智能温室温度预测的时间序列库评价

Santiago Ruiz, Juan Morales-García, C. Calafate, Juan-Carlos Cano, P. Manzoni, José M. Cecilia
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引用次数: 0

摘要

如今,人口过剩正以不同的方式给我们的生态系统带来压力,农业就是一个重要的例子,因为不同的预测都指出在不久的将来会出现粮食短缺。在这种情况下,智能农业正成为优化自然资源的关键,以便在消耗尽可能少的资源的情况下有效种植不同的作物。特别是,温室已被证明是在较小的空间和较短的时间内生产大量蔬菜/水果的有效方法。因此,优化温室功能可以减少水和养分消耗,减少能源消耗,加快生长速度,提高产品质量。本文通过研究基于单变量时间序列分析的温室温度预测的最佳方法,向这一方向迈出了一步。特别是,研究了几个广泛使用的时间序列库,如Facebook的Prophet, LinkedIn的Greykite和TPOT,以找出哪种库在这种特定情况下表现更好。结果表明,最大预测误差范围为1.5到3摄氏度,总的来说,Greykite被认为是这种特定环境下性能最好的库。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evaluation of time-series libraries for temperature prediction in smart greenhouses
Nowadays, human overpopulation is stressing our ecosystems in different ways, being agriculture a critical example as different predictions point towards food shortages in the near future. In such context, smart farming is becoming key to optimize natural resources so that different crops are grown efficiently, consuming as few resources as possible. In particular, greenhouses have shown to be an effective approach to producing a high volume of vegetables/fruits in a reduced space and within a short time span. Hence, optimizing greenhouse functioning results in less water and nutrient consumption, less energy use, faster growth, and better product quality. In this paper, we take a step in this direction by studying the best approach to forecast greenhouse temperature based on univariate time-series analysis. In particular, several widely used time-series libraries such as Prophet by Facebook, Greykite by LinkedIn and TPOT are studied to figure out which performs better for this particular scenario. Results show that the maximum prediction error ranges from 1.5 to 3 degrees Celsius, and, in general terms, Greykite is found to be the best performing library for this particular environment.
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