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深度学习技术在水培和土壤成分预测中的性能提升

Performance enhancement in hydroponic and soil compound prediction by deep learning techniques.

作者信息

Abidi Mustufa Haider, Chintakindi Sanjay, Rehman Ateekh Ur, Mohammed Muneer Khan

机构信息

Advanced Manufacturing Institute, King Saud University, Riyadh, Saudi Arabia.

Department of Industrial Engineering, King Saud University, Riyadh, Saudi Arabia.

出版信息

PeerJ Comput Sci. 2024 Jun 10;10:e2101. doi: 10.7717/peerj-cs.2101. eCollection 2024.

Abstract

The soil quality plays a crucial role in providing essential nutrients for crop growth and ensuring a bountiful yield. Identifying the soil composition, which includes sand, silt particles, and the mixture of clay in specific proportions, is vital for making informed decisions about crop selection and managing weed growth. Furthermore, soil pollution from emerging contaminants presents a substantial risk to water resource management and food production. Developing numerical models to comprehensively describe the transport and reactions of chemicals within both the plants and soil is of utmost importance in crafting effective mitigation strategies. To address the limitations of traditional models, this paper devises an innovative approach that leverages deep learning to predict hydroponic and soil compound dynamics during plant growth. This method not only enhances the understanding of how plants interact with their environment but also aids in making more informed decisions about agriculture, ultimately contributing to more sustainable and efficient crop production. The data needed to perform the developed hydroponic and soil compound prediction model is acquired from online resources. After that, this data is forwarded to the feature extraction phase. The weighted features, deep belief network (DBN) features, and the original features are achieved in the feature extraction stage. To get the weighted features, the weights are optimally obtained using the Iteration-assisted Enhanced Mother Optimization Algorithm (IEMOA). Subsequently, these extracted features are fed into the Multi-Scale feature fusion-based Convolution Autoencoder with a Gated Recurrent Unit (MS-CAGRU) network for hydroponic and soil compound prediction. Thus, the hydroponic and soil compound prediction data is attained in the end. Finally, the performance evaluation of the suggested work is conducted and contrasted with numerous conventional models to showcase the system's efficacy.

摘要

土壤质量在为作物生长提供必需养分和确保丰收方面起着至关重要的作用。确定土壤成分,包括沙子、淤泥颗粒以及特定比例的粘土混合物,对于做出关于作物选择和控制杂草生长的明智决策至关重要。此外,新出现的污染物造成的土壤污染对水资源管理和粮食生产构成了重大风险。开发数值模型以全面描述化学物质在植物和土壤中的传输及反应,对于制定有效的缓解策略至关重要。为解决传统模型的局限性,本文设计了一种创新方法,利用深度学习来预测植物生长期间水培和土壤化合物的动态变化。该方法不仅增强了对植物与其环境如何相互作用的理解,还有助于做出更明智的农业决策,最终有助于实现更可持续、高效的作物生产。执行已开发的水培和土壤化合物预测模型所需的数据从在线资源获取。之后,该数据被转发到特征提取阶段。在特征提取阶段获得加权特征、深度信念网络(DBN)特征和原始特征。为获得加权特征,使用迭代辅助增强母优化算法(IEMOA)优化获得权重。随后,将这些提取的特征输入到基于多尺度特征融合的带有门控循环单元(MS - CAGRU)的卷积自动编码器网络中进行水培和土壤化合物预测。最终获得水培和土壤化合物预测数据。最后,对所提出工作进行性能评估,并与众多传统模型进行对比,以展示该系统的有效性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/c300/11636990/157bf800cdbd/peerj-cs-10-2101-g001.jpg

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