SDAFPS: Secure Data Aggregation using Fuzzy Judgement, Pattern Category and SHAP Contribution

Secure data aggregation intends to reduce redundant data transmission and malicious node interference in the network. Therefore, designing secure data aggregation protocol is a crucial task in WSNs. In this paper, we have proposed a Secure Data Aggregation using Fuzzy Judgement, Pattern Category and SHAP Contribution (SDAFPS) protocol. The SDAFPS protocol involves three main phases. In the first phase, the protocol controls the topology with the selection of efficient aggregator node in every interval. The second phase uses category pattern code generation and utilization concept to reduce data size and to aggregate data. Finally, in third phase, the aggregated data are encrypted using partial equation of SHAP contribution and decrypted with SHAP contribution equation. The decrypted data are verified with dataset preserved at the sink node. The SDAFPS protocol is implemented using NS2 Simulator tool and performance of proposed protocol is compared with existing protocol and validated 18% improvement in network lifetime, 10% minimized End-to-End Delay and 14% improvement on Packet Delivery Ratio over protocol.

[1]  Harish Sethu,et al.  Cooperative Topology Control with Adaptation for improved lifetime in wireless sensor networks , 2013, Ad Hoc Networks.

[2]  Djamel Djenouri,et al.  Survey on Latency Issues of Asynchronous MAC Protocols in Delay-Sensitive Wireless Sensor Networks , 2013, IEEE Communications Surveys & Tutorials.

[3]  V. K. R.,et al.  MIPSOE – Markov Integrated PSO Encryption Algorithm for Secure Data Aggregation , 2020 .

[4]  Li Xu,et al.  Minimization of delay and collision with cross cube spanning tree in wireless sensor networks , 2019, Wirel. Networks.

[5]  Manish M. Patel,et al.  Wormhole Attack Detection in Wireless Sensor Network , 2018, 2018 International Conference on Inventive Research in Computing Applications (ICIRCA).

[6]  Huei-Wen Ferng,et al.  Design of Novel Node Distribution Strategies in Corona-Based Wireless Sensor Networks , 2011, IEEE Transactions on Mobile Computing.

[7]  Mihai T. Lazarescu,et al.  Design of a WSN Platform for Long-Term Environmental Monitoring for IoT Applications , 2013, IEEE Journal on Emerging and Selected Topics in Circuits and Systems.

[8]  A. F. Murillo,et al.  Applications of WSN in health and agriculture , 2012, 2012 IEEE Colombian Communications Conference (COLCOM).

[9]  H. Cam,et al.  ESPDA: Energy-efficient and Secure Pattern-based Data Aggregation for wireless sensor networks , 2003, Proceedings of IEEE Sensors 2003 (IEEE Cat. No.03CH37498).

[10]  Lei Deng,et al.  Fuzzy Analytic Hierarchy Process-Based Balanced Topology Control of Wireless Sensor Networks for Machine Vibration Monitoring , 2020, IEEE Sensors Journal.

[11]  Raghupathy Sivakumar,et al.  A Receiver-Centric Transport Protocol for Mobile Hosts with Heterogeneous Wireless Interfaces , 2003, MobiCom '03.

[12]  Bo Hang,et al.  A Novel Data Fusion Strategy Based on Extreme Learning Machine Optimized by Bat Algorithm for Mobile Heterogeneous Wireless Sensor Networks , 2020, IEEE Access.

[13]  David E. Culler,et al.  SPINS: Security Protocols for Sensor Networks , 2001, MobiCom '01.

[14]  Dongyao Jia,et al.  Dynamic Cluster Head Selection Method for Wireless Sensor Network , 2016, IEEE Sensors Journal.

[15]  Chao Yang,et al.  Energy efficient clustering for WSN-based structural health monitoring , 2011, 2011 Proceedings IEEE INFOCOM.

[16]  Ahmad Nizar Harun,et al.  Applications of WSN in agricultural environment monitoring systems , 2016, 2016 International Conference on Information and Communication Technology Convergence (ICTC).