Crop Knowledge Discovery Based on Agricultural Big Data Integration

V. M. Ngo, Mohand Tahar Kechadi
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引用次数: 7

Abstract

Nowadays, the agricultural data can be generated through various sources, such as: Internet of Thing (IoT), sensors, satellites, weather stations, robots, farm equipment, agricultural laboratories, farmers, government agencies and agribusinesses. The analysis of this big data enables farmers, companies and agronomists to extract high business and scientific knowledge, improving their operational processes and product quality. However, before analysing this data, different data sources need to be normalised, homogenised and integrated into a unified data representation. In this paper, we propose an agricultural data integration method using a constellation schema which is designed to be flexible enough to incorporate other datasets and big data models. We also apply some methods to extract knowledge with the view to improve crop yield; these include finding suitable quantities of soil properties, herbicides and insecticides for both increasing crop yield and protecting the environment.
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基于农业大数据集成的作物知识发现
如今,农业数据可以通过各种来源生成,例如:物联网(IoT)、传感器、卫星、气象站、机器人、农业设备、农业实验室、农民、政府机构和农业企业。对这些大数据的分析使农民、公司和农学家能够提取高水平的商业和科学知识,改善他们的操作流程和产品质量。然而,在分析这些数据之前,需要对不同的数据源进行规范化、同质化并集成到统一的数据表示中。本文提出了一种基于星座模式的农业数据集成方法,该方法具有足够的灵活性,可以整合其他数据集和大数据模型。我们还应用了一些方法来提取知识,以期提高作物产量;这包括找到适当数量的土壤特性、除草剂和杀虫剂,以提高作物产量和保护环境。
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