Towards Leveraging Underutilized IoT Resources for Automotive Software: A Study on Resource Sharing for Connected Vehicles
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Date
2025
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Abstract
Background: Internet of Things (IoT) has found its way to day-to-day lives
of people, making their lives convenient and connected. As a result of growing
IoT usage, we are surrounded by potentially underutilized computing resources
suggesting an opportunity to improve their utilization by sharing them with
entities that may require from time to time more resources for complex com putations. However, the resource allocation and resource utilization process
is a rather complex task that involves heterogeneous and distributed entities.
This concept can be particularly relevant in highly dynamic and safety-critical
domains such as transportation and automotive systems, where edge devices
such as vehicles operate in a resource-constrained environment.
Objective: This research focuses on to what extent underutilized resources in
a highly dynamic heterogeneous environment can be utilized more efficiently.
This thesis explores resource sharing in edge devices within close vicinity on
the example of connected vehicles. We propose and evaluate this concept on a
practical application scenario from the automotive domain, where one vehicle
would benefit of being able to “look around the corner”.
Method: A systematic mapping study was conducted to identify the key
research areas and limitations of the automotive domain focusing Vehicular
ad-hoc Networks (VANETs). Based on the results of the literature review,
an explanatory study was conducted to present the proposed resource uti lization framework exploring the novel research areas identified. A series of
experimental-based evaluation studies following design science was conducted
to explore the applicability of state-of-the-art large language models (LLMs)
as dialogue interfaces within the proposed resource utilization framework. This
line of studies includes identifying and mitigating the potential challenges of
using LLMs as a tool to support resource utilization.
Findings: The results of the study revealed that resource utilization can be
achieved through sharing underutilized computing resources of nearby IoT enabled entities. Within the context of the selected practical application
scenario, our experiments showed that LLMs can support pedestrian detection
and localization. LLMs can initiate a dialogue between connected vehicles and
process relevant multimodal data to contribute to improved decision-making in
autonomous driving (AD). Further experiments evaluated novel techniques to
assess the trustworthiness of such LLM-assisted systems.
Conclusion: The introduction of state-of-the-art artificial intelligence (AI)
tools such as LLMs has the potential to positively impact advanced driver assis tant systems (ADAS), establishing a new research dimension to the automotive
context. This novel approach aims to enhance the adaptability and efficiency
of the proposed framework for safety critical systems, demonstrated with an
industrially relevant practical application scenario.
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Keywords
Internet of Things, Resource Utilization, Automotive, Large Language Models, Trustworthiness, Hallucination Detection and Mitigation