Time Series Forecasting to Support Irrigation Management

D. Braga, T. C. D. Silva, A. D. Rocha, Gustavo Coutinho, R. P. Magalhães, Paulo T. Guerra, J. Macêdo, Simone D. J. Barbosa
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引用次数: 6

Abstract

Irrigated agriculture is the most water-consuming sector in Brazil, representing one of the main challenges for the sustainable use of water. This study has investigated and evaluated popular machine learning techniques like Gradient Boosting and Random Forest, deep learning models and univariate time series models to predict the value of reference evapotranspiration, a metric of water loss from the crop to the environment. The reference evapotranspiration ET0, plays an essential role in irrigation management since it can be used to reduce the amount of water that will not be absorbed by the crop. We performed the experiments with two real datasets generated by weather stations. The results show that the deep learning models are data-hungry, even when we increased the training set it was not enough to outperform multivariate models like Random Forest, Gradient Boosting and M5’ which indeed execute faster than the deep learning models during the training phase. However, the univariate time series model as the evaluated deep learning models (stacked LSTM and BLSTM) is a viable and lower-cost solution for predicting ET0, since we need to monitor only one variable.
时间序列预测支持灌溉管理
灌溉农业是巴西耗水最多的部门,是可持续用水的主要挑战之一。本研究调查并评估了流行的机器学习技术,如梯度增强和随机森林,深度学习模型和单变量时间序列模型,以预测参考蒸散量的值,蒸散量是作物向环境流失的水分的度量。参考蒸散发ET0在灌溉管理中起着至关重要的作用,因为它可以用来减少作物不吸收的水量。我们用气象站生成的两个真实数据集进行了实验。结果表明,深度学习模型是数据饥渴型的,即使我们增加了训练集,也不足以胜过随机森林、梯度增强和M5’等多元模型,这些模型在训练阶段的执行速度确实比深度学习模型快。然而,单变量时间序列模型作为评估的深度学习模型(堆叠LSTM和BLSTM)是预测ET0的可行且成本较低的解决方案,因为我们只需要监控一个变量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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