Scalable Privacy-preserving Geo-distance Evaluation for Precision Agriculture IoT Systems

Author:

Yan Qiben1,Lou Jianzhi1,Vuran Mehmet C.2,Irmak Suat3

Affiliation:

1. Michigan State University, United States

2. University of Nebraska-Lincoln, United States

3. Pennsylvania State University, United States

Abstract

Precision agriculture has become a promising paradigm to transform modern agriculture. The recent revolution in big data and Internet-of-Things (IoT) provides unprecedented benefits including optimizing yield, minimizing environmental impact, and reducing cost. However, the mass collection of farm data in IoT applications raises serious concerns about potential privacy leakage that may harm the farmers’ welfare. In this work, we propose a novel scalable and private geo-distance evaluation system, called SPRIDE, to allow application servers to provide geographic-based services by computing the distances among sensors and farms privately. The servers determine the distances without learning any additional information about their locations. The key idea of SPRIDE is to perform efficient distance measurement and distance comparison on encrypted locations over a sphere by leveraging a homomorphic cryptosystem. To serve a large user base, we further propose SPRIDE+ with novel and practical performance enhancements based on pre-computation of cryptographic elements. Through extensive experiments using real-world datasets, we show SPRIDE+ achieves private distance evaluation on a large network of farms, attaining 3+ times runtime performance improvement over existing techniques. We further show SPRIDE+ can run on resource-constrained mobile devices, which offers a practical solution for privacy-preserving precision agriculture IoT applications.

Funder

National Science Foundation

Publisher

Association for Computing Machinery (ACM)

Subject

Computer Networks and Communications

Reference59 articles.

1. Aida Boghossian Scott Linsky Alicia Brown Peter Mutschler Brian Ulicny Larry Barrett Glenn Bethel Michael Matson Thomas Strang Kellyn Ramsdell and Susan Koehler. 2018. Threats to precision agriculture (2018 public private analytic exchange program report). Department of Homeland Security. DOI:https://doi.org/10.13140/RG.2.2.20693.37600 Aida Boghossian Scott Linsky Alicia Brown Peter Mutschler Brian Ulicny Larry Barrett Glenn Bethel Michael Matson Thomas Strang Kellyn Ramsdell and Susan Koehler. 2018. Threats to precision agriculture (2018 public private analytic exchange program report). Department of Homeland Security. DOI:https://doi.org/10.13140/RG.2.2.20693.37600

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