基于机器学习的巴基斯坦当地农民作物推荐系统

Sayeda M. Ali
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引用次数: 5

摘要

在巴基斯坦,农业是最基本和最重要的工作之一,它对国家的发展起着至关重要的作用。在巴基斯坦,大部分土地用于农业种植,以满足附近人民的需求,并适当地出口需求。因此,提高作物产量的需求是农民面临的重大挑战。世界上任何地方的作物种植都取决于气候,即所谓的季节和土壤性质,然而,作物产量的提高取决于各种因素,主要是温度。为了解决巴基斯坦作物产量增加的问题,本文提出了一种作物推荐系统。在这项工作中,在种植之前的理想收获的想法,将对农民和其他需要确定适当选择以提高邻里利用需求的产量创造的人提供非凡的帮助,并可能促进产能和扩大业务的价格选择。我们的框架利用机器学习过程,最终目标是根据温度提出适当的军团。这个框架随后减少了农民因建立不祥的收成而看到的货币灾难,而且它还提供了关于产量偶尔特征的信息,什么收获在哪个季节是合理的。结果表明,该算法在给定数据集上的平均准确率为90%。与现有工作相比,实现的精度更高。
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Machine Learning based Crop Recommendation System for Local Farmers of Pakistan
Farming is one of the most fundamental and generally rehearsed work in Pakistan and it plays an imperative part in fostering the country. In Pakistan, the most part of the land is used for agriculture cultivation to meet the desires of nearby people and export want as properly. Therefore, the need of increasing crop production is the significant challenge for farmers. Crop cultivation anywhere in the world depends on the climate so called seasons and soil properties, however, the enhancing the production of crops depend on various factors like mainly on temperature. In order to address the issue of increasing crop production for Pakistan, a crop recommendation system is proposed in this work. In this work, idea of ideal harvest prior to planting it, it would be of extraordinary assistance to the farmers and others required to settle on fitting choices on upgrading the creation of yields for neighborhood utilization needs and may prompt the capacity and expanded fare choice for business. Our framework utilized Machine Learning procedures with the end goal that it proposes the appropriate corps dependent on the temperature. This framework subsequently diminishes the monetary misfortunes looked by the farmers brought about by establishing the ominous harvests and furthermore it gives the information on the occasional characterization of yields what harvest is reasonable for which season. It is concluded that proposed algorithm has an average accuracy of 90% on the given dataset. The achieved accuracy is more in comparison to existing work.
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