace rules and regulations. To
address this issue, we propose a decentralized UTM protocol that
controls access to airspace while ensuring high levels of integrity,
availability, and confidentiality of airspace operations. To achieve
this, we exploit key features of the blockchain and smart contract
technologies. In addition, we employ a mobile crowdsensing (MCS)
mechanism to seamlessly enforce airspace rules and regulations that
govern the UAV operations. The solution is implemented on top of the
Etheruem platform and verified using four different smart contract
verification tools. We also provided a security and cost analysis of our
solution. For reproducibility, we made our implementation publicly
available on Github
Title: Unmanned Aerial Vehicles Traffic Management Solution Using Crowd-sensing and Blockchain
Description:
Unmanned aerial vehicles (UAVs) are gaining immense attention due to
their potential to revolutionize various businesses and industries.
However, the adoption of UAV-assisted applications will strongly rely on
the provision of reliable systems that allow managing UAV operations at
high levels of safety and security.
Recently, the concept of UAV traffic
management (UTM) has been introduced to support safe, efficient, and
fair access to low-altitude airspace for commercial UAVs.
A UTM system
identifies multiple cooperating parties with different roles and levels
of authority to provide real-time services to airspace users.
However,
current UTM systems are centralized and lack a clear definition of
protocols that govern a secure interaction between authorities, service
providers, and end-users.
The lack of such protocols renders the UTM
system unscalable and prone to various cyber attacks.
Another limitation
of the currently proposed UTM architecture is the absence of an
efficient mechanism to enforce airspace rules and regulations.
To
address this issue, we propose a decentralized UTM protocol that
controls access to airspace while ensuring high levels of integrity,
availability, and confidentiality of airspace operations.
To achieve
this, we exploit key features of the blockchain and smart contract
technologies.
In addition, we employ a mobile crowdsensing (MCS)
mechanism to seamlessly enforce airspace rules and regulations that
govern the UAV operations.
The solution is implemented on top of the
Etheruem platform and verified using four different smart contract
verification tools.
We also provided a security and cost analysis of our
solution.
For reproducibility, we made our implementation publicly
available on Github.
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