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A Comparison of DSD With a Neural Net Model to State/Parameter Estimation Directly by Neural Nets

机译:DSD与神经网络直接与神经网络模型的比较

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The DSD is a model independent state/parameter estimation software. An important feature of DSD with respect to other estimation schemes is that it can yield a likelihood ranking of possible system states. Neural net system models can reduce the estimation time with DSD compared to system models consisting of differential equations. Using a third order differential xenon evolution model to train the neural net models, accuracy of xenon tracking with DSD using a neural net model of xenon evolution (Method 1) is compared to direct tracking with the neural net model (Method 2). In the estimation process, 2% noise was assumed in one of the inputs. While Method 1 yielded good results, Method 2 results showed significant differences from the actual xenon levels when the nets were trained with no noise in the input. Method 2 showed good agreement with the true xenon levels when the nets were trained with noisy input.
机译:DSD是一个独立的状态/参数估计软件。 DSD关于其他估计方案的一个重要特征是它可以产生可能的系统状态的似然排列。与由微分方程组成的系统模型相比,神经网络系统模型可以使用DSD降低估计时间。使用三阶差分氙展开演进模型来培训神经网络模型,使用使用神经网络模型的直接跟踪与氙型进化的神经网络模型进行DSD的氙气跟踪的准确性(方法2)。在估计过程中,在其中一个输入中假设2%的噪声。虽然方法1产生了良好的结果,但是当培训网络训练时,方法2结果显示出与实际氙级别的显着差异,但输入没有噪声。方法2与NET培训的噪声输入培训时,与真正的氙气级别吻合良好。

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