人工智能在集约农业流域地表水体养分估算中的应用。

IF 3 4区 环境科学与生态学 Q2 ENVIRONMENTAL SCIENCES
José Luis Medina-Jiménez, Leonel Ernesto Amabilis-Sosa, Kimberly Mendivil-García, Luis Alberto Morales-Rosales, Víctor Alejandro Gonzalez-Huitrón, Héctor Rodríguez-Rangel
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引用次数: 0

摘要

由于对供水和粮食安全的风险,富营养化是最相关的问题之一。氮和磷化学物质的浓度决定了富营养化的风险和程度。由于农用化学品的排放,这些分析对集约化农业的流域更有意义。然而,分析这些营养物质是劳动密集型的,因为在实验室取样进行相互校准需要大量的财政和人力资源。目前,人工智能可以对各个领域的现象和变量进行建模。本研究的重点是探索其他机器学习方法,包括多层感知器(MLP)、k近邻(KNN)、卷积神经网络(CNN)和随机森林(RF),用于估计墨西哥锡那罗亚(11个模型盆地)地表水中的营养物质,这是农产品出口最高的州。营养物质被认为是所有可能的化学形式,如总氮、凯氏定氮、氨氮、总磷和正磷酸盐。为了进行估计,所选择的输入参数的特征是pH值、溶解氧、电导率、水温和总悬浮物,这些参数不需要化学试剂,可以实时测量。参数信息来源于国家水质监测网络数据库(2012年以来记录的6200条数据)。最后,采用超参数归一化和优化(HPO)方法实现最佳性能模型的最大化。每个模型得到不同的决定系数(R2): MLP在0.64 ~ 0.77之间,CNN在0.65 ~ 0.76之间,KNN在0.64 ~ 0.79之间,RF在0.79 ~ 0.85之间。后者被认为是表现最好的,应用HPO后的训练值为0.95,验证值为0.94。值得注意的是,这些模型适用于锡那罗亚州的任何地表水体和任何气候季节。因此,决策者可以利用它们进行基于科学的土地利用和农药施用环境监管。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application of artificial intelligence for nutrient estimation in surface water bodies of basins with intensive agriculture.

Eutrophication is one of the most relevant concerns due to the risk to water supply and food security. Nitrogen and phosphorus chemical species concentrations determined the risk and magnitude of eutrophication. These analyses are even more relevant in basins with intensive agriculture due to agrochemical discharges. However, analyzing these nutrients is labor intensive, as sampling to intercalibration in the laboratory requires considerable financial and human resources. Currently, artificial intelligence allows the modeling of phenomena and variables in various fields. This research focuses on the exploration of other machine learning methods, including multilayer perceptron (MLP), k-nearest neighbor (KNN), convolutional neural network (CNN), and random forest (RF) for the estimation of nutrients in surface waters of Sinaloa, Mexico (11 model basins), the states with the highest exports of agricultural products. Nutrients were considered in all possible chemical forms, such as total nitrogen, Kjeldahl nitrogen, ammonia nitrogen, total phosphorus, and orthophosphate. For estimation, the selected input parameters are characterized by pH, dissolved oxygen, conductivity, water temperature, and total suspended solids, which do not require chemical reagents and can be measured in real time. The parameter information was obtained from the National Network for Water Quality Monitoring database (6,200 data recorded since 2012). Finally, hyperparameter normalization and optimization (HPO) methods were implemented to maximize the best-performing model. Each model obtained different coefficient of determination values (R2): MLP between 0.64 and 0.77, CNN from 0.65 to 0.76, KNN from 0.64 to 0.79, and RF from 0.79 to 0.85. The latter is considered the best performer, with values of 0.95 in training and 0.94 in validation after applying HPO. Notably, the models are valid for any surface water body and in any climatic season in the state of Sinaloa, México. Therefore decision-makers can use them for science-based environmental regulation of land use and pesticide application.

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来源期刊
Integrated Environmental Assessment and Management
Integrated Environmental Assessment and Management ENVIRONMENTAL SCIENCESTOXICOLOGY&nbs-TOXICOLOGY
CiteScore
5.90
自引率
6.50%
发文量
156
期刊介绍: Integrated Environmental Assessment and Management (IEAM) publishes the science underpinning environmental decision making and problem solving. Papers submitted to IEAM must link science and technical innovations to vexing regional or global environmental issues in one or more of the following core areas: Science-informed regulation, policy, and decision making Health and ecological risk and impact assessment Restoration and management of damaged ecosystems Sustaining ecosystems Managing large-scale environmental change Papers published in these broad fields of study are connected by an array of interdisciplinary engineering, management, and scientific themes, which collectively reflect the interconnectedness of the scientific, social, and environmental challenges facing our modern global society: Methods for environmental quality assessment; forecasting across a number of ecosystem uses and challenges (systems-based, cost-benefit, ecosystem services, etc.); measuring or predicting ecosystem change and adaptation Approaches that connect policy and management tools; harmonize national and international environmental regulation; merge human well-being with ecological management; develop and sustain the function of ecosystems; conceptualize, model and apply concepts of spatial and regional sustainability Assessment and management frameworks that incorporate conservation, life cycle, restoration, and sustainability; considerations for climate-induced adaptation, change and consequences, and vulnerability Environmental management applications using risk-based approaches; considerations for protecting and fostering biodiversity, as well as enhancement or protection of ecosystem services and resiliency.
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