A new long short-term memory based approach for soil moisture prediction

IF 1.8 4区 计算机科学 Q3 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Journal of Ambient Intelligence and Smart Environments Pub Date : 2023-08-23 DOI:10.3233/ais-230035
Bamory Koné, Rima Grati, Bassem Bouaziz, Khouloud Boukadi
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引用次数: 1

Abstract

Water scarcity is becoming more severe around the world as a result of suboptimal irrigation practices. Effective irrigation scheduling necessitates an estimation of future soil moisture content. This study presents deep learning models such as CNN-LSTM, a hybrid Deep Learning model that predicts future soil moisture using climate and soil information, including past soil moisture content. The study also investigates the appropriate number of observations and data sampling rate required to predict the next day’s soil moisture value. In terms of MSE, MAE, RMSE, and R 2 , the hybrid CNN-LSTM model is compared to standalone LSTM and Bi-LSTM models. The LSTM model achieved an MSE of 0.2471, MAE of 0.1978, RMSE of 0.4971, and R 2 of 0.9714. The LSTM model outperformed the Bi-LSTM model, which had an MSE of 0.3036, MAE of 0.3248, RMSE of 0.5510, and R 2 of 0.9614. With an MSE of 0.1348, MAE of 0.1868, RMSE of 0.3672, and R 2 of 0.9838, the hybrid CNN-LSTM model outperformed the LSTM. Our findings suggest that deep learning models, particularly the Convolutional LSTM, hold great potential for predicting soil moisture accurately. The Convolutional LSTM model’s superior performance can be attributed to its ability to capture spatial dependencies in soil moisture data. Furthermore, the results show that for better prediction, sub-hourly data samples from the previous three days should be considered.
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基于长短期记忆的土壤水分预测新方法
由于不理想的灌溉做法,世界各地的水资源短缺正变得越来越严重。有效的灌溉计划需要对未来土壤水分含量进行估计。该研究提出了CNN-LSTM等深度学习模型,这是一种混合深度学习模型,利用气候和土壤信息(包括过去的土壤含水量)预测未来的土壤湿度。该研究还探讨了预测第二天土壤湿度值所需的适当观测次数和数据采样率。在MSE、MAE、RMSE和r2方面,将CNN-LSTM混合模型与独立LSTM和Bi-LSTM模型进行比较。LSTM模型的MSE为0.2471,MAE为0.1978,RMSE为0.4971,r2为0.9714。LSTM模型优于Bi-LSTM模型,MSE为0.3036,MAE为0.3248,RMSE为0.5510,r2为0.9614。该模型的MSE为0.1348,MAE为0.1868,RMSE为0.3672,r2为0.9838,优于LSTM。我们的研究结果表明,深度学习模型,特别是卷积LSTM,在准确预测土壤湿度方面具有很大的潜力。卷积LSTM模型的优越性能可归因于其捕获土壤湿度数据的空间依赖性的能力。此外,结果表明,为了更好地预测,应考虑前3天的亚小时数据样本。
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来源期刊
Journal of Ambient Intelligence and Smart Environments
Journal of Ambient Intelligence and Smart Environments COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE-COMPUTER SCIENCE, INFORMATION SYSTEMS
CiteScore
4.30
自引率
17.60%
发文量
23
审稿时长
>12 weeks
期刊介绍: The Journal of Ambient Intelligence and Smart Environments (JAISE) serves as a forum to discuss the latest developments on Ambient Intelligence (AmI) and Smart Environments (SmE). Given the multi-disciplinary nature of the areas involved, the journal aims to promote participation from several different communities covering topics ranging from enabling technologies such as multi-modal sensing and vision processing, to algorithmic aspects in interpretive and reasoning domains, to application-oriented efforts in human-centered services, as well as contributions from the fields of robotics, networking, HCI, mobile, collaborative and pervasive computing. This diversity stems from the fact that smart environments can be defined with a variety of different characteristics based on the applications they serve, their interaction models with humans, the practical system design aspects, as well as the multi-faceted conceptual and algorithmic considerations that would enable them to operate seamlessly and unobtrusively. The Journal of Ambient Intelligence and Smart Environments will focus on both the technical and application aspects of these.
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