Zonal Architecture Development with evolution of Artificial Intelligence
- URL: http://arxiv.org/abs/2412.01840v1
- Date: Mon, 18 Nov 2024 03:15:44 GMT
- Title: Zonal Architecture Development with evolution of Artificial Intelligence
- Authors: Sneha Sudhir Shetiya, Vikas Vyas, Shreyas Renukuntla,
- Abstract summary: This paper explains how traditional centralized architectures are transitioning to distributed zonal approaches to address challenges in scalability, reliability, performance, and cost-effectiveness.
The role of edge computing and neural networks in enabling sophisticated sensor fusion and decision-making capabilities for autonomous vehicles is examined.
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- Abstract: This paper explains how traditional centralized architectures are transitioning to distributed zonal approaches to address challenges in scalability, reliability, performance, and cost-effectiveness. The role of edge computing and neural networks in enabling sophisticated sensor fusion and decision-making capabilities for autonomous vehicles is examined. Additionally, this paper discusses the impact of zonal architectures on vehicle diagnostics, power distribution, and smart power management systems. Key design considerations for implementing effective zonal architectures are presented, along with an overview of current challenges and future directions. The objective of this paper is to provide a comprehensive understanding of how zonal architectures are shaping the future of automotive technology, particularly in the context of self-driving vehicles and artificial intelligence integration.
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