Smart City Gnosys

Smart city article details

Title Evolutionary Cost Analysis And Computational Intelligence For Energy Efficiency In Internet Of Things-Enabled Smart Cities: Multi-Sensor Data Fusion And Resilience To Link And Device Failures
ID_Doc 25051
Authors Darabkh K.A.; Al-Akhras M.
Year 2025
Published Smart Cities, 8, 2
DOI http://dx.doi.org/10.3390/smartcities8020064
Abstract Highlights: What are the main findings? Proposed a novel energy-efficient IoT protocol that leverages advanced data fusion grouping, designed to minimize redundant data transmissions and optimize network efficiency. Introduced a data fusion sensor head that is selected via a novel MPA fitness function, which is parameterized by key factors such as energy consumption, building occlusions, rotation frequency, proximity to IoT sensors within the data fusion group, and distance to the sink node, while the primary data fusion sensor relay incorporates an innovative relay cost function for enhanced performance. What is the implication of the main finding? Demonstrated superior performance across critical metrics, including network lifespan, energy consumption, throughput, and average delay, surpassing recent approaches in the field. Ensured resilience to link and device failures, making the protocol highly suitable for both smart cities and large-scale IoT applications. This work presents an innovative, energy-efficient IoT routing protocol that combines advanced data fusion grouping and routing strategies to effectively tackle the challenges of data management in smart cities. Our protocol employs hierarchical Data Fusion Head (DFH), relay DFHs, and marine predators algorithm, the latter of which is a reliable metaheuristic algorithm which incorporates a fitness function that optimizes parameters such as how closely the Sensor Nodes (SNs) of a data fusion group (DFG) are gathered together, the distance to the sink node, proximity to SNs within the data fusion group, the remaining energy (RE), the Average Scale of Building Occlusions (ASBO), and Primary DFH (PDFH) rotation frequency. A key innovation in our approach is the introduction of data fusion techniques to minimize redundant data transmissions and enhance data quality within DFG. By consolidating data from multiple SNs using fusion algorithms, our protocol reduces the volume of transmitted information, leading to significant energy savings. Our protocol supports both direct routing, where fused data flow straight to the sink node, and multi-hop routing, where a PDF relay is chosen based on an influential relay cost function that considers parameters such as RE, distance to the sink node, and ASBO. Given that the proposed protocol incorporates efficient failure recovery strategies, data redundancy management, and data fusion techniques, it enhances overall system resilience, thereby ensuring high protocol performance even in unforeseen circumstances. Thorough simulations and comparative analysis reveal the protocol’s superior performance across key performance metrics, namely, network lifespan, energy consumption, throughput, and average delay. When compared to the most recent and relevant protocols, including the Particle Swarm Optimization-based energy-efficient clustering protocol (PSO-EEC), linearly decreasing inertia weight PSO (LDIWPSO), Optimized Fuzzy Clustering Algorithm (OFCA), and Novel PSO-based Protocol (NPSOP), our approach achieves very promising results. Specifically, our protocol extends network lifespan by 299% over PSO-EEC, 264% over LDIWPSO, 306% over OFCA, and 249% over NPSOP. It also reduces energy consumption by 254% relative to PSO-EEC, 264% compared to LDIWPSO, 247% against OFCA, and 253% over NPSOP. The throughput improvements reach 67% over PSO-EEC, 59% over LDIWPSO, 53% over OFCA, and 50% over NPSOP. By fusing data and optimizing routing strategies, our protocol sets a new benchmark for energy-efficient IoT DFG, offering a robust solution for diverse IoT deployments. © 2025 by the authors.
Author Keywords data fusion; efficient energy; IoT; MPA; network impairments; network lifetime; optimization algorithm; routing; scheduling


Similar Articles


Id Similarity Authors Title Published
4324 View0.911Pourghebleh B.; Hekmati N.; Davoudnia Z.; Sadeghi M.A Roadmap Towards Energy-Efficient Data Fusion Methods In The Internet Of ThingsConcurrency and Computation: Practice and Experience, 34, 15 (2022)
49667 View0.895Darabkh K.A.; Al-Akhras M.Smart Cities Optimization Using Computational Intelligence In Power-Constrained Iot Sensor NetworksSwarm and Evolutionary Computation, 94 (2025)
8370 View0.887Darabkh K.A.; Amareen A.B.; Al-Akhras M.; Kassab W.K.An Innovative Cluster-Based Power-Aware Protocol For Internet Of Things Sensors Utilizing Mobile Sink And Particle Swarm OptimizationNeural Computing and Applications, 35, 26 (2023)
58247 View0.884Darabkh K.A.; Al-Akhras M.Towards Optimized Iot Sensor Networks For Smart Cities: Centrality-Aware Position-Based Occlusion-Driven And Role Dynamics Solutions For Clustering And RoutingIEEE Internet of Things Journal (2025)
23257 View0.883Desai R.A.; Kulkarni R.B.Energy Efficient Reliable Data Transmission For Optimizing Iot Data Transmission In Smart CityIndonesian Journal of Electrical Engineering and Computer Science, 34, 3 (2024)
3917 View0.883Karunkuzhali D.; Meenakshi B.; Lingam K.A Qos-Aware Routing Approach For Internet Of Things-Enabled Wireless Sensor Networks In Smart CitiesMultimedia Tools and Applications, 84, 17 (2025)
5243 View0.881Cengiz B.; Adam I.Y.; Ozdem M.; Das R.A Survey On Data Fusion Approaches In Iot-Based Smart Cities: Smart Applications, Taxonomies, Challenges, And Future Research DirectionsInformation Fusion, 121 (2025)
8741 View0.88Fawzy D.; Moussa S.M.; Badr N.L.An Iot-Based Resource Utilization Framework Using Data Fusion For Smart EnvironmentsInternet of Things (Netherlands), 21 (2023)
3423 View0.88Darabkh K.A.; Al-Akhras M.A Novel Load-Driven Location-And Power-Aware Eo-Based Iot-Wsn Clustering And Routing Protocol For Sustainable Smart CitiesIEEE Internet of Things Journal (2025)
46582 View0.876Sudhagar D.; Saturi S.; Choudhary M.; Senthilkumaran P.; Howard E.; Yalawar M.S.; Vidhya R.G.Revolutionizing Data Transmission Efficiency In Iot-Enabled Smart Cities: A Novel Optimization-Centric ApproachInternational Research Journal of Multidisciplinary Scope, 5, 4 (2024)