AI-Enhanced CAE Simulations: A Revolutionary Approach to Automotive Design and Engineering

汽车工业 制造工程 计算机科学 工程类 机械工程 航空航天工程
作者
Amol N. Patil,Pravinkumar Sonavane
出处
期刊:SAE technical paper series 卷期号:1 被引量:1
标识
DOI:10.4271/2025-01-8241
摘要

<div class="section abstract"><div class="htmlview paragraph">In the automotive industry, the durability and thermal analysis of components significantly impact vehicle component robustness and customer satisfaction. Traditional computer-aided engineering (CAE) methods, while effective, often involve extensive design iterations and troubleshooting, leading to prolonged development times and increased costs. The integration of artificial intelligence (AI) and machine learning (ML) into the CAE process presents a transformative solution to these challenges. By leveraging AI and ML, the durability simulation time of automobile components is significantly enhanced.</div><div class="htmlview paragraph">Altair’s Physics AI tool utilizes historical CAE data to train ML models, enabling accurate predictions of model performance in terms of durability and stiffness. This reduces the necessity for multiple simulations, thereby decreasing CAE model design and solution completion times by 30%. By predicting potential issues early in the design phase, AI and ML allow engineers to make informed decisions, optimizing the design process and reducing the likelihood of costly revisions later.</div><div class="htmlview paragraph">Case studies highlight the efficacy of AI-enhanced CAE simulations in streamlining the development process, improving predictive accuracy, and delivering superior results more rapidly. These studies demonstrate that AI and ML can identify patterns and correlations within vast datasets that might overlook by traditional methods, leading to more robust and reliable automotive components.</div><div class="htmlview paragraph">This study indicates that incorporating AI and ML into CAE processes is a promising approach to advancing automotive design and engineering, particularly in enhancing the robustness of automotive components. The ability to predict and mitigate potential failures before they occur not only improves the quality and reliability of vehicles but also significantly reduces development costs and time-to-market, benefiting both manufacturers and consumers.</div></div>
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