Rice crop growth analysis using Auto Regressive Models

Khadar Babu SK, C. Chesneau, Victor Anthonysamy
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Abstract

Time series play a vital role in predicting and forecasting different types of agricultural applications with respect to different types of problems among successive units of observations. Time series forecasting techniques are applied in all areas of statistics, and one of the most important applications includes backscatter generating time-series data using advanced forecasting techniques. Agriculture is a major food sector in the world, and it is also a major income source for low-income people. In this paper, we present two aspects of the rice crop growing time series process. The first one is to identify different types of rice crop growing stages for backscatter datasets, and the second is to make a mathematical time series model for the generation of different data sets. The different operator techniques (DOT) method was introduced to identify different types of rice crop growing stages in a season. We proposed the DOT method for identification of different phenological stages for a short-term crop and adopted first and second-order auto-regressive models for prediction and forecasting of the generating backscatter time series observations. The measures of the quality fit are mean absolute percent error (MAPE), mean percent error (MPE), and mean absolute error (MAE).
基于自回归模型的水稻作物生长分析
时间序列在预测和预测不同类型的农业应用对不同类型的问题在连续的观测单位中起着至关重要的作用。时间序列预测技术应用于统计的所有领域,其中最重要的应用之一是利用先进的预测技术产生时间序列数据的后向散射。农业是世界上主要的粮食部门,也是低收入人群的主要收入来源。在本文中,我们提出了两个方面的水稻作物生长时间序列过程。一是为后向散射数据集识别不同类型水稻作物生长阶段,二是为不同数据集的生成建立数学时间序列模型。引入了不同算子技术(DOT)方法来识别不同类型水稻作物在一个季节的不同生育阶段。我们提出了DOT方法来识别短期作物的不同物候阶段,并采用一阶和二阶自回归模型对产生的后向散射时间序列观测进行预测和预报。质量拟合的测量方法是平均绝对误差百分比(MAPE)、平均误差百分比(MPE)和平均绝对误差百分比(MAE)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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