智能制造在“数字+算法”驱动下成为未来制造发展的新范式,是国内外学者关注的焦点,并取得了丰富的理论成果和应用经验。本文利用文献计量分析方式,在回顾国内外核心期刊关于数字、算法、智能制造等相关文献的基础上,从技术、组织、公共环境政策三个层面总结了“数字+算法”驱动智能制造发展的影响因素;围绕智能制造产业链上中下游三个方面总结“数字+算法”驱动智能制造发展的影响机制;从新产品的引入、新工艺的开发、新市场的开拓、新资源的利用,以及新组织的创建这五种创新组合出发,总结“数字+算法”推动智能制造发展所产生的结果,从而构建起整个研究述评的框架。最后,总结已有文献研究不足,从不同角度提出了“数字+算法”推动智能制造的未来研究方向,以期为研究智能制造转型发展提供启示。
“数字+算法”融合驱动的智能制造研究述评与展望
摘要
参考文献
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引用本文
刘香港, 史占中. “数字+算法”融合驱动的智能制造研究述评与展望[J]. 外国经济与管理, 2026, 48(5): 38-55.
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