Precipitation forecast with logistics regression methods for harvest optimization

M. Samasti, Tarik Küçükdeniz
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Abstract

This paper proposes a model that forecasts the weather and then, based on that forecast, uses an income-oriented linear programming method to optimize the harvesting process. Data representing a total yearly output capacity of 472,878 tons from 214 different field locations were used to test the model for sugar beet production. Prior to optimization, long-term one-year weather rainfall forecasting was done using 10 years of actual weather data for the field locations. Weather precipitation was forecasted using logistic regression with an accuracy of 84.16%. The outcome of the weather precipitation prediction model was a parameter in the optimization model. The weather forecast for precipitation led to the 120-day harvest planning being optimized. Comparative analysis was done on the outcomes of the developed model and the current scenario. Comparing the current situation to the proposed one, revenue would have increased by 16.7%. Given that it incorporates weather forecasts into the harvest optimization process, the methodology presented in this paper is more practical than other harvest optimization models.
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利用logistic回归方法进行降水预报,优化收成
本文提出了一个预测天气的模型,然后,基于该预测,使用以收入为导向的线性规划方法来优化收获过程。来自214个不同地点的数据代表了每年472,878吨的总产量,用于测试甜菜生产模型。在优化之前,使用现场10年的实际天气数据进行了长期的一年天气降雨预报。采用logistic回归预测天气降水,预报精度为84.16%。天气降水预报模型的结果是优化模型中的一个参数。降水天气预报使120天收获计划得到优化。对开发的模型和当前情景的结果进行了比较分析。与提议的情况相比,目前的情况将增加16.7%的收入。鉴于该方法将天气预报纳入了收获优化过程,因此本文提出的方法比其他收获优化模型更实用。
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审稿时长
8 weeks
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