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A Neural Network and IoT Based Scheme for Performance Assessment in Internet of Robotic Things

Cristanel Razafimandimby, Valéria Loscrì, Anna Maria Vegni

Year
2016
Citations
44

Abstract

Internet of Robotic Things (IoRT) is a new concept introduced for the first time by ABI Research. Unlike the Internet of Things (IoT), IoRT provides an active sensorization and is considered as the new evolution of IoT. This new concept will bring new opportunities and challenges, while providing new business ideas for IoT and robotics' entrepreneurs. In this paper, we will focus particularly on two issues: (i) connectivity maintenance among multiple IoRT robots, and (ii) their collective coverage. We will propose (i) IoRT-based, and (ii) a neural network control scheme to efficiently maintain the global connectivity among multiple mobile robots to a desired quality-ofservice (QoS) level. The proposed approaches will try to find a trade-off between collective coverage and communication quality. The IoT-based approach is based on the computation of the algebraic connectivity and the use of virtual force algorithm. The neural network controller, in turn, is completely distributed and mimics perfectly the IoT-based approach. Results show that our approaches are efficient, in terms of convergence, connectivity, and energy consumption.

Keywords

Computer scienceQuality of serviceScheme (mathematics)Convergence (economics)Artificial neural networkDistributed computingRoboticsRobotController (irrigation)Artificial intelligence

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