Loading [MathJax]/extensions/MathMenu.js
Digitally Enhanced Home to the Village: AIoMT-Enabled Multisource Data Fusion and Power-Efficient Sustainable Computing | IEEE Journals & Magazine | IEEE Xplore

Digitally Enhanced Home to the Village: AIoMT-Enabled Multisource Data Fusion and Power-Efficient Sustainable Computing


Abstract:

Artificial Intelligence of Medical Things (AIoMT) requires storing, preprocessing, monitoring, and analytics of large-scale sensor data fusion in the cloud. However, migr...Show More

Abstract:

Artificial Intelligence of Medical Things (AIoMT) requires storing, preprocessing, monitoring, and analytics of large-scale sensor data fusion in the cloud. However, migrating to the cloud possesses intrinsic issues of cost, performance constraints, and sustainable computing. This research explores the potential of AIoMT in crafting intelligent models for daily activity patterns and predicting unusual occurrences. It delves into power-efficient and sustainable computing tailored for the IoT sensors, methods, and systems geared toward crafting digitally enhanced smart homes for the elderly. Fusion data is collected from heterogenous sensors to track daily patterns and processed for anomaly detection and alert generation. The AIoMT model has employed the time and energy minimization scheduler (TEMS) algorithm, which considers energy consumption, processing duration, data transmission expenses, and standby device power consumption. This enables local computing in the IoMT systems, mobile edge servers, and cloud controllers, promoting sustainability in healthcare. To optimize execution time and cost-effectiveness, task scheduling options include local Internet of Things devices, cloud infrastructure, and multiaccess edge computing (MEC). This approach could benefit digitally enhanced communities significantly, promoting low-carbon, power-efficient, sustainable computing (LCPESC). The LCPESC AIoMT approach demonstrates precision close to a 95% confidence level. Further, the proposed model is extended beyond individual households to encompass digitally augmented communities.
Published in: IEEE Internet of Things Journal ( Volume: 11, Issue: 24, 15 December 2024)
Page(s): 39030 - 39040
Date of Publication: 10 June 2024

ISSN Information:


I. Introduction

Looking ahead, two major global issues come to light, both closely related to providing the solution for a sustainable lifestyle. The first issue is the consumption of excessive resources, which is made worse by the rising needs of an expanding populace. The second issue is the rapid growth of the aging population across the globe, which poses serious challenges to social institutions and resource-scarce healthcare ecosystems.

Contact IEEE to Subscribe

References

References is not available for this document.