如何通过粮食仓储保障食品安全?一种利用机器学习算法提高管理效率的方法

Jin Wang, Yong Jiang, Li Li, Chao Yang, Ke Li, Xueping Lan, Yuchong Zhang, Jinying Chen
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引用次数: 0

摘要

粮食仓储管理的目的是动态分析储备粮食的品质变化,采取科学有效的管理方法,延缓品质劣化的速度,降低储存过程中的损失率。目前,对储粮质量的监督主要依靠对储粮和碾磨产品质量的定期检测。上述方法获得的数据准确可靠,但工作量太大,频率高。所得结论也仅限于研究区域,不适用于扩展到其他场景。因此,迫切需要一种能够根据历史数据快速预测不同品种、不同地区、不同储存期谷物品质的通用方法。在本研究中,我们将BP神经网络算法和支持向量机算法引入到储备谷物的质量预测中。利用质量指数、温度和湿度数据建立了跨期预测模型和同步预测模型。结果表明,基于前三个周期的存储特征的BP神经网络可以准确地预测跨期的关键存储特征。支持向量机可以同步提供对密钥存储字符的精确预测。小麦、水稻和玉米的平均预测误差在15%以内,大豆的平均预测误差在20%左右,均能满足实际需求。综上所述,机器学习算法有助于提高粮食仓储管理效率。
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How to Guarantee Food Safety via Grain Storage? An Approach to Improve Management Effectiveness by Machine Learning Algorithms
The purpose of grain storage management is to dynamically analyze the quality change of the reserved grains, adopt scientific and effective management methods to delay the speed of the quality deterioration, and reduce the loss rate during storage. At present, the supervision of the grain quality in the reserve mainly depends on the periodic measurements of the quality of the grains and the milled products. The data obtained by the above approach is accurate and reliable, but the workload is too large while the frequency is high. The obtained conclusions are also limited to the studied area and not applicable to be extended into other scenarios. Therefore, there is an urgent need of a general method that can quickly predict the quality of grains given different species, regions and storage periods based on historical data. In this study, we introduced Back-Propagation (BP) neural network algorithm and support vector machine algorithm into the quality prediction of the reserved grains. We used quality index, temperature and humidity data to build both an intertemporal prediction model and a synchronous prediction model. The results show that the BP neural network based on the storage characters from the first three periods can accurately predict the key storage characters intertemporally. The support vector machine can provide precise predictions of the key storage characters synchronously. The average predictive error for each of wheat, rice and corn is less than 15%, while the one for soybean is about 20%, all of which can meet the practical demands. In conclusion, the machine learning algorithms are helpful to improve the management effectiveness of grain storage.
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