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Demand identification model of potential technology based on SAO structure semantic analysis: The case of new energy and energy saving fields

机译:基于SAO结构语义分析的潜在技术需求识别模型:以新能源和节能领域为例

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摘要

This study proposes an identification model based on subject-action-object (SAO) structure semantic analysis for the potential hotspots of technology demand to address the shortcomings of technology demand mining on the basis of word frequency statistical analysis. The SAO structure is extracted using Python tools to identify the potential hotspots of technology demand, the domain dictionary and professional corpus are introduced, and the clustering of technology demand is realized by applying Word2Vec and HowNet to calculate the semantic similarity among the SAO structures. The layout of the technology demand in the different stages of the technical lifecycle is divided by constructing a technology map. The proposed model is validated as an example of the network technology demand text of the new energy and energy saving fields. Therefore, the hotspots of technology demand are the technology of new energy vehicle motor and its control system, technology of energy efficient and technology of wind power, and the new energy vehicle technology is still in the research and development (R&D) stage. Moreover, solar energy products and production equipment are still in the technical application stage. This study provides an effective method for identifying potential technology demand and based on technology lifecycle to implement the layout and visualization of demand, which will make the decision support for guiding the direction of technology R&D, optimizing the allocation of science and technology resources, and promoting the effective docking of technology supply and demand.
机译:为解决技术需求的潜在热点,本文提出了一种基于主观行动(SAO)结构语义分析的识别模型,以解决基于词频统计分析的技术需求挖掘的不足。使用Python工具提取SAO结构以识别潜在的技术需求热点,介绍领域字典和专业语料库,并通过使用Word2Vec和HowNet计算SAO结构之间的语义相似性来实现技术需求的聚类。通过构建技术图来划分技术生命周期不同阶段中的技术需求布局。以新能源和节能领域的网络技术需求文本为例,对提出的模型进行了验证。因此,技术需求的热点是新能源汽车电动机及其控制系统技术,节能技术和风力发电技术,而新能源汽车技术仍处于研发阶段。而且,太阳能产品和生产设备仍处于技术应用阶段。该研究为识别潜在技术需求提供了一种有效的方法,并基于技术生命周期来实现需求的布局和可视化,这将为指导技术研发方向,优化科学技术资源配置和促进发展提供决策支持。技术供需的有效对接。

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