Guardado en:
Detalles Bibliográficos
Autores principales: Ruíz-Guirola, David E., López, Onel L. A., Montejo-Sánchez, Samuel, Mayorga, Israel Leyva, Han, Zhu, Popovski, Petar
Formato: Preprint
Publicado: 2024
Materias:
Acceso en línea:https://arxiv.org/abs/2405.06372
Etiquetas: Agregar Etiqueta
Sin Etiquetas, Sea el primero en etiquetar este registro!
_version_ 1866913345995538432
author Ruíz-Guirola, David E.
López, Onel L. A.
Montejo-Sánchez, Samuel
Mayorga, Israel Leyva
Han, Zhu
Popovski, Petar
author_facet Ruíz-Guirola, David E.
López, Onel L. A.
Montejo-Sánchez, Samuel
Mayorga, Israel Leyva
Han, Zhu
Popovski, Petar
contents This paper presents an approach for energy-neutral Internet of Things (IoT) scenarios where the IoT devices (IoTDs) rely entirely on their energy harvesting capabilities to sustain operation. We use a Markov chain to represent the operation and transmission states of the IoTDs, a modulated Poisson process to model their energy harvesting process, and a discrete-time Markov chain to model their battery state. The aim is to efficiently manage the duty cycling of the IoTDs, so as to prolong their battery life and reduce instances of low-energy availability. We propose a duty-cycling management based on K- nearest neighbors, aiming to strike a trade-off between energy efficiency and detection accuracy. This is done by incorporating spatial and temporal correlations among IoTDs' activity, as well as their energy harvesting capabilities. We also allow the base station to wake up specific IoTDs if more information about an event is needed upon initial detection. Our proposed scheme shows significant improvements in energy savings and performance, with up to 11 times lower misdetection probability and 50\% lower energy consumption for high-density scenarios compared to a random duty cycling benchmark.
format Preprint
id arxiv_https___arxiv_org_abs_2405_06372
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Intelligent Duty Cycling Management and Wake-up for Energy Harvesting IoT Networks with Correlated Activity
Ruíz-Guirola, David E.
López, Onel L. A.
Montejo-Sánchez, Samuel
Mayorga, Israel Leyva
Han, Zhu
Popovski, Petar
Systems and Control
Artificial Intelligence
This paper presents an approach for energy-neutral Internet of Things (IoT) scenarios where the IoT devices (IoTDs) rely entirely on their energy harvesting capabilities to sustain operation. We use a Markov chain to represent the operation and transmission states of the IoTDs, a modulated Poisson process to model their energy harvesting process, and a discrete-time Markov chain to model their battery state. The aim is to efficiently manage the duty cycling of the IoTDs, so as to prolong their battery life and reduce instances of low-energy availability. We propose a duty-cycling management based on K- nearest neighbors, aiming to strike a trade-off between energy efficiency and detection accuracy. This is done by incorporating spatial and temporal correlations among IoTDs' activity, as well as their energy harvesting capabilities. We also allow the base station to wake up specific IoTDs if more information about an event is needed upon initial detection. Our proposed scheme shows significant improvements in energy savings and performance, with up to 11 times lower misdetection probability and 50\% lower energy consumption for high-density scenarios compared to a random duty cycling benchmark.
title Intelligent Duty Cycling Management and Wake-up for Energy Harvesting IoT Networks with Correlated Activity
topic Systems and Control
Artificial Intelligence
url https://arxiv.org/abs/2405.06372