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知识图谱驱动下粮食生产大数据应用现状与展望

杨晨雪 李娴 周清波

智慧农业(中英文)2025,Vol.7Issue(2):26-40,15.
智慧农业(中英文)2025,Vol.7Issue(2):26-40,15.DOI:10.12133/j.smartag.SA202501004

知识图谱驱动下粮食生产大数据应用现状与展望

Knowledge Graph Driven Grain Big Data Applications:Overview and Perspective

杨晨雪 1李娴 1周清波1

作者信息

  • 1. 中国农业科学院农业信息研究所,北京 100081,中国
  • 折叠

摘要

Abstract

[Significance]Grain production spans multiple stages and involves numerous heterogeneous factors,including agronomic in-puts,natural resources,environmental conditions,and socio-economic variables.However,the associated data generated throughout the entire production process,ranging from cultivation planning to harvest evaluation,remains highly fragmented,unstructured,and semantically diverse.This complexity data,combined with the lack of integrated core algorithms to support decision-making,has se-verely limited the potential of big data to drive innovation in grain production.Knowledge graph technology,by offering structured and semantically-rich representations of complex data,enables the integration of multi-source and heterogeneous data,enhances se-mantic mining and reasoning capabilities,and provides intelligent,knowledge-driven support for sustainable grain production,thereby addressing these challenges effectively.[Progress]This paper systematically reviewed the current research and application progress of knowledge graphs in the grain production big data.A comprehensive knowledge graph driven framework was proposed based on a hy-brid paradigm combining data-driven modeling and domain knowledge guidance to support the entire grain production lifecycle and addressed three primary dimensions of data complexity:Structural diversity,relational heterogeneity,and semantic ambiguity.The key techniques of constructing multimodal knowledge map and temporal reasoning for grain production were described.First,an agricul-tural ontology system for grain production was designed,incorporating domain-specific concepts,hierarchical relationships,and attri-bute constraints.This ontology provided the semantic foundation for knowledge modeling and alignment.Second,multimodal named entity recognition(NER)techniques were employed to extract entities such as crops,varieties,weather conditions,operations,and equipment from structured and unstructured data sources,including satellite imagery,agronomic reports,Internet of Things sensor da-ta,and historical statistics.Advanced deep learning models,such as bidirectional encoder representations from transformers(BERT)and vision-language transformers,were used to enhance recognition accuracy across text and image modalities.Third,the system im-plemented multimodal entity linking and disambiguation,which connected identical or semantically similar entities across different data sources by leveraging graph embeddings,semantic similarity measures,and rule-based matching.Finally,temporal reasoning modules were constructed using temporal knowledge graphs and logical rules to support dynamic inference over time-sensitive knowl-edge,such as crop growth stages,climate variations,and policy interventions.The proposed knowledge graph driven system enabled the development of intelligent applications across multiple stages of grain production.In the pre-production stage,knowledge graphs supported decision-making in resource allocation,crop variety selection,and planting schedule optimization based on past data pat-terns and predictive inference.During the in-production stage,the system facilitated precision operations,such as real-time fertiliza-tion and irrigation by reasoning over current field status,real-time sensor inputs,and historical trends.In the post-production stage,it enabled yield assessment and economic evaluation through integration of production outcomes,environmental factors,and policy con-straints.[Conclusions and Prospects]Knowledge graph technologies offer a scalable and semantically-enhanced approach for unlocking the full potential of grain production big data.By integrating heterogeneous data sources,representing domain knowledge explicitly,and supporting intelligent reasoning,knowledge graphs can provide visualization,explainability,and decision support across various spatial scales,including national,provincial,county-level,and large-scale farm contexts.These technologies are of great scientific and practical significance in supporting China's national food security strategy and advancing the goals of storing grain in the land and storing grain in technology.Future directions include the construction of cross-domain agricultural knowledge fusion systems,dynam-ic ontology evolution mechanisms,and federated knowledge graph platforms for multi-region data collaboration under data privacy constraints.

关键词

粮食生产大数据/知识表示/多模态知识图谱/命名实体识别/实体链接/时序推理

Key words

grain production big data/knowledge representation/multimodal knowledge graph/named entity recognition/entity link-ing/temporal reasoning

分类

农业科学

引用本文复制引用

杨晨雪,李娴,周清波..知识图谱驱动下粮食生产大数据应用现状与展望[J].智慧农业(中英文),2025,7(2):26-40,15.

基金项目

"十四五"国家重点研发计划项目(2023YFD2000102) The National Key Research and Development Program of China(2023YFD2000102) (2023YFD2000102)

智慧农业(中英文)

2096-8094

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