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Analysis of Grain Condition in Improved Granary Based on Grey Prediction Algorithm

机译:基于灰色预测算法的改进粮仓粮食状况分析

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Scientific grain storage plays an important role in ensuring food security and promoting high-efficiency energy-saving operations. The paper provides more accurate reference datas for grain storage work. It can easily monitor the grain situation during the reserve period, and can scientifically predict the future grain development trend more accurately. It takes countermeasure in advance to prevent food disaster and further reduce. The workload of the warehouse clerk and related staff, while ensuring the safe and stable operation of the grain storage. Compared with the traditional Gery Model, the residual correction method is proposed to improve the data prediction accuracy. Combined with the Grey Verhulst model, a new residual-corrected Verhulst model is proposed. The simulation prove that the improved model is more traditional than the traditional one. The model is more conducive to the prediction of volatility data and the prediction accuracy is greatly improved.
机译:科学的谷物储存在确保粮食安全和促进高效节能运营方面发挥着重要作用。本文为粮食储藏工作提供了更准确的参考数据。它可以轻松地监视储备期间的谷物状况,并可以更准确地科学预测未来的谷物发展趋势。提前采取对策,防止粮食灾害,进一步减少粮食损失。仓库业务员及相关人员的工作量,同时确保了谷物仓库的安全稳定运行。与传统的Gery模型相比,提出了残差校正方法,以提高数据预测的准确性。结合灰色Verhulst模型,提出了一种新的残差校正Verhulst模型。仿真表明,改进后的模型比传统模型更为传统。该模型更有利于波动率数据的预测,预测精度大大提高。

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