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Modelling of a conveyor-belt grain dryer utilizing a sigmoid network

机译:一种利用SIGMOID网络的传送带晶粒干燥机的建模

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Post-harvest techniques play an important role in modern agricultural industry. One of these essential post-harvest techniques is the grain drying process. However, this process is characterized by its high complexity and nonlinearity due to the effects of several drying parameters. Therefore, conventional modelling approaches cannot produce accurate modelling results to describe the dynamics of this challenging process. This paper presents a nonlinear modelling technique to develop a highly accurate model for a laboratory-scale conveyor-belt grain drying system. In particular, this modelling technique is based on utilizing the sigmoid network as a nonlinearity estimator in a nonlinear autoregressive with exogenous input (NARX) model. As the training samples, a set of experimental input-output data was used in the model development process. This data set was collected from the conveyor-belt grain dryer during a real-time experiment to dry paddy (rough rice) grains. Compared to other previously reported modelling techniques which were applied for the same drying process, the proposed sigmoid-based NARX model has achieved the best modelling accuracy in describing the grain drying process. More precisely, the proposed model has achieved a root mean squared error (RMSE) of 2.776 × 10. It is worth to highlight that, unlike previous efforts which aimed at modelling conveyor-belt grain drying systems, the advantage of the proposed modelling technique is that it can be directly applied to model the drying system regardless of the dryer shape, and moreover regardless of the size and physical properties of the grains to be dried. In addition, the resulting model can be readily employed in control applications to design suitable dryer controllers.
机译:收获后技术在现代农业产业的重要作用。其中这些重要的采后技术是谷物干燥过程。然而,该方法由于几个干燥参数的影响,其特征在于它的高复杂性和非线性。因此,传统的建模方法不能产生精确的建模结果来描述这一挑战过程的动力学。本文提出了一种非线性建模技术来开发用于实验室规模的传送带谷物干燥系统中的高度精确的模型。特别地,该建模技术是基于利用乙状结肠网络如在非线性自回归用外源输入(NARX)模型非线性估算。作为训练样本,在模型的开发过程中使用的一组实验的输入输出数据的。此数据集被实时实验以干稻谷(稻谷)晶粒期间从传送带谷物干燥器收集。相比对它们应用为相同的干燥过程中的其它先前报道的建模技术,所提出的基于乙状结肠NARX模型已经实现的最佳建模精度在描述谷物烘干过程。更精确地,所提出的模型已经实现了2.776×10根均方误差(RMSE),值得强调的是,不同于针对建模传送带谷物烘干系统先前的努力,所提出的建模技术的优点是它可以直接应用于无论干燥器形状与干燥系统进行建模,而且不管尺寸和晶粒的物理性质来进行干燥。此外,所得到的模型可以容易地在控制应用中使用来设计合适的烘干机的控制器。

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