斯科普斯
计算机科学
数据科学
系统回顾
科学网
慢度
领域(数学分析)
科学计量学
管理科学
梅德林
工程类
政治学
万维网
数学
物理
法学
数学分析
量子力学
作者
Zaharaddeen Karami Lawal,Hayati Yassin,Daphne Teck Ching Lai,Azam Che Idris
摘要
This research aims to study and assess state-of-the-art physics-informed neural networks (PINNs) from different researchers’ perspectives. The PRISMA framework was used for a systematic literature review, and 120 research articles from the computational sciences and engineering domain were specifically classified through a well-defined keyword search in Scopus and Web of Science databases. Through bibliometric analyses, we have identified journal sources with the most publications, authors with high citations, and countries with many publications on PINNs. Some newly improved techniques developed to enhance PINN performance and reduce high training costs and slowness, among other limitations, have been highlighted. Different approaches have been introduced to overcome the limitations of PINNs. In this review, we categorized the newly proposed PINN methods into Extended PINNs, Hybrid PINNs, and Minimized Loss techniques. Various potential future research directions are outlined based on the limitations of the proposed solutions.
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