基于需求的农民作物推荐系统

S. S. Raja, R. Rishi, E. Sundaresan, V. Srijit
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引用次数: 38

摘要

印度约有一半人口以农业为生,但农业对印度国内生产总值(GDP)的贡献仅为14%。造成这种情况的一个可能原因是农民缺乏充分的作物规划。没有适当的系统来建议农民种植什么作物。在本文中,我们提出了一种尝试,通过分析过去数据中的模式来预测农民可以从他的土地上获得的作物产量和价格。我们利用滑动窗口非线性回归技术来预测影响农业生产的不同因素,如降雨、温度、市场价格、土地面积和作物的过去产量。这项分析是针对印度泰米尔纳德邦的几个地区进行的。我们的系统旨在为农民提供最佳的作物选择,以适应当今许多农民面临的普遍社会危机的需求。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Demand based crop recommender system for farmers
About half of the population of India depends on agriculture for its livelihood, but its contribution towards the GDP of India is only 14 per cent. One possible reason for this is the lack of adequate crop planning by farmers. There is no system in place to advice farmers what crops to grow. In this paper we present an attempt to predict crop yield and price that a farmer can obtain from his land, by analysing patterns in past data. We make use of a sliding window non-linear regression technique to predict based on different factors affecting agricultural production such as rainfall, temperature, market prices, area of land and past yield of a crop. The analysis is done for several districts of the state of Tamilnadu, India. Our system intends to suggest the best crop choices for a farmer to adapt to the demand of the prevailing social crisis facing many farmers today.
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