基于改进SVR算法的储粮温度预测模型研究

Zhihui Li, Yiyi Si, Yuhua Zhu
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摘要

在使用支持向量回归方法预测粮食储存温度时,如何选择合适的模型参数是一个难题。一般来说,通风干预后不同层间粮食贮藏温度变化趋势的检测是有效的。为了提高支持向量机的性能,有必要选择合适的参数优化算法。自适应粒子群优化算法通过在空间域中不断更新粒子来完成操作;详细讨论了其应用原理,收敛效果更优;并将该算法应用于支持向量回归模型的参数优化。采用自适应粒子群优化算法后,评价指标和实验预测结果表明,APSO模型误差小,跟踪程度高,泛化性能好,预测精度高。这是预测粮食温度趋势的有用资源。
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Research on grain-stored temperature prediction model based on improved SVR algorithm
When using the support vector regression method to predict grain storage temperature, it is challenging to choose the appropriate model parameters. Generally, it is effective to examine the trend of grain storage temperature in different layers after ventilation intervention. To enhance the performance of a support vector machine, it is necessary to choose an appropriate parameter optimization algorithm. The adaptive particle swarm optimization algorithm completes the operation by continuously updating the particles in the spatial domain; after discussing its application principle in detail, the convergence effect is more optimal; and the algorithms are applied to parameter optimization for support vector regression models. After employing the adaptive particle swarm optimization algorithm, the evaluation indicators and experimental prediction results demonstrate that the APSO model has fewer errors, a higher tracking degree, superior generalization performance, and greater prediction accuracy. This is a useful resource for forecasting grain temperature trends.
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