{"title":"Creation of neuron network productivity of lucerne in Steppe zone of Ukraine","authors":"V. Zaporozhchenko, A. Shepel, A. Tkachuk","doi":"10.32819/2617-6106.2018.14017","DOIUrl":null,"url":null,"abstract":"Cite this article: Zaporozhchenko, V. Y., Shepel, A. V., & Tkachuk, A. V. (2019). Creation of neuron network productivity of lucerne in Steppe zone of Ukraine. Agrology, 2(1), 47‒50. doi: 10.32819/2617-6106.2018.14017 Abstract. In arid conditions of the Steppe zone of Ukraine for obtaining stable yields of lucerne and observance the conditions of resource-saving, it is important to know from what factors the value of the yield of lucerne depends on. According to the results of the conducted research, an agroecological model of the productivity of growing crop on irrigated lands of the Ukrainian Steppe has been formed. For the carrying out research, the method of artificial neuron networks was used. Creating an agroecological model of lucerne production using neuron networks consists of the following phases: search of data; preparation and normalization of data; choice of type of neuron network; experimental choice of network characteristics; experimental choice of parameters; obtaining an artificial neuron network for modeling the productivity of lucerne; checking of adequacy of the model; adjustment of parameters, final training. As a result of the research it was found that artificial neuron networks are fundamentally different from traditional methods of statistical data analysis. In the capacity of main elements of the system are taken: the sum of effective temperatures above +5 °С; amount of atmospheric precipitation; solar lighting duration; irrigation norms; depth of soil tillage; fertilization and plant protection. The article presents a constructed neuron network with architectural parameters. It has been established that among the significant number of natural and agrotechnical factors affecting the productivity of crops of lucerne, the greatest influence is carried out by atmospheric precipitation and, in our case, water-saving irrigation norms. Among the investigated factors there are a high degree of pair and multiple correlations. It is proved that the components of architecture contain different compositions of multilayered perceptrons, radial-basic functions, and also linear components.","PeriodicalId":33211,"journal":{"name":"Agrology","volume":" ","pages":""},"PeriodicalIF":0.0000,"publicationDate":"2019-02-05","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"1","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"Agrology","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.32819/2617-6106.2018.14017","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"","JCRName":"","Score":null,"Total":0}
引用次数: 1
Abstract
Cite this article: Zaporozhchenko, V. Y., Shepel, A. V., & Tkachuk, A. V. (2019). Creation of neuron network productivity of lucerne in Steppe zone of Ukraine. Agrology, 2(1), 47‒50. doi: 10.32819/2617-6106.2018.14017 Abstract. In arid conditions of the Steppe zone of Ukraine for obtaining stable yields of lucerne and observance the conditions of resource-saving, it is important to know from what factors the value of the yield of lucerne depends on. According to the results of the conducted research, an agroecological model of the productivity of growing crop on irrigated lands of the Ukrainian Steppe has been formed. For the carrying out research, the method of artificial neuron networks was used. Creating an agroecological model of lucerne production using neuron networks consists of the following phases: search of data; preparation and normalization of data; choice of type of neuron network; experimental choice of network characteristics; experimental choice of parameters; obtaining an artificial neuron network for modeling the productivity of lucerne; checking of adequacy of the model; adjustment of parameters, final training. As a result of the research it was found that artificial neuron networks are fundamentally different from traditional methods of statistical data analysis. In the capacity of main elements of the system are taken: the sum of effective temperatures above +5 °С; amount of atmospheric precipitation; solar lighting duration; irrigation norms; depth of soil tillage; fertilization and plant protection. The article presents a constructed neuron network with architectural parameters. It has been established that among the significant number of natural and agrotechnical factors affecting the productivity of crops of lucerne, the greatest influence is carried out by atmospheric precipitation and, in our case, water-saving irrigation norms. Among the investigated factors there are a high degree of pair and multiple correlations. It is proved that the components of architecture contain different compositions of multilayered perceptrons, radial-basic functions, and also linear components.
引用本文:Zaporozhchenko, V. Y., Shepel, A. V., & Tkachuk, A. V.(2019)。乌克兰草原区卢塞恩神经网络生产力的建立。农业科学,2(1),47-50。doi: 10.32819/2617-6106.2018.14017在乌克兰草原地带的干旱条件下,为了获得稳定的卢塞恩产量和遵守资源节约的条件,了解卢塞恩产量的价值取决于哪些因素是重要的。根据所进行的研究结果,已经形成了乌克兰草原灌溉地种植作物生产力的农业生态模型。为了进行研究,采用了人工神经元网络的方法。利用神经元网络建立苜蓿生产的农业生态模型包括以下几个阶段:数据搜索;数据的准备和规范化;神经元网络类型的选择;网络特性的实验选择;参数的实验选择;建立了一种模拟lucerne生产力的人工神经元网络;检查模型的充分性;参数调整,最终训练。研究结果表明,人工神经元网络与传统的统计数据分析方法有着根本的不同。在系统的主要要素的能力是:有效温度+5°以上的总和С;大气降水量;日照时长;灌溉规范;土壤耕作深度;施肥和植物保护。本文构造了一个具有结构参数的神经元网络。已经确定,在影响lucerne作物生产力的大量自然和农业技术因素中,大气降水的影响最大,在我们的情况下,节水灌溉规范的影响最大。在被调查的因素中,存在高度的成对和多重相关。证明了建筑构件包含多层感知器、径向基函数和线性构件的不同组成。