基于可扩展数据挖掘算法的农业气象时间序列分析案例:智利河流域,阿雷基帕

Abarca Romero Melisa, K. F. Fabian, Jose Herrera Quispe
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引用次数: 0

摘要

本文提出了一个预测气候变化的模型,该模型利用基于近似数据的挖掘技术中的算法,通过识别组、搜索基序和时间序列预测,将其应用于农业气象数据。为了实现这一目标,您需要使用水平衡组件:流量、降水和蒸发;同时考虑了以湿度(12月、1月、2月、3月)和干燥(其他月份)为标志的气候变化季节,为临时数据处理提供了较好的抽象子分类三种分类技术:线性回归、朴素贝叶斯和神经网络,并将每种算法的结果与其他算法的结果进行比较。在此基础上,采用线性回归的数学方法,对阿雷基帕河流域的水坝和脆弱水资源进行了近12个月的水平衡分量预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Time series analysis of agro-meteorological through algorithms scalable data mining case: Chili river watershed, Arequipa
The paper proposes a model for predicting climate change, using algorithms in mining techniques based on approximate data, applied to agro-meteorological data, by identifying groups search of motifs and time series forecasting. To achieve the goal you work with the water balance components: flow, precipitation and evaporation; also took into account the climatic variety seasons marked by humidity (December, January, February, March) and dry (other months) providing better to abstract sub-classification for temporary data processing three classification techniques: linear regression, Naive Bayes and neural networks, where the results of each algorithm are compared with other results. Then the mathematical method of linear regression predicting water balance components for a period of approximately 12 months on the data of dams Pane and Fraile Water Resources in River Basin Chili, Arequipa is performed.
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