toplogo
سجل دخولك

Toward Parallel Intelligence: Interdisciplinary Solutions for Complex Systems


المفاهيم الأساسية
The parallel systems method offers interdisciplinary solutions for complex systems through the ACP approach, aiming to achieve parallel intelligence.
الملخص
This content explores the origins and concepts of the parallel systems method, highlighting its objectives and technical foundation. It delves into advanced parallel technologies and applications across various fields, showcasing its interdisciplinary accomplishments. Despite facing challenges, the future of this method looks promising in contributing to sustainable development and fostering interdisciplinary communication and cooperation. PUBLIC SUMMARY Interdisciplinary research drives the development of parallel systems. The ACP approach is foundational for addressing complex system challenges. Parallel intelligence aims to enhance understanding of complex systems. Various parallel technologies have been developed as major accomplishments. ABSTRACT Real-world complexity necessitates interdisciplinary solutions. The parallel systems method rooted in ACP cultivates a cycle termed parallel intelligence. This review explores the origins, concepts, and applications of the method across diverse fields. INTRODUCTION Real-world complex systems pose challenges in modeling, analysis, management, and control. Interdisciplinary research is essential to address increasing complexity. The ACP approach was proposed in 2004 as a solution for studying complex systems. PARADIGM SHIFT FOR UNDERSTANDING COMPLEX SYSTEMS Socialization of engineering systems integrates human factors for sustainability. Engineering social systems leverage IoT technology for data-driven decision-making. Computational science intersects with social science to address social and engineering complexities. CHALLENGES AND PERSPECTIVES Challenges: Internal challenges include modeling complexities in artificial systems. External challenges arise from rapid advancements in AI technologies. Ethical and legal challenges encompass liability disputes and privacy concerns. Perspectives: The method can promote sustainable development by improving system efficiency. It facilitates interdisciplinary communication by serving as a consensus among diverse disciplines.
الإحصائيات
None
اقتباسات
"Stephen Hawking's prediction that the 21st century would be a 'century of complexity' has been substantiated over the last two decades." "The cross-domain interactions enable the integration of cyber, physical, and social spaces in complex systems."

الرؤى الأساسية المستخلصة من

by Yong Zhao,Zh... في arxiv.org 03-26-2024

https://arxiv.org/pdf/2311.12838.pdf
Toward parallel intelligence

استفسارات أعمق

How can emerging AI technologies enhance problem-solving capabilities within the parallel systems method?

Emerging AI technologies have the potential to significantly enhance problem-solving capabilities within the parallel systems method. Here are some ways in which this enhancement can occur: Advanced Data Analysis: AI algorithms, such as machine learning and deep learning models, can analyze vast amounts of data generated by artificial and actual systems in parallel. This analysis can uncover patterns, correlations, and insights that may not be apparent through traditional methods. Improved Predictive Modeling: AI techniques like predictive analytics can help forecast future behaviors of complex systems based on historical data from computational experiments conducted in parallel. These predictions enable better decision-making for managing and controlling these systems effectively. Optimized Control Strategies: By integrating reinforcement learning algorithms into the control mechanisms of artificial systems, AI technologies can optimize control strategies to steer actual systems towards desired outcomes more efficiently. This adaptive approach ensures real-time adjustments based on changing conditions. Enhanced Human-Machine Collaboration: AI-driven solutions facilitate seamless collaboration between humans, machines, and algorithms within complex systems. Through natural language processing and computer vision capabilities, human operators can interact with artificial intelligence components more intuitively for improved system management. Real-Time Decision Support: With advancements in edge computing and IoT integration, AI technologies enable real-time decision support for monitoring and controlling complex systems at a granular level. This capability enhances responsiveness to dynamic changes in the environment or system behavior. In essence, leveraging emerging AI technologies within the parallel systems method empowers researchers to extract deeper insights from data, make more accurate predictions about system behaviors, optimize control strategies dynamically, foster effective human-machine collaboration, and provide timely decision support for sustainable development across various domains.

How might advancements in digital twins impact the evolution of the parallel systems method?

Advancements in digital twins have significant implications for shaping the evolution of the parallel...

What ethical considerations should be prioritized when implementing AI-driven solutions like those in parallel healthcare?

When implementing AI-driven solutions like those found...
0
visual_icon
generate_icon
translate_icon
scholar_search_icon
star