温室气体时空分布对作物光合活性影响的数字技术评估与预测

O. Ivashchuk, O. Kuzichkin, D. Goncharov, V. A. Dunaeva
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摘要

研究目的:建立基于人工神经网络和GIS技术的模拟实验模型库,评估和预测区域大气表层温室气体浓度值。考虑了大气表层二氧化碳浓度增加对农业植物生长发育的影响,即对影响作物产量的光合作用活动、土壤腐殖质层矿化水平的变化的影响。农业生产的特殊性决定了创造和实施一种新的智能技术的相关性,这种技术将为确定作物生产的最佳参数提供机会。通过数值实验和数学建模方法,实现了神经网络训练样本的形成。为了选择最佳的神经网络拓扑来预测考虑区域的温室气体浓度,进行了实验,揭示了标准偏差和相对误差。为了评估这些模型的预测能力,在别尔哥罗德地区的农业地区进行了实地试验,测量了大气表层的二氧化碳浓度。一个软件工具包已经开发出来,可以可视化温室气体在大气表层的扩散和积累。这就有可能进行必要的模拟实验,以确定受人为源影响的领土。对选定区域内植物的光合活性进行了评估,这使我们能够为有效利用农业区域以提高作物产量提出进一步的建议。考虑了神经网络的范式,并进行了实验以确定最佳拓扑结构。已经开发了一个软件工具包,为决策者可视化大气表层温室气体的扩散和积累。分析了科技因素对农业植物光合器官的影响,在此基础上提出了农业作物栽培的结论和实用建议。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Digital Technologies for Assessing and Predicting the Impact of Spatiotemporal Distribution of Greenhouse Gases on the Photosynthetic Activity of Crops
Purpose of research: formation of a bank of models for the implementation of simulation experiments to assess and predict the values of greenhouse gas concentrations in the surface layer of the territory's atmosphere based on artificial neural networks and GIS technologies. The influence of the increased concentration of carbon dioxide in the surface layer of the atmosphere on the growth and development of agricultural plants, namely on the change in photosynthetic activity, the level of mineralization of the humus layer of the soil, which affects crop yields, is considered. The peculiarities of agricultural production determine the relevance of the creation and implementation of a new intelligent technology that will provide the opportunity to identify optimal parameters of crop production.Methods. The formation of a training sample for a neural network was carried out through numerical experiments and mathematical modeling methods. To select the best neural network topology for predicting the concentration of greenhouse gases in the territory under consideration, experiments were conducted that revealed the standard deviation and relative error. To assess the predictive abilities of the models, field experiments were conducted to measure CO2 concentrations in the surface layer of the atmosphere in the agricultural territories of the Belgorod region.Results. A software toolkit has been developed that makes it possible to visualize the dispersion and accumulation of greenhouse gases in the surface layer of the atmosphere. This makes it possible to conduct simulation experiments necessary to determine the territories that are under the influence of man-made sources. An assessment of the photosynthetic activity of plants in the selected territory was carried out, which allows us to form further recommendations for the effective use of agricultural territory aimed at increasing crop yields.Conclusion. The paradigms of neural networks were considered, experiments were conducted to identify the best topology. A software toolkit has been developed to visualize the dispersion and accumulation of greenhouse gases in the surface layer of the atmosphere for decision makers. The effects of technogenic factors on the photosynthetic apparatus of agricultural plants are analyzed, on the basis of which conclusions and practical recommendations for the cultivation of agricultural crops are formulated.
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