一种用于时间序列数据集测量的随机模式分析的机器学习方法

Q3 Engineering
G. Najeeb Ahmed, Somasundaram Kamalakannan, P. Kavitha
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引用次数: 1

摘要

时间序列数据分析被用于许多应用领域,以使用各种技术执行有效的预测、异常检测和预测。最近,对可应用于农业预测的综合数据挖掘技术的需求激增。数据挖掘技术可以有效地用于使用随机模型感知概念来预测农业增长,该概念用于对数据集进行更好的预测分析。所提出的工作引入了一个随机模型,该模型可用于农业数据,以使用主要时间序列数据集预测任何作物的生长。该框架有助于根据从国家粮食安全任务(NFSM)获得的微观和宏观营养素阈值对数据集进行正确的分类决策。本文重点分析了辅助微量营养元素比例的随机模式,并预测了通过增加或减少微量营养元素水平来影响农业增长的特征。因此,农业的预期增长(EGA)根据土壤养分的强度而增加或减少。此外,它还将推荐化肥和营养素范围,以促进每种作物的农业增长。基于微量营养素水平阈值的处理土壤样本数据集来自国家粮食安全特派团(NFSM)。有几个数字示例用于微量营养素数据预测,以及使用随机威布尔分布(SWD)模型分析基于Fe、Mn、Zn和Cu等微量营养素水平的农业生长水平的增加或减少。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Machine Learning Approach for Stochastic Pattern Analysis for the Measurement of Time-Series Datasets
Time series data analysis is used in many domains of applications to perform efficient prediction, anomaly detection and forecasting using various techniques. Recently, there is a surge in demand for comprehensive data mining techniques that can be applied on agricultural prediction. Data mining techniques can be used effectively for predicting the agricultural growth using stochastic model sensing concept which is used to perform better analysis for predicting the dataset. The proposed work introduces a stochastic model that can be applied for agricultural data to predict the growth of any crops using primary time series datasets The framework has assisted in taking correct decisions to classify the dataset based on the threshold value of micro and macro nutrient obtained from National Food Security Mission (NFSM). This paper focus on analyzing the stochastic pattern that assist the proportion of micronutrient elements and also predicts the feature that affect the growth of agriculture by increase or decrease the level of micronutrient elements. Thus, the Expected Growth of Agriculture (EGA) has increased or decreased based on the strength of soil nutrients. Moreover, it will recommend chemical fertilizers and nutrients range to improvise the agriculture growth for each crop. The processed soil sample dataset based on the threshold value of micro nutrient level is obtained from National Food Security Mission (NFSM). There are several numerical illustrations that are performed for micronutrient data prediction as well as analyze the increase or decrease of growth level in agriculture based on micronutrient levels like Fe, Mn, Zn and Cu using Stochastic Weibull Distribution (SWD) model.
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来源期刊
Instrumentation Mesure Metrologie
Instrumentation Mesure Metrologie Engineering-Engineering (miscellaneous)
CiteScore
1.70
自引率
0.00%
发文量
25
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