AgroPro: Optimizer for Traditional Agricultural System in Sri Lanka

D. D. De Silva, G.M. T. K. D. S. Suriyawansa, M. Senevirathna, I. Balasuriya, A. G. S. P. Deshapriya, G. A. D. K. M. Gadiarachchi
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Abstract

Today, in many countries around the world, big data analysis and machine learning methods are used for industrial development. However, such techniques are rarely used in Sri Lankan agricultural industry. The success of agriculture depends heavily on the selection of the right crop. Choosing the right crop depends primarily on predicting future yields. Machine learning methods can be used very successfully to make future predictions about crop yields. Crop prediction mainly depends on the soil, geography, and climate of the growing location. Hence historical data with agricultural facts such as temperature, humidity, pH, and rainfall are used to predict yield as parameters in the machine learning function. Sri Lanka uses a traditional approach to distribute fertilizers among farmers. Not having an organized way to distribute fertilizers to the needed areas leads to many abnormalities along the way. As a result, the country is facing economic losses and resource wastage. Having an optimized distribution network is the key to overcoming those abnormalities. This research assesses the efficiency of the fertilizer distribution system and consists of time-series predictions on fertilizer usage to gain future value. The aim is to identify performance gaps in distribution management that lead to delayed fertilizer distribution affecting agricultural productivity.
AgroPro:斯里兰卡传统农业系统优化器
今天,在世界上许多国家,大数据分析和机器学习方法被用于工业发展。然而,这些技术很少在斯里兰卡的农业中使用。农业的成功在很大程度上取决于对作物的选择。选择合适的作物主要取决于对未来产量的预测。机器学习方法可以非常成功地用于预测未来的作物产量。作物预测主要取决于种植地点的土壤、地理和气候。因此,具有农业事实的历史数据,如温度、湿度、pH值和降雨量,被用作机器学习函数中的参数来预测产量。斯里兰卡使用传统方法向农民分发肥料。没有一个有组织的方式将肥料分发到需要的地区,导致沿途出现许多异常情况。因此,这个国家正面临着经济损失和资源浪费。拥有一个优化的分销网络是克服这些异常的关键。本研究评估肥料分配系统的效率,并包括对肥料使用的时间序列预测,以获得未来的价值。其目的是确定分配管理中的绩效差距,这些差距导致肥料分配延迟,影响农业生产力。
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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