利用卫星图像进行人工智能驱动的甘蔗质量属性预测

IF 1.8 3区 农林科学 Q2 AGRONOMY
Tatiana Fernanda Canata, Marcelo Rodrigues Barbosa Júnior, Romário Porto de Oliveira, Carlos Eduardo Angeli Furlani, Rouverson Pereira da Silva
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引用次数: 0

摘要

预测甘蔗作物的含糖量是开发以数据为驱动的创新解决方案以确定机械化收割理想时间的关键所在。然而,传统的基于实验室的方法费力、费时,而且可扩展性有限。因此,我们探索了整合多光谱数据和尖端人工智能算法的潜力,以预测甘蔗的含糖量属性,即白利糖度(Brix)和纯度(Purity)。甘蔗质量属性是在一个常规实验室中使用来自两个商业区的 510 个地理参照样本进行测量的。作物冠层反射率值和生长度日(GDD)被用作开发预测模型的输入。两种人工智能(AI)算法--人工神经网络(ANN)和随机森林(RF)以及多元线性回归(MLR)被用来创建甘蔗质量绘图的预测模型。这些模型的性能证明,RF 回归对 °Brix 的预测效果更好。相比之下,ANN 算法对纯度值的预测效果更好。在两种输出结果中,GDD 是影响 RF 模型性能的最重要变量,其次是卫星图像的绿色光谱带。将卫星图像与基于人工智能的甘蔗质量属性预测模型相结合,可以及时获得结果。它可以提供有用的数据层,以支持农业产业在季节内针对具体地点的管理策略,并支持大规模收割的决策。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

AI-Driven Prediction of Sugarcane Quality Attributes Using Satellite Imagery

AI-Driven Prediction of Sugarcane Quality Attributes Using Satellite Imagery

Anticipating the sugar content of sugarcane crop is a crucial aspect that holds the key to develop innovative data-driven solutions for determining the ideal time of mechanized harvest. However, traditional laboratory-based approaches are laborious, time-consuming, and limited in their scalability. Thus, we explored the potential of integrating multispectral data and cutting-edge artificial intelligence algorithms to predict the sugar content attributes of sugarcane, namely Brix and Purity. The sugarcane quality attributes were measured in a routine laboratory using 510 georeferenced samples from two commercial areas. Crop canopy reflectance values and growing degree days (GDD) were used as inputs on developing predictive models. Two artificial intelligence (AI) algorithms, artificial neural network (ANN) and random forest (RF), and multiple linear regression (MLR) were performed to create the predictive models for mapping the sugarcane quality. The models’ performance proved that RF regression was better for °Brix prediction. In contrast, Purity values were better predicted by ANN algorithm. GDD was the most important variable on performance of RF modeling for both outputs, followed by Green spectral band from satellite imagery. Timely results were achieved integrating satellite imagery and AI-based model on prediction of qualitative attributes for sugarcane. It can provide useful data layers to support site-specific management strategies within season by agroindustry and supporting the decision-making of harvesting in large scale.

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来源期刊
Sugar Tech
Sugar Tech AGRONOMY-
CiteScore
3.90
自引率
21.10%
发文量
145
期刊介绍: The journal Sugar Tech is planned with every aim and objectives to provide a high-profile and updated research publications, comments and reviews on the most innovative, original and rigorous development in agriculture technologies for better crop improvement and production of sugar crops (sugarcane, sugar beet, sweet sorghum, Stevia, palm sugar, etc), sugar processing, bioethanol production, bioenergy, value addition and by-products. Inter-disciplinary studies of fundamental problems on the subjects are also given high priority. Thus, in addition to its full length and short papers on original research, the journal also covers regular feature articles, reviews, comments, scientific correspondence, etc.
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