计算机科学 ›› 2020, Vol. 47 ›› Issue (11A): 1-5.doi: 10.11896/jsjkx.200100053
王海涛1, 宋丽华2, 向婷婷1, 刘力军1
WANG Hai-tao1, SONG Li-hua2, XIANG Ting-ting1, LIU Li-jun1
摘要: 随着人工智能的快速发展和广泛应用,信息学、社会学、物理学和哲学等多个学科快速交叉融合,孕育了一个崭新而富有活力的研究领域——人机物智能(Human Cyber Physical Intelligence,HCPI)。人机物智能亦称三元融合智能(Ternary Fusion Intelligence),反映了物理空间、信息空间和社会空间的有机融合,是人工智能未来发展的重要方向和前沿课题之一。针对这一人工智能学科新兴的研究热点,从人机物三元融合智能的起源谈起,综述了三元融合智能的基本概念、相关研究内容和发展应用概况。首先,介绍了三元融合智能的产生背景及定义内涵;然后,说明了三元融合智能的交互关系和典型特征;进而,阐述了三元融合智能的关系模型和系统模型。在此基础上,探讨了三元融合智能近期的实现目标和技术途径。最后,较为全面地总结归纳了三元融合智能的研究现状和几类典型应用场景,并展望了其未来发展趋势。
中图分类号:
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