基于Bayes ARD算法的棉花灌溉决策支持系统开发

Dimitriοs Leonidakis, E. Psomakelis, C. Kasimatis, Nikolaos Katsenios, I. Kakabouki, I. Roussis, Antonios Mavroeidis, Aspasia Efthimiadou
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引用次数: 0

摘要

棉花是一种植物,主要种植在雨水不足而需要灌溉的地区。近年来的研究表明,灌溉用水可以减少。技术领域的进步使神经网络和数据分析相结合的决策支持系统成为可持续农业的重要工具。棉花生产者需要减少灌溉用水,这可以通过使用新技术来实现。开发决策支持系统进行,有三种不同类型的输入。数据来自希腊3个油田的各种物联网传感器、气象站和现场测量(产量和ΕΜ38),创建了9个不同输入的数据集。总共测试和评估了13种不同的算法,以确定哪种算法最适合我们的数据集。在实际数据中采用该技术可以减少灌溉次数,确保最终产量不受损失。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Development of Decision Support System Based on the Bayes ARD Algorithm for Irrigation of Cotton
Cotton is a plant, which is mainly cultivated in regions where the irrigation is necessary as rainwater is not adequate. Researches in the recent years have showed that the irrigation water used could be declined. Improvements in the technological field has made Decision Support Systems combined with Neural Networks and data analysis, an important tool of sustainable agriculture. Cotton producers need to reduce irrigation water needs and that can be achieved by using new technologies. The development Decision Support System was conducted, having 3 different types of input. Data derived from a variety of IoT sensors, weather stations, and on-site measurements (yield and ΕΜ38) derived from 3 fields in Greece, creating a dataset of 9 different inputs. A total of 13 different algorithms were tested and evaluated in order to determine which one is the ideal for our dataset. The adoption of this technology in real data predicted the reduction of the irrigation times, ensuring that there will be no losses in the final yield.
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